AI Article Synopsis

  • - The study introduces a new method, DEHOGT, for analyzing mRNA-seq data to identify differentially expressed genes more effectively by addressing issues like overdispersion and small sample sizes.
  • - DEHOGT uses a heterogeneous overdispersion model and a gene-wise estimation approach, which improves the accuracy and power of detecting gene expression differences across various conditions.
  • - Tests show DEHOGT outperforms traditional methods (like DESeq and EdgeR) in sensitivity and detection of genes that respond to different treatments in microglial cells.

Article Abstract

The mRNA-seq data analysis is a powerful technology for inferring information from biological systems of interest. Specifically, the sequenced RNA fragments are aligned with genomic reference sequences, and we count the number of sequence fragments corresponding to each gene for each condition. A gene is identified as differentially expressed (DE) if the difference in its count numbers between conditions is statistically significant. Several statistical analysis methods have been developed to detect DE genes based on RNA-seq data. However, the existing methods could suffer decreasing power to identify DE genes arising from overdispersion and limited sample size. We propose a new differential expression analysis procedure: heterogeneous overdispersion genes testing (DEHOGT) based on heterogeneous overdispersion modeling and a post-hoc inference procedure. DEHOGT integrates sample information from all conditions and provides a more flexible and adaptive overdispersion modeling for the RNA-seq read count. DEHOGT adopts a gene-wise estimation scheme to enhance the detection power of differentially expressed genes. DEHOGT is tested on the synthetic RNA-seq read count data and outperforms two popular existing methods, DESeq and EdgeR, in detecting DE genes. We apply the proposed method to a test dataset using RNAseq data from microglial cells. DEHOGT tends to detect more differently expressed genes potentially related to microglial cells under different stress hormones treatments.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9980115PMC
http://dx.doi.org/10.1101/2023.02.21.529455DOI Listing

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