首页> 外文会议>International Conference on Parallel Problem Solving from Nature(PPSN IX); 20060909-13; Reykjavik(IS) >Exploiting Expert Knowledge in Genetic Programming for Genome-Wide Genetic Analysis
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Exploiting Expert Knowledge in Genetic Programming for Genome-Wide Genetic Analysis

机译:利用基因编程中的专家知识进行全基因组遗传分析

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Human genetics is undergoing an information explosion. The availability of chip-based technology facilitates the measurement of thousands of DNA sequence variation from across the human genome. The challenge is to sift through these high-dimensional datasets to identify combinations of interacting DNA sequence variations that are predictive of common diseases. The goal of this paper was to develop and evaluate a genetic programming (GP) approach for attribute selection and modeling that uses expert knowledge such as Tuned ReliefF (TuRF) scores during selection to ensure trees with good building blocks are recombined and reproduced. We show here that using expert knowledge to select trees performs as well as a multiobjective fitness function but requires only a tenth of the population size. This study demonstrates that GP may be a useful computational discovery tool in this domain.
机译:人类遗传学正在经历信息爆炸。基于芯片的技术的可用性促进了整个人类基因组中数千个DNA序列变异的测量。挑战在于筛选这些高维数据集,以识别相互作用的DNA序列变异的组合,这些变异可预测常见疾病。本文的目的是开发和评估一种用于属性选择和建模的遗传编程(GP)方法,该方法在选择过程中使用诸如Tuned ReliefF(TuRF)分数之类的专家知识,以确保具有良好构件的树木得以重组和繁殖。我们在这里展示了使用专家知识来选择树木的效果和多目标适应度函数一样好,但只需要人口数量的十分之一。这项研究表明GP可能是该领域中有用的计算发现工具。

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