Topology-enhanced machine learning model (Top-ML) for anticancer peptide prediction
Topology-enhanced machine learning model (Top-ML) for anticancer peptide prediction
Recently, therapeutic peptides have demonstrated great promise for cancer treatment. To explore powerful anticancer peptides, artificial intelligence (AI)-based approaches have been developed to systematically screen potential candidates. However, the lack of efficient featurization of peptides has become a bottleneck for these machine-learning models. In this paper, we propose a topology-enhanced machine learning model (Top-ML) for anticancer peptides prediction. Our Top-ML employs peptide topological features derived from its sequence "connection" information characterized by vector and spectral descriptors. Our Top-ML model, employing an Extra-Trees classifier, has been validated on the AntiCP 2.0 and mACPpred 2.0 benchmark datasets, achieving state-of-the-art performance or results comparable to existing deep learning models, while providing greater interpretability. Our results highlight the potential of leveraging novel topology-based featurization to accelerate the identification of anticancer peptides.
Joshua Zhi En Tan、JunJie Wee、Xue Gong、Kelin Xia
生物科学研究方法、生物科学研究技术
Joshua Zhi En Tan,JunJie Wee,Xue Gong,Kelin Xia.Topology-enhanced machine learning model (Top-ML) for anticancer peptide prediction[EB/OL].(2024-07-12)[2025-04-30].https://arxiv.org/abs/2407.08974.点此复制
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