利用PathlinX分析和可视化RNA表达与临床注释之间的功能关系。

Proceedings. AMIA Symposium Pub Date : 2002-01-01
Scott L Carter
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引用次数: 0

摘要

我们分析了一个公开可用的数据集,包括105例肺癌的基因表达测量数据,以及描述肿瘤起源患者的年龄、吸烟史和生存统计数据的临床参数。我们的目的是演示PathlinX中体现的无监督分析技术如何使研究人员能够快速获得异构数据元素之间最重要关系的直觉。通过从随机噪声中区分数据中的生物信号的能力,对各种指标进行了经验评估;这是通过对数据行进行随机排列,然后对所有实验元素进行全面的成对比较来完成的。根据排列数据的度量分数建立显著性阈值。然后去除亚阈值关联。然后,通过传递封闭过程对剩余的关联进行分组,以生成称为PathlinX网络的关联无向图。我们讨论了每个生成的PathlinX网络的各种特征,并展示了该技术在大型异构数据集中突出生物特征的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and visualization of functional relationships between RNA expression and clinical annotation using PathlinX.

We have analyzed a publicly available dataset consisting of gene-expression measurements from 105 lung carcinomas joined with clinical parameters describing the age, smoking history, and survival statistics for the patients that the tumors originated in. Our aim was to demonstrate how the unsupervised analysis technique embodied in PathlinX allows researchers to quickly gain an intuition for the most significant relationships between heterogeneous data elements. A variety of metrics were evaluated empirically by their ability to distinguish biological signal in the data from random noise; this was accomplished by random permutation of the data rows followed by comprehensive pair-wise comparison of all experimental elements. Thresholds of significance were established based on the metric scores for the permuted data. Sub-threshold associations were then removed. The remaining associations were then grouped by a transitive closure process to generate undirected graphs of associations called PathlinX networks. We discuss the various features of each generated PathlinX network and demonstrate the ability of the technique to highlight biological features in large heterogeneous datasets.

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