2024
DOI: 10.1038/s42003-024-06020-z
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Procrustes is a machine-learning approach that removes cross-platform batch effects from clinical RNA sequencing data

Nikita Kotlov,
Kirill Shaposhnikov,
Cagdas Tazearslan
et al.

Abstract: With the increased use of gene expression profiling for personalized oncology, optimized RNA sequencing (RNA-seq) protocols and algorithms are necessary to provide comparable expression measurements between exome capture (EC)-based and poly-A RNA-seq. Here, we developed and optimized an EC-based protocol for processing formalin-fixed, paraffin-embedded samples and a machine-learning algorithm, Procrustes, to overcome batch effects across RNA-seq data obtained using different sample preparation protocols like E… Show more

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“…ComBat-seq [6], which uses a general linear model (GLM) with a negative binomial distribution retains the integer count data and has shown better statistical power than ComBat and other previous methods. More recently, machine learning methods [7], [8] have also been proposed to model the data discrepancies among batches and eliminate batch effects from RNA-seq data.…”
Section: Introductionmentioning
confidence: 99%
“…ComBat-seq [6], which uses a general linear model (GLM) with a negative binomial distribution retains the integer count data and has shown better statistical power than ComBat and other previous methods. More recently, machine learning methods [7], [8] have also been proposed to model the data discrepancies among batches and eliminate batch effects from RNA-seq data.…”
Section: Introductionmentioning
confidence: 99%