2021
DOI: 10.15252/msb.202110240
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Diagnostics and correction of batch effects in large‐scale proteomic studies: a tutorial

Abstract: Advancements in mass spectrometry‐based proteomics have enabled experiments encompassing hundreds of samples. While these large sample sets deliver much‐needed statistical power, handling them introduces technical variability known as batch effects. Here, we present a step‐by‐step protocol for the assessment, normalization, and batch correction of proteomic data. We review established methodologies from related fields and describe solutions specific to proteomic challenges, such as ion intensity drift and miss… Show more

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Cited by 77 publications
(113 citation statements)
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References 55 publications
(90 reference statements)
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“…The proteomics dataset was further processed using R, Perseus 1.5.6 [23,24] and GraphPad 8.2.1. Protein quantities were log2 transformed and quantile normalised at sample level using proBatch package [25] in R followed by protein median centering across the samples. The normalized dataset was then visualized by hierarchical clustering using ComplexHeatmap package in R [26].…”
Section: Methodsmentioning
confidence: 99%
“…The proteomics dataset was further processed using R, Perseus 1.5.6 [23,24] and GraphPad 8.2.1. Protein quantities were log2 transformed and quantile normalised at sample level using proBatch package [25] in R followed by protein median centering across the samples. The normalized dataset was then visualized by hierarchical clustering using ComplexHeatmap package in R [26].…”
Section: Methodsmentioning
confidence: 99%
“…In addition, antibody‐based platforms present strong batch effects. Proteomics also has a strong batch effect, which introduces noise that reduces the statistical power and decreases the validity of the conclusions (Čuklina et al, 2021). Therefore, a direct comparison of the outcomes is usually inaccurate.…”
Section: Guideline For Biochemical Biomarker Studies In Periodontal M...mentioning
confidence: 99%
“…The ComBat algorithm has seen many refinements and applications to domains outside of microarray data (see e.g. [9,35,51]). However, most data sets have still been small and did not come with an extensive design matrix.…”
Section: Algorthimmentioning
confidence: 99%
“…The ComBat algorithm has seen many refinements and applications (see e.g. (Čuklina et al ., 2021; Müller et al ., 2016; Zhang et al ., 2020)). However, most data-sets have still been small and did not come with an extensive design matrix.…”
Section: Approachmentioning
confidence: 99%