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An Algorithmic Framework for Predicting Side-Effects of Drugs

机译:预测药物副作用的算法框架

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One of the critical stages in drug development is the identification of potential side effects for promising drug leads. Large scale clinical experiments aimed at discovering such side effects are very costly and may miss subtle or rare side effects. To date, and to the best of our knowledge, no computational approach was suggested to systematically tackle this challenge. In this work we report on a novel approach to predict the side effects of a given drug. Starting from a query drug, a combination of canonical correlation analysis and network-based diffusion are applied to predict its side effects. We evaluate our method by measuring its performance in cross validation using a comprehensive data set of 692 drugs and their known side effects derived from package inserts. For 34% of the drugs the top scoring side effect matches a known side effect of the drug. Remarkably, even on unseen data, our method is able to infer side effects that highly match existing knowledge. Our method thus represents a promising first step toward shortcutting the process and reducing the cost of side effect elucidation.
机译:药物开发的关键阶段之一是确定有希望的药物潜在潜在副作用。旨在发现此类副作用的大规模临床实验非常昂贵,并且可能会忽略细微或罕见的副作用。迄今为止,就我们所知,没有建议使用任何计算方法来系统地应对这一挑战。在这项工作中,我们报告了一种预测给定药物副作用的新颖方法。从查询药物开始,将规范相关分析和基于网络的扩散相结合来预测其副作用。我们通过使用692种药物及其从包装说明书中得出的已知副作用的综合数据集来评估其交叉验证的性能,从而评估我们的方法。对于34%的药物,得分最高的副作用与该药物的已知副作用相匹配。值得注意的是,即使在看不见的数据上,我们的方法也能够推断出与现有知识高度匹配的副作用。因此,我们的方法代表了有希望的第一步,旨在简化该过程并降低副作用阐明的成本。

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