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Gene interaction networks boost genetic algorithm performance in biomarker discovery

机译:基因相互作用网络提高了生物标记发现中遗传算法的性能

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In recent years, the advent of high-throughput techniques led to significant acceleration of biomarker discovery. In the same time, the popularity of machine learning methods grown in the field, mostly due to inherit analytical problems associated with the data resulting from these massively parallelized experiments. However, learning algorithms are very often utilized in their basic form, hence sometimes failing to consider interactions that are present between biological subjects (i.e. genes). In this context, we propose a new methodology, based on genetic algorithms, that integrates prior information through a novel genetic operator. In this particular application, we rely on a biological knowledge that is captured by the gene interaction networks. We demonstrate the advantageous performance of our method compared to a simple genetic algorithm by testing it on several microarray datasets containing samples of tissue from cancer patients. The obtained results suggest that inclusion of biological knowledge into genetic algorithm in the form of this operator can boost its effectiveness in the biomarker discovery problem.
机译:近年来,高通量技术的出现大大促进了生物标记物的发现。同时,该领域中机器学习方法的普及,主要是由于继承了与这些大规模并行实验产生的数据相关的分析问题。然而,学习算法经常以其基本形式被利用,因此有时不能考虑生物学受试者(即基因)之间存在的相互作用。在这种情况下,我们提出了一种基于遗传算法的新方法,该方法通过一个新颖的遗传算子整合了先验信息。在这个特定的应用中,我们依赖于基因相互作用网络所捕获的生物学知识。通过在包含癌症患者组织样本的几个微阵列数据集上对其进行测试,我们证明了该方法与简单遗传算法相比具有的优越性能。获得的结果表明,以该算子的形式将生物学知识纳入遗传算法可以提高其在生物标记发现问题中的有效性。

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