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Identification of C. elegans Strains Using a Fully Convolutional Neural Network on Behavioural Dynamics

机译:利用完全卷积神经网络对行为动态的全卷积神经网络鉴定

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The nematode C. elegans is a promising model organism to understand the genetic basis of behaviour due to its anatomical simplicity. In this work, we present a deep learning model capable of discerning genetically diverse strains based only on their recorded spontaneous activity, and explore how its performance changes as different embeddings are used as input. The model outperforms hand-crafted features on strain classification when trained directly on time series of worm postures.
机译:Nematode C.秀丽隐形秀丽耳环是一个有前途的模型生物,以了解由于其解剖学的简单性而理解行为的遗传基础。在这项工作中,我们展示了一个深入的学习模型,其能够仅基于记录的自发性活动来辨别出遗传不同的菌株,并探讨其随着不同嵌入物的性能变化如何用作输入。当直接培训在时间系列蠕虫姿势时,该模型优于应变分类的手工制作功能。

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