mHPpred: Accurate identification of peptide hormones using multi-view feature learning

被引:2
作者
Basith, Shaherin [1 ]
Sangaraju, Vinoth Kumar [2 ]
Manavalan, Balachandran [2 ]
Lee, Gwang [1 ,3 ]
机构
[1] Department of Physiology, Ajou University School of Medicine, Suwon
[2] Department of Integrative Biotechnology, College of Biotechnology and Bioengineering, Sungkyunkwan University, Suwon
[3] Department of Molecular Science and Technology, Ajou University, Suwon
基金
新加坡国家研究基金会;
关键词
Hybrid approach; Integrative framework; Machine learning; Meta-model; Multi-view learning; Peptide hormones;
D O I
10.1016/j.compbiomed.2024.109297
中图分类号
学科分类号
摘要
Peptide hormones were first used in medicine in the early 20th century, with the pivotal event being the isolation and purification of insulin in 1921. These hormones are integral to a sophisticated system that emerged early in evolution to regulate growth, development, and homeostasis. They serve as targeted signaling molecules that transfer specific information between cells and organs, ensuring coordinated and precise physiological responses. While experimental methods for identifying peptide hormones present challenges such as low abundance, stability issues, and complexity, computational methods offer promising alternatives. Advances in machine learning and bioinformatics have facilitated the prediction of peptide hormones, further enhancing their therapeutic potential. In this study, we explored three different computational frameworks for peptide hormone identification and determined that the meta-approach was the most suitable. Firstly, we evaluated the discriminative power of 26 feature descriptors using a series of baseline models and identified seven feature descriptors with high predictive potential. Through a systematic approach, we then selected the top 20 performing baseline models and integrated their predicted probabilities to train a meta-model, leveraging the strengths of multiple prediction strategies. Our final light gradient boosting-based meta-model, mHPpred, significantly outperformed the existing method, HOPPred, on both benchmarking and independent datasets. Notably, mHPpred also demonstrated superior performance compared to the hybrid and integrative framework approaches employed in this study. This superiority demonstrates the effectiveness of our multi-view feature learning strategy in capturing discriminative features and providing a more accurate prediction model for peptide hormones. mHPpred is publicly accessible at: https://balalab-skku.org/mHPpred. © 2024 Elsevier Ltd
引用
收藏
相关论文
共 72 条
[1]  
Falcetta P., Aragona M., Bertolotto A., Bianchi C., Campi F., Garofolo M., Et al., Insulin discovery: a pivotal point in medical history, Metabolism, 127, (2022)
[2]  
Ghosh S., Mahalanobish S., Sil P.C., Diabetes: discovery of insulin, genetic, epigenetic and viral infection mediated regulation, Nucleus (Calcutta)., 65, pp. 283-297, (2022)
[3]  
Seetharaman R., Pawar S., Advani M., One hundred years since insulin discovery: an update on current and future perspectives for pharmacotherapy of diabetes mellitus, Br. J. Clin. Pharmacol., 88, pp. 1598-1612, (2022)
[4]  
Huang C., Palani A., Yang Z., Deng Q., Reddy V., Nargund R.P., Et al., Discovery of insulin/GLP-1/glucagon triagonists for the treatment of diabetes and obesity, ACS Med. Chem. Lett., 13, pp. 1255-1261, (2022)
[5]  
Mishra R.P., Gupta S., Rathore A.S., Goel G., Multi-level high-throughput screening for discovery of ligands that inhibit insulin aggregation, Mol. Pharm., 19, pp. 3770-3783, (2022)
[6]  
Pissarnitski D.A., Kekec A., Yan L., Zhu Y., Feng D.D., Huo P., Et al., Discovery of insulin receptor partial agonists MK-5160 and MK-1092 as novel basal insulins with potential to improve therapeutic index, J. Med. Chem., 65, pp. 5593-5605, (2022)
[7]  
Racz O., [How was it? Contributions to the history of insulin discovery], Orv. Hetil., 163, pp. 201-205, (2022)
[8]  
Mirabeau O., Perlas E., Severini C., Audero E., Gascuel O., Possenti R., Et al., Identification of novel peptide hormones in the human proteome by hidden Markov model screening, Genome Res., 17, pp. 320-327, (2007)
[9]  
Kolodziejski P.A., Pruszynska-Oszmalek E., Wojciechowicz T., Sassek M., Leciejewska N., Jasaszwili M., Et al., The role of peptide hormones discovered in the 21st century in the regulation of adipose tissue functions, Genes (Basel), 12, (2021)
[10]  
Wang L., Wang N., Zhang W., Cheng X., Yan Z., Shao G., Et al., Therapeutic peptides: current applications and future directions, Signal Transduct Target Ther, 7, (2022)