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FINDING OPTIMAL MODELS FOR SMALL GENE NETWORKS

机译:寻找小型基因网络的最佳模型

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摘要

Finding gene networks from microarray data has been one focus of research in recent years. Given search spaces of super-exponential size, researchers have been applying heuristic approaches like greedy algorithms or simulated annealing to infer such networks. However, the accuracy of heuristics is uncertain, which -in combination with the high measurement noise of microarrays - makes it very difficult to draw conclusions from networks estimated by heuristics. We present a method that finds optimal Bayesian networks of considerable size and show first results of the application to yeast data. Having removed the uncertainty due to the heuristic methods, it becomes possible to evaluate the power of different statistical models to find biologically accurate networks.
机译:从微阵列数据中寻找基因网络已成为近年来研究的重点之一。给定超指数大小的搜索空间,研究人员一直在应用启发式方法(例如贪婪算法或模拟退火)来推断此类网络。然而,启发式方法的准确性是不确定的,再加上微阵列的高测量噪声,使得很难从启发式方法估计的网络中得出结论。我们提出了一种方法,该方法可以找到相当大的最佳贝叶斯网络,并显示出对酵母数据的初步应用结果。由于启发式方法消除了不确定性,因此有可能评估不同统计模型的功能以找到生物学上准确的网络。

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