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Feature Extraction for Classification of Caenorhabditis Elegans Behavioural Phenotypes

机译:特征提取对秀丽隐杆线虫行为表型的分类

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Caenorhabditis (C.) elegans is often used in genetic analysis in neuroscience because it has simple model organisms; an adult hermaphrodite contains only 302 neurons. We use an automated tracking system, which makes it possible to measure the rate and direction of movement for each worm and to compute the frequency of reversals in direction. In this paper, we propose new preprocessing method using hole detection, and then we describe how to extract features that are very useful for classification of C. elegans behavioural phenotypes. We use 3 kinds of features (Large-scale movement, body size, and body posture). For the experiments, we classify 9 mutant types of worms and analyze their behavioural characteristics.
机译:秀丽隐杆线虫(Caenorhabditis(C.)elegans)具有简单的模型生物,因此常用于神经科学的基因分析。成人雌雄同体仅包含302个神经元。我们使用自动跟踪系统,该系统可以测量每种蠕虫的运动速度和方向,并计算方向反转的频率。在本文中,我们提出了一种新的使用漏洞检测的预处理方法,然后我们描述了如何提取对秀丽隐杆线虫行为表型分类非常有用的特征。我们使用3种功能(大型运动,身体大小和身体姿势)。对于实验,我们对9种蠕虫的突变类型进行了分类,并分析了它们的行为特征。

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