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UGM: a more stable procedure for large-scale multiple testing problems, new solutions to identify oncogene

, , , , , , , and . Theor Biol Med Model 16 (1): 20-20 (December 2019)

Abstract

Variations of gene expression levels play an important role in tumors. There are numerous methods to identify differentially expressed genes in high-throughput sequencing. Several algorithms endeavor to identify distinctive genetic patterns susceptable to particular diseases. Although these processes have been proved successful, the probability that the number of non-differentially expressed genes measured by false discovery rate (FDR) has a large standard deviation, and the misidentification rate (type I error) grows rapidly when the number of genes to be detected become larger. In this study we developed a new method, Unit Gamma Measurement (UGM), accounting for multiple hypotheses test statistics distribution, which could reduce the dependency problem. Simulated expression profile data and breast cancer RNA-Seq data were utilized to testify the accuracy of UGM. The results show that the number of non-differentially expressed genes identified by the UGM is very close to the real-evidence data, and the UGM also has a smaller standard error, range, quartile range and RMS error. In addition, the UGM can be used to screen many breast cancer-associated genes, such as BRCA1, BRCA2, PTEN, BRIP1, etc., provides better accuracy, robustness and efficiency, the method of identification differentially expressed genes in high-throughput sequencing.

Description

UGM: a more stable procedure for large-scale multiple testing problems, new solutions to identify oncogene. - PubMed - NCBI

Links and resources

DOI:
10.1186/s12976-019-0117-1
URL:
BibTeX key:
Liu:2019:Theor-Biol-Med-Model:31865918
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