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Discovering second-order sub-structure associations in drug molecules for side-effect prediction

机译:发现药物分子中的二级亚结构关联以进行副作用预测

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Possible drug side-effects (SEs) are usually verified by many years of repeated clinical trials. Despite the effort, some drugs are still expected to cause adverse reactions in some patients. To better predict drug SEs without having to go through the laborious processes of testing and re-testing, machine learning (ML) techniques are more and more used to uncovered patterns in drug data for such purpose. Most existing such techniques are black-box techniques. Since correlations between sub-structures involving multiple variables may exist, these techniques may not always work well. For ML techniques to be effective, they should be accurate, efficient and the patterns they discover should be interpretable. Towards these goals, we have developed a second-order association discovering (SOAD) algorithm for SE prediction. Given a set of drug data for training, the SOAD algorithm can discover SO associations between multiple drug sub-structures and multiple SEs in drug data for the purpose of predicting the SEs. SOAD performs its tasks by first making use of a residual measure to test the significance of occurrence of a chemical sub-structure within a drug and the SE of the drug. Once an association is established between a sub-structure and a SE, we test if two or more such sub-structures are significantly associated with a SE. Based on such second-order associations, we derive from them a set of “informative” SO patterns so that the SEs of new unseen drugs can be predicted based on the frequency of appearance of such patterns. To ensure interpretability of the SE discovery process, we make use of the Bayesian to predict if certain SO relationship in a drug may be related to a certain side-effect. Based on the experimental results, SOAD is found to be very promising.
机译:可能的药物副作用(SES)通常经过多年重复的临床试验。尽管努力,一些药物仍然有望导致一些患者的不良反应。为了更好地预测药物SE,无需经过测试和重新测试的费力过程,机器学习(ML)技术越来越多地用于此目的的药物数据中的模式。大多数现有技术都是黑盒技术。由于可能存在涉及多个变量的子结构之间的相关性,因此这些技术可能并不总是很好地工作。对于ML技术有效,它们应该准确,高效,他们发现的模式应该是可解释的。对这些目标来说,我们开发了一种用于SE预测的二阶关联发现(Soad)算法。鉴于一组用于训练的药物数据,SOAD算法可以发现多种药物亚结构与药物数据中的多个SES之间的关联,以预测SES。苏拉德首先使用残留措施来测试其在药物和药物中的药物中的化学亚结构的发生意义。一旦在子结构和SE之间建立了一个关联,我们测试了两个或更多这些子结构与SE显着相关。基于这样的二阶关联,我们从它们中得出一组“信息化”所以模式,以便基于这种模式的外观频率来预测新的未经药物的SES。为了确保SE发现过程的可解释性,我们利用贝叶斯预测某种药物中的某种关系可能与某种副作用有关。基于实验结果,发现苏拉斯是非常有前途的。

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