A Column Generation Approach for Pure Parsimony Haplotyping

Veronica Dal Sasso, L. D. Giovanni, M. Labbé
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引用次数: 1

Abstract

The knowledge of nucleotides chains that compose the double DNA chain of an individual has a relevant role in detecting diseases and studying populations. However, determining experimentally the single nucleotides chains that, paired, form a certain portion of the DNA is expensive and time-consuming. Mathematical programming approaches have been proposed instead, e.g. formulating the Haplotype Inference by Pure Parsimony problem (HIPP). Abstractly, we are given a set of genotypes (strings over a ternary alphabet {0,1,2}) and we want to determine the smallest set of haplotypes (binary strings over the set {0,1}) so that each genotype can be "generated" by some pair of haplotypes, meaning that they are compatible with the genotype and can fully explain its structure. A polynomial-sized Integer Programming model was proposed by Catanzaro, Godi and Labbe (2010), which is highly efficient but hardly scalable to instances with a large number of genotypes. In order to deal with larger instances, we propose a new model involving an exponential number of variables to be solved via column generation, where variables are dynamically introduced into the model by iteratively solving a pricing problem. We compared different ways of solving the pricing problem, based on integer programming, smart enumeration and local search heuristic. The efficiency of the approach is improved by stabilization and by a heuristic to provide a good initial solution. Results show that, with respect to the linear relaxations of both the polynomial and exponential-size models, our approach yields a tighter formulation and outperforms in both efficiency and effectiveness the previous model for instances with a large number of genotypes.
纯简约单倍型的列生成方法
对组成个体双DNA链的核苷酸链的了解在检测疾病和研究人群中具有相关作用。然而,通过实验确定构成DNA某一部分的单核苷酸链既昂贵又耗时。数学规划方法已被提出代替,例如通过纯简约问题(HIPP)制定单倍型推断。抽象地说,我们有一组基因型(三元字母表{0,1,2}上的字符串),我们想要确定最小的单倍型(集合{0,1}上的二进制字符串),这样每个基因型都可以由一些单倍型对“产生”,这意味着它们与基因型兼容,并且可以完全解释其结构。Catanzaro, Godi和Labbe(2010)提出了一种多项式大小的整数规划模型,该模型效率很高,但难以扩展到具有大量基因型的实例。为了处理更大的实例,我们提出了一个新的模型,该模型涉及指数数量的变量,通过列生成来求解,其中变量通过迭代解决定价问题来动态地引入模型。比较了基于整数规划、智能枚举和局部搜索启发式的定价问题求解方法。该方法通过稳定性和启发式来提供良好的初始解,从而提高了算法的效率。结果表明,对于多项式和指数大小模型的线性松弛,我们的方法产生了更紧密的公式,并且在具有大量基因型的实例中,在效率和有效性方面优于先前的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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