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A Bayesian machine learning approach for drug target identification using diverse data types

机译:使用不同数据类型的贝叶斯机器学习方法,用于药物目标识别

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Drug target identification is a crucial step in development, yet is also among the most complex. To address this, we develop BANDIT, a Bayesian machine-learning approach that integrates multiple data types to predict drug binding targets. Integrating public data, BANDIT benchmarked a ~90% accuracy on 2000+ small molecules. Applied to 14,000+ compounds without known targets, BANDIT generated ~4,000 previously unknown molecule-target predictions. From this set we validate 14 novel microtubule inhibitors, including 3 with activity on resistant cancer cells. We applied BANDIT to ONC201-an anti-cancer compound in clinical development whose target had remained elusive. We identified and validated DRD2 as ONC201's target, and this information is now being used for precise clinical trial design. Finally, BANDIT identifies connections between different drug classes, elucidating previously unexplained clinical observations and suggesting new drug repositioning opportunities. Overall, BANDIT represents an efficient and accurate platform to accelerate drug discovery and direct clinical application.
机译:药物目标鉴定是发展的重要阶跃,但也是最复杂的。为了解决这个问题,我们开发强盗,一种贝叶斯机器学习方法,它集成了多种数据类型以预测药物结合目标。集成公共数据,强盗在2000 +小分子上基准测试〜90%。在没有已知靶标的14,000+化合物中施加到14,000多种化合物中,强盗产生了〜4,000前面未知的分子 - 目标预测。从该组中,我们验证了14种新型微管抑制剂,其中包括耐药性癌细胞的活性。我们将强盗应用于ONC201-AN临床发展中的抗癌化合物,其目标仍然难以捉摸。我们确定并验证了DRD2作为ONC201的目标,现在这些信息现在用于精确的临床试验设计。最后,强盗鉴定了不同药物课程之间的连接,阐明了以前未解释的临床观察,并表明新的药物排雷机会。总的来说,强盗代表了加速药物发现和直接临床应用的有效和准确的平台。

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