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基于机器学习的高通量单分子分析方法。

Top-down machine learning approach for high-throughput single-molecule analysis.

机构信息

Department of Neuroscience, University of Wisconsin-Madison, Madison, United States.

Department of Chemistry, University of Wisconsin-Madison, Madison, United States.

出版信息

Elife. 2020 Apr 8;9:e53357. doi: 10.7554/eLife.53357.

Abstract

Single-molecule approaches provide enormous insight into the dynamics of biomolecules, but adequately sampling distributions of states and events often requires extensive sampling. Although emerging experimental techniques can generate such large datasets, existing analysis tools are not suitable to process the large volume of data obtained in high-throughput paradigms. Here, we present a new analysis platform (DISC) that accelerates unsupervised analysis of single-molecule trajectories. By merging model-free statistical learning with the Viterbi algorithm, DISC idealizes single-molecule trajectories up to three orders of magnitude faster with improved accuracy compared to other commonly used algorithms. Further, we demonstrate the utility of DISC algorithm to probe cooperativity between multiple binding events in the cyclic nucleotide binding domains of HCN pacemaker channel. Given the flexible and efficient nature of DISC, we anticipate it will be a powerful tool for unsupervised processing of high-throughput data across a range of single-molecule experiments.

摘要

单分子方法为生物分子的动力学提供了巨大的洞察力,但充分采样状态和事件的分布通常需要广泛的采样。尽管新兴的实验技术可以生成如此大量的数据集,但现有的分析工具并不适合处理在高通量范式中获得的大量数据。在这里,我们提出了一种新的分析平台(DISC),可以加速单分子轨迹的无监督分析。通过将无模型统计学习与维特比算法相结合,与其他常用算法相比,DISC 将单分子轨迹理想化的速度提高了三个数量级,同时提高了准确性。此外,我们还证明了 DISC 算法在探测 HCN 起搏通道环核苷酸结合域中多个结合事件之间的协同作用的实用性。鉴于 DISC 的灵活高效性质,我们预计它将成为单分子实验中高通量数据无监督处理的强大工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/13d3/7205464/93e1d5b1ca30/elife-53357-fig1.jpg

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