NormExpression: An R Package to Normalize Gene Expression Data Using Evaluated Methods

Wu, Zhenfeng and Liu, Weixiang and Jin, Xiufeng and Ji, Haishuo and Wang, Hua and Glusman, Gustavo and Robinson, Max and Liu, Lin and Ruan, Jishou and Gao, Shan (2019) NormExpression: An R Package to Normalize Gene Expression Data Using Evaluated Methods. Frontiers in Genetics, 10. ISSN 1664-8021

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Abstract

Data normalization is a crucial step in the gene expression analysis as it ensures the validity of its downstream analyses. Although many metrics have been designed to evaluate the existing normalization methods, different metrics or different datasets by the same metric yield inconsistent results, particularly for the single-cell RNA sequencing (scRNA-seq) data. The worst situations could be that one method evaluated as the best by one metric is evaluated as the poorest by another metric, or one method evaluated as the best using one dataset is evaluated as the poorest using another dataset. Here raises an open question: principles need to be established to guide the evaluation of normalization methods. In this study, we propose a principle that one normalization method evaluated as the best by one metric should also be evaluated as the best by another metric (the consistency of metrics) and one method evaluated as the best using scRNA-seq data should also be evaluated as the best using bulk RNA-seq data or microarray data (the consistency of datasets). Then, we designed a new metric named Area Under normalized CV threshold Curve (AUCVC) and applied it with another metric mSCC to evaluate 14 commonly used normalization methods using both scRNA-seq data and bulk RNA-seq data, satisfying the consistency of metrics and the consistency of datasets. Our findings paved the way to guide future studies in the normalization of gene expression data with its evaluation. The raw gene expression data, normalization methods, and evaluation metrics used in this study have been included in an R package named NormExpression. NormExpression provides a framework and a fast and simple way for researchers to select the best method for the normalization of their gene expression data based on the evaluation of different methods (particularly some data-driven methods or their own methods) in the principle of the consistency of metrics and the consistency of datasets.

Item Type: Article
Subjects: STM Article > Medical Science
Depositing User: Unnamed user with email support@stmarticle.org
Date Deposited: 10 Feb 2023 09:16
Last Modified: 02 Mar 2024 04:49
URI: http://publish.journalgazett.co.in/id/eprint/422

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