Mapping dynamic regulation of gene expression using single-cell transcriptomics and application to complex disease genetics.

IF 3.3 Q2 GENETICS & HEREDITY
Hanna Abe, Phillip Lin, Dan Zhou, Douglas M Ruderfer, Eric R Gamazon
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引用次数: 0

Abstract

Single-cell transcriptome data can provide insights into how genetic variation influences biological processes involved in human physiology and disease. However, the identification of gene-level associations in distinct cell types faces several challenges, including the limited reference resources from population-scale studies, data sparsity in single-cell RNA sequencing, and the complex cell state pattern of expression within individual cell types. Here, we develop genetic models of cell-type-specific and cell-state-adjusted gene expression in mid-brain neurons undergoing differentiation from induced pluripotent stem cells. The resulting framework quantifies the dynamics of the genetic regulation of gene expression and estimates its cell-type specificity. As an application, we show that the approach detects known and new genes associated with schizophrenia and enables insights into context-dependent disease mechanisms. We provide a genomic resource from a phenome-wide application of our models to more than 1,500 phenotypes from the UK Biobank. Using longitudinal, genetically determined expression, we implement a predictive causality framework, evaluating the prediction of future values of a target gene expression using prior values of a putative regulatory gene. Collectively, the results of this work demonstrate the insights that can be gained into the molecular underpinnings of disease by quantifying the genetic control of gene expression at single-cell resolution.

利用单细胞转录组学绘制谱系特异性基因表达动态调控的景观,并应用于复杂疾病的遗传学。
单细胞转录组数据可以深入了解遗传变异如何影响涉及人类生物学和疾病的生物过程。然而,不同细胞类型中基因水平关联的鉴定面临着一些挑战,包括群体规模研究的参考资源有限,单细胞RNA测序的数据稀疏,以及单个细胞类型中复杂的细胞状态表达模式。在此,我们建立了诱导多能干细胞特化中脑神经元细胞类型特异性和细胞状态调节基因表达的遗传模型。由此产生的框架量化了基因表达的遗传调控动力学,并估计了其细胞类型特异性。作为一项应用,我们表明该方法可以检测与精神分裂症相关的已知和新的基因,并能够深入了解环境依赖的疾病机制。我们提供了一个基因组资源,从我们模型的全表型应用到来自英国生物银行的1500多种表型。利用纵向遗传决定的表达,我们实现了预测因果关系框架,利用假定的调控基因的先验值评估目标基因表达的未来值的预测。总的来说,这项工作证明了可以通过在单细胞分辨率下量化基因表达的遗传控制来获得疾病分子基础的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
HGG Advances
HGG Advances Biochemistry, Genetics and Molecular Biology-Molecular Medicine
CiteScore
4.30
自引率
4.50%
发文量
69
审稿时长
14 weeks
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