The Application of Machine Learning in Doping Detection.

Journal: Journal of chemical information and modeling
PMID:

Abstract

Detecting doping agents in sports poses a significant challenge due to the continuous emergence of new prohibited substances and methods. Traditional detection methods primarily rely on targeted analysis, which is often labor-intensive and is susceptible to errors. In response, machine learning offers a transformative approach to enhancing doping screening and detection. With its powerful data analysis capabilities, machine learning enables the rapid identification of patterns and features in complex compound data, increasing both the efficiency and the accuracy of detection. Moreover, when integrated with nontargeted metabolomics, machine learning can predict unknown metabolites, aiding the discovery of long-lasting biomarkers of doping. It also excels in classifying novel compounds, thereby reducing false-negative rates. As instrumental analysis and machine learning technologies continue to advance, the development of rapid, scalable, and highly efficient doping detection methods becomes increasingly feasible, supporting the pursuit of fairness and integrity in sports competitions.

Authors

  • Qingqing Yang
    School of Agricultural Engineering and Food Science, Shandong University of Technology, No. 266 Xincun West Road, Zibo 255049, China.
  • Wennuo Xu
    School of Life Sciences, Shanghai University, Shanghai, 200444, China.
  • Xiaodong Sun
    Shanghai Key Laboratory of Ocular Fundus Diseases, Shanghai General Hospital, Shanghai JiaoTong University, 200080 Shanghai, China.
  • Qin Chen
    School of Life Sciences, Shanghai University, Shanghai 200444, China. Electronic address: chenqincc@edu.cn.
  • Bing Niu
    College of Life Science, Shanghai University, 99 Shang-Da Road, Shanghai 200444, China.