A robust ensemble framework for anticancer peptide classification using multi-model voting approach
  • Abbas, Zeeshan
  • Kim, Sunyeup
  • Lee, Nangkyeong
  • Kazmi, Syed Aadil Waheed
  • Lee, Seung Won
Citations

SCOPUS

11

초록

Anticancer peptides (ACPs) hold great potential for cancer therapeutics, yet accurately identifying them remains a challenging task due to the complexity of peptide sequences and their interactions with biological systems. In this study, we propose a novel machine learning-based framework for ACP classification, integrating multiple feature sets, including sequence composition, physicochemical properties, and embedding features derived from pre-trained language models. We evaluate the performance of various classifiers on benchmark datasets and compare our model against state-of-the-art methods. The results demonstrate that our model outperforms existing methods such as UniDL4BioPep, ACPred-Fuse, and iACP with an accuracy of 75.58%, an AUC of 0.8272, and an MCC of 0.5119. Our approach provides a more balanced sensitivity of 0.7384 and specificity of 0.773, ensuring robust identification of both ACPs and non-ACPs. These findings suggest that incorporating diverse feature sets can significantly enhance ACP classification, potentially facilitating the discovery of novel anticancer peptides for therapeutic applications. © 2025

키워드

Anticancer peptideBioinformaticsMachine learningMotifsVoting classifier
제목
A robust ensemble framework for anticancer peptide classification using multi-model voting approach
저자
Abbas, ZeeshanKim, SunyeupLee, NangkyeongKazmi, Syed Aadil WaheedLee, Seung Won
DOI
10.1016/j.compbiomed.2025.109750
발행일
2025-04
유형
Article
저널명
Computers in Biology and Medicine
188