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Predicting the Reliability of Drug-target Interaction Predictions with Maximum Coverage of Target Space

机译:预测具有目标空间最大覆盖范围的药物-靶标相互作用预测的可靠性

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摘要

Many computational methods to predict the macromolecular targets of small organic molecules have been presented to date. Despite progress, target prediction methods still have important limitations. For example, the most accurate methods implicitly restrict their predictions to a relatively small number of targets, are not systematically validated on drugs (whose targets are harder to predict than those of non-drug molecules) and often lack a reliability score associated with each predicted target. Here we present a systematic validation of ligand-centric target prediction methods on a set of clinical drugs. These methods exploit a knowledge-base covering 887,435 known ligand-target associations between 504,755 molecules and 4,167 targets. Based on this dataset, we provide a new estimate of the polypharmacology of drugs, which on average have 11.5 targets below IC50 10 µM. The average performance achieved across clinical drugs is remarkable (0.348 precision and 0.423 recall, with large drug-dependent variability), especially given the unusually large coverage of the target space. Furthermore, we show how a sparse ligand-target bioactivity matrix to retrospectively validate target prediction methods could underestimate prospective performance. Lastly, we present and validate a first-in-kind score capable of accurately predicting the reliability of target predictions.
机译:迄今为止,已经提出了许多预测小的有机分子的大分子靶标的计算方法。尽管取得了进展,但是目标预测方法仍然具有重要的局限性。例如,最准确的方法将其预测隐式地限制在相对较少的目标上,没有在药物上进行系统验证(其目标比非药物分子的目标更难预测),并且通常缺乏与每个预测相关的可靠性评分目标。在这里,我们介绍了一套临床药物上以配体为中心的目标预测方法的系统验证。这些方法利用了一个知识库,涵盖了504,755个分子与4,167个目标之间的887,435个已知的配体-目标关联。基于此数据集,我们提供了药物多药理学的新估计,这些药物的平均目标浓度低于IC50 10µm的11.5。跨临床药物实现的平均性能非常出色(精确度为0.348,召回率为0.423,具有很大的药物依赖性变异性),尤其是在目标空间覆盖范围异常大的情况下。此外,我们显示了稀疏的配体-目标生物活性矩阵来回顾性地验证目标预测方法可能会低估预期的性能。最后,我们提出并验证一种能够准确预测目标预测可靠性的同类分数。

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