PSR-MAPMS: A new approach for the interpretable prediction of myelin autoantigenic peptides in multiple sclerosis using multi-source propensity scores.

Journal: Protein science : a publication of the Protein Society
Published Date:

Abstract

Within the central nervous system, the myelin sheath is composed of elements known as myelin autoantigens that are mistakenly targeted by the immune system in multiple sclerosis (MS). This autoimmune attack leads to the destruction of myelin, resulting in the neurological symptoms characteristic of MS. Identifying myelin autoantigenic peptides is crucial for understanding the pathogenesis of MS and developing targeted therapies. Traditional approaches often struggle with the complexity and heterogeneity of biological data, making it challenging to achieve accurate predictions in a cost-effective manner. Alternatively, computational approaches that utilize sequence information can aid in the biological elucidation of peptides. In this study, we present a novel propensity score-based approach, termed PSR-MAPMS, to predict and characterize T cell-specific myelin autoantigenic peptides in MS (MAPMSs). To the extent of our knowledge, PSR-MAPMS is the first machine learning (ML)-based approach that can predict and analyze MAPMSs based solely on sequence information. In PSR-MAPMS, we generated multiple aspects of propensity scores for MAPMSs. Important propensity scores were then chosen and applied to create the final hybrid model using an ensemble learning strategy. Extensive experiments results showed that PSR-MAPMS surpasses several conventional ML-based classifiers for MAPMS prediction in both cross-validation and independent tests. In the independent test results, the accuracy, MCC, and F1 scores of PSR-MAPMS were within the ranges of 0.899-0.949, 0.800-0.899, and 0.903-949, respectively. Moreover, our estimated propensity scores can identify crucial biochemical and physicochemical properties of MAPMSs, providing valuable revelations of the fundamental biological mechanisms, which facilitates the development of more effective and personalized treatments for MS. In addition, we created a simple-to-navigate web server for PSR-MAPMS, which is publicly accessible at https://pmlabqsar.pythonanywhere.com/PSR-MAPMS.

Authors

  • Phasit Charoenkwan
  • Nalini Schaduangrat
    Center of Data Mining and Biomedical Informatics, Faculty of Medical Technology, Mahidol University, Bangkok 10700, Thailand.
  • Pramote Chumnanpuen
    Department of Zoology, Faculty of Science, Kasetsart University, Bangkok 10900, Thailand; Kasetsart University International College (KUIC), Kasetsart University, Bangkok 10900, Thailand.
  • Watshara Shoombuatong
    Center of Data Mining and Biomedical Informatics, Faculty of Medical Technology, Mahidol University, Bangkok 10700, Thailand.