利用协方差动态推断基因调控网络。

Yue Wang, Peng Zheng, Yu-Chen Cheng, Zikun Wang, Aleksandr Aravkin
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引用次数: 0

摘要

确定基因调控网络(GRN)结构是生物学的核心问题,针对不同类型的数据有多种推断方法。对于一个广泛流行且具有挑战性的使用案例,即在多个时间点进行干预后测量的、具有未知联合分布的单细胞基因表达数据,目前只有一种已知的专门开发的方法,该方法没有充分利用这种数据类型所包含的丰富信息。在这种情况下,我们开发了一种针对 GRN 的推断方法,即 covariaNce DYnamics 的网络推断(netWork infErence by covariaNce DYnamics),称为 WENDY。WENDY 的核心思想是对协方差矩阵的动态进行建模,并将这种动态作为一个优化问题来解决,从而确定调控关系。为了评估其有效性,我们使用合成数据和实验数据将 WENDY 与其他推断方法进行了比较。我们的结果表明,WENDY 在不同的数据集上都表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gene regulatory network inference with covariance dynamics.

Determining gene regulatory network (GRN) structure is a central problem in biology, with a variety of inference methods available for different types of data. For a widely prevalent and challenging use case, namely single-cell gene expression data measured after intervention at multiple time points with unknown joint distributions, there is only one known specifically developed method, which does not fully utilize the rich information contained in this data type. We develop an inference method for the GRN in this case, netWork infErence by covariaNce DYnamics, dubbed WENDY. The core idea of WENDY is to model the dynamics of the covariance matrix, and solve this dynamics as an optimization problem to determine the regulatory relationships. To evaluate its effectiveness, we compare WENDY with other inference methods using synthetic data and experimental data. Our results demonstrate that WENDY performs well across different data sets.

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