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Multiple Threshold Spatially Uniform ReliefF for the Genetic Analysis of Complex Human Diseases

机译:用于复杂人类疾病遗传分析的多阈值空间均匀救济

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Detecting genetic interactions without running an exhaustive search is a difficult problem. We present a new heuristic, multi-SURF~*, which can detect these interactions with high accuracy and in time linear in the number of genes. Our algorithm is an improvement over the SURF~* algorithm, which detects genetic signals by comparing individuals close to, and far from, one another and noticing whether differences correlate with different disease statuses. Our improvement consistently outperforms SURF~* while providing a large runtime decrease by examining only individuals very near and very far from one another. Additionally we perform an analysis on real data and show that our method provides new information. We conclude that multiSURF~* is a better alternative to SURF~* in both power and runtime.
机译:在不进行详尽搜索的情况下检测基因相互作用是一个难题。我们提出了一种新的启发式多重SURF〜*方法,它可以高精度地检测这些相互作用,并且在基因数量上呈时间线性关系。我们的算法是对SURF〜*算法的改进,该算法通过比较彼此接近和远离的个体并注意到差异是否与不同的疾病状态相关联来检测遗传信号。我们的改进始终优于SURF〜*,同时通过仅检查彼此之间非常近和非常远的个人而大大减少了运行时间。此外,我们对真实数据进行了分析,并表明我们的方法提供了新信息。我们得出结论,在功率和运行时间上,multiSURF〜*是SURF〜*的更好替代方案。

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