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Artificial intelligence-based computational framework for drug-target prioritization and inference of novel repositionable drugs for Alzheimer’s disease

机译:基于人工智能的药物 - 目标优先级的计算框架和阿尔茨海默病的新型重新定位药物的推断

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Identifying novel therapeutic targets is crucial for the successful development of drugs. However, the cost to experimentally identify therapeutic targets is huge and only approximately 400 genes are targets for FDA-approved drugs. As a result, it is inevitable to develop powerful computational tools that can identify potential novel therapeutic targets. Fortunately, the human protein-protein interaction network (PIN) could be a useful resource to achieve this objective. In this study, we developed a deep learning-based computational framework that extracts low-dimensional representations of high-dimensional PIN data. Our computational framework uses latent features and state-of-the-art machine learning techniques to infer potential drug target genes. We applied our computational framework to prioritize novel putative target genes for Alzheimer’s disease and successfully identified key genes that may serve as novel therapeutic targets (e.g., DLG4, EGFR, RAC1, SYK, PTK2B, SOCS1). Furthermore, based on these putative targets, we could infer repositionable candidate-compounds for the disease (e.g., tamoxifen, bosutinib, and dasatinib). Our deep learning-based computational framework could be a powerful tool to efficiently prioritize new therapeutic targets and enhance the drug repositioning strategy.
机译:识别新型治疗目标对于成功发展的药物至关重要。然而,实验鉴定治疗靶标的成本是巨大的,只有约400个基因是FDA批准的药物的目标。因此,开发能够识别潜在的新型治疗目标的强大计算工具是不可避免的。幸运的是,人蛋白 - 蛋白质相互作用网络(PIN)可以是实现这一目标的有用资源。在这项研究中,我们开发了一种基于深度学习的计算框架,其提取高维销数据的低维表示。我们的计算框架使用潜在特征和最先进的机器学习技术来推断出潜在的药物靶基因。我们将计算框架应用于用于阿尔茨海默病的新推定靶基因,并成功地确定了可作为新型治疗靶标的关键基因(例如,DLG4,EGFR,RAC1,SYK,PTK2B,SOCS1)。此外,基于这些推定的靶标,我们可以推断用于该疾病的可重新定位候选化合物(例如,Tamoxifen,Bosutinib和Dasatinib)。我们深入的基于学习的计算框架可能是一个有效的工具,可以有效地优先考虑新的治疗目标并增强药物重新定位策略。

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