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Advances in data-independent acquisition mass spectrometry towards comprehensive digital proteome landscape

期刊

MASS SPECTROMETRY REVIEWS
卷 42, 期 6, 页码 2324-2348

出版社

WILEY
DOI: 10.1002/mas.21781

关键词

data-independent acquisition (DIA); mass spectrometry; proteomics

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Data-independent acquisition mass spectrometry (DIA-MS) is a highly reproducible proteome profiling method that generates permanent digital maps for retrospective analysis. Recent advancements have improved the sensitivity and coverage of DIA-MS. This review discusses the evolution of DIA-MS techniques, recent applications, and challenges.
The data-independent acquisition mass spectrometry (DIA-MS) has rapidly evolved as a powerful alternative for highly reproducible proteome profiling with a unique strength of generating permanent digital maps for retrospective analysis of biological systems. Recent advancements in data analysis software tools for the complex DIA-MS/MS spectra coupled to fast MS scanning speed and high mass accuracy have greatly expanded the sensitivity and coverage of DIA-based proteomics profiling. Here, we review the evolution of the DIA-MS techniques, from earlier proof-of-principle of parallel fragmentation of all-ions or ions in selected m/z range, the sequential window acquisition of all theoretical mass spectra (SWATH-MS) to latest innovations, recent development in computation algorithms for data informatics, and auxiliary tools and advanced instrumentation to enhance the performance of DIA-MS. We further summarize recent applications of DIA-MS and experimentally-derived as well as in silico spectra library resources for large-scale profiling to facilitate biomarker discovery and drug development in human diseases with emphasis on the proteomic profiling coverage. Toward next-generation DIA-MS for clinical proteomics, we outline the challenges in processing multi-dimensional DIA data set and large-scale clinical proteomics, and continuing need in higher profiling coverage and sensitivity.

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