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Haplotype inference with pseudo-Boolean optimization

机译:具有伪布尔优化的单倍型推断

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摘要

The fast development of sequencing techniques in the recent past has required an urgent development of efficient and accurate haplotype inference tools. Besides being a crucial issue in genetics, haplotype inference is also a challenging computational problem. Among others, pure parsimony is a viable modeling approach to solve the problem of haplotype inference and also an interesting NP-hard problem in itself. Recently, the introduction of SAT-based methods, including pseudo-Boolean optimization (PBO) methods, has produced very efficient solvers. This paper provides a detailed description of RPoly, a PBO approach for the haplotype inference by pure parsimony (HIPP) problem. Moreover, an extensive evaluation of existent HIPP solvers, on a comprehensive set of instances, confirms that RPoly is currently the most efficient and robust HIPP approach.
机译:近年来,测序技术的快速发展要求迫切需要开发高效,准确的单倍型推断工具。除了是遗传学中的关键问题之外,单倍型推论还是一个具有挑战性的计算问题。其中,纯简约是一种可行的建模方法,可以解决单元型推断问题,并且本身也是一个有趣的NP难题。最近,基于SAT的方法(包括伪布尔优化(PBO)方法)的引入产生了非常有效的求解器。本文提供了RPoly的详细说明,RPoly是一种通过纯简约(HIPP)问题进行单倍型推断的PBO方法。此外,在一系列综合实例中,对现有HIPP求解器进行了广泛的评估,证实了RPoly是当前最有效,最可靠的HIPP方法。

著录项

  • 来源
    《Annals of Operations Research》 |2011年第2011期|p.137-162|共26页
  • 作者单位

    Institute Superior Tecnico (1ST), Technical University of Lisbon and INESC-ID Lisboa, Lisbon,Portugal;

    Complex and Adaptive Systems Lab, School of Computer Science and Informatics, University CollegeDublin, Dublin, Ireland;

    Institute Superior Tecnico (1ST), Technical University of Lisbon and INESC-ID Lisboa, Lisbon,Portugal;

    Institute Superior Tecnico (1ST), Technical University of Lisbon and INESC-ID Lisboa, Lisbon,Portugal;

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

    haplotype inference; pure parsimony; pseudo-boolean optimization;

    机译:单倍型推断纯简约伪布尔优化;

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