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首页> 外文期刊>Journal of the Royal Society Interface >Inferring locomotor behaviours in Miocene New World monkeys using finite element analysis, geometric morphometrics and machine-learning classification techniques applied to talar morphology
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Inferring locomotor behaviours in Miocene New World monkeys using finite element analysis, geometric morphometrics and machine-learning classification techniques applied to talar morphology

机译:使用有限元分析,几何形态化学和机器学习分类技术推断新世界猴子在中新世新世界猴子的运动行为,适用于塔拉尔形态学

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摘要

The talus is one of the most commonly preserved post-cranial elements in the platyrrhine fossil record. Talar morphology can provide information about postural adaptations because it is the anatomical structure responsible for transmitting body mass forces from the leg to the foot. The aim of this study is to test whether the locomotor behaviour of fossil Miocene platyrrhines could be inferred from their talus morphology. The extant sample was classified into three different locomotor categories and then talar strength was compared using finite-element analysis. Geometric morphometrics were used to quantify talar shape and to assess its association with biomechanical strength. Finally, several machine-learning (ML) algorithms were trained using both the biomechanical and morphometric data from the extant taxa to infer the possible locomotor behaviour of the Miocene fossil sample. The obtained results show that the different locomotor categories are distinguishable using either biomechanical or morphometric data. The ML algorithms categorized most of the fossil sample as arboreal quadrupeds. This study has shown that a combined approach can contribute to the understanding of platyrrhine talar morphology and its relationship with locomotion. This approach is likely to be beneficial for determining the locomotor habits in other fossil taxa.
机译:塔卢斯是普氏菌化石记录中最常见的颅骨元素之一。 TALAR形态可以提供有关姿势适应的信息,因为它是负责从腿到脚的体重力的解剖结构。本研究的目的是测试化石中丙烯普拉利的运动行为是否可以从其缩略图的形态推断出来。将延时样品分为三种不同的运动类别,然后使用有限元分析进行比较TALAR强度。几何形态化学用于量化缩略图,并评估其与生物力学强度的关系。最后,使用来自现存征税的生物力学和形态测量数据训练了几种机器学习(ML)算法,以推断中烯化石样本的可能运动行为。所获得的结果表明,使用生物力学或形态计量数据可区分不同的机车类别。 ML算法将大多数化石样本分为Arboreal Quadrups。本研究表明,组合的方法可以有助于了解普拉克林塔拉尔形态及其与运动的关系。这种方法可能有利于确定其他化石分类群的运动习惯。

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