Statistical Framework for Uncertainty Quantification in Computational Molecular Modeling.

Muhibur Rasheed, Nathan Clement, Abhishek Bhowmick, Chandrajit Bajaj
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引用次数: 4

Abstract

As computational modeling, simulation, and predictions are becoming integral parts of biomedical pipelines, it behooves us to emphasize the reliability of the computational protocol. For any reported quantity of interest (QOI), one must also compute and report a measure of the uncertainty or error associated with the QOI. This is especially important in molecular modeling, since in most practical applications the inputs to the computational protocol are often noisy, incomplete, or low-resolution. Unfortunately, currently available modeling tools do not account for uncertainties and their effect on the final QOIs with sufficient rigor. We have developed a statistical framework that expresses the uncertainty of the QOI as the probability that the reported value deviates from the true value by more than some user-defined threshold. First, we provide a theoretical approach where this probability can be bounded using Azuma-Hoeffding like inequalities. Second, we approximate this probability empirically by sampling the space of uncertainties of the input and provide applications of our framework to bound uncertainties of several QOIs commonly used in molecular modeling. Finally, we also present several visualization techniques to effectively and quantitavely visualize the uncertainties: in the input, final QOIs, and also intermediate states.

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计算分子模型中不确定性量化的统计框架。
由于计算建模、模拟和预测正在成为生物医学管道的组成部分,我们有必要强调计算协议的可靠性。对于任何报告的兴趣量(QOI),还必须计算并报告与QOI相关的不确定性或误差的度量。这在分子建模中尤其重要,因为在大多数实际应用中,计算协议的输入通常是有噪声的、不完整的或低分辨率的。不幸的是,目前可用的建模工具并没有足够严格地考虑不确定性及其对最终质量指数的影响。我们已经开发了一个统计框架,它将QOI的不确定性表示为报告值偏离真实值超过某个用户定义阈值的概率。首先,我们提供了一种理论方法,其中该概率可以使用Azuma-Hoeffding类不等式进行有界。其次,我们通过采样输入的不确定性空间来经验地近似该概率,并将我们的框架应用于分子建模中常用的几种qos的不确定性。最后,我们还提出了几种可视化技术,以有效和定量地可视化不确定性:在输入,最终质量指数,以及中间状态。
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