用变分自编码器检测秀丽隐杆线虫早期胚胎的表型异常

Takumi Oibayashi, Takaya Ueda, Yukiyo Kimura, Y. Tohsato, I. Nishikawa
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引用次数: 0

摘要

采用变分自编码器(VAE)检测和量化秀丽隐杆线虫早期胚胎核分裂的表型异常。通过训练得到的VAE潜空间上的正态数据分布,利用潜空间的位置不仅可以表征时间序列数据的形态异常,还可以表征时间序列数据的时间异常。将该方法应用于线虫两细胞期核分裂过程的三维DIC数据时间序列。野生型数据作为正常数据用于训练,然后在胚胎上评估异常,其中一个致死基因被RNAi沉默。首先,利用重建误差对形态学异常进行量化。然后,对于重构良好的数据,使用输入时间序列对应的潜空间中的轨迹来表征分割过程的时间发展。该方法根据潜在空间的正态时间分布定义异常评分,并成功地获得了通过敲除引起时间异常的致死基因列表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Phenotype Anomaly Detection in Early C. elegans Embryos by Variational Auto-Encoder
Variational auto encoder (VAE) is used to detect and quantify the phenotype anomaly in the nuclear division of the early embryo of C. elegans. The latent space of VAE, on which the normal data distribution is obtained through the training, is used to characterize not only the morphological anomaly, but also the temporal anomaly of the time series data, based on the position in the latent space. The proposed method is applied to the time series of three dimensional DIC data of nuclear division process during two-cell stage of C. elegans. Wild type data is used as the normal data for the training, and then an anomaly is evaluated on an embryo, for which one of the lethal genes is silenced by RNAi. First, Morphological anomaly is quantified by the reconstruction error. Then, for the well-reconstructed data, the trajectory in the latent space corresponding to the input time series is used to characterize the time development of the division process. Anomaly score is defined based on the normal time distribution in the latent space, and the proposed method successfully obtains a list of lethal genes, which cause the temporal anomaly by the knocking down.
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