MSIQ: Joint Modeling of Multiple RNA-seq Samples for Accurate Isoform Quantification
Wei Vivian Li, Anqi Zhao, Shihua Zhang, Jingyi Jessica Li

TL;DR
MSIQ is a Bayesian method that jointly models multiple RNA-seq samples to improve isoform quantification accuracy by identifying consistent sample groups and weighting them appropriately.
Contribution
This paper introduces MSIQ, a novel Bayesian approach that enhances isoform quantification accuracy by integrating multiple RNA-seq samples while accounting for sample heterogeneity.
Findings
MSIQ outperforms existing methods in simulation studies.
MSIQ provides more robust isoform estimates.
Application to real data demonstrates improved accuracy.
Abstract
Next-generation RNA sequencing (RNA-seq) technology has been widely used to assess full-length RNA isoform abundance in a high-throughput manner. RNA-seq data offer insight into gene expression levels and transcriptome structures, enabling us to better understand the regulation of gene expression and fundamental biological processes. Accurate isoform quantification from RNA-seq data is challenging due to the information loss in sequencing experiments. A recent accumulation of multiple RNA-seq data sets from the same tissue or cell type provides new opportunities to improve the accuracy of isoform quantification. However, existing statistical or computational methods for multiple RNA-seq samples either pool the samples into one sample or assign equal weights to the samples when estimating isoform abundance. These methods ignore the possible heterogeneity in the quality of different…
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