Xiangya School of Pharmaceutical Sciences, Central South University, No. 172 Tongzipo Road, Yuelu District, Changsha 410083, P.R. China.
The Interdisciplinary Graduate Program in Integrative Biotechnology and Translational Medicine, Yonsei University, 214, Veritas A Hall, Yonsei Univeristy, 85 Songdogwahak-ro, Incheon 21983, Republic of Korea.
Brief Bioinform. 2024 May 23;25(4). doi: 10.1093/bib/bbae350.
Peptide drugs are becoming star drug agents with high efficiency and selectivity which open up new therapeutic avenues for various diseases. However, the sensitivity to hydrolase and the relatively short half-life have severely hindered their development. In this study, a new generation artificial intelligence-based system for accurate prediction of peptide half-life was proposed, which realized the half-life prediction of both natural and modified peptides and successfully bridged the evaluation possibility between two important species (human, mouse) and two organs (blood, intestine). To achieve this, enzymatic cleavage descriptors were integrated with traditional peptide descriptors to construct a better representation. Then, robust models with accurate performance were established by comparing traditional machine learning and transfer learning, systematically. Results indicated that enzymatic cleavage features could certainly enhance model performance. The deep learning model integrating transfer learning significantly improved predictive accuracy, achieving remarkable R2 values: 0.84 for natural peptides and 0.90 for modified peptides in human blood, 0.984 for natural peptides and 0.93 for modified peptides in mouse blood, and 0.94 for modified peptides in mouse intestine on the test set, respectively. These models not only successfully composed the above-mentioned system but also improved by approximately 15% in terms of correlation compared to related works. This study is expected to provide powerful solutions for peptide half-life evaluation and boost peptide drug development.
肽类药物具有高效性和选择性,正在成为明星药物制剂,为各种疾病开辟了新的治疗途径。然而,它们对水解酶的敏感性和相对较短的半衰期严重阻碍了它们的发展。在这项研究中,提出了一种新的基于人工智能的肽类半衰期准确预测系统,该系统实现了天然肽和修饰肽的半衰期预测,并成功弥合了两种重要物种(人、鼠)和两种器官(血液、肠道)之间的评估可能性。为了实现这一目标,将酶切描述符与传统的肽描述符集成在一起,以构建更好的表示。然后,通过比较传统机器学习和迁移学习,系统地建立了具有准确性能的稳健模型。结果表明,酶切特征确实可以提高模型性能。结合迁移学习的深度学习模型显著提高了预测准确性,在测试集上,天然肽在人血液中的 R2 值达到 0.84,修饰肽达到 0.90;天然肽在鼠血液中的 R2 值达到 0.984,修饰肽达到 0.93;修饰肽在鼠肠道中的 R2 值达到 0.94,分别取得了显著的结果。这些模型不仅成功构建了上述系统,而且与相关工作相比,相关性提高了约 15%。这项研究有望为肽类半衰期评估提供强大的解决方案,并推动肽类药物的开发。