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Gene-disease association through topological and biological feature integration

机译:通过拓扑和生物学特征整合实现基因疾病关联

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摘要

The large amounts of biological information generated using advanced high-throughput experimental techniques continue to motivate the design of suitable methods for valuable knowledge mining. Finding proper means to examine and analyze such information allows better understanding of normal biological processes as well as uncovering malfunctions that trigger various diseases. Several computational approaches were developed to complement the experimental work which is often restricted by high time and cost requirements. In this paper, we consider the problem of disease- gene association and we propose a methodology based on a classification approach which integrates protein-protein interaction network topology features and biological information collected from various data sources. When applied on a dataset of multiple disease types and using the Naive Bayes classifier, our method achieves an AUC score of 0.941. We also consider two case studies of type II diabetes mellitus and breast cancer. The experimental results greatly favor our approach.
机译:使用先进的高通量实验技术生成的大量生物信息继续激励着设计有价值的知识的方法。寻找适当的方法来检查和分析此类信息可以更好地理解正常的生物学过程,并发现引发各种疾病的故障。开发了几种计算方法来补充实验工作,而实验工作通常受时间和成本要求的限制。在本文中,我们考虑了疾病-基因关联的问题,并提出了一种基于分类方法的方法,该方法将蛋白质-蛋白质相互作用网络的拓扑结构特征和从各种数据源收集的生物学信息相结合。当将其应用于多种疾病类型的数据集并使用朴素贝叶斯分类器时,我们的方法获得的AUC得分为0.941。我们还考虑了II型糖尿病和乳腺癌的两个案例研究。实验结果极大地支持了我们的方法。

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