A machine learning method for the discovery of minimum marker gene combinations for cell type identification from single-cell RNA sequencing
生物
电池类型
计算生物学
细胞
基因
基因组学
基因表达
表型
遗传学
核糖核酸
基因组
作者
Brian D. Aevermann,Yun Zhang,Mark Novotny,Mohamed Keshk,Trygve E. Bakken,Jeremy A. Miller,Rebecca D. Hodge,Boudewijn P. F. Lelieveldt,Ed S. Lein,Richard H. Scheuermann
出处
期刊:Genome Research [Cold Spring Harbor Laboratory] 日期:2021-06-04卷期号:31 (10): 1767-1780被引量:70
Single-cell genomics is rapidly advancing our knowledge of the diversity of cell phenotypes, including both cell types and cell states. Driven by single-cell/-nucleus RNA sequencing (scRNA-seq), comprehensive cell atlas projects characterizing a wide range of organisms and tissues are currently underway. As a result, it is critical that the transcriptional phenotypes discovered are defined and disseminated in a consistent and concise manner. Molecular biomarkers have historically played an important role in biological research, from defining immune cell types by surface protein expression to defining diseases by their molecular drivers. Here, we describe a machine learning-based marker gene selection algorithm, NS-Forest version 2.0, which leverages the nonlinear attributes of random forest feature selection and a binary expression scoring approach to discover the minimal marker gene expression combinations that optimally capture the cell type identity represented in complete scRNA-seq transcriptional profiles. The marker genes selected provide an expression barcode that serves as both a useful tool for downstream biological investigation and the necessary and sufficient characteristics for semantic cell type definition. The use of NS-Forest to identify marker genes for human brain middle temporal gyrus cell types reveals the importance of cell signaling and noncoding RNAs in neuronal cell type identity.