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Disease-Related Gene Expression Analysis Using an Ensemble Statistical Test Method

机译:使用集合统计测试方法进行疾病相关的基因表达分析

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The development of novel high-throughput experimental techniques makes it possible to comprehensively analyze biological data in health and disease. However, a large amount of data generated results in dramatic dataanalytic challenges in discovery of ‘signature’ molecules, which are specific to different biological conditions (e.g. normal vs. disease, treated vs. untreated). Current statistical methods are effective only in the case their hypothesis can be matched. In this paper, we apply an ensemble statistical method to infer significant molecules. In our approach, four well-done and well-understanding statistical techniques had been used for the analysis to the experimental data, and then the results will be collected into an ensemble framework to find the high confident “significant” molecules which can distinguish the different experimental conditions. We evaluate the performance of our approach on a test dataset which deposited on GEO database with an access number of GSE45114.
机译:新颖的高通量实验技术的发展使得可以全面分析健康和疾病的生物数据。然而,在发现“签名”分子的发现中产生大量数据导致巨大的数据分析挑战,其特异于不同的生物条件(例如,正常对疾病,治疗与未经处理的疾病)。目前的统计方法仅在其假设匹配的情况下有效。在本文中,我们应用了合奏统计方法来推断出大量分子。在我们的方法中,已经使用了四种完整的统计技术,用于分析实验数据,然后将结果收集到集合框架中,以找到可以区分不同的高自信“重要”分子。实验条件。我们评估我们的方法在使用GSE45114的访问编号上存放在Geo数据库上的测试数据集中的性能。

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