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具有多个异质性结果的基因组数据的因果推断

Causal Inference for Genomic Data with Multiple Heterogeneous Outcomes

Journal of the American Statistical Association · 2025
被引 3 · 同刊同年前 8%
ABS 4

中文导读

针对单细胞RNA测序数据中基因表达水平不可直接观测的问题,提出一个半参数推断框架,用于多个衍生结果的双稳健估计,并应用于单细胞CRISPR扰动分析和个体差异表达分析。

Abstract

With the evolution of single-cell RNA sequencing techniques into a standard approach in genomics, it has become possible to conduct cohort-level causal inferences based on single-cell-level measurements. However, the individual gene expression levels of interest are not directly observable; instead, only repeated proxy measurements from each individual's cells are available, providing a derived outcome to estimate the underlying outcome for each of many genes. In this paper, we propose a generic semiparametric inference framework for doubly robust estimation with multiple derived outcomes, which also encompasses the usual setting of multiple outcomes when the response of each unit is available. To reliably quantify the causal effects of heterogeneous outcomes, we specialize the analysis to standardized average treatment effects and quantile treatment effects. Through this, we demonstrate the use of the semiparametric inferential results for doubly robust estimators derived from both Von Mises expansions and estimating equations. A multiple testing procedure based on Gaussian multiplier bootstrap is tailored for doubly robust estimators to control the false discovery exceedance rate. Applications in single-cell CRISPR perturbation analysis and individual-level differential expression analysis demonstrate the utility of the proposed methods and offer insights into the usage of different estimands for causal inference in genomics.

因果推断基因组学单细胞RNA测序半参数推断多重检验