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Benchmarking informatics workflows for data-independent acquisition single-cell proteomics

Jianwei Wang, Yi Huang, Fuping Lu, Qin‐Qin Xu, Zhuo Yang, Yirong Jiang, Shao-Wen Shi, Jian‐Zhang Pan, Yi Yang, Qun Fang

2025Nature Communications7 citationsDOIOpen Access PDF

Abstract

Recent years have seen a rise of single-cell proteomics by data-independent acquisition mass spectrometry (DIA MS). While diverse data analysis strategies have been reported in literature, their impact on the outcome of single-cell proteomic experiments has been rarely investigated. Here, we present a framework for benchmarking data analysis strategies for DIA-based single-cell proteomics. This framework provides a comprehensive comparison of popular DIA data analysis software tools and searching strategies, as well as a systematic evaluation of method combinations in subsequent informatic workflow, including sparsity reduction, missing value imputation, normalization, batch effect correction, and differential expression analysis. Benchmarking on simulated single-cell samples consisting of mixed proteomes and real single-cell samples with a spike-in scheme, recommendations are provided for the data analysis for DIA-based single-cell proteomics.

Topics & Concepts

BenchmarkingComputer scienceWorkflowProteomicsInformaticsData scienceProteomeData miningSoftwareData acquisitionHealth informatics toolsData analysisKnowledge acquisitionQuantitative proteomicsSoftware engineeringDifferential (mechanical device)BioinformaticsProtein expressionInformation retrievalProcess (computing)Advanced Proteomics Techniques and ApplicationsSingle-cell and spatial transcriptomicsMass Spectrometry Techniques and Applications
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