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Learning A Highly Resolved Tree of Phenotypes Using Genomic Data Clustering

机译:使用基因组数据聚类学习高度分辨的表型树

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A highly resolved tree of phenotypes (TOP) derived from genomic data reveals important relationships between heterogeneous diseases at molecular level. We propose a stability analysis guided learning method that produces a reproducible yet non-binary TOP using high-dimensional finite sample size genomic data. Experimental results show the superior capability of the proposed method in learning TOP with balanced stability and descriptiveness, as compared to conventional tree learning schemes.
机译:源自基因组数据的高度分辨的表型树(顶部)揭示了分子水平的异质疾病之间的重要关系。我们提出了一种稳定性分析引导学习方法,其使用高维有限样本大小基因组数据产生可再现但非二进制顶部。与传统的树立学习方案相比,实验结果表明,在学习稳定性和描述方面的建议方法的优异能力。

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