SRP:用于预测药物-靶标相互作用的简洁非参数相似性排序模型

Jianyu Shi, S. Yiu
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引用次数: 14

摘要

在网络实验室中,药物-靶标相互作用的鉴定成本高,耗时长。计算方法对于帮助确定实验室实验的潜在候选物变得非常重要。然而,它们通常涉及解决优化问题或假设基于先验知识的统计分布,并且可能需要估计可调参数。这篇论文的动机是“后续”药物背后的概念。它们是制药公司针对某一特定靶点,替代率先发现并获得专利的先锋药物,确定新的治疗类别而开发的药物。从“后续”药物中可以观察到三个现象。第一个观察结果已被许多现有方法所使用:与共同靶点相互作用的药物通常具有较高的相似分数(例如,化学结构方面的相似分数)。第二点是,针对特定靶标的候选药物,如果它与与靶标相互作用的药物比其他已知药物更相似,即使相似度很低,也会获得更多的关注。最后,人们本能地倾向于为已经有更多药物的目标设计一种“后续”药物,因为成本更低,风险更小。在我们的方法中,上述观察结果被转化为预测药物-靶标相互作用的更多证据。为了设计一个相互作用趋势指数来描述这些观测结果,我们提出了基于相似性排名的预测器(SRP)。与其他模型不同,SRP是一个非参数模型,既不需要解决优化问题,也不需要先验的统计知识。基于真实的基准数据集,我们表明我们的模型能够达到比最近的两个模型更高的精度,并且我们的方法能够应对两种缺失交互的真实预测场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SRP: A concise non-parametric similarity-rank-based model for predicting drug-target interactions
The identification of drug-target interactions in web lab is costly and time-consuming. Computational approaches become important to help identifying potential candidates for laboratory experiments. However, they usually involve solving optimization problems or assuming statistical distribution based on prior knowledge, and may require estimating tunable parameters. This paper is motivated by the concepts behind “follow-on” drugs. They are the drugs developed by drug companies to substitute the pioneering drug which was firstly discovered and patented for a specific target and determined a new therapeutic class. There are three observations from “follow-on” drugs. The first observation has been used by many existing methods: drugs interacting with a common target usually have higher similar scores (e.g. the similarity score in terms of chemical structure). The second one is that a drug candidate for a specific target gains more attention if it is more similar to those drugs interacting with the target than other known drugs, even though the similarity score is low. Lastly, people intuitively tend to design a “follow-on” drug for the targets already having more drugs because of less cost and less risk. In our approach, the above observations are translated into more evidences for predicted drug-target interaction. Designing an interaction tendency index to characterize these observations, we propose the similarity-rank-based predictor (SRP). Unlike other models, SRP is a non-parametric model and requires neither solving an optimization problem nor prior statistical knowledge. Based on real benchmark datasets, we show that our model is able to achieve higher accuracy than the two most recent models and our approach is able to cope with two real predicting scenario of missing interactions.
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