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Drug Target Identification with Machine Learning: How to Choose Negative Examples

机译:用机器学习的药物目标识别:如何选择否定例子

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摘要

Identification of the protein targets of hit molecules is essential in the drug discovery process. Target prediction with machine learning algorithms can help accelerate this search, limiting the number of required experiments. However, Drug-Target Interactions databases used for training present high statistical bias, leading to a high number of false positives, thus increasing time and cost of experimental validation campaigns. To minimize the number of false positives among predicted targets, we propose a new scheme for choosing negative examples, so that each protein and each drug appears an equal number of times in positive and negative examples. We artificially reproduce the process of target identification for three specific drugs, and more globally for 200 approved drugs. For the detailed three drug examples, and for the larger set of 200 drugs, training with the proposed scheme for the choice of negative examples improved target prediction results: the average number of false positives among the top ranked predicted targets decreased, and overall, the rank of the true targets was improved.Our method corrects databases’ statistical bias and reduces the number of false positive predictions, and therefore the number of useless experiments potentially undertaken.
机译:鉴定击中分子的蛋白质靶标在药物发现过程中是必不可少的。对机器学习算法的目标预测可以帮助加速此搜索,限制所需实验的数量。然而,用于训练的药物 - 目标交互数据库具有高统计偏差,导致误报的大量,从而提高了实验验证活动的时间和成本。为了最小化预测目标之间的误报的数量,我们提出了一种选择负面例子的新方案,使得每种蛋白质和每个药物在阳性和阴性例中出现相同的次数。我们人为地再现了三种特定药物的目标鉴定过程,更全球适用于200份批准的药物。对于详细的三种药物实施例,并且对于较大的200个药物,培训与所提出的方案选择负面例子改善了目标预测结果:顶部排名的预测目标的平均误报的数量减少,总体而言完善的目标的等级得到改善。我们的方法纠正数据库的统计偏差并减少错误阳性预测的数量,因此可能进行的无用实验的数量。

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