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Choosing where to look next in a mutation sequence space: Active Learning of informative p53 cancer rescue mutants

机译:选择在突变序列空间中的下一个位置:主动学习信息丰富的p53癌症拯救突变体

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摘要

Motivation: Many biomedical projects would benefit from reducing the time and expense of in vitro experimentation by using computer models for in silico predictions. These models may help determine which expensive biological data are most useful to acquire next. Active Learning techniques for choosing the most informative data enable biologists and computer scientists to optimize experimental data choices for rapid discovery of biological function. To explore design choices that affect this desirable behavior, five novel and five existing Active Learning techniques, together with three control methods, were tested on 57 previously unknown p53 cancer rescue mutants for their ability to build classifiers that predict protein function. The best of these techniques, Maximum Curiosity, improved the baseline accuracy of 56–77%. This article shows that Active Learning is a useful tool for biomedical research, and provides a case study of interest to others facing similar discovery challenges.
机译:动机:通过使用计算机模型进行计算机预测,可以减少体外实验的时间和费用,从而使许多生物医学项目受益。这些模型可以帮助确定哪些昂贵的生物学数据对于接下来的采集最有用。选择最有用信息的主动学习技术使生物学家和计算机科学家能够优化实验数据选择,从而快速发现生物学功能。为了探索影响这种理想行为的设计选择,对57种先前未知的p53癌症拯救突变体测试了五种新颖的和五种现有的主动学习技术以及三种控制方法,以测试它们构建预测蛋白质功能的分类器的能力。这些技术中最好的一种,即“最大好奇心”,将基线准确度提高了56–77%。本文表明,主动学习是生物医学研究的有用工具,并为面临类似发现挑战的其他人提供了感兴趣的案例研究。

著录项

  • 来源
    《Bioinformatics》 |2007年第13期|i104-i114|共11页
  • 作者单位

    Department of Biomedical Engineering;

    Department of Medicine;

    Department of Molecular Biology Biochemistry;

    Departments of Biological Chemistry and Pathology Laboratory Medicine;

    Department of Computer Science and;

    Institute for Genomics and Bioinformatics University of California Irvine California 92697 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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