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首页> 外文期刊>Biology Letters >Probabilistic divergence time estimation without branch lengths: dating the origins of dinosaurs, avian flight and crown birds
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Probabilistic divergence time estimation without branch lengths: dating the origins of dinosaurs, avian flight and crown birds

机译:没有分支长度的概率分歧时间估计:约会恐龙,禽类飞行和冠鸟的起源

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摘要

Branch lengths-measured in character changes-are an essential requirement of clock-based divergence estimation, regardless of whether the fossil calibrations used represent nodes or tips. However, a separate set of divergence time approaches are typically used to date palaeontological trees, which may lack such branch lengths. Among these methods, sophisticated probabilistic approaches have recently emerged, in contrast with simpler algorithms relying on minimum node ages. Here, using a novel phylogenetic hypothesis for Mesozoic dinosaurs, we apply two such approaches to estimate divergence times for: (i) Dinosauria, (ii) Avialae (the earliest birds) and (iii) Neornithes (crown birds). We find: (i) the plausibility of a Permian origin for dinosaurs to be dependent on whether Nyasasaurus is the oldest dinosaur, (ii) a Middle to Late Jurassic origin of avian flight regardless of whether Archaeopteryx or Aurornis is considered the first bird and (iii) a Late Cretaceous origin for Neornithes that is broadly congruent with other node-and tip-dating estimates. Demonstrating the feasibility of probabilistic time-scaling further opens up divergence estimation to the rich histories of extinct biodiversity in the fossil record, even in the absence of detailed character data.
机译:在字符变化中测量的分支长度 - 是基于时钟的发散估计的基本要求,无论使用的化石校准是代表节点还是提示。然而,单独的发散时间方法通常用于迄今为止古生物树木,这可能缺乏这种分支长度。在这些方法中,最近出现了复杂的概率方法,与依赖于最小节点年龄的更简单的算法相比。在这里,利用新生的中生代恐龙的系统发育假设,我们应用两种方法来估计以下方法:(i)恐龙(ii)禽类(最早的鸟类)和(iii)Neornithes(冠鸟)。我们发现:(i)恐龙依赖恐龙是尼亚斯拉州是最古老的恐龙,(ii)禽航班的中间至晚期侏罗纪起源,无论古翅膀是否被认为是第一只鸟,( III)对于Neornees的晚期白垩纪来源,广泛地与其他节点和尖端约会估计一致。展示概率时间缩放的可行性进一步开辟了对化石记录中灭绝生物多样性的丰富历史的发散估计,即使在没有详细的字符数据的情况下也是如此。

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