计算生物学
转录组
细胞
生物
计算机科学
遗传学
基因
基因表达
作者
Shreya Johri,Kevin Bi,Breanna M. Titchen,Jingxin Fu,Jake R. Conway,Jett Crowdis,Natalie I. Vokes,Zenghua Fan,Lawrence Fong,Jihye Park,David Liu,Meng Xiao He,Eliezer M. Van Allen
标识
DOI:10.1038/s41467-025-57377-6
摘要
With the growth of clinical cancer single-cell RNA sequencing studies, robust differential expression methods for case/control analyses (e.g., treatment responders vs. non-responders) using gene signatures are pivotal to nominate hypotheses for further investigation. However, many commonly used methods produce a large number of false positives, do not adequately represent the patient-specific hierarchical structure of clinical single-cell RNA sequencing data, or account for sample-driven confounders. Here, we present a nonparametric statistical method, BEANIE, for differential expression of gene signatures between clinically relevant groups that addresses these issues. We demonstrate its use in simulated and real-world clinical datasets in breast cancer, lung cancer and melanoma. BEANIE outperforms existing methods in specificity while maintaining sensitivity, as demonstrated in simulations. Overall, BEANIE provides a methodological strategy to inform biological insights into unique and shared differentially expressed gene signatures across different tumor states, with utility in single-study, meta-analysis, and cross-validation across cell types.
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