Corrigendum to “Modeling PROTAC degradation activity with machine learning” [Artif. Intell. Life Sci. 6 (2024) 100104]

Stefano Ribes , Eva Nittinger , Christian Tyrchan , Rocío Mercado
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Abstract

PROTACs are a promising therapeutic modality that harnesses the cell’s built-in degradation machinery to degrade specific proteins. Despite their potential, developing new PROTACs is challenging and requires significant domain expertise, time, and cost. Meanwhile, machine learning has transformed drug design and development. In this work, we present a strategy for curating open-source PROTAC data and an open-source deep learning tool for predicting the degradation activity of novel PROTAC molecules. The curated dataset incorporates important information such as pDC50, Dmax, E3 ligase type, POI amino acid sequence, and experimental cell type. Our model architecture leverages learned embeddings from pretrained machine learning models, in particular for encoding protein sequences and cell type information. We assessed the quality of the curated data and the generalization ability of our model architecture against new PROTACs and targets via three tailored studies, which we recommend other researchers to use in evaluating their degradation activity models. In each study, three models predict protein degradation in a majority vote setting, reaching a top test accuracy of 80.8% and 0.865 ROC-AUC, and a test accuracy of 62.3% and 0.604 ROC-AUC when generalizing to novel protein targets. Our results are not only comparable to state-of-the-art models for protein degradation prediction, but also part of an open-source implementation which is easily reproducible and less computationally complex than existing approaches.
“用机器学习建模PROTAC降解活动”的勘误表[Artif。智能。生命科学,6 (2024)100104]
PROTACs是一种很有前途的治疗方式,它利用细胞内置的降解机制来降解特定的蛋白质。尽管它们具有潜力,但开发新的protac具有挑战性,需要大量的领域专业知识、时间和成本。与此同时,机器学习已经改变了药物的设计和开发。在这项工作中,我们提出了一种策略,用于管理开源PROTAC数据和开源深度学习工具,用于预测新型PROTAC分子的降解活性。整理的数据集包含重要信息,如pDC50, Dmax, E3连接酶类型,POI氨基酸序列和实验细胞类型。我们的模型架构利用了预训练机器学习模型的学习嵌入,特别是编码蛋白质序列和细胞类型信息。我们通过三个量身定制的研究评估了整理数据的质量和我们的模型架构对新PROTACs和目标的泛化能力,我们建议其他研究人员在评估他们的降解活性模型时使用这些研究。在每项研究中,三个模型在多数投票设置下预测蛋白质降解,最高测试精度为80.8%和0.865 ROC-AUC,当推广到新的蛋白质靶标时,测试精度为62.3%和0.604 ROC-AUC。我们的结果不仅可以与最先进的蛋白质降解预测模型相媲美,而且还可以作为开源实现的一部分,与现有方法相比,它易于重现,计算复杂性更低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Artificial intelligence in the life sciences
Artificial intelligence in the life sciences Pharmacology, Biochemistry, Genetics and Molecular Biology (General), Computer Science Applications, Health Informatics, Drug Discovery, Veterinary Science and Veterinary Medicine (General)
CiteScore
5.00
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0.00%
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0
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15 days
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