School of Computer Science & Engineering, Nanyang Technological University, Singapore; Complexity Institute, Nanyang Technological University, Singapore.
DUKE-NUS Medical School, Singapore.
Methods. 2017 Oct 1;129:60-80. doi: 10.1016/j.ymeth.2017.05.015. Epub 2017 May 25.
Given a signaling network, the target combination prediction problem aims to predict efficacious and safe target combinations for combination therapy. State-of-the-art in silico methods use Monte Carlo simulated annealing (mcsa) to modify a candidate solution stochastically, and use the Metropolis criterion to accept or reject the proposed modifications. However, such stochastic modifications ignore the impact of the choice of targets and their activities on the combination's therapeutic effect and off-target effects, which directly affect the solution quality. In this paper, we present mascot, a method that addresses this limitation by leveraging two additional heuristic criteria to minimize off-target effects and achieve synergy for candidate modification. Specifically, off-target effects measure the unintended response of a signaling network to the target combination and is often associated with toxicity. Synergy occurs when a pair of targets exerts effects that are greater than the sum of their individual effects, and is generally a beneficial strategy for maximizing effect while minimizing toxicity. mascot leverages on a machine learning-based target prioritization method which prioritizes potential targets in a given disease-associated network to select more effective targets (better therapeutic effect and/or lower off-target effects); and on Loewe additivity theory from pharmacology which assesses the non-additive effects in a combination drug treatment to select synergistic target activities. Our experimental study on two disease-related signaling networks demonstrates the superiority of mascot in comparison to existing approaches.
给定一个信号网络,靶标组合预测问题旨在预测联合治疗的有效和安全的靶标组合。最先进的计算方法使用蒙特卡罗模拟退火(mcsa)随机修改候选解,并使用 metropolis 准则接受或拒绝提议的修改。然而,这种随机修改忽略了靶标及其活性对组合治疗效果和脱靶效应的选择的影响,而这些直接影响了解的质量。在本文中,我们提出了 mascot,一种通过利用两个额外的启发式标准来最小化脱靶效应并实现候选修改协同作用的方法。具体来说,脱靶效应衡量信号网络对靶标组合的意外反应,通常与毒性有关。协同作用发生在一对靶标产生的效果大于其单个效果之和时,通常是一种最大化效果同时最小化毒性的有益策略。mascot 利用基于机器学习的靶标优先级方法对给定疾病相关网络中的潜在靶标进行优先级排序,以选择更有效的靶标(更好的治疗效果和/或更低的脱靶效应);以及药理学中的 loewe 加性理论,评估组合药物治疗中的非加性效应,以选择协同靶标活性。我们在两个与疾病相关的信号网络上的实验研究表明,mascot 优于现有的方法。