Computational Ensemble Gene Co-Expression Networks for the Analysis of Cancer Biomarkers

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Julia Figueroa-Martínez, Dulcenombre M. Saz-Navarro, Aurelio López-Fernández, Domingo S. Rodríguez-Baena, Francisco A. Gómez-Vela
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Abstract

Gene networks have become a powerful tool for the comprehensive examination of gene expression patterns. Thanks to these networks generated by means of inference algorithms, it is possible to study different biological processes and even identify new biomarkers for such diseases. These biomarkers are essential for the discovery of new treatments for genetic diseases such as cancer. In this work, we introduce an algorithm for genetic network inference based on an ensemble method that improves the robustness of the results by combining two main steps: first, the evaluation of the relationship between pairs of genes using three different co-expression measures, and, subsequently, a voting strategy. The utility of this approach was demonstrated by applying it to a human dataset encompassing breast and prostate cancer-associated stromal cells. Two gene networks were computed using microarray data, one for breast cancer and one for prostate cancer. The results obtained revealed, on the one hand, distinct stromal cell behaviors in breast and prostate cancer and, on the other hand, a list of potential biomarkers for both diseases. In the case of breast tumor, ST6GAL2, RIPOR3, COL5A1, and DEPDC7 were found, and in the case of prostate tumor, the genes were GATA6-AS1, ARFGEF3, PRR15L, and APBA2. These results demonstrate the usefulness of the ensemble method in the field of biomarker discovery.
用于分析癌症生物标记物的计算集合基因共表达网络
基因网络已成为全面研究基因表达模式的有力工具。借助这些通过推理算法生成的网络,我们可以研究不同的生物过程,甚至确定这类疾病的新生物标志物。这些生物标志物对于发现癌症等遗传疾病的新疗法至关重要。在这项工作中,我们介绍了一种基于集合方法的遗传网络推断算法,该算法通过结合两个主要步骤来提高结果的稳健性:首先,使用三种不同的共表达测量方法来评估基因对之间的关系,然后是投票策略。通过将这种方法应用于包含乳腺癌和前列腺癌相关基质细胞的人类数据集,证明了这种方法的实用性。利用微阵列数据计算了两个基因网络,一个是乳腺癌基因网络,另一个是前列腺癌基因网络。计算结果一方面揭示了乳腺癌和前列腺癌基质细胞的不同行为,另一方面也列出了这两种疾病的潜在生物标记物。在乳腺肿瘤中,发现了 ST6GAL2、RIPOR3、COL5A1 和 DEPDC7;在前列腺肿瘤中,发现了 GATA6-AS1、ARFGEF3、PRR15L 和 APBA2。这些结果证明了集合方法在生物标记物发现领域的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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