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Transfer and Multi-task Learning in QSAR Modeling: Advances and Challenges

机译:QSAR建模中的转移和多任务学习:进展和挑战

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Medicinal chemistry projects involve some steps aiming to develop a new drug, such as the analysis of biological targets related to a given disease, the discovery and the development of drug candidates for these targets, performing parallel biological tests to validate the drug effectiveness and side effects. Approaches as quantitative study of activity-structure relationships (QSAR) involve the construction of predictive models that relate a set of descriptors of a chemical compound series and its biological activities with respect to one or more targets in the human body. Datasets used to perform QSAR analyses are generally characterized by a small number of samples and this makes them more complex to build accurate predictive models. In this context, transfer and multi-task learning techniques are very suitable since they take information from other QSAR models to the same biological target, reducing efforts and costs for generating new chemical compounds. Therefore, this review will present the main features of transfer and multi-task learning studies, as well as some applications and its potentiality in drug design projects.
机译:药物化学项目涉及旨在开发新药物的某些步骤,例如,分析与特定疾病相关的生物学目标,发现和开发这些目标的候选药物,进行平行的生物学测试以验证药物的有效性和副作用。活动结构关系(QSAR)定量研究的方法涉及建立预测模型,该模型将一组化合物系列及其生物活性相对于人体中一个或多个目标的描述子联系起来。用于执行QSAR分析的数据集通常以少量样本为特征,这使它们更加复杂,无法建立准确的预测模型。在这种情况下,转移和多任务学习技术非常适合,因为它们将来自其他QSAR模型的信息带到相同的生物学目标,从而减少了产生新化合物的工作量和成本。因此,本综述将介绍转移和多任务学习研究的主要特征,以及在药物设计项目中的一些应用及其潜力。

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