Litcius/Paper detail

Assessing and mitigating batch effects in large-scale omics studies

Ying Yu, Yuanbang Mai, Yuanting Zheng, Leming Shi

2024Genome biology143 citationsDOIOpen Access PDF

Abstract

Batch effects in omics data are notoriously common technical variations unrelated to study objectives, and may result in misleading outcomes if uncorrected, or hinder biomedical discovery if over-corrected. Assessing and mitigating batch effects is crucial for ensuring the reliability and reproducibility of omics data and minimizing the impact of technical variations on biological interpretation. In this review, we highlight the profound negative impact of batch effects and the urgent need to address this challenging problem in large-scale omics studies. We summarize potential sources of batch effects, current progress in evaluating and correcting them, and consortium efforts aiming to tackle them.

Topics & Concepts

BiologyHuman geneticsGenome BiologyComputational biologyScale (ratio)OmicsGenomicsEvolutionary biologyData scienceBioinformaticsGeneticsGenomeComputer scienceGeneQuantum mechanicsPhysicsBioinformatics and Genomic NetworksSingle-cell and spatial transcriptomicsMetabolomics and Mass Spectrometry Studies