利用 X 射线显微断层扫描和深度学习分割技术对一种蜥蜴(Podarcis bocagei)进行脑虚拟组织学研究

Tunhe Zhou, Yulia Dragunova, Zegni Triki
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摘要

最近,人们开始强调研究动物行为和认知中个体间差异并了解其内在机制的重要性。曾经被认为只是群体平均值附近的噪音,现在可以用大脑形态和功能等个体特征来解释。然而,在研究大脑时,尤其是在涉及野生动物的研究中,可能会面临后勤方面的限制,如样本量小和方法耗时等。在这里,我们结合了一种使用 X 射线显微层析成像和深度学习(DL)分割的高效而精确的方法,来估算野生蜥蜴 Podarcis bocagei 的六个主要脑区的体积:嗅球、端脑、间脑、中脑、小脑和脑干。通过定量比较,我们发现只需使用五组数据就能训练出足够的深度学习神经网络。在此基础上,我们应用训练有素的深度学习算法,从 Podarcis bocagei 的 29 个大脑中获取了六个脑区的体积数据。我们提供了我们方法的详细方案,包括样本制备、X 射线断层扫描和三维体积分割。我们的工作是开放和免费的,有可能使动物生理学、生物医学研究和计算机科学等不同领域的研究人员受益。
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Brain virtual histology of a lizard species (Podarcis bocagei) using X-ray micro-tomography and deep-learning segmentation
Lately, there has been an emphasis on the importance of studying inter-individual variation in animal behaviour and cognition and understanding its underlying mechanisms. What was once considered mere noise around population mean can be explained by individual characteristics such as brain morphology and functionality. However, logistical limitations can be faced when studying the brain, especially for research involving wild animals, such as dealing with small sample sizes and time-consuming methods. Here, we combined an efficient and accurate method using X-ray micro-tomography and deep-learning (DL) segmentation to estimate the volume of six main brain areas of wild lizards, Podarcis bocagei: olfactory bulbs, telencephalon, diencephalon, midbrain, cerebellum and brain stem. Through quantitative comparison, we show that a sufficient deep-learning neural network can be trained with as few as five data sets. From this, we applied the trained deep-learning algorithm to obtain volume data of the six brain regions from 29 brains of Podarcis bocagei. We provide a detailed protocol for our methods, including sample preparation, X-ray tomography, and 3D volumetric segmentation. Our work is open-access and freely available, with the potential to benefit researchers in various fields, such as animal physiology, biomedical studies, and computer sciences.
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