确定疾病相关SNP基序的精确和启发式方法

Gaofeng Huang, P. Jeavons, D. Kwiatkowski
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引用次数: 1

摘要

单核苷酸多态性(SNP)是一种小的DNA变异,自然发生在同一物种的不同个体之间。人类基因组中一些单核苷酸多态性的组合已知会增加某些复杂遗传疾病的风险。本文将这类疾病相关SNP基序的识别问题表述为一个组合优化问题,并表明其为np困难问题。在模拟数据和真实临床数据上,对该问题的精确方法和启发式方法进行了开发和测试。计算结果表明,这些方法是非常有效的,以支持正在进行的生物学研究。
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Exact and Heuristic Approaches for Identifying Disease-Associated SNP Motifs
A Single Nucleotide Polymorphism (SNP) is a small DNA variation which occurs naturally between dierent individuals of the same species. Some combinations of SNPs in the human genome are known to increase the risk of certain complex genetic diseases. This paper formulates the problem of identifying such disease-associated SNP motifs as a combinatorial optimization problem and shows it to be NP-hard. Both exact and heuristic approaches for this problem are developed and tested on simulated data and real clinical data. Computational results are given to demonstrate that these approaches are suciently eective to support ongoing biological research.
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