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Deriving Shape-Based Features for C. elegans Locomotion Using Dimensionality Reduction Methods

机译:使用降维方法推导线虫运动的基于形状的特征

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摘要

High-throughput analysis of animal behavior is increasingly common following the advances of recording technology, leading to large high-dimensional data sets. This dimensionality can sometimes be reduced while still retaining relevant information. In the case of the nematode worm Caenorhabditis elegans, more than 90% of the shape variance can be captured using just four principal components. However, it remains unclear if other methods can achieve a more compact representation or contribute further biological insight to worm locomotion. Here we take a data-driven approach to worm shape analysis using independent component analysis (ICA), non-negative matrix factorization (NMF), a cosine series, and jPCA (a dynamic variant of principal component analysis [PCA]) and confirm that the dimensionality of worm shape space is close to four. Projecting worm shapes onto the bases derived using each method gives interpretable features ranging from head movements to tail oscillation. We use these as a comparison method to find differences between the wild type N2 worms and various mutants. For example, we find that the neuropeptide mutant nlp-1(ok1469) has an exaggerated head movement suggesting a mode of action for the previously described increased turning rate. The different bases provide complementary views of worm behavior and we expect that closer examination of the time series of projected amplitudes will lead to new results in the future.
机译:随着记录技术的发展,对动物行为进行高通量分析变得越来越普遍,从而导致了大型的高维数据集。有时可以减小此维度,同时仍保留相关信息。对于线虫秀丽隐杆线虫,仅使用四个主要成分就可以捕获超过90%的形状变异。但是,尚不清楚其他方法是否可以实现更紧凑的表示或为蠕虫的运动贡献更多的生物学见解。在这里,我们采用数据驱动的方法,使用独立成分分析(ICA),非负矩阵分解(NMF),余弦序列和jPCA(主成分分析[PCA]的动态变体)对蠕虫形状进行分析,并确认蠕虫形状空间的维数接近四。将蠕虫的形状投影到使用每种方法得出的基部上,可提供从头部运动到尾部振荡的可解释特征。我们将这些用作比较方法,以发现野生型N2蠕虫和各种突变体之间的差异。例如,我们发现神经肽突变体nlp-1(ok1469)具有夸张的头部运动,暗示了先前描述的提高的转弯速度的作用方式。不同的基础提供了有关蠕虫行为的补充观点,我们期望对预计振幅的时间序列进行更仔细的研究将在将来带来新的结果。

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