利用频繁共表达网络识别乳腺癌预后的基因簇。

Jie Zhang, Kun Huang, Yang Xiang, Ruoming Jin
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引用次数: 16

摘要

在本文中,我们研究了使用基因共表达网络分析来识别乳腺癌预后的潜在生物标志物。利用网络挖掘算法CODENSE识别多种癌症类型之间高度连接的全基因组基因共表达网络,并将结果基因簇应用于一系列乳腺癌微阵列集,将患者分为不同的组。因此,我们已经确定了一组潜在的乳腺癌预后生物标志物,可以将患者分为预后不同的两组。我们还将我们发现的基因簇与使用其他聚类算法从类似研究中确定的基因子集进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Using Frequent Co-expression Network to Identify Gene Clusters for Breast Cancer Prognosis.

Using Frequent Co-expression Network to Identify Gene Clusters for Breast Cancer Prognosis.

Using Frequent Co-expression Network to Identify Gene Clusters for Breast Cancer Prognosis.

Using Frequent Co-expression Network to Identify Gene Clusters for Breast Cancer Prognosis.

In this paper, we investigated the use of gene co-expression network analyses to identify potential biomarkers for breast carcinoma prognosis. The network mining algorithm CODENSE is used to identify highly connected genome-wide gene co-expression networks among a variety of cancer types, and the resulted gene clusters are applied to a series of breast cancer microarray sets to categorize the patients into different groups. As a result, we have identified a set of genes that are potential biomarkers for breast cancer prognosis which can categorize the patients into two groups with distinct prognosis. We also compared the gene clusters we discovered with gene subsets identified from similar studies using other clustering algorithms.

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