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A new method for reconstructing brain morphology: applying the brain-neurocranial spatial relationship in an extant lungfish to a fossil endocast

机译:一种重建大脑形态的新方法:将现存肺鱼中的脑神经空间关系应用于化石内铸

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摘要

Lungfish first appeared in the geological record over 410 million years ago and are the closest living group of fish to the tetrapods. Palaeoneurological investigations into the group show that unlike numerous other fishes—but more similar to those in tetrapods—lungfish appear to have had a close fit between the brain and the cranial cavity that housed it. As such, researchers can use the endocast of fossil taxa (an internal cast of the cranial cavity) both as a source of morphological data but also to aid in developing functional and phylogenetic implications about the group. Using fossil endocast data from a three-dimensional-preserved Late Devonian lungfish from the Gogo Formation, Rhinodipterus, and the brain-neurocranial relationship in the extant Australian lungfish, Neoceratodus, we herein present the first virtually reconstructed brain of a fossil lungfish. Computed tomographic data and a newly developed ‘brain-warping’ method are used in conjunction with our own distance map software tool to both analyse and present the data. The brain reconstruction is adequate, but we envisage that its accuracy and wider application in other taxonomic groups will grow with increasing availability of tomographic datasets.
机译:肺鱼最早出现在4.1亿年前的地质记录中,是最接近四足动物的鱼类。对这群人的古生物学研究表明,与许多其他鱼类不同(但与四足动物相似),肺鱼似乎在大脑和容纳该鱼类的颅腔之间非常吻合。这样,研究人员可以将化石类群的内铸物(颅腔的内部铸模)用作形态数据的来源,还可以帮助开发有关该群的功能和系统发育意义。使用来自Gogo组Rhinodipterus的三维保存的晚期泥盆纪肺鱼的化石内播数据,以及现存的澳大利亚肺鱼Neoceratodus中的脑神经关系,我们在此展示了化石肺鱼的第一个虚拟重建大脑。计算机断层扫描数据和新开发的“大脑变形”方法与我们自己的距离图软件工具结合使用,可以分析和显示数据。大脑重建是足够的,但我们认为,随着层析数据集可用性的提高,其准确性和在其他分类学领域的广泛应用将不断增长。

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