基于分子图像的可解释人工智能框架识别新型候选抗生素

Kingsten Lin, Yuxin Yang, Feixiong Cheng
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引用次数: 0

摘要

抗生素耐药性的持续增长和抗生素发现速度的放缓给抗击传染病带来了巨大挑战。人工智能(AI)技术的最新进展为快速开发有效抗生素提供了一种省时、经济的解决方案。在这项研究中,我们利用 1000 万张类药物分子图像,从预先训练的模型中提出了一个可解释的人工智能框架。具体来说,我们从金黄色葡萄球菌抑制实验中创建了一个经过微调的 ImageMol,其中包含 24,521 个分子,由 516 个活性化合物和 24,005 个非活性化合物组成。我们的优化 AI 模型达到了 0.926 的高 AUROC。然后,我们使用该模型从 DrugBank 数据库中的 10,247 个获得 FDA 批准、临床研究或实验性分子中预测抗生素活性。经过进一步筛选,确定了 340 个分子具有抗菌作用,同时又与已知抗生素不同。最后,有 76 种候选药物被确定为美国食品及药物管理局批准用于其他用途的药物。因此,这些候选分子可以被改造成所需的新型抗生素。我们还通过梯度加权类活化图谱(Grad-CAM)热图分析,进一步说明了顶级预测候选药物的可解释分子图像。总之,本文介绍的基于分子图像的人工智能模型因其高性能、快速和生物解释性,在药物发现领域大有可为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Molecular Image-based Explainable Artificial intelligence Framework Identifies Novel Candidate Antibiotics
The continued growth of antibiotic resistance and the slowing of antibiotic discovery poses a large challenge in fighting infectious diseases. Recent advances in Artificial intelligence (AI) technologies offer a time- and cost-effective solution for the rapid development of effective antibiotics. In this study, we presented an explainable AI framework from a pre-trained model using 10 million drug-like molecular images. Specifically, we created a fine-tuned ImageMol from experimental Staphylococcus aureus inhibition assays which contained 24,521 molecules consisting of 516 active compounds and 24,005 non-active compounds. Our optimized AI model achieved a strong AUROC of 0.926. The model was then used to predict the antibiotic activities from 10,247 FDA-approved, clinically investigational, or experimental molecules from the DrugBank database. After further filtering, 340 molecules were identified to have antibacterial behavior while simultaneously being dissimilar to known antibiotics. Finally, 76 candidates were identified as FDA-approved drugs for other applications. Thus, those candidates can be repurposed into needed novel antibiotics. We further illustrated explainable molecular images for top predicted candidate drugs via Gradient-weighted Class Activation Mapping (Grad-CAM) heatmap analysis. In summary, the presented molecular image-based AI model in drug discovery could be highly favorable due to its high performance, speed, and biological interpretation.
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