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From Extraction of Local Structures of Protein Energy Landscapes to Improved Decoy Selection in Template-Free Protein Structure Prediction

机译:从蛋白质能量景观的局部结构提取到无模板蛋白质结构预测中改进的诱饵选择

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摘要

Due to the essential role that the three-dimensional conformation of a protein plays in regulating interactions with molecular partners, wet and dry laboratories seek biologically-active conformations of a protein to decode its function. Computational approaches are gaining prominence due to the labor and cost demands of wet laboratory investigations. Template-free methods can now compute thousands of conformations known as decoys, but selecting native conformations from the generated decoys remains challenging. Repeatedly, research has shown that the protein energy functions whose minima are sought in the generation of decoys are unreliable indicators of nativeness. The prevalent approach ignores energy altogether and clusters decoys by conformational similarity. Complementary recent efforts design protein-specific scoring functions or train machine learning models on labeled decoys. In this paper, we show that an informative consideration of energy can be carried out under the energy landscape view. Specifically, we leverage local structures known as basins in the energy landscape probed by a template-free method. We propose and compare various strategies of basin-based decoy selection that we demonstrate are superior to clustering-based strategies. The presented results point to further directions of research for improving decoy selection, including the ability to properly consider the multiplicity of native conformations of proteins.
机译:由于蛋白质的三维构象在调节与分子伴侣的相互作用中起着至关重要的作用,因此干湿实验室寻求蛋白质的生物活性构象以解码其功能。由于湿式实验室研究的劳动力和成本需求,计算方法正变得越来越重要。无需模板的方法现在可以计算成千上万个称为诱饵的构象,但是从生成的诱饵中选择天然构象仍然具有挑战性。反复地,研究表明在诱饵的产生中寻求最低限度的蛋白质能量功能是不可靠的天然指标。普遍的方法完全忽略了能量,并通过构象相似性将诱饵聚类。最近的补充工作是设计蛋白质特有的评分功能或在标记诱饵上训练机器学习模型。在本文中,我们表明可以在能源景观视图下对能源进行有益的考虑。具体来说,我们利用无模板方法探查的能源格局利用了称为盆地的局部结构。我们提出并比较了我们展示的优于基于聚类的策略的基于流域诱饵选择的各种策略。提出的结果指出了改善诱饵选择的进一步研究方向,包括适当考虑蛋白质天然构象多样性的能力。

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