Single‐cell gene regulatory network analysis for mixed cell populations

Junjie Tang, Changhu Wang, Fei Xiao, Ruibin Xi
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Abstract

Gene regulatory network (GRN) refers to the complex network formed by regulatory interactions between genes in living cells. In this paper, we consider inferring GRNs in single cells based on single‐cell RNA sequencing (scRNA‐seq) data. In scRNA‐seq, single cells are often profiled from mixed populations, and their cell identities are unknown. A common practice for single‐cell GRN analysis is to first cluster the cells and infer GRNs for every cluster separately. However, this two‐step procedure ignores uncertainty in the clustering step and thus could lead to inaccurate estimation of the networks. Here, we consider the mixture Poisson log‐normal model (MPLN) for network inference of count data from mixed populations. The precision matrices of the MPLN are the GRNs of different cell types. To avoid the intractable optimization of the MPLN’s log‐likelihood, we develop an algorithm called variational mixture Poisson log‐normal (VMPLN) to jointly estimate the GRNs of different cell types based on the variational inference method. We compare VMPLN with state‐of‐the‐art single‐cell regulatory network inference methods. Comprehensive simulation shows that VMPLN achieves better performance, especially in scenarios where different cell types have a high mixing degree. Benchmarking on real scRNA‐seq data also demonstrates that VMPLN can provide more accurate network estimation in most cases. Finally, we apply VMPLN to a large scRNA‐seq dataset from patients infected with severe acute respiratory syndrome coronavirus 2 (SARS‐CoV‐2) and find that VMPLN identifies critical differences in regulatory networks in immune cells between patients with moderate and severe symptoms. The source codes are available on the GitHub website (github.com/XiDsLab/SCVMPLN).
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混合细胞群的单细胞基因调控网络分析
基因调控网络(GRN)是指活细胞中基因间调控相互作用形成的复杂网络。本文考虑根据单细胞 RNA 测序(scRNA-seq)数据推断单细胞中的基因调控网络。在 scRNA-seq 中,单细胞通常是从混合群体中提取的,其细胞身份未知。单细胞 GRN 分析的常见做法是首先对细胞进行聚类,然后分别推断每个聚类的 GRN。然而,这种两步法忽略了聚类步骤中的不确定性,因此可能导致对网络的估计不准确。在此,我们考虑采用混合泊松对数正态模型(MPLN)来推断混合群体计数数据的网络。MPLN 的精确矩阵是不同细胞类型的 GRN。为了避免对 MPLN 的对数似然进行棘手的优化,我们开发了一种称为变异混合泊松对数正态(VMPLN)的算法,基于变异推理方法联合估计不同细胞类型的 GRN。我们将 VMPLN 与最先进的单细胞调控网络推断方法进行了比较。综合模拟结果表明,VMPLN 的性能更好,尤其是在不同细胞类型高度混合的情况下。真实 scRNA-seq 数据的基准测试也表明,VMPLN 在大多数情况下都能提供更准确的网络估计。最后,我们将 VMPLN 应用于严重急性呼吸系统综合征冠状病毒 2(SARS-CoV-2)感染患者的大型 scRNA-seq 数据集,发现 VMPLN 能识别中度和重度症状患者免疫细胞调控网络的关键差异。源代码可在 GitHub 网站(github.com/XiDsLab/SCVMPLN)上获取。
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