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Evaluating stably expressed genes in single cells
Author(s) -
Yingxin Lin,
Shila Ghazanfar,
Dario Strbenac,
Andy Wang,
Ellis Patrick,
David Lin,
Terence P. Speed,
Jean Yang,
Pengyi Yang
Publication year - 2019
Publication title -
gigascience
Language(s) - Uncategorized
Resource type - Journals
SCImago Journal Rank - 2.947
H-Index - 54
ISSN - 2047-217X
DOI - 10.1093/gigascience/giz106
Subject(s) - housekeeping gene , biology , gene , computational biology , gene expression , gene expression profiling , transcriptome , population , normalization (sociology) , transcription factor , gene knockdown , single cell analysis , reference genes , genetics , cell , demography , sociology , anthropology
Single-cell RNA-seq (scRNA-seq) profiling has revealed remarkable variation in transcription, suggesting that expression of many genes at the single-cell level is intrinsically stochastic and noisy. Yet, on the cell population level, a subset of genes traditionally referred to as housekeeping genes (HKGs) are found to be stably expressed in different cell and tissue types. It is therefore critical to question whether stably expressed genes (SEGs) can be identified on the single-cell level, and if so, how can their expression stability be assessed? We have previously proposed a computational framework for ranking expression stability of genes in single cells for scRNA-seq data normalization and integration. In this study, we perform detailed evaluation and characterization of SEGs derived from this framework.

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