Elucidating dynamic cell lineages and gene networks in time-course single cell differentiation

Mengrui Zhang , Yongkai Chen , Dingyi Yu , Wenxuan Zhong , Jingyi Zhang , Ping Ma
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Abstract

Single cell RNA sequencing (scRNA-seq) technologies provide researchers with an unprecedented opportunity to exploit cell heterogeneity. For example, the sequenced cells belong to various cell lineages, which may have different cell fates in stem and progenitor cells. Those cells may differentiate into various mature cell types in a cell differentiation process. To trace the behavior of cell differentiation, researchers reconstruct cell lineages and predict cell fates by ordering cells chronologically into a trajectory with a pseudo-time. However, in scRNA-seq experiments, there are no cell-to-cell correspondences along with the time to reconstruct the cell lineages, which creates a significant challenge for cell lineage tracing and cell fate prediction. Therefore, methods that can accurately reconstruct the dynamic cell lineages and predict cell fates are highly desirable.

In this article, we develop an innovative machine-learning framework called Cell Smoothing Transformation (CellST) to elucidate the dynamic cell fate paths and construct gene networks in cell differentiation processes. Unlike the existing methods that construct one single bulk cell trajectory, CellST builds cell trajectories and tracks behaviors for each individual cell. Additionally, CellST can predict cell fates even for less frequent cell types. Based on the individual cell fate trajectories, CellST can further construct dynamic gene networks to model gene-gene relationships along the cell differentiation process and discover critical genes that potentially regulate cells into various mature cell types.

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阐明单细胞分化过程中的动态细胞系和基因网络
单细胞RNA测序(scRNA-seq)技术为研究人员利用细胞异质性提供了前所未有的机会。例如,测序的细胞属于不同的细胞谱系,在干细胞和祖细胞中可能具有不同的细胞命运。这些细胞可以在细胞分化过程中分化为各种成熟细胞类型。为了追踪细胞分化的行为,研究人员重建细胞谱系,并通过将细胞按时间顺序排列成具有伪时间的轨迹来预测细胞命运。然而,在scRNA-seq实验中,随着重建细胞谱系的时间,没有细胞与细胞的对应关系,这给细胞谱系追踪和细胞命运预测带来了重大挑战。因此,能够准确重建动态细胞谱系并预测细胞命运的方法是非常理想的。在这篇文章中,我们开发了一个名为细胞平滑转化(CellST)的创新机器学习框架,以阐明细胞分化过程中的动态细胞命运路径并构建基因网络。与构建单个大块细胞轨迹的现有方法不同,CellST构建细胞轨迹并跟踪每个单个细胞的行为。此外,CellST甚至可以预测频率较低的细胞类型的细胞命运。基于单个细胞的命运轨迹,CellST可以进一步构建动态基因网络,以模拟细胞分化过程中的基因-基因关系,并发现可能将细胞调节为各种成熟细胞类型的关键基因。
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来源期刊
Artificial intelligence in the life sciences
Artificial intelligence in the life sciences Pharmacology, Biochemistry, Genetics and Molecular Biology (General), Computer Science Applications, Health Informatics, Drug Discovery, Veterinary Science and Veterinary Medicine (General)
CiteScore
5.00
自引率
0.00%
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0
审稿时长
15 days
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