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Enabling Trade-offs Between Accuracy and Computational Cost: Adaptive Algorithms to Reduce Time to Clinical Insight

机译:在精度和计算成本之间进行权衡:自适应算法可缩短获得临床见解的时间

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The efficacy of drug treatments depends on how tightly small molecules bind to their target proteins. Quantifying the strength of these interactions (the so called `binding affinity') is a grand challenge of computational chemistry, surmounting which could revolutionize drug design and provide the platform for patient specific medicine. Recently, evidence from blind challenge predictions and retrospective validation studies has suggested that molecular dynamics (MD) can now achieve useful predictive accuracy ( 1 kcal/mol) This accuracy is sufficient to greatly accelerate hit to lead and lead optimization. To translate these advances in predictive accuracy so as to impact clinical and/or industrial decision making requires that binding free energy results must be turned around on reduced timescales without loss of accuracy. This demands advances in algorithms, scalable software systems, and intelligent and efficient utilization of supercomputing resources. This work is motivated by the real world problem of providing insight from drug candidate data on a time scale that is as short as possible. Specifically, we reproduce results from a collaborative project between UCL and GlaxoSmithKline to study a congeneric series of drug candidates binding to the BRD4 protein - inhibitors of which have shown promising preclinical efficacy in pathologies ranging from cancer to inflammation. We demonstrate the use of a framework called HTBAC, designed to support the aforementioned requirements of accurate and rapid drug binding affinity calculations. HTBAC facilitates the execution of the numbers of simulations while supporting the adaptive execution of algorithms. Furthermore, HTBAC enables the selection of simulation parameters during runtime which can, in principle, optimize the use of computational resources whilst producing results within a target uncertainty.
机译:药物治疗的功效取决于小分子与目标蛋白结合的紧密程度。量化这些相互作用的强度(所谓的“结合亲和力”)是计算化学的一个巨大挑战,它的克服可能会彻底改变药物设计并为患者特定的药物提供平台。最近,来自盲目的挑战预测和回顾性验证研究的证据表明,分子动力学(MD)现在可以达到有用的预测精度(1 kcal / mol)。该精度足以大大加速铅对铅和铅的优化。为了将这些进步转化为预测准确性,从而影响临床和/或工业决策,要求必须在减少的时间尺度上扭转束缚自由能的结果,而又不损失准确性。这就需要算法,可伸缩软件系统以及超级计算资源的智能和有效利用方面的进步。这项工作受到现实世界问题的启发,该问题是在尽可能短的时间范围内从候选药物数据提供洞察力。具体来说,我们从UCL和葛兰素史克公司之间的一个合作项目中复制了结果,以研究与BRD4蛋白结合的同类药物候选物-该抑制剂在从癌症到炎症的各种病理学中均显示出有希望的临床前疗效。我们演示了使用名为HTBAC的框架,该框架旨在支持上述准确,快速的药物结合亲和力计算要求。 HTBAC促进了仿真次数的执行,同时支持算法的自适应执行。此外,HTBAC允许在运行时选择仿真参数,原则上可以优化计算资源的使用,同时在目标不确定性范围内产生结果。

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