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A new chemoinformatics approach with improved strategies for effective predictions of potential drugs

机译:一种新的化学信息学方法具有改进的策略可有效预测潜在药物

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摘要

BackgroundFast and accurate identification of potential drug candidates against therapeutic targets (i.e., drug–target interactions, DTIs) is a fundamental step in the early drug discovery process. However, experimental determination of DTIs is time-consuming and costly, especially for testing the associations between the entire chemical and genomic spaces. Therefore, computationally efficient algorithms with accurate predictions are required to achieve such a challenging task. In this work, we design a new chemoinformatics approach derived from neighbor-based collaborative filtering (NBCF) to infer potential drug candidates for targets of interest. One of the fundamental steps of NBCF in the application of DTI predictions is to accurately measure the similarity between drugs solely based on the DTI profiles of known knowledge. However, commonly used similarity calculation methods such as COSINE may be noise-prone due to the extremely sparse property of the DTI bipartite network, which decreases the model performance of NBCF. We herein propose three strategies to remedy such a dilemma, which include: (1) adopting a positive pointwise mutual information (PPMI)-based similarity metric, which is noise-immune to some extent; (2) performing low-rank approximation of the original prediction scores; (3) incorporating auxiliary (complementary) information to produce the final predictions.
机译:背景技术快速,准确地确定针对治疗靶标(例如,药物-靶标相互作用,DTI)的潜在候选药物是早期药物发现过程中的基本步骤。但是,对DTI进行实验确定是耗时且昂贵的,特别是对于测试整个化学空间和基因组空间之间的关联而言。因此,需要具有精确预测的计算有效算法来完成这一具有挑战性的任务。在这项工作中,我们设计了一种新的化学信息学方法,该方法源自基于邻居的协作过滤(NBCF),以推断潜在的候选药物作为目标靶标。 NBCF在DTI预测中的应用的基本步骤之一是仅基于已知知识的DTI概况准确测量药物之间的相似性。但是,由于DTI双向网络的稀疏特性,因此常用的相似度计算方法(例如COSINE)可能容易产生噪声,从而降低了NBCF的模型性能。本文中,我们提出了三种策略来解决这种难题,包括:(1)采用基于正点向互信息(PPMI)的相似性度量,该度量在一定程度上不受噪声影响; (2)对原始预测分数进行低秩近似; (3)合并辅助(补充)信息以产生最终预测。

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