The use of 4D data-independent acquisition-based proteomic analysis and machine learning to reveal potential biomarkers for stress levels.

Dehua Chen, Yongsheng Yang, Dongdong Shi, Zhenhua Zhang, Mei Wang, Qiao Pan, Jianwen Su, Zhen Wang
Author Information
  1. Dehua Chen: School of Computer Science and Technology, DongHua University, ShangHai, P. R. China. ORCID
  2. Yongsheng Yang: School of Computer Science and Technology, DongHua University, ShangHai, P. R. China. ORCID
  3. Dongdong Shi: ShangHai Mental Health Center, Shanghai JiaoTong University, School of Medicine, P. R. China. ORCID
  4. Zhenhua Zhang: School of Computer Science and Technology, DongHua University, ShangHai, P. R. China. ORCID
  5. Mei Wang: School of Computer Science and Technology, DongHua University, ShangHai, P. R. China. ORCID
  6. Qiao Pan: School of Computer Science and Technology, DongHua University, ShangHai, P. R. China. ORCID
  7. Jianwen Su: University of California, Santa Barbara, USA. ORCID
  8. Zhen Wang: ShangHai Mental Health Center, Shanghai JiaoTong University, School of Medicine, P. R. China. ORCID

Abstract

Research suggests that individuals who experience prolonged exposure to stress may be at higher risk for developing psychological stress disorders. Currently, psychological stress is primarily evaluated by professional physicians using rating scales, which may be prone to subjective biases and limitations of the scales. Therefore, it is imperative to explore more objective, accurate, and efficient biomarkers for evaluating the level of psychological stress in an individual. In this study, we utilized 4D data-independent acquisition (4D-DIA) proteomics for quantitative protein analysis, and then employed support vector machine (SVM) combined with SHAP interpretation algorithm to identify potential biomarkers for psychological stress levels. Biomarkers validation was subsequently achieved through machine learning classification and a substantial amount of a priori knowledge derived from the knowledge graph. We performed cross-validation of the biomarkers using two batches of data, and the results showed that the combination of Glyceraldehyde-3-phosphate dehydrogenase and Fibronectin yielded an average area under the curve (AUC) of 92%, an average accuracy of 86%, an average F1 score of 79%, and an average sensitivity of 83%. Therefore, this combination may represent a potential approach for detecting stress levels to prevent psychological stress disorders.

Keywords

MeSH Term

Biomarkers
Proteomics
Stress, Psychological
Humans
Support Vector Machine
Machine Learning
Male
Algorithms
Female
Adult
Fibronectins

Chemicals

Biomarkers
Fibronectins

Word Cloud

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