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Inferring biological tasks using Pareto analysis of high-dimensional data

机译:使用Pareto高维数据分析推断生物学任务

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摘要

We present the Pareto task inference method (ParTI; http://www.weizmann.ac.il/mcb/UriAlon/download/ParTI) for inferring biological tasks from high-dimensional biological data. Data are described as a polytope, and features maximally enriched closest to the vertices (or archetypes) allow identification of the tasks the vertices represent. We demonstrate that human breast tumors and mouse tissues are well described by tetrahedrons in gene expression space, with specific tumor types and biological functions enriched at each of the vertices, suggesting four key tasks.
机译:我们提出了帕累托任务推断方法(ParTI; http://www.weizmann.ac.il/mcb/UriAlon/download/ParTI),用于从高维生物学数据中推断生物学任务。数据被描述为多面体,并且最接近顶点(或原型)的最大程度地丰富的特征允许识别顶点代表的任务。我们证明了人类乳腺肿瘤和小鼠组织在基因表达空间中被四面体很好地描述了,特定的肿瘤类型和生物学功能在每个顶点上都富集,提示了四个关键任务。

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