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Predicting existing targets for new drugs base on strategies for missing interactions

机译:根据缺乏相互作用的策略预测新药的现有目标

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摘要

BackgroundThere has been paid more and more attention to supervised classification models in the area of predicting drug-target interactions (DTIs). However, in terms of classification, unavoidable missing DTIs in data would cause three issues which have not yet been addressed appropriately by former approaches. Directly labeled as negatives (non-DTIs), missing DTIs increase the confusion of positives (DTIs) and negatives, aggravate the imbalance between few positives and many negatives, and are usually discriminated as highly-scored false positives, which influence the existing measures sharply.
机译:背景技术在预测药物-靶标相互作用(DTI)领域中,越来越多地关注监督分类模型。但是,就分类而言,不可避免的数据中缺少DTI会导致三个问题,而以前的方法尚未适当解决这些问题。直接标记为负数(非DTI)的DTI会增加正数(DTI)和负数的混淆,加重少数正数和许多负数之间的不平衡,并且通常被区分为评分高的假正数,从而严重影响现有措施。

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