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Inferring multi-target QSAR models with taxonomy-based multi-task learning

机译:通过基于分类的多任务学习推断多目标QSAR模型

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摘要

BackgroundA plethora of studies indicate that the development of multi-target drugs is beneficial for complex diseases like cancer. Accurate QSAR models for each of the desired targets assist the optimization of a lead candidate by the prediction of affinity profiles. Often, the targets of a multi-target drug are sufficiently similar such that, in principle, knowledge can be transferred between the QSAR models to improve the model accuracy. In this study, we present two different multi-task algorithms from the field of transfer learning that can exploit the similarity between several targets to transfer knowledge between the target specific QSAR models.
机译:背景大量研究表明,多靶点药物的开发对诸如癌症等复杂疾病有益。针对每个所需目标的准确QSAR模型可通过预测亲和力分布图来帮助优化潜在候选人。通常,多靶标药物的靶标足够相似,因此,原则上可以在QSAR模型之间传递知识以提高模型的准确性。在这项研究中,我们从转移学习的领域提出了两种不同的多任务算法,它们可以利用多个目标之间的相似性在目标特定的QSAR模型之间转移知识。

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