4.7 Review

Application of Machine Learning in Spatial Proteomics

期刊

JOURNAL OF CHEMICAL INFORMATION AND MODELING
卷 62, 期 23, 页码 5875-5895

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.jcim.2c01161

关键词

spatial proteomics; machine learning; deep learning; protein subcellular localization; mass spectrometry; imaging; data resources; analytical tools; cell biology

资金

  1. Natural Science Foundation of Zhejiang Province [LR21H300001]
  2. National Natural Science Foundation of China [U1909208, 81872798]
  3. Leading Talent of Ten Thousand Plan of the National High-Level Talents Special Support Plan of China
  4. Fundamental Research Fund of Central University [2018QNA7023]
  5. Key R&D Program of Zhejiang Province [2020C03010]
  6. Chinese Double Top-Class Universities [181201*194232101]
  7. Westlake Laboratory (Westlake Laboratory of Life Science and Biomedicine)
  8. Alibaba-Zhejiang University Joint Research Center of Future Digital Healthcare
  9. Alibaba Cloud
  10. Information Tech Center of Zhejiang University

向作者/读者索取更多资源

Spatial proteomics is an interdisciplinary field studying the localization and dynamics of proteins, with a particular focus on subcellular proteomics. Machine learning methods have been widely used to analyze spatial proteomic data obtained through mass spectrometry and imaging-based approaches. This review comprehensively surveys the applications of machine learning in spatial proteomics, including data resources, algorithms, successful applications, and challenges. It provides guidance for researchers and contributes to cell biology research, medical advancements, and drug discovery.
Spatial proteomics is an interdisciplinary field that investigates the localization and dynamics of proteins, and it has gained extensive attention in recent years, especially the subcellular proteomics. Numerous evidence indicate that the subcellular localization of proteins is associated with various cellular processes and disease progression. Mass spectrometry (MS)-based and imaging-based experimental approaches have been developed to acquire large-scale spatial proteomic data. To allow the reliable analysis of increasingly complex spatial proteomics data, machine learning (ML) methods have been widely used in both MS-based and imaging-based spatial proteomic data analysis pipelines. Here, we comprehensively survey the applications of ML in spatial proteomics from following aspects: (1) data resources for spatial proteome are comprehensively introduced; (2) the roles of different ML algorithms in data analysis pipelines are elaborated; (3) successful applications of spatial proteomics and several analytical tools integrating ML methods are presented; (4) challenges existing in modern ML-based spatial proteomics studies are discussed. This review provides guidelines for researchers seeking to apply ML methods to analyze spatial proteomic data and can facilitate insightful understanding of cell biology as well as the future research in medical and drug discovery communities.

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