Abstract
Motivation: When identifying differentially expressed (DE) genes from high-throughput gene expression measurements, we would like to take both statistical significance (such as P-value) and biological relevance (such as fold change) into consideration. In gene set enrichment analysis (GSEA), a score that can combine fold change and P-value together is needed for better gene ranking.Results: We defined a gene significance score π-value by combining expression fold change and statistical significance (P-value), and explored its statistical properties. When compared to various existing methods, π-value based approach is more robust in selecting DE genes, with the largest area under curve in its receiver operating characteristic curve. We applied π-value to GSEA and found it comparable to P-value and t-statistic based methods, with added protection against false discovery in certain situations. Finally, in a gene functional study of breast cancer profiles, we showed that using π-value helps elucidating otherwise overlooked important biological functions. © 2013 The Author 2013. Published by Oxford University Press. All rights reserved.
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CITATION STYLE
Xiao, Y., Hsiao, T. H., Suresh, U., Chen, H. I. H., Wu, X., Wolf, S. E., & Chen, Y. (2014). A novel significance score for gene selection and ranking. Bioinformatics, 30(6), 801–807. https://doi.org/10.1093/bioinformatics/btr671
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