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Gene Assessment and Sample Classification for Gene Expression Data Using a Genetic Algorithm / k-nearest Neighbor Method

机译:基因表达数据的基因评估和样本分类的遗传算法/ k近邻法

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摘要

Recent tools that analyze microarray expression data have exploited correlation-based approaches such as clustering analysis. We describe a new method for assessing the importance of genes for sample classification based on expression data. Our approach combines a genetic algorithm (GA) and the k-nearest neighbor (KNN) method to identify genes that jointly can discriminate between two types of samples (e.g. normal vs. tumor). First, many such subsets of differentially expressed genes are obtained independently using the GA. Then, the overall frequency with which genes were selected is used to deduce the relative importance of genes for sample classification. Sample heterogeneity is accommodated; that is, the method should be robust against the existence of distinct subtypes. We applied GA / KNN to expression data from normal versus tumor tissue from human colon. Two distinct clusters were observed when the 50 most frequently selected genes were used to classify all of the samples in the data sets stu died and the majority of samples were classified correctly. Identification of a set of differentially expressed genes could aid in tumor diagnosis and could also serve to identify disease subtypes that may benefit from distinct clinical approaches to treatment.
机译:分析微阵列表达数据的最新工具已经利用了基于相关性的方法,例如聚类分析。我们描述了一种新的方法,用于评估基于表达数据的基因对于样品分类的重要性。我们的方法结合了遗传算法(GA)和近邻k(KNN)方法,以识别可以共同区分两种样本(例如正常样本与肿瘤样本)的基因。首先,使用GA独立获得许多此类差异表达基因的子集。然后,使用选择基因的总频率来推断基因对于样品分类的相对重要性。适应样本异质性;也就是说,该方法应针对不同亚型的存在具有鲁棒性。我们将GA / KNN应用于正常结肠和人结肠肿瘤组织的表达数据。当使用50个最常选择的基因对数据集中的所有样本进行分类时,观察到两个截然不同的簇,并且大多数样本都已正确分类。鉴定一组差异表达的基因可有助于肿瘤诊断,还可用于鉴定可受益于独特的临床治疗方法的疾病亚型。

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