计算能量格局的统计分析,以了解致病性蛋白质变异的功能障碍

Wanli Qiao, T. Maximova, E. Plaku, Amarda Shehu
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引用次数: 2

摘要

能量景观强调了蛋白质作为动态系统在不同能量结构之间相互转换的内在本质。蛋白质能量景观包含了表征蛋白质平衡动力学并将其与功能联系起来所需的许多信息。利用足够的先验结构数据,现在可以重建中等大小蛋白质的能量结构。这些发展将重点转向能源景观的分析和比较工具,作为通过改变景观特征来制定序列突变对(天)功能影响的假设的手段。我们在这里提出了这样一种方法,并提供了其对人类生物学中心酶的能力的详细评估。这里展示的工作为自动分析和总结景观开辟了一条有趣的途径,使其在能源景观层面上产生机器学习方法。
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Statistical Analysis of Computed Energy Landscapes to Understand Dysfunction in Pathogenic Protein Variants
The energy landscape underscores the inherent nature of proteins as dynamic systems interconverting between structures with varying energies. The protein energy landscape contains much of the information needed to characterize protein equilibrium dynamics and relate it to function. It is now possible to reconstruct energy landscapes of medium-size proteins with sufficient prior structure data. These developments turn the focus to tools for analysis and comparison of energy landscapes as a means of formulating hypotheses on the impact of sequence mutations on (dys)function via altered landscape features. We present such a method here and provide a detailed evaluation of its capabilities on an enzyme central to human biology. The work presented here opens up an interesting avenue into automated analysis and summarization of landscapes that yields itself to machine learning approaches at the energy landscape level.
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