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PROBABILISTIC ENSEMBLES FOR IMPROVED INFERENCE IN PROTEIN-STRUCTURE DETERMINATION

机译:改善蛋白质结构测定推论的概率论

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摘要

Protein X-ray crystallography — the most popular method for determining protein structures — remains a laborious process requiring a great deal of manual crystallographer effort to interpret low-quality protein images. Automating this process is critical in creating a high-throughput protein-structure determination pipeline. Previously, our group developed ACMI, a probabilistic framework for producing protein-structure models from electron-density maps produced via X-ray crystallography. ACMI uses a Markov Random Field to model the three-dimensional (3D) location of each non-hydrogen atom in a protein. Calculating the best structure in this model is intractable, so ACMI uses approximate inference methods to estimate the optimal structure. While previous results have shown ACMI to be the state-of-the-art method on this task, its approximate inference algorithm remains computationally expensive and susceptible to errors. In this work, we develop Probabilistic Ensembles in ACMI (PEA), aframework for leveraging multiple, independent runs of approximate inference to produce estimates of protein structures. Our results show statistically significant improvements in the accuracy of inference resulting in more complete and accurate protein structures. In addition, PEA provides a general framework for advanced approximate inference methods in complex problem domains.
机译:蛋白质X射线晶体学(确定蛋白质结构的最流行方法)仍然是一个费力的过程,需要大量的晶体学家手动解释低质量的蛋白质图像。自动化此过程对于创建高通量蛋白质结构确定流程至关重要。以前,我们的小组开发了ACMI,这是一个概率框架,用于通过X射线晶体学生成的电子密度图生成蛋白质结构模型。 ACMI使用马尔可夫随机场来模拟蛋白质中每个非氢原子的三维(3D)位置。在此模型中计算最佳结构是很困难的,因此ACMI使用近似推断方法来估计最佳结构。尽管以前的结果表明ACMI是完成此任务的最新方法,但其近似推理算法在计算上仍然昂贵,并且容易出错。在这项工作中,我们开发了ACMI(PEA)中的概​​率集合,该框架用于利用多个独立的近似推断运行来产生蛋白质结构的估算值。我们的结果表明,推理准确性在统计学上有显着提高,从而导致更完整和准确的蛋白质结构。此外,PEA为复杂问题域中的高级近似推理方法提供了一个通用框架。

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  • 作者

    AMEET SONI; JUDE SHAVLIK;

  • 作者单位

    AMEET SONI Current address: Department of Computer Science, Swarthmore College, 500 College Avenue, Swarthmore, Pennsylvania 19081, USA.Department of Computer Sciences, Department of Biostatistics and Medical Informatics, University of Wisconsin–Madison, Madison, WI 53706, USAsoni@cs.wisc.edu JUDE SHAVLIK Department of Computer Sciences, Department of Biostatistics and Medical Informatics, University of Wisconsin–Madison, Madison, WI 53706, USAshavlik@cs.wisc.edu;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Statistical inference; protein-structure determination; computational biology.;

    机译:统计推断;蛋白质结构测定;计算生物学。;

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