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Phylogenetic informativeness reconciles ray-finned fish molecular divergence times

Abstract

Background

Discordance among individual molecular age estimates, or between molecular age estimates and the fossil record, is observed in many clades across the Tree of Life. This discordance is attributed to a variety of variables including calibration age uncertainty, calibration placement, nucleotide substitution rate heterogeneity, or the specified molecular clock model. However, the impact of changes in phylogenetic informativeness of individual genes over time on phylogenetic inferences is rarely analyzed. Using nuclear and mitochondrial sequence data for ray-finned fishes (Actinopterygii) as an example, we extend the utility of phylogenetic informativeness profiles to predict the time intervals when nucleotide substitution saturation results in discordance among molecular ages estimated.

Results

We demonstrate that even with identical calibration regimes and molecular clock methods, mitochondrial based molecular age estimates are systematically older than those estimated from nuclear sequences. This discordance is most severe for highly nested nodes corresponding to more recent (i.e., Jurassic-Recent) divergences. By removing data deemed saturated, we reconcile the competing age estimates and highlight that the older mtDNA based ages were driven by nucleotide saturation.

Conclusions

Homoplasious site patterns in a DNA sequence alignment can systematically bias molecular divergence time estimates. Our study demonstrates that PI profiles can provide a non-arbitrary criterion for data exclusion to mitigate the influence of homoplasy on time calibrated branch length estimates. Analyses of actinopterygian molecular clocks demonstrate that scrutiny of the time scale on which sequence data is informative is a fundamental, but generally overlooked, step in molecular divergence time estimation.

Background

Observations of discordance between paleontological and molecular age estimates, or between ages estimated from different molecular datasets, are fairly common and have been observed in angiosperms [1]-[4], mammals [5]-[10], ray-finned fishes [11]-[15], and various other lineages across the Tree of Life [16],[17]. Multiple factors are invoked to explain conflicting molecular age estimates, including modeling of paleontological calibrations [18]-[24], nucleotide substitution rate heterogeneity [25],[26], and the appropriateness of the molecular clock model used [27],[28]. However, the impact of the phylogenetic informativeness of gene sequences on molecular divergence time estimates has received considerably less attention.

Sequences whose sites have experienced large numbers of substitutions, either as a function of a rapid rate of molecular evolution or the passage of long periods of evolutionary time, will likely exhibit a high frequency of homoplasious character states. This homoplasy is problematic because a high frequency of convergent nucleotide states can bias branch length estimation in phylogenetic analyses, as the rate of hidden substitutions will often be under- or overestimated [29]-[32]. However, distinguishing between homoplasy and other sources of discordance is challenging in empirical datasets. This is largely because commonly used metrics that address the influence of nucleotide saturation on phylogenetic branch length estimates, such as saturation plots [33]-[35], are often difficult to interpret in terms of where in a given clade’s history the branch length estimates or inferences of phylogenetic tree topology may be compromised [36].

Phylogenetic informativeness (PI) methods offer a strategy to directly relate nucleotide saturation in data sets to molecular divergence time studies [36]. Using the ratio of a rate of evolution to the optimal rate of evolution for phylogenetic inference at a particular time, PI profiles quantify informativeness. Briefly, this approach takes an inferred vector of site-specific rates and generates a normalized, asymptotic likelihood density for a true synapomorphy occurring at a historical time T under a given model of character evolution. It should be noted that this is a predictive likelihood based entirely on the site-rates inferred, not an assessment of the validity of any empirical result. Analysis of the full site-rate distribution provides a profile of phylogenetic informativeness that spans the entire temporal span of the focal phylogeny, illuminating the scope of phylogenetic signal attributable to the data through evolutionary time [36]. Although phylogenetic informativeness profiles make no direct statement regarding the degree of saturation present in a dataset, the decline of the informativeness profile that follows the peak has been dubbed a “rain shadow of noise,” where the likely quantity of homoplasy influencing a node is comparable to the drop from the peak of the PI profile to its height aligned to the node [37]. This decline at depth from the peak of the PI profile should not only provide insights into where in the temporal span of the phylogeny to expect an increase in phylogenetic noise for topological inference, but also should provide a predictive tool for assessing the potential for data sets to provide strongly supported yet discordant age estimates.

Determining whether estimated ages are the result of estimation biases, or substantial gaps in the fossil record, is especially critical in reconstructing the history of vertebrate diversification. Many analyses of mitogenomic datasets sampled from lineages that span deep evolutionary time scales have resulted in age estimates that are far older than the expectations from the fossil record [14],[38]-[41] and the rapid rate of nucleotide substitution that characterizes the vertebrate mitochondrial genome has prompted multiple investigators to question whether molecular age estimates obtained using mitogenomic data are the result of such biases [30],[42].

The discordance between molecular age estimates is striking within ray-finned fishes (Actinopterygii). While actinopterygians have a fossil record dating to the Devonian [43], limited paleobiological surveys of richness through time [44] and striking disagreement between competing molecular age estimates have impeded our understanding of the timescale underlying their diversification. Estimates made for actinopterygians on the basis of mitogenomic and nuclear datasets often indicate very different evolutionary timelines. For example, the origin of acanthomorphs (spiny-rayed fishes), which include nearly one third of all living vertebrates [45], is placed in the Triassic (252.2-201.3 Ma) based on mitogenomic age estimates [38],[40]. This suggests that the majority of living fish diversity originated during a period of recovery following the Permian-Triassic mass extinction event (252.2 Ma), with major acanthomorph lineages beginning to radiate throughout the Triassic and Jurassic (201.3-145.0 Ma). By contrast, recent molecular clock analyses using nDNA place the origin of acanthomorphs in the Early Cretaceous, followed by extensive diversification in the Late Cretaceous and early Paleocene [13],[46]-[49]. A comparable timescale has also been estimated by some mitogenomic analyses [50], and is more consistent with patterns in the fossil record [44],[51]-[53] than the early Mesozoic acanthomorph radiation implied by other studies. As actinopterygians comprise half of all living backboned animals, including several model organisms and species of great economic importance, understanding the timing of their diversification provides critical insight into the evolutionary history of vertebrates.

Disagreement between mtDNA and nDNA estimates is not directionally consistent, i.e., many mtDNA estimates are older than nDNA counterparts, but there are examples of the opposite pattern [13],[48],[50], and discordant timescales might also arise from other factors that differ between analyses: the selection and placement of calibrations, the clock models applied, and the taxa sampled. However, this study seeks to fix, as completely as possible, these other variables, and explore the impact that different sequence data have on estimation of evolutionary timescales. We evaluate phylogenetic informativeness (PI) profiles [36] for gene sequences sampled among major actinopterygian lineages and demonstrate that is not necessary to attribute divergent molecular age estimates to issues in modeling of paleontological data as calibration age priors as previsouly suggested [13]. Instead, the divergent estimates can be attributed to levels of homoplasy in the mtDNA and nuclear gene datasets that distort inferences at different time scales. By removing data partitions that are saturated, we reconcile divergent molecular age estimates for actinopterygians, bringing these more in line with ages implied by the fossil record. These results demonstrate that selection of sequence data appropriate for the time scale of inferences is as important as the selection of calibrations and molecular clock models for divergence time estimation.

Results

Information-theoretic based searches of partitioning strategies found 11 and 14 partitions as the best fit for the mtDNA (Table 1) and nuclear DNA (nDNA; Table 2) datasets respectively. Molecular age estimates between sets of analyses with differing calibration schemes were very similar (Figures 1 and 2; Additional file 1: Table S1 and S2) and substantially outside of the prior expectations (Figure 1). As manipulation of the calibration age priors to reflect potential uncertainties in the fossil record had a minimal influence on trends in the resulting molecular age estimates, we restrict discussion to the most calibration-rich analysis here. Regardless of calibration strategy, molecular dating analyses of the mtDNA and nDNA datasets including all data partitions resulted in very different posterior age estimates, with the mtDNA posterior age estimates generally being much older and exclusive of the 95% highest posterior density interval (HPD) for many nDNA estimates (Figures 1 and 2). Estimated ages were most consistent towards the root of the tree, with higher uncertainty in the mtDNA estimates. The HPD of the estimated age from the mtDNA analysis for the most recent common ancestor (MRCA) of actinopterygians ranged between 383 and 416 Ma (mean: 395 Ma [Middle Devonian]) similar to the HPD of ages for this node in the nDNA analysis, which ranged between 383 and 399 Ma (mean: 389 Ma [Middle Devonian]; Figure 1). In contrast, instances of discordance between the mtDNA and nDNA age estimates were more extreme within acanthomorphs. For example, the HPD for the MRCA of Tetraodontidae and Diodontidae (pufferfishes) ranged between 50 and 57 Ma (mean: 52 Ma [Eocene]) in the nDNA analyses, whereas the HPD ranged between 149 to 179 Ma (mean: 164 Ma [Middle Jurassic]) in the mtDNA analyses (Figure 1). Similarly, the HPD for the MRCA of Fundulus and Gambusia ranged between 124 and 160 Ma (mean: 141 Ma [Early Cretaceous]) in the mtDNA analyses, compared to an HPD between 29 and 46 Ma in the nDNA analyses (mean: 37 Ma [Eocene]; Figure 1).

Table 1 Best-fit nucleotide substitution models and partition strategies identified by PartitionFinder and peaks of phylogenetic informativeness for mtDNA
Table 2 Best-fit nucleotide substitution models and partition strategies identified by PartitionFinder and peaks of phylogenetic informativeness for nDNA
Figure 1
figure 1

Comparison of the estimated 95% HPD interval for five example contrasts of mtDNA and nDNA age estimates from all data, those from datasets pruned of the saturated partitions, and the prior age expectation based on the effective prior (*analysis run without sequence data): Acanthomorpha (spiny-rayed fishes); MRCA Fundulidae and Poeciliidae (topminnows and livebearers); MRCA African and American cichlids, MRCA Tetraodontidae and Diodontidae (smooth and spiny puffers), and Actinopterygii (ray-finned fishes). Lines indicate bounds of the 95% HPD interval, circles correspond to mean age estimates.

Figure 2
figure 2

Comparison of mtDNA and nDNA chronograms for actinopterygians. Ages were estimated by analyzing A) all data and B) analyzing data that excluded saturated partitions. Bars indicate 95% HPD intervals of age estimates. Light bars indicate posterior probabilities greater than 0.95. Gray bars indicate posterior probabilities below 0.95. Phylogenetic informativeness profiles for both datasets are shown adjacent to the associated chronograms. Colors identify individual partitions. C) Comparison of mtDNA mean age estimates for all nodes when all data is used and the mean ages from the pruned dataset. D) Comparison of nDNA mean age estimates for all nodes when all data is used and the mean ages from the pruned dataset.

The phylogenetic informativeness profile of several mtDNA partitions peaked prior to the majority of nodes present in the tree (Figure 2A; Table 1), and the shapes of the PI profiles for each individual codon position were similar within partitions (Figure 3). Higher profiles of PI indicate greater utility for phylogenetic inference. However, a decline of PI profile following the peak is indicative of a “rainshadow of noise”, reflecting an increased probability that numerous hidden substitutions have accumulated that can mislead phylogenetic inference [37]. While the informativeness profiles of the nuclear gene partitions also exhibited a signature of homoplasy (Table 2) and conservation of PI profile shape within partitions (Figure 4), these declines were much less severe than those observed for the mtDNA partitions (Figure 2A). Removal of nucleotide data partitions with PI profiles that exhibit greater than a five percent decay of informativeness from the PI profile peak prior to the Cretaceous-Jurassic boundary (145.0 Ma) from the subsequent relaxed molecular clock analyses removed 7354 individual sites (Table 1) and resulted in substantial changes to the posterior age estimates using mtDNA (Figures 2B and 5). Indeed, almost all estimated ages from the mtDNA dataset after pruning of saturated data partitions shifted between 50 and 100 million years towards the present (Figures 2C and 5B). In contrast, removal of the saturated nDNA data partitions resulted in a removal of 2710 individual sites (Table 2) that had less effect on divergence time estimates (Figures 2D and 5). This global shift in node age estimates undermines support for a more ancient timescale of ray-finned fish evolution, instead reconciling the divergence time estimates generated by the two datasets. While analysis of the complete mtDNA dataset estimated the bulk of extant ray-finned fish lineages to have originated in the Jurassic (Figures 2A and 5), analysis of datasets pruned of saturated partitions shifted the majority of these estimates into the Cretaceous (145.0-66.0 Ma), and Paleogene (Figures 2B and 5). For example the HPD estimated from the pruned mtDNA analysis for the MRCA of acanthomorphs shifted to a range between 112 and 179 Ma (mean: 145 Ma [Early Cretaceous]). This result is congruent with the HPD of 108–135 Ma based on nDNA (mean: 122 Ma; Figure 2B), but substantially deviates from the HPD of 223–254 Ma estimated using the full mtDNA dataset (mean: 238 Ma [Late Triassic]; Figure 2A). This shift in estimated ages was also observed in younger clades. For instance, the HPD of 34–89 Ma (mean: 50 Ma [Eocene]), estimated from the pruned mtDNA analysis for the MRCA of sticklebacks and eelpouts undermines the credibility for the original estimated HPD of 109–149 Ma (mean: 129 Ma [Early Cretaceous]) obtained from the full mtDNA dataset. Instead this result now largely overlaps with the nDNA-based age HPD of 33–58 Ma (Mean: 45 Ma [Eocene-Paleocene]; Figure 2B).

Figure 3
figure 3

Visualizations of the individual phylogenetic informativeness profiles for each codon position in the mtDNA dataset. Inset letters (A-N) correspond to data partitions (1–14) in Table 1.

Figure 4
figure 4

Visualizations of the individual phylogenetic informativeness profiles for each relative codon position in the nDNA dataset. The first frame of each relative codon position corresponds to starting position of each gene in the Near et al. [48] alignment. Inset letters ( A-L) correspond to data partitions (1–11) in Table 2.

Figure 5
figure 5

Comparison of means and 95% HPD intervals for mtDNA and nDNA based posterior age estimates, (A) when all data from each dataset is included, and (B) when partitions are excluded from each dataset based on their PI profile. Black circles indicate mean age estimates, gray and blue bars respectively indicate the 95% HPD interval of the mtDNA and nDNA based analyses.

Discussion

The timescale of ray-finned fish evolution

Discordance between the older mtDNA age estimates and the more recent nDNA based estimates have been attributed to a lack of shared calibrations between mtDNA and nDNA based studies [13]. However, despite using identical calibrations between datasets, our mtDNA based estimates still support an origin of most major lineages in the Jurassic (Figure 2A). These results are similar to some previous mtDNA based studies [38], and are in direct opposition with patterns of fossil richness that depict a radiation of living actinopterygian, particularly species-rich acanthomorph, lineages in the Cretaceous [44],[52],[54],[55]. These ages are also at odds with our nDNA based age estimates, which more closely match paleontological expectations within acanthomorphs (Figure 2A). We therefore find little support that calibration choice is the primary driver of discordant age estimates between these datasets.

Instead, PI profiles show that for deep divergences more than half of the identified mtDNA protein-coding gene partitions predict potentially misleading saturation (Figures 2A and 3). Saturation of mitogenomic data has been suggested to bias topological inferences in ray-finned fishes [56]. Removal of partitions exhibiting predicted saturation resulted in a topological rearrangement that greatly diminished support for relationships that differed from the nDNA based topology globally. Even when taking uncertainty in phylogenetic relationships into account, removal of saturated partitions resulted in a consistent shift in age estimates by as much as 100 My towards the present for almost all nodes in the tree (Figure 1), with 95% HPD intervals overlapping between nDNA and mtDNA based estimates (Figure 5). In contrast, removal of noisy partitions from the nDNA analysis had a neglible affect on the resulting divergence times, as would be predicted by the shallow decline in the PI profiles (Table 2; Figure 4).

This reconciliation of the ray-finned fish evolutionary timeline contributes to a strengthened historical framework that promises new insights into the evolutionary processes that generate and maintain aquatic biodiversity. Our finding suggests that at least some of the discordance surrounding actinopterygian divergence time estimates [12]-[14],[38],[40],[57],[58] can be explained by branch length estimation biases. However, this finding should not be viewed as a problem restricted to mtDNA or as a general phenomenon in which saturation always results in older age estimates. The latter is certainly not true, as Phillips [59] demonstrated that depending on the calibration placement and the character state patterns of saturated sites, nucleotide saturation can result in either tree extension or compression.

Deep time mitogenomic studies of fishes also do not always conflict with nDNA based studies. For example, in a mitogenomic study by Miya et al. [50], a large range of sampled acanthomorph lineages have divergence time estimates that overlap between nDNA based [46]-[49] and reject previous mtDNA based analyses [40]. This reversal of conflict is partially explained for two reasons. First, our informativeness profiles show partitions of the fish mitochondrial genome to be more informative at recent timescales (Figure 3), and Miya et al. [50] limited their taxon sampling to only 30% of the timescale sampled by Miya et al. [40]. Second, this study excluded the gene nd6, from which we also exclude two thirds of codon positions in this study (Table 2), and recoded transitional changes (changes within purines or pyrimidines) to a single state in an effort to exclude saturated sites [50]. Although Miya et al. [40] also attempted to mitigate the influence of saturation by excluding third codon positions, our results highlight rates of molecular evolution do not always conform to codon positions and that informativeness for some first and second positions also declines over deep timescales (Figure 3).

Our reconciliation of the timeline of ray-finned fish diversification adds support for the growing consensus that the patterns of species richness observed in living fishes are largely the product of diversification during the late Mesozoic and Cenozoic [13],[47],[48],[53],[58],[60]. Much of the diversity of living fishes can be attributed to the success of acanthomorphs, which comprise roughly one in every three vertebrate species. Understanding the timeline underlying this group is therefore not only critical to investigations of the evolution of fish biodiversity, but also to investigations of vertebrate evolution in general. Although there is still conflict between divergence times estimated for acanthomorph clades such as tetraodontiforms [11],[15],[48],[49],[61]-[63], cichlids [47],[48],[64],[65], and notothenioids [48],[66],[67], uncertainties surrounding competing mean age estimates typically show broad overlap between the majority of studies. This is encouraging and suggests convergence on a robust temporal framework from which to unlock the mode and tempo of diversification in this spectacular group of vertebrates.

Profiling phylogenetic informativeness

Recognition that convergence in nucleotide character states, or saturation, diminishes the utility of gene sequences for phylogenetic inference at deeper evolutionary time scales is not new [29],[31],[33],[35],[68]-[70], and multiple approaches exist to assess when homoplasy has or will critically influence phylogenetic inferences. These include saturation plots [31],[33], RY coding variable characters [71],[72], down weighting characters [72],[73], and site removal [70],[74]. However, the development of a predictive framework that facilitates careful scrutiny of the power of diverse datasets to resolve phylogenetic problems has only recently begun [36],[75]-[77]. Our finding that PI profiles predict the temporal optimality of markers for providing branch length estimates identifies a useful heuristic framework for assessing the credibility of existing age estimates.

While discordance in molecular age estimates is frequently attributed to factors such as differential application of fossil-based age constraints [78]-[81], suitable modeling of paleontological calibration data [18]-[20], nucleotide substitution rate heterogeneity [25],[26],[82], or differences between molecular clock models [27],[83]-[85], our results demonstrate that the choice of molecular markers can also drive discordance when identical analysis conditions are employed. Although our study focuses on largely on mitochondrial genes because these have been found to have a nucleotide substitution rate much higher than nuclear exons commonly used in phylogenetic studies of many vertebrate clades [86]-[88], this is not a universal pattern across the tree of life [89]-[92]. Nucleotide saturation is a feature often observed in next-generation phylogenomic datasets [73],[93]-[96].

By utilizing phylogenetic informativeness approaches to identify data partitions characterized by saturation and homoplasy, much of the discordance between mtDNA and nDNA datasets is reconciled (Figure 2). It should be noted that this reconciliation does not always guarantee a one-to-one mapping of divergence time estimates between analyses nor does it predict how changes in the analytical conditions will influence posterior age estimates. For example, our exclusion of a prior age calibration for the MRCA of African and New World cichlids or stem Tetraodontiformes resulted in a shift to slightly older ages when using the pruned mtDNA dataset while not having a pronounced affect on the distribution of the global node ages inferred in nDNA based analyses (Additional file 2: Figure S1 and Additional file 3: Figure S2). However, in this case differences between age estimates were minor, with the removal of saturated data partitions having a far greater impact on resulting age estimates.

Phylogenetic informativeness approaches facilitate a diagnosis of when to expect a rise in homoplasious site patterns, offering an objective criterion for screening data by its utility for molecular divergence time estimation. As phylogenetic datasets become “phylogenomic” in scale [97], development of these approaches becomes essential for the selection of loci that will not be misleading from potentially hundreds of markers [98]. Our results demonstrate that for age-estimation just as for phylogenetic inference [99], more data alone is not enough. While adding more data can provide novel insights into the evolutionary patterns that underlie the Tree of Life [100], more data alone does not render an analysis immune from methodological artifacts such as homoplasy [73],[94],[99],[101]-[103]. As divergence time estimates rely on calibrated substitution rate estimates our results underscore that it is necessary to diagnose the effects of saturation and homoplasy at different time scales, even as hundreds, if not thousands, of loci become applied to dating the Genomic Tree of Life.

Conclusions

We demonstrate that even with identical calibration regimes and molecular clock methods, the influence of homoplasy has a pronounced affect on divergence time estimates. We also demonstrate the utility of PI profiles for providing a much-needed non-arbitrary criterion for data exclusion. By extending the utility of PI profiles to this task, we highlight the ability of these methods to assess the robustness of age estimates relative to the frequency of homoplasious character states in the data. Applying this approach to the timescale of ray-finned fish evolution, we reconcile two fundamentally different views on the timescale of aquatic vertebrate diversification by removing partitions deemed saturated. The results obtained by pruning the saturated positions in this manner are more in line with paleontological expectations, suggesting that most major lineages of extant fishes today are Cretaceous in origin rather than emerging subsequent to the Permian-Triassic mass extinction event or the remnants of an ancient Jurassic radiation. Our results suggest that in addition to care in the selection of calibrations and molecular clock models, careful scrutiny of the potentially misleading impact of homoplasious data to be a fundamental component of divergence time estimation.

Methods

Dataset assembly

All of the DNA sequence data used in this study was obtained from Genbank. The ray-finned fish nuclear gene dataset contained 9 nuclear protein-coding genes (zic1, myh6, rag1, ptr, tbr1, Glyt, SH3PX3, plag12, sreb2), sampled from 44 species that included representatives from most of the major ray-finned fish lineages (Additional file 1: Table S1). We contrasted inferences based on the nuclear gene dataset with alignments from 10 protein-coding mtDNA genes (nd1, nd2, COI, CO2, atp8, atp6, COIII, nd5, nd6, and cytb) for representatives of the same major ray-finned fish lineages (Additional file 1: Table S2). Alignments for each mtDNA and nuclear gene were generated using MUSCLE v3.7 [104], then refined by eye using the translated amino acid sequences. Individual gene alignment files were concatenated using Phyutility [105]. For both datasets, we simultaneously assessed optimal partitioning strategies and the fit of potential nucleotide substitution models by comparing Bayesian Information Criterion (BIC) scores calculated using PartitionFinder [106]. Potential partitioning strategies that were compared included all possible gene and codon partition schemes, ranging from a single global partition to allowing each gene and codon position to have their own partition.

Divergence time estimation

We used BEAST v.1.7.5 [107] to infer the marginal posterior distribution of ultrametric trees under a model of uncorrelated rates that follow a lognormal distribution (UCLN) for all analyses. For each BEAST run, we assigned a birth-death prior to rates of cladogenesis [107] and ran four independent Markov Chain Monte Carlo (MCMC) runs between 100 million and 1 billion generations, sampling every 1000–10000 generations. Chains were deemed convergent by visual examination of the chain likelihoods (Additional file 4: Figure S3) in Tracer 1.5 [108]. To ensure adequate mixing of each chain, the effective sample sizes (ESS) for all model parameters were assessed with ESS values above 200 indicating appropriate sampling from the posterior distribution of each parameter.

We enforced the monophyly of several nodes in both sets of analyses, as this constraint greatly decreased the time to convergence in preliminary analysis. The monophyly of Actinopteri relative to Polypterus was enforced based on results of previously published sets of phylogenetic analyses of morphological and molecular data [43],[109]-[111]. Additionally the monophyly of teleosts, euteleosts, neopterygians, otocephalans, acanthopterygians, cyprinodontiforms, tetraodontiforms, cichlids, and acanthomorphs was enforced based on previous phylogenetic analyses [13],[46]-[49],[112],[113].

Divergence time estimates were calibrated in a series of three sets of analyses that used between five and seven calibrations previously utilized in investigations of actinopterygian divergence times [13],[48]-[50],[64]. Applying identical calibrations and analytical conditions to both datasets allowed us to directly investigate the potential for saturation to influence divergence time estimates. Multiple studies have demonstrated that the width of the calibration age prior distribution influences the posterior distribution of Bayesian age estimates [18],[19],[114], and upper bounds on priors were identical to those in Near et al. [13],[48] and Friedman et al. [64] for direct comparison. All analyses were run with and without nucleotide data to assess the influence of the prior on the posterior distribution of age estimates [27].

Paleontological data

Seven potential calibrations based on paleontogical data were taken from Near et al. [13], Near et al. [48], and Friedman et al. [64]. (1) The most recent common ancestor (MRCA) of all crown Actinopterygii was calibrated based on the occurrence of †Mimipiscis toombsi and †Moythomasia durgaringa from the Gogo Formation of Western Australia [111], 382.5 Ma [115]. The 95% prior age interval was set to 419 Ma based on the appearance of †Guiyu oneiros which represents the minimal age for the MRCA of Actinopterygii and Sarcopterygii [116]. (2) Crown-group Actinopteri was calibrated based on the Mississippian taxon, †Cosmoptychius striatus from the Wardie Shales, Lower Oil Shale Group, Scotland [117]. We assigned an absolute age estimate of 325.5 Ma [13],[118] with 95% of the prior interval set to 373 Ma with a soft upper bound, based on the maximum age bracketing approach of Marshall [20]. Although some analyses place †Cosmoptychius within the actinopteran crown [43],[119], others suggest it is a stem actinopteran [111],[120] . The minimum age estimate used by Near et al. [13] and applied here for †Cosmoptychius corresponds to the mid-Serpukhovian of the revised geological timescale [121]. The Serpukhovian †Discoserra is widely recognized as a crown actinopteran [12],[120] , so the age estimate applied here is appropriate regardless of specific placement of †Cosmoptychius. (3) The MRCA of Holostei (Amia and Atractosteus + Lepisosteus in this study) was calibrated based on the appearance of †Watsonulus eugnathoides from the Middle Sakamena Formation of Madagascar [122] with a minimal age of 245.9 Ma [123],[124] and 95% soft upper bound of 311 Ma based on the age of †Mesopoma planti[13],[125]. (4) The stem polymixiiform †Homonotichthys dorsalis from the Cenomanian Lower Chalk of Sussex and Kent, United Kingdom [126] was used to calibrate the MRCA of Polymixiiformes and Percopsiformes with a minimum age of 93.6 Ma and a 95% prior density interval that spanned 99.6 Ma based on the appearance of the putative stem acanthomorphs †Aulolepis, †Ctenothrissa and †Heterothrissa[13],[126],[127]. (5) The MRCA of extant spiny and smooth pufferfishes (Diodontidae and Tetraodontidae) was calibrated based on the appearance of several stem diodontids including †Prodiodon tenuispinus, †P. erinaceus, †Heptadiodon echinus, and †Zignodon fornasieroae from Bolca, Italy [128]. We do not accept the diodontid dentition described by Gallo et al. [129] as a reliable fossil calibration for the divergence between Diodontidae and Tetraodontidae. A Maastrichtian age is proposed for the fossil based on its color and general locality, but there is no record of the geological horizon from which it was collected and no matrix remains adhered to the specimen that might better constrain provenance. Following Near et al. [13] we set the minimum age of this calibration to 50 Ma with 95% of the prior age interval set to 57.3 Ma based on the maximum age bracketting approach of Marshall [20]. For all the above, we utilized lognormal prior age intervals with soft upper bounds allowing ages to be sampled outside the prior distribution of age estimates [130]. We adopted two calibration strategies for the divergence between Tetraodontiformes and Lophiiformes (6). Plectocretacicoidea contains a set of morphologically diverse Late Cretaceous acanthomorphs that have been interpreted as stem tetraodontiforms [131],[132]. The oldest plectocretacicoid, the early Cenomanian Plectocretacicus, has been nominated as a key fossil calibration for animal phylogenies [23],[24]. However, the interpretation of anatomically similar, coeval armoured acanthomorphs from Mexico as beryciforms [133] raises questions about the affinities of Plectocretacicus specifically and plectocretacicoids generally. The youngest plectocretacicoid is Cretatriacanthus, which is best known from the latest Campanian-earliest Maastrichtian of Nardò, Italy. Based on the argumentation given by Friedman et al. [64], we assign this fossil an age of 70.08 Ma. We applied a 95% prior age interval of 109.845 Ma based on the mean of the upper 95% credible intervals for fossil-based estimates of the age of Percomorpha [64]. Significantly, the age of the more commonly used calibration based on Plectocretacicus falls within this prior distribution. In a second set of analyses, we left the split between Lophiiformes and Tetraodontiformes uncalibrated based on perceived ambiguities in the interpretation of putative stem tetraodontiforms. We calibrated (7) the MRCA of African and neotropical cichlids using a minimum age of 46 Ma based on the stratigraphic information in Friedman et al. [64] with 95% of the prior age interval set at 85.625 Ma, which represents the mean of the upper 95% intervals for fossil-based estimates for Cichlidae [64]. This prior encompasses most [48] or all McMahan et al. [134] of the 95% HPD of ages estimates for the African and neotropical cichlid clade reported by recent molecular clock analyses that applied contrasting calibration strategies. Although this cichlid clade shows a geographic pattern congruent with Gondwanan vicariance, paleontological evidence based on both the distribution of cichlid bearing fossil horizons and the stratigraphic ages of closely related lineages reject an ancient origin for cichlids [64], as do fossil-calibrated timetrees that do not assume vicariance a priori [47],[48],[64],[134]. This finding reflects growing concerns that constraining ages based on present day distributions that reflect putative ancient vicariant events may bias our understanding of the evolutionary pathways that underlie the generation of modern biodiversity [135]. To assess the impact of the cichlid calibration on our divergence time estimates, we conducted a set of analyses leaving the divergence between African and neotropical cichlids uncalibrated.

Profiling informativeness

To quantify phylogenetic informativeness (PI) for each dataset, site-specific rates and informativeness profiles were quantified using the program HyPhy in the PhyDesign web interface [136]. For site-rate calculations, we provided the consensus of the posterior distribution of trees resulting from the BEAST analyses and the respective mtDNA or nDNA alignments as inputs. In comparison to the consensus tree, using a subsample of trees from the posterior distribution inferred from each dataset yielded nearly identical PI profiles. PI plots were generated for the data partitions identified by PartitionFinder [106] used in the BEAST analyses, with PI profiles visualized in comparison to the corresponding consensus ultrametric tree. While removing data partitions in which the apex of the PI profile occurrs prior to the root of the tree would be an optimal strategy to limit the increased probability of partitions containing homoplasious site patterns [37], preliminary analyses suggested that this strategy was not feasible for the mitogenomic dataset as this required removal of almost all data. As the primary contention in age estimates between mtDNA and nDNA based analyses concerns whether or not the bulk of living actinopterygian diversity radiated during and after the Cretaceous, partitions whose profiles exhibit a decline from the peak of informativeness of greater than 5% prior to Jurassic-Cretaceous boundary were removed for subsequent analyses.

Availability of supporting data

Xml files and associated tree files are available on Dryad: doi:10.5061/dryad.3rq51 and all sequence data is available on Genbank (http://www.ncbi.nlm.nih.gov/genbank).

Additional files

References

  1. Martin W, Gierl A, Saedler H: Molecular evidence for pre-Cretaceous angiosperm origins. Nature. 1989, 339: 46-48.

    CAS  Google Scholar 

  2. Bell CD, Soltis DE, Soltis PS: The age of the angiosperms: a molecular timescale without a clock. Evolution. 2005, 59 (6): 1245-1258.

    PubMed  CAS  Google Scholar 

  3. Magallon S: Using fossils to break long branches in molecular dating: a comparison of relaxed clocks applied to the origin of angiosperms. Syst Biol. 2010, 59 (4): 384-399.

    PubMed  Google Scholar 

  4. Smith SA, Beaulieu JM, Donoghue MJ: An uncorrelated relaxed-clock analysis suggests an earlier origin for flowering plants. Proc Natl Acad Sci U S A. 2010, 107 (13): 5897-5902.

    PubMed  CAS  PubMed Central  Google Scholar 

  5. Meredith RW, Janecka JE, Gatesy J, Ryder OA, Fisher CA, Teeling EC, Goodbla A, Eizirik E, Simao TLL, Stadler T, Rabosky DL, Honeycutt RL, Flynn JJ, Ingram CM, Steiner C, Williams TL, Robinson TJ, Burk-Herrick A, Westerman M, Ayoub NA, Springer MS, Murphy WJ: Impacts of the Cretaceous Terrestrial Revolution and KPg extinction on mammal diversification. Science. 2011, 334 (6055): 521-524.

    PubMed  CAS  Google Scholar 

  6. Norman JE, Ashley MV: Phylogenetics of perissodactyla and tests of the molecular clock. J Mol Evol. 2000, 50 (1): 11-21.

    PubMed  CAS  Google Scholar 

  7. O'Leary MA, Bloch JI, Flynn JJ, Gaudin TJ, Giallombardo A, Giannini NP, Goldberg SL, Kraatz BP, Luo Z-X, Meng J: The placental mammal ancestor and the post–K-Pg radiation of placentals. Science. 2013, 339 (6120): 662-667.

    PubMed  Google Scholar 

  8. Springer MS, Murphy WJ, Eizirik E, O'Brien SJ: Placental mammal diversification and the Cretaceous-Tertiary boundary. Proc Natl Acad Sci U S A. 2003, 100 (3): 1056-1061.

    PubMed  CAS  PubMed Central  Google Scholar 

  9. Steiper ME, Young NM: Primate molecular divergence dates. Mol Phylogenet Evol. 2006, 41 (2): 384-394.

    PubMed  CAS  Google Scholar 

  10. Theodor JM: Molecular clock divergence estimates and the fossil record of Cetartiodactyla. J Paleontol. 2004, 78 (1): 39-44.

    Google Scholar 

  11. Dornburg A, Santini F, Alfaro ME: The influence of model averaging on clade posteriors: an example using the triggerfishes (Family Balistidae). Syst Biol. 2008, 57 (6): 905-919.

    PubMed  CAS  Google Scholar 

  12. Hurley IA, Mueller RL, Dunn KA, Schmidt EJ, Friedman M, Ho RK, Prince VE, Yang ZH, Thomas MG, Coates MI: A new time-scale for ray-finned fish evolution. Proc R Soc B. 2007, 274 (1609): 489-498.

    PubMed  CAS  PubMed Central  Google Scholar 

  13. Near TJ, Eytan RI, Dornburg A, Kuhn KL, Moore JA, Davis MP, Wainwright PC, Friedman M, Smith WL: Resolution of ray-finned fish phylogeny and timing of diversification. Proc Natl Acad Sci U S A. 2012, 109: 13698-13703.

    PubMed  CAS  PubMed Central  Google Scholar 

  14. Yamanoue Y, Miya M, Inoue JG, Matsuura K, Nishida M: The mitochondrial genome of spotted green pufferfish Tetraodon nigroviridis (Teleostei: Tetraodontiformes) and divergence time estimation among model organisms in fishes. Genes Genet Syst. 2006, 81 (1): 29-39.

    PubMed  CAS  Google Scholar 

  15. Alfaro ME, Santini F, Brock CD: Do reefs drive diversification in marine teleosts? Evidence from the pufferfish and their allies (Order Tetraodontiformes). Evolution. 2007, 61 (9): 2104-2126.

    PubMed  Google Scholar 

  16. Pulquerio MJF, Nichols RA: Dates from the molecular clock: how wrong can we be?. Trends Ecol Evol. 2007, 22 (4): 180-184.

    PubMed  Google Scholar 

  17. Cooper A, Fortey R: Evolutionary explosions and the phylogenetic fuse. Trends Ecol Evol. 1998, 13 (4): 151-156.

    PubMed  CAS  Google Scholar 

  18. Dornburg A, Beaulieu JM, Oliver JC, Near TJ: Integrating fossil preservation biases in the selection of calibrations for molecular divergence time estimation. Syst Biol. 2011, 60 (4): 519-527.

    PubMed  Google Scholar 

  19. Inoue J, Donoghue PCJ, Yang ZH: The impact of the representation of fossil calibrations on Bayesian estimation of species divergence times. Syst Biol. 2010, 59 (1): 74-89.

    PubMed  Google Scholar 

  20. Marshall CR: A simple method for bracketing absolute divergence times on molecular phylogenies using multiple fossil calibration points. Am Nat. 2008, 171 (6): 726-742.

    PubMed  Google Scholar 

  21. Ho SYW, Phillips MJ: Accounting for calibration uncertainty in phylogenetic estimation of evolutionary divergence times. Syst Biol. 2009, 58 (3): 367-380.

    PubMed  Google Scholar 

  22. Marshall CR: The fossil record and estimating divergence times between lineages: maximum divergence times and the importance of reliable phylogenies. J Mol Evol. 1990, 30: 400-408.

    PubMed  CAS  Google Scholar 

  23. Benton MJ, Donoghue PCJ: Paleontological evidence to date the tree of life. Mol Biol Evol. 2007, 24 (1): 26-53.

    PubMed  CAS  Google Scholar 

  24. Benton MJ, Donoghue PCJ, Asher RJ: Calibrating and constraining molecular clocks. The Timetree of Life. Edited by: Hedges SB, Kumar S. 2009, Oxford University Press, Oxford, 35-86.

    Google Scholar 

  25. Dornburg A, Brandley MC, McGowen MR, Near TJ: Relaxed clocks and inferences of heterogeneous patterns of nucleotide substitution and divergence time estimates across whales and dolphins (Mammalia: Cetacea). Mol Biol Evol. 2012, 29 (2): 721-736.

    PubMed  CAS  Google Scholar 

  26. Soltis PS, Soltis DE, Savolainen V, Crane PR, Barraclough TG: Rate heterogeneity among lineages of tracheophytes: integration of molecular and fossil data and evidence for molecular living fossils. Proc Natl Acad Sci U S A. 2002, 99 (7): 4430-4435.

    PubMed  CAS  PubMed Central  Google Scholar 

  27. Drummond AJ, Ho SYW, Phillips MJ, Rambaut A: Relaxed phylogenetics and dating with confidence. PLoS Biol. 2006, 4 (5): 699-710.

    CAS  Google Scholar 

  28. Ho SYW, Larson G: Molecular clocks: when times are a-changin'. Trends Genet. 2006, 22 (2): 79-83.

    PubMed  CAS  Google Scholar 

  29. Igawa T, Kurabayashi A, Usuki C, Fujii T, Sumida M: Complete mitochondrial genomes of three neobatrachian anurans: a case study of divergence time estimation using different data and calibration settings. Gene. 2008, 407 (1): 116-129.

    PubMed  CAS  Google Scholar 

  30. Brandley MC, Wang Y, Guo X, Nieto Montes De Oca A, Feria-Ortiz M, Hikida T, Ota H: Accommodating heterogenous rates of evolution in molecular divergence dating methods: an example using intercontinental dispersal of Plestiodon (Eumeces) lizards. Syst Biol. 2011, 60: 3-15.

    PubMed  CAS  Google Scholar 

  31. Xia XH, Xie Z, Salemi M, Chen L, Wang Y: An index of substitution saturation and its application. Mol Phylogenet Evol. 2003, 26 (1): 1-7.

    PubMed  CAS  Google Scholar 

  32. Yang Z: Among-site rate variation and its impact on phylogenetic analyses. Trends Ecol Evol. 1996, 11: 367-372.

    PubMed  CAS  Google Scholar 

  33. Graybeal A: Evaluating the phylogenetic utility of genes: a search for genes informative about deep divergences among vertebrates. Syst Biol. 1994, 43 (2): 174-193.

    Google Scholar 

  34. Moritz C, Schneider CJ, Wake DB: Evolutionary relationships within the Ensatina eschscholtzii complex confirm the ring species interpretation. Syst Biol. 1992, 41: 273-291.

    Google Scholar 

  35. Xia X, Lemey P: Assessing Substitution Saturation With DAMBE. In The Phylogenetic Handbook: a Practical Approach to Phylogenetic Analysis and Hypothesis Testing. Edited by Philippe L, Marco S, Anne-Mieke V. Cambridge University Press; 2009:611–626.

  36. Townsend JP: Profiling phylogenetic informativeness. Syst Biol. 2007, 56 (2): 222-231.

    PubMed  CAS  Google Scholar 

  37. Townsend JP, Leuenberger C: Taxon sampling and the optimal rates of evolution for phylogenetic inference. Syst Biol. 2011, 60: 358-365.

    PubMed  Google Scholar 

  38. Azuma Y, Kumazawa Y, Miya M, Mabuchi K, Nishida M: Mitogenomic evaluation of the historical biogeography of cichlids toward reliable dating of teleostean divergences. BMC Evol Biol. 2008, 8 (1): 215-

    PubMed  PubMed Central  Google Scholar 

  39. Zhang P, Wake DB: Higher-level salamander relationships and divergence dates inferred from complete mitochondrial genomes. Mol Phylogenet Evol. 2009, 53 (2): 492-508.

    PubMed  CAS  Google Scholar 

  40. Miya M, Pietsch TW, Orr JW, Arnold RJ, Satoh TP, Shedlock AM, Ho HC, Shimazaki M, Yabe M, Nishida M: Evolutionary history of anglerfishes (Teleostei: Lophiiformes): a mitogenomic perspective. BMC Evol Biol. 2010, 10 (1): 58-

    PubMed  PubMed Central  Google Scholar 

  41. Yamanoue Y, Miya M, Doi H, Mabuchi K, Sakai H, Nishida M: Multiple invasions into freshwater by pufferfishes (teleostei: tetraodontidae): a mitogenomic perspective. Plos One. 2011, 6 (2): e17410-

    PubMed  CAS  PubMed Central  Google Scholar 

  42. Zheng Y, Peng R, Kuro-O M, Zeng X: Exploring patterns and extent of bias in estimating divergence time from mitochondrial DNA sequence data in a particular lineage: a case study of salamanders (Order Caudata). Mol Biol Evol. 2011, 28 (9): 2521-2535.

    PubMed  CAS  Google Scholar 

  43. Gardiner BG: The relationships of the palaeoniscid fishes, a review based on new specimens of Mimia and Moythomasia from Upper Devonian of Western Australia. Bull Brit Mus (Nat Hist) Geol. 1984, 37 (4): 173-428.

    Google Scholar 

  44. Friedman M, Sallan LC: Five hundred million years of extinction and recovery: a Phanerozoic survey of large-scale diversity patterns in fishes. Palaeontology. 2012, 55: 707-742.

    Google Scholar 

  45. Nelson JS: Fishes of the World, 4th Edition. 2006, John Wiley, Hoboken

    Google Scholar 

  46. Alfaro ME, Santini F, Brock C, Alamillo H, Dornburg A, Rabosky DL, Carnevale G, Harmon LJ: Nine exceptional radiations plus high turnover explain species diversity in jawed vertebrates. Proc Natl Acad Sci U S A. 2009, 106 (32): 13410-13414.

    PubMed  CAS  PubMed Central  Google Scholar 

  47. Betancur-R R, Broughton RE, Wiley EO, Carpenter K, López JA, Li C, Holcroft NI, Arcila D, Sanciangco M, Cureton JC II: The tree of life and a new classification of bony fishes.PLoS Currents 2013, 5:.,

  48. Near TJ, Dornburg A, Eytan RI, Keck BP, Smith WL, Kuhn KL, Moore JA, Price SA, Burbrink FT, Friedman M: Phylogeny and tempo of diversification in the superradiation of spiny-rayed fishes. Proc Natl Acad Sci. 2013, 110 (31): 12738-12743.

    PubMed  CAS  PubMed Central  Google Scholar 

  49. Santini F, Harmon LJ, Carnevale G, Alfaro ME: Did genome duplication drive the origin of teleosts? A comparative study of diversification in ray-finned fishes. BMC Evol Biol. 2009, 9: 164-

    Google Scholar 

  50. Miya M, Friedman M, Satoh TP, Takeshima H, Sado T, Iwasaki W, Yamanoue Y, Nakatani M, Mabuchi K, Inoue JG: Evolutionary origin of the scombridae (tunas and mackerels): members of a paleogene adaptive radiation with 14 other pelagic fish families. PLoS One. 2013, 8 (9): e73535-

    PubMed  CAS  PubMed Central  Google Scholar 

  51. Blieck A: From adaptive radiations to biotic crises in Palaeozoic vertebrates: a geobiological approach. Geologica Belgica. 2011, 14 (3–4): 203-227.

    Google Scholar 

  52. Friedman M: Explosive morphological diversification of spiny-finned teleost fishes in the aftermath of the end-Cretaceous extinction. Proc R Soc B. 2010, 277 (1688): 1675-1683.

    PubMed  PubMed Central  Google Scholar 

  53. Lloyd GT, Friedman M: A survey of palaeontological sampling biases in fishes based on the phanerozoic record of Great Britain. Palaeogeogr Palaeoclimat Palaecol. 2012, 372: 5-17.

    Google Scholar 

  54. Cavin L, Forey PL: Using ghost lineages to identify diversification events in the fossil record. Biol Lett. 2007, 3 (2): 201-204.

    PubMed  PubMed Central  Google Scholar 

  55. Cavin L, Forey PL, Lecuyer C: Correlation between environment and late mesozoic ray-finned fish evolution. Palaeogeogr Palaeoclimat Palaecol. 2007, 245 (3–4): 353-367.

    Google Scholar 

  56. Broughton RE, Broughton RE: Phylogeny of Teleosts Based on Mitochondrial Sequences. Origin and Phylogenetic Interrelationships of Teleosts. Edited by: Nelson JS, Schultze H-P, Schultze H-P, Wilson MVH. 2010, Verlag Dr. Friedrich Pfeil, Munchen, 61-76.

    Google Scholar 

  57. Inoue JG, Miya M, Venkatesh B, Nishida M: The mitochondrial genome of Indonesian coelacanth Latimeria menadoensis (Sarcopterygii: Coelacanthiformes) and divergence time estimation between the two coelacanths. Gene. 2005, 349: 227-235.

    PubMed  CAS  Google Scholar 

  58. Near TJ, Dornburg A, Tokita M, Suzuki D, Brandley MC, Friedman M: Boom and bust: ancient and recent diversification in bichirs (polypteridae: actinopterygii), a relictual lineage of ray‐finned fishes. Evolution. 2013, 68 (4): 1014-1026.

    Google Scholar 

  59. Phillips MJ: Branch-length estimation bias misleads molecular dating for a vertebrate mitochondrial phylogeny. Gene. 2009, 441 (1): 132-140.

    PubMed  CAS  Google Scholar 

  60. Sallan LC, Friedman M: Heads or tails: staged diversification in vertebrate evolutionary radiations. Proc R Soc B. 2012, 279 (1735): 2025-2032.

    PubMed  PubMed Central  Google Scholar 

  61. Dornburg A, Sidlauskas B, Santini F, Sorenson L, Near TJ, Alfaro ME: The influence of an innovative locomotor strategy on the phenotypic diversification of triggerfish (family: balistidae). Evolution. 2011, 65 (7): 1912-1926.

    PubMed  Google Scholar 

  62. Santini F, Sorenson L, Alfaro ME: A new multi-locus timescale reveals the evolutionary basis of diversity patterns in triggerfishes and filefishes (Balistidae, Monacanthidae; Tetraodontiformes). Mol Phylogenet Evol. 2013, 69 (1): 165-176.

    PubMed  Google Scholar 

  63. Santini F, Sorenson L, Marcroft T, Dornburg A, Alfaro ME: A multilocus molecular phylogeny of boxfishes (Aracanidae, Ostraciidae; Tetraodontiformes). Mol Phylogenet Evol. 2013, 66 (1): 153-160.

    PubMed  Google Scholar 

  64. Friedman M, Keck BP, Dornburg A, Eytan RI, Martin CH, Hulsey CD, Wainwright PC, Near TJ: Molecular and fossil evidence place the origin of cichlid fishes long after Gondwanan rifting. Proceedings of the Royal Society B: Biological Sciences. 2013, 280 (1770): 20131733-

    PubMed  PubMed Central  Google Scholar 

  65. López Fernández H, Arbour JH, Winemiller K, Honeycutt RL: Testing for ancient adaptive radiations in Neotropical cichlid fishes. Evolution. 2013, 67 (5): 1321-1337.

    PubMed  Google Scholar 

  66. Matschiner M, Hanel R, Salzburger W: On the origin and trigger of the notothenioid adaptive radiation. Plos One. 2011, 6 (4): e18911-

    PubMed  CAS  PubMed Central  Google Scholar 

  67. Near TJ, Dornburg A, Kuhn KL, Eastman JT, Pennington JN, Patarnello T, Zane L, Fernandez DA, Jones CD: Ancient climate change, antifreeze, and the evolutionary diversification of Antarctic fishes. Proc Natl Acad Sci U S A. 2012, 109 (9): 3434-3439.

    PubMed  CAS  PubMed Central  Google Scholar 

  68. Graybeal A: The phylogenetic utility of cytochrome b: lessons from bufonid frogs. Mol Phylogenet Evol. 1993, 2: 256-269.

    PubMed  CAS  Google Scholar 

  69. Blouin MS, Yowell CA, Courtney CH, Dame JB: Substitution bias, rapid saturation, and the use of mtDNA for nematode systematics. Mol Biol Evol. 1998, 15 (12): 1719-1727.

    PubMed  CAS  Google Scholar 

  70. Pratt RC, Gibb GC, Morgan-Richards M, Phillips MJ, Hendy MD, Penny D: Toward resolving deep Neoaves phylogeny: data, signal enhancement, and priors. Mol Biol Evol. 2009, 26 (2): 313-326.

    PubMed  CAS  Google Scholar 

  71. Phillips MJ, Penny D: The root of the mammalian tree inferred from whole mitochondrial genomes. Mol Phylogenet Evol. 2003, 28 (2): 171-185.

    PubMed  CAS  Google Scholar 

  72. Honeycutt RL, Adkins RM: Higher level systematics of eutherian mammals: an assessment of molecular characters and phylogenetic hypotheses. Annu Rev Ecol Syst. 1993, 24: 279-305.

    Google Scholar 

  73. Jeffroy O, Brinkmann H, Delsuc F, Philippe H: Phylogenomics: the beginning of incongruence?. Trends Genet. 2006, 22 (4): 225-231.

    PubMed  CAS  Google Scholar 

  74. Morgan-Richards M, Trewick SA, Bartosch-Härlid A, Kardailsky O, Phillips MJ, McLenachan PA, Penny D: Bird evolution: testing the Metaves clade with six new mitochondrial genomes. BMC Evol Biol. 2008, 8 (1): 20-

    PubMed  PubMed Central  Google Scholar 

  75. Townsend JP, Lopez-Giraldez F: Optimal selection of gene and ingroup taxon sampling for resolving phylogenetic relationships. Syst Biol. 2010, 59 (4): 446-457.

    PubMed  CAS  Google Scholar 

  76. Townsend JP, Lopez-Giraldez F, Friedman R: The phylogenetic informativeness of nucleotide and amino acid sequences for reconstructing the vertebrate tree. J Mol Evol. 2008, 67 (5): 437-447.

    PubMed  CAS  Google Scholar 

  77. Townsend JP, Su Z, Tekle YI: Phylogenetic signal and noise: predicting the power of a data set to resolve phylogeny. Syst Biol. 2012, 61 (5): 835-849.

    PubMed  CAS  Google Scholar 

  78. Doyle JA, Donoghue MJ: Phylogenies and angiosperm diversification. Paleobio. 1993, 19 (2): 141-167.

    Google Scholar 

  79. Near TJ, Meylan PA, Shaffer HB: Assessing concordance of fossil calibration points in molecular clock studies: an example using turtles. Am Nat. 2005, 165 (2): 137-146.

    PubMed  Google Scholar 

  80. Pyron RA: A likelihood method for assessing molecular divergence time estimates and the placement of fossil calibrations. Syst Biol. 2010, 59 (2): 185-194.

    PubMed  CAS  Google Scholar 

  81. Rutschmann F, Eriksson T, Abu Salim K, Conti E: Assessing calibration uncertainty in molecular dating: the assignment of fossils to alternative calibration points. Syst Biol. 2007, 56 (4): 591-608.

    PubMed  CAS  Google Scholar 

  82. Drummond AJ, Suchard MA: Bayesian random local clocks, or one rate to rule them all. BMC Biol. 2010, 8: 114-

    PubMed  PubMed Central  Google Scholar 

  83. Aris-Brosou S, Yang ZH: Effects of models of rate evolution on estimation of divergence dates with special reference to the metazoan 18S ribosomal RNA Phylogeny. Syst Biol. 2002, 51 (5): 703-714.

    PubMed  Google Scholar 

  84. Lepage T, Bryant D, Philippe H, Lartillot N: A general comparison of relaxed molecular clock models. Mol Biol Evol. 2007, 24 (12): 2669-2680.

    PubMed  CAS  Google Scholar 

  85. Yoder AD, Yang Z: Estimation of primate speciation dates using local molecular clocks. Mol Biol Evol. 2000, 17 (7): 1081-1090.

    PubMed  CAS  Google Scholar 

  86. Brown WM, George M, Wilson AC: Rapid evolution of animal mitochondrial DNA. Proc Natl Acad Sci. 1979, 76 (4): 1967-1971.

    PubMed  CAS  PubMed Central  Google Scholar 

  87. Jiang ZJ, Castoe TA, Austin CC, Burbrink FT, Herron MD, McGuire JA, Parkinson CL, Pollock DD: Comparative mitochondrial genomics of snakes: extraordinary substitution rate dynamics and functionality of the duplicate control region. BMC Evol Biol. 2007, 7 (1): 123-

    PubMed  PubMed Central  Google Scholar 

  88. Wolfe KH, Li W-H, Sharp PM: Rates of nucleotide substitution vary greatly among plant mitochondrial, chloroplast, and nuclear DNAs. Proc Natl Acad Sci. 1987, 84 (24): 9054-9058.

    PubMed  CAS  PubMed Central  Google Scholar 

  89. Smith DR, Arrigo KR, Alderkamp A-C, Allen AE: Massive difference in synonymous substitution rates among mitochondrial, plastid, and nuclear genes of < i > Phaeocystis</i > algae. Mol Phylogenet Evol. 2014, 71: 36-40.

    PubMed  CAS  Google Scholar 

  90. Shearer T, Van Oppen M, Romano S, Wörheide G: Slow mitochondrial DNA sequence evolution in the Anthozoa (Cnidaria). Mol Ecol. 2002, 11 (12): 2475-2487.

    PubMed  CAS  Google Scholar 

  91. Hellberg ME: No variation and low synonymous substitution rates in coral mtDNA despite high nuclear variation. BMC Evol Biol. 2006, 6 (1): 24-

    PubMed  PubMed Central  Google Scholar 

  92. Chen I-P, Tang C-Y, Chiou C-Y, Hsu J-H, Wei NV, Wallace CC, Muir P, Wu H, Chen CA: Comparative analyses of coding and noncoding DNA regions indicate that Acropora (Anthozoa: Scleractina) possesses a similar evolutionary tempo of nuclear vs. mitochondrial genomes as in plants. Marine Biotechnol. 2009, 11 (1): 141-152.

    CAS  Google Scholar 

  93. Dávalos LM, Perkins SL: Saturation and base composition bias explain phylogenomic conflict in < i > Plasmodium</i>. Genomics. 2008, 91 (5): 433-442.

    PubMed  Google Scholar 

  94. Pick K, Philippe H, Schreiber F, Erpenbeck D, Jackson D, Wrede P, Wiens M, Alié A, Morgenstern B, Manuel M: Improved phylogenomic taxon sampling noticeably affects nonbilaterian relationships. Mol Biol Evol. 2010, 27 (9): 1983-1987.

    PubMed  CAS  PubMed Central  Google Scholar 

  95. Chiari Y, Cahais V, Galtier N, Delsuc F: Phylogenomic analyses support the position of turtles as the sister group of birds and crocodiles (Archosauria). BMC Biol. 2012, 10 (1): 65-

    PubMed  PubMed Central  Google Scholar 

  96. Parks M, Cronn R, Liston A: Separating the wheat from the chaff: mitigating the effects of noise in a plastome phylogenomic data set from Pinus L. (Pinaceae). BMC Evol Biol. 2012, 12 (1): 100-

    PubMed  PubMed Central  Google Scholar 

  97. Lemmon AR, Emme SA, Lemmon EM: Anchored hybrid enrichment for massively high-throughput phylogenomics. Syst Biol. 2012, 61 (5): 727-744.

    PubMed  CAS  Google Scholar 

  98. Faircloth BC, Chang J, Alfaro ME: TAPIR enables high-throughput estimation and comparison of phylogenetic informativeness using locus-specific substitution models.arXiv preprint arXiv:12021215 2012, 1215.,

  99. Philippe H, Brinkmann H, Lavrov DV, Littlewood DTJ, Manuel M, Worheide G, Baurain D: Resolving difficult phylogenetic auestions: why more sequences are not enough. PLoS Biol. 2011, 9 (3): e1000602-

    PubMed  CAS  PubMed Central  Google Scholar 

  100. Dunn CW, Hejnol A, Matus DQ, Pang K, Browne WE, Smith SA, Seaver E, Rouse GW, Obst M, Edgecombe GD: Broad phylogenomic sampling improves resolution of the animal tree of life. Nature. 2008, 452 (7188): 745-749.

    PubMed  CAS  Google Scholar 

  101. Delsuc F, Brinkmann H, Philippe H: Phylogenomics and the reconstruction of the tree of life. Nature Rev Genet. 2005, 6 (5): 361-375.

    PubMed  CAS  Google Scholar 

  102. Romiguier J, Ranwez V, Delsuc F, Galtier N, Douzery EJ: Less is more in mammalian phylogenomics: AT-rich genes minimize tree conflicts and unravel the root of placental mammals.Mol Biol Evol 2013. mst116.,

  103. Lin J, Chen G, Gu L, Shen Y, Zheng M, Zheng W, Hu X, Zhang X, Qiu Y, Liu X: Phylogenetic affinity of tree shrews to Glires is attributed to fast evolution rate. Mol Phylogenet Evol. 2014, 71: 193-200.

    PubMed  Google Scholar 

  104. Edgar RC: MUSCLE: multiple sequence alignment with high accuracy and high throughput. Nucleic Acids Res. 2004, 32 (5): 1792-1797.

    PubMed  CAS  PubMed Central  Google Scholar 

  105. Smith SA, Dunn CW: Phyutility: a phyloinformatics tool for trees, alignments and molecular data. Bioinformatics. 2008, 24 (5): 715-716.

    PubMed  CAS  Google Scholar 

  106. Lanfear R, Calcott B, Ho SYW, Guindon S: PartitionFinder: combined selection of partitioning schemes and substitution models for phylogenetic analyses. Mol Biol Evol. 2012, 29 (6): 1695-1701.

    PubMed  CAS  Google Scholar 

  107. Drummond AJ, Rambaut A: BEAST: Bayesian evolutionary analysis by sampling trees. BMC Evol Biol. 2007, 7: 214-

    PubMed  PubMed Central  Google Scholar 

  108. Rambaut A, Drummond AJ: Tracer, MCMC Trace Analysis Package. 15th edition. 2003. Available from ., [http://tree.bio.ed.ac.uk/software/tracer]

  109. Coates MI: Actinopterygians from the Namurian of Bearsden, Scotland, with comments on early actinopterygian neurocrania. Zool J Linn Soc. 1998, 122 (1–2): 27-59.

    Google Scholar 

  110. Li CH, Lu GQ, Ortí G: Optimal data partitioning and a test case for ray-finned fishes (Actinopterygii) based on ten nuclear loci. Syst Biol. 2008, 57 (4): 519-539.

    PubMed  Google Scholar 

  111. Gardiner BG, Schaeffer B: Interrelationships of lower actinopterygian fishes. Zool J Linn Soc. 1989, 97: 135-187.

    Google Scholar 

  112. Miya M, Takeshima H, Endo H, Ishiguro NB, Inoue JG, Mukai T, Satoh TP, Yamaguchi M, Kawaguchi A, Mabuchi K, Shirai SM, Nishida M: Major patterns of higher teleostean phylogenies: a new perspective based on 100 complete mitochondrial DNA sequences. Mol Phylogenet Evol. 2003, 26: 121-138.

    PubMed  CAS  Google Scholar 

  113. Johnson GD, Patterson C: Percomorph phylogeny: a survey of acanthomorphs and a new proposal. Bull Mar Sci. 1993, 52 (1): 554-626.

    Google Scholar 

  114. Warnock RCM, Yang ZH, Donoghue PCJ: Exploring uncertainty in the calibration of the molecular clock. Biol Lett. 2012, 8 (1): 156-159.

    PubMed  PubMed Central  Google Scholar 

  115. Morrow JR, Sandberg CA: Evolution of Devonian carbonate-shelf margin. Nevada Geosphere. 2008, 4 (2): 445-458.

    Google Scholar 

  116. Zhu M, Zhao WJ, Jia LT, Lu J, Qiao T, Qu QM: The oldest articulated osteichthyan reveals mosaic gnathostome characters. Nature. 2009, 458 (7237): 469-474.

    PubMed  CAS  Google Scholar 

  117. Dineley DL, Metcalf SJ: Fossil Fishes of Great Britain. 1999, Peterborough, Joint Nature Conservation Committee

    Google Scholar 

  118. Menning M, Weyer D, Drozdzewski G, Van Amerom HWJ, Wendt I: A Carboniferous timescale 2000: discussion and use of geological parameters as time indicators from central and western Europe. Geol Jahrbuch. 2000, 2000 (A156): 3-44.

    Google Scholar 

  119. Coates MI: Endocranial preservation of a Carboniferous actinopterygian from Lancashire, UK, and the interrelationships of primitive actinopterygians. Phil Trans R Soc B. 1999, 354 (1382): 435-462.

    PubMed Central  Google Scholar 

  120. Xu G-H, Gao K-Q, Finarelli J, Xu G-H, Gao K-Q, Finarelli J: A revision of the Middle Triassic scanilepiform fish Fukangichthys longidorsalis from Xinjiang, China, with comments on the phylogeny of the Actinopteri.J Vert Paleo. in press.,

  121. Gradstein FM, Ogg G, Schmitz M: The Geologic Time Scale 2012 2-Volume Set. 2012, Elsevier, Amsterdam

    Google Scholar 

  122. Olsen PE: The skull and pectoral girdle of the parasemionotid fish Watsonulus eugnathoides from the early Triassic Sakamena group of Madagascar, with comments on the relationships of the holostean fishes. J Vert Paleo. 1984, 4: 481-499.

    Google Scholar 

  123. Catuneanu O, Wopfer H, Eriksson PG, Carincross B, Rubidge BS, Smith RMH, Hancox PJ: The Karoo basins of South-Central Africa. J Afr Earth Sci. 2005, 43: 211-253.

    Google Scholar 

  124. Ogg JG, Ogg JG: The Triassic Period. A Geologic Time Scale. Edited by: Gradstein F, Ogg J, Smith A. 2004, Cambridge University Press, Cambridge, 271-306.

    Google Scholar 

  125. Xu GH, Gao KQ: A new scanilepiform from the lower triassic of northern Gansu Province, China, and phylogenetic relationships of non-teleostean actinopterygii. Zool J Linn Soc. 2011, 161 (3): 595-612.

    Google Scholar 

  126. Patterson C: A review of Mesozoic acanthopterygian fishes, with special reference to those of the English Chalk. Phil Trans R Soc B. 1964, 247 (739): 213-482.

    Google Scholar 

  127. Rosen DE: Interrelationships of Higher Euteleostean Fishes. Interrelationships of Fishes. Edited by: Greenwood PH, Miles RS, Patterson C, Greenwood PH, Miles RS, Patterson C. 1973, Academic Press, London, 397-513.

    Google Scholar 

  128. Santini F, Tyler JC: A phylogeny of the families of fossil and extant tetraodontiform fishes (Acanthomorpha, Tetraodontiformes), upper Cretaceous to recent. Zool J Linn Soc. 2003, 139 (4): 565-617.

    Google Scholar 

  129. Gallo V, Carvalho MSSD, Souto AA: A possible occurrence of Diodontidae (Teleostei, Tetraodontiformes) in the Upper Cretaceous of the Paraíba Basin, Northeastern Brazil. Cretaceous Research. 2009, 30 (3): 599-604.

    Google Scholar 

  130. Yang ZH, Rannala B: Bayesian estimation of species divergence times under a molecular clock using multiple fossil calibrations with soft bounds. Mol Biol Evol. 2006, 23 (1): 212-226.

    PubMed  CAS  Google Scholar 

  131. Sorbini L: Segnalazione di un plettognato Cretacico Plectocretacicus nov. General Boll Mus Civ Stor Nat Verona. 1979, 6: 1-4.

    Google Scholar 

  132. Tyler JC, Sorbini L: New Superfamily and Three new Families of Tetraodontiform Fishes from the Upper Cretaceous: The Earliest and Most Morphologically Primitive Plectognaths. 1996.

  133. González-Rodríguez KA, Schultze H-P, Arratia G: Minature Armored Acanthomorph Teleosts from the Albian/Cenomanian (Cretaceous) of Mexico. Mesozoic Fishes 5—Global Diversity and Evolution. Edited by: Arratia G, Arratia G, Schultze H-P, Schultze H-P, Wilson MVH. 2013, Verlag Dr Friedrich Pfeil, Munich, 457-487.

    Google Scholar 

  134. McMahan CD, Chakrabarty P, Sparks JS, Smith WL, Davis MP: Temporal patterns of diversification across global cichlid biodiversity (Acanthomorpha: Cichlidae). PLoS One. 2013, 8 (8): e71162-

    PubMed  CAS  PubMed Central  Google Scholar 

  135. Waters JM, Trewick SA, Paterson AM, Spencer HG, Kennedy M, Craw D, Burridge CP, Wallis GP: Biogeography off the tracks. Syst Biol. 2013, 62 (3): 494-498.

    PubMed  Google Scholar 

  136. Lopez-Giraldez F, Townsend JP: PhyDesign: an online application for profiling phylogenetic informativeness. BMC Evol Biol. 2011, 11: 152-

    PubMed  PubMed Central  Google Scholar 

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Acknowledgements

We thank E. Sargis, J. C. Oliver, M. C. Brandley, F. Lopez-Giraldez, T. Su, A. Leslie, E.J. Forrestel, and the Donoghue, Townsend, and Near lab groups at Yale University for support for various aspects of this project. B. Moore, J. Thorne, and two anonymous referees reviewed an earlier version of this manuscript. Computational resources were provided by the Yale University Faculty of Arts and Sciences High Performance Computing Facility. This work was supported by National Science Foundation (DEB-0716155 and ANT-0839007) awards to TJN, a National Science Foundation (DEB-1011328) award to AD and TJN, and a Natural Environment Research Council award to MF (NERC NE/I005536/1).

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Correspondence to Alex Dornburg.

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The authors declare that they have no competing interests.

Authors’ contributions

All authors contributed to the overall design of this project. AD and JPT designed and conducted analysis of informativeness. AD, MF, and TJN designed and conducted analyses of molecular divergence times. AD was supported by all authors in the writing of this manuscript. All authors read and approved the final manuscript.

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12862_2014_169_MOESM1_ESM.doc

Additional file 1: Table S1.: Genbank accession numbers for fish nuclear gene dataset. Table S2. Genbank accession numbers for fish mitochondrial genome based dataset. (DOC 86 KB)

12862_2014_169_MOESM2_ESM.pdf

Additional file 2: Figure S1.: Comparison of mtDNA and nDNA chronograms for actinopterygians based on A) all data and B) analyses of excluding saturated partitions. Analyses utilized all calibrations except the cichlid calibration based on the interval of paleontological age estimates in Friedman et al. [64]. Bars indicate 95% HPD intervals of age estimates. Light bars indicate posterior probabilities greater than 0.95. Gray bars indicate posterior probabilities below 0.95. Phylogenetic informativeness profiles for both datasets are shown adjacent to the associated chronograms. Colours identify individual partitions. (PDF 550 KB)

12862_2014_169_MOESM3_ESM.pdf

Additional file 3: Figure S2.: Comparison of mtDNA and nDNA chronograms for actinopterygians based on A) all data and B) analyses of excluding saturated partitions. Analyses utilized all calibrations except the stem Tetraodontiform and cichlid calibration. Bars indicate 95% HPD intervals of age estimates. Light bars indicate posterior probabilities greater than 0.95. Gray bars indicate posterior probabilities below 0.95. Phylogenetic informativeness profiles for both datasets are shown adjacent to the associated chronograms. Colours identify individual partitions. (PDF 682 KB)

12862_2014_169_MOESM4_ESM.pdf

Additional file 4: Figure S3.: Visualizations of the Bayesian posterior density between replicate MCMC runs for selected parameters and different DNA datasets. (PDF 1 MB)

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Dornburg, A., Townsend, J.P., Friedman, M. et al. Phylogenetic informativeness reconciles ray-finned fish molecular divergence times. BMC Evol Biol 14, 169 (2014). https://doi.org/10.1186/s12862-014-0169-0

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