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Metric Labeling and Semi-metric Embedding for Protein Annotation Prediction

机译:用于蛋白质注释预测的度量标记和半度量嵌入

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摘要

Computational techniques have been successful at predicting protein function from relational data (functional or physical interactions). These techniques have been used to generate hypotheses and to direct experimental validation. With few exceptions, the task is modeled as multi-label classification problems where the labels (functions) are treated independently or semi-independently. However, databases such as the Gene Ontology provide information about the similarities between functions. We explore the use of the Metric Labeling combinatorial optimization problem to make use of heuristically computed distances between functions to make more accurate predictions of protein function in networks derived from both physical interactions and a combination of other data types. To do this, we give a new technique (based on convex optimization) for converting heuristic semimetric distances into a metric with minimum least-squared distortion (LSD). The Metric Labeling approach is shown to outperform five existing techniques for inferring function from networks. These results suggest Metric Labeling is useful for protein function prediction, and that LSD minimization can help solve the problem of converting heuristic distances to a metric.
机译:计算技术已成功地从关系数据(功能或物理相互作用)预测蛋白质功能。这些技术已用于生成假设并指导实验验证。除少数例外,该任务被建模为多标签分类问题,其中标签(功能)被独立或半独立地对待。但是,诸如基因本体论之类的数据库提供有关功能之间相似性的信息。我们探索度量指标组合优化问题的使用,以利用启发式计算出的函数之间的距离来对从物理相互作用和其他数据类型结合而来的网络中的蛋白质功能进行更准确的预测。为此,我们提供了一种新技术(基于凸优化),用于将启发式半度量距离转换为最小最小平方失真(LSD)的度量。度量标记方法显示出优于五种现有技术来从网络推断功能。这些结果表明,度量标准标记可用于蛋白质功能预测,而LSD最小化可帮助解决将启发式距离转换为度量标准的问题。

著录项

  • 来源
  • 会议地点 Vancouver(CA);Vancouver(CA)
  • 作者

    Emre Sefer; Carl Kingsford;

  • 作者单位

    Department of Computer Science, University of Maryland, College Park ,Center for Bioinformatics and Computational Biology, Institute for Advanced Computer Studies University of Maryland, College Park;

    Department of Computer Science, University of Maryland, College Park ,Center for Bioinformatics and Computational Biology, Institute for Advanced Computer Studies University of Maryland, College Park;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物工程学(生物技术);
  • 关键词

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