Radhakrishnan Mala L, Tidor Bruce
Computer Science and Artificial Intelligence Laboratory, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139-4307, USA.
J Chem Inf Model. 2008 May;48(5):1055-73. doi: 10.1021/ci700452r. Epub 2008 May 27.
Drug resistance is a significant obstacle in the effective treatment of diseases with rapidly mutating targets, such as AIDS, malaria, and certain forms of cancer. Such targets are remarkably efficient at exploring the space of functional mutants and at evolving to evade drug binding while still maintaining their biological role. To overcome this challenge, drug regimens must be active against potential target variants. Such a goal may be accomplished by one drug molecule that recognizes multiple variants or by a drug "cocktail"--a small collection of drug molecules that collectively binds all desired variants. Ideally, one wants the smallest cocktail possible due to the potential for increased toxicity with each additional drug. Therefore, the task of designing a regimen for multiple target variants can be framed as an optimization problem--find the smallest collection of molecules that together "covers" the relevant target variants. In this work, we formulate and apply this optimization framework to theoretical model target ensembles. These results are analyzed to develop an understanding of how the physical properties of a target ensemble relate to the properties of the optimal cocktail. We focus on electrostatic variation within target ensembles, as it is one important mechanism by which drug resistance is achieved. Using integer programming, we systematically designed optimal cocktails to cover model target ensembles. We found that certain drug molecules covered much larger regions of target space than others, a phenomenon explained by theory grounded in continuum electrostatics. Molecules within optimal cocktails were often dissimilar, such that each drug was responsible for binding variants with a certain electrostatic property in common. On average, the number of molecules in the optimal cocktails correlated with the number of variants, the differences in the variants' electrostatic properties at the binding interface, and the level of binding affinity required. We also treated cases in which a subset of target variants was to be avoided, modeling the common challenge of closely related host molecules that may be implicated in drug toxicity. Such decoys generally increased the size of the required cocktail and more often resulted in infeasible optimizations. Taken together, this work provides practical optimization methods for the design of drug cocktails and a theoretical, physics-based framework through which useful insights can be achieved.
耐药性是有效治疗具有快速突变靶点的疾病(如艾滋病、疟疾和某些癌症)的重大障碍。这类靶点在探索功能突变体空间以及进化以逃避药物结合同时仍保持其生物学作用方面非常高效。为了克服这一挑战,药物治疗方案必须对潜在的靶点变体具有活性。这一目标可以通过一种识别多种变体的药物分子或通过药物“鸡尾酒疗法”来实现——即一小群药物分子共同结合所有所需变体。理想情况下,由于每种额外药物都有可能增加毒性,人们希望使用尽可能小的“鸡尾酒”组合。因此,为多个靶点变体设计治疗方案的任务可以被构建为一个优化问题——找到能共同“覆盖”相关靶点变体的最小分子组合。在这项工作中,我们将这个优化框架应用于理论模型靶点集合。对这些结果进行分析,以了解靶点集合的物理性质与最优“鸡尾酒”组合的性质之间的关系。我们关注靶点集合内的静电变化,因为这是产生耐药性的一个重要机制。使用整数规划,我们系统地设计了最优“鸡尾酒”组合以覆盖模型靶点集合。我们发现某些药物分子覆盖的靶点空间区域比其他分子大得多,这一现象可以用基于连续介质静电学的理论来解释最优“鸡尾酒”组合中的分子通常是不同的,这样每种药物负责结合具有某种共同静电性质的变体。平均而言,最优“鸡尾酒”组合中的分子数量与变体数量、结合界面处变体静电性质的差异以及所需的结合亲和力水平相关。我们还处理了要避免一部分靶点变体的情况,模拟了可能与药物毒性有关的密切相关宿主分子这一常见挑战。这类诱饵通常会增加所需“鸡尾酒”组合的规模,并且更常导致不可行的优化。综上所述,这项工作为药物“鸡尾酒”组合设计提供了实用的优化方法,并提供了一个基于物理学的理论框架,通过该框架可以获得有用的见解。