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A Robust Hybrid Approach Based on Estimation of Distribution Algorithm and Support Vector Machine for Hunting Candidate Disease Genes

机译:基于分布算法估计和支持向量机的鲁棒混合搜索候选疾病基因的方法

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摘要

Microarray data are high dimension with high noise ratio and relatively small sample size, which makes it a challenge to use microarray data to identify candidate disease genes. Here, we have presented a hybrid method that combines estimation of distribution algorithm with support vector machine for selection of key feature genes. We have benchmarked the method using the microarray data of both diffuse B cell lymphoma and colon cancer to demonstrate its performance for identifying key features from the profile data of high-dimension gene expression. The method was compared with a probabilistic model based on genetic algorithm and another hybrid method based on both genetics algorithm and support vector machine. The results showed that the proposed method provides new computational strategy for hunting candidate disease genes from the profile data of disease gene expression. The selected candidate disease genes may help to improve the diagnosis and treatment for diseases.
机译:微阵列数据具有高维度,高噪声比和相对较小的样本量,这使得使用微阵列数据识别候选疾病基因成为一个挑战。在这里,我们提出了一种混合方法,将分配算法的估计与支持向量机相结合,用于选择关键特征基因。我们已经使用弥漫B细胞淋巴瘤和结肠癌的微阵列数据对方法进行了基准测试,以证明其从高维基因表达谱数据中识别关键特征的性能。将该方法与基于遗传算法的概率模型以及基于遗传算法和支持向量机的另一种混合方法进行了比较。结果表明,该方法为从疾病基因表达谱数据中寻找候选疾病基因提供了新的计算策略。选择的候选疾病基因可能有助于改善疾病的诊断和治疗。

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