用一种新的杂交方法鉴定阿尔茨海默病相关基因

Seyyedhassan Paylakhi, Seyedeh Zahra Paylakhi, S. Ozgoli
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引用次数: 4

摘要

识别复杂疾病/特征背后的基因通常涉及多种病因机制和致病基因是困难的。虽然微阵列技术使研究人员能够研究基因表达的变化,但识别病理相关基因仍然是一个挑战。为了解决这一挑战,我们采用了一种新的方法从已发表的微阵列数据集中选择疾病相关基因。该方法由fisher准则、SAM(微阵列显著性分析)和GA/SVM(遗传算法/支持向量机)的组合组成。为了去除高维微阵列数据中的噪声和冗余基因,采用Fisher方法。利用SAM技术,采用不同的训练集,通过GA/SVM选择不同的高信息量基因子集。通过分析每个基因在不同基因子集中出现的次数,获得了最后一个子集,即信息量很大的基因。在阿尔茨海默病(Alzheimer’s disease, AD)的微阵列数据上对所提出的方法进行了测试,评估了鉴定基因的生物学意义,并将结果与前人的研究结果进行了比较。结果表明,该方法具有良好的选择和分类性能,仅使用44个基因就能获得94.55%的分类准确率。从生物学角度来看,这些基因中至少有24个(55%)是阿尔茨海默病相关基因。通过GO和KEGG对这些基因进行分析,确定了ad相关的术语和途径。这些基因可以作为疾病的预测因子,也可以作为寻找新的候选基因的手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Alzheimer disease-relevant genes using a novel hybrid method
Identifying genes underlying complex diseases/traits that generally involve multiple etiological mechanisms and contributing genes is difficult. Although microarray technology has enabled researchers to investigate gene expression changes, but identifying pathobiologically relevant genes remains a challenge. To address this challenge, we apply a new method for selecting the disease-relevant genes from a published microarray dataset. The approach is comprised of combination of fisher criteria, SAM (Significance Analysis for Microarrays), and GA/SVM (Genetic Algorithm/ Support Vector Machine). To get rid of noisy and redundant genes in high dimensional microarray data, the Fisher method is used. SAM technique is utilized and different subsets of highly informative genes are selected by GA/SVM which uses different training sets. The final subset, highly informative genes, is achieved by analyzing the number of times each gene occurs in the different gene subsets. The proposed method was tested on microarray data of Alzheimer’s disease (AD) and the biological significance of identified genes was evaluated, and the results were compared with those of previous studies. The results indicate that the proposed method has a good selection and classification performance, which can produce 94.55 of classification accuracy by use of only 44 genes. From biological point of view, at least 24 (55%) of these genes are Alzheimer associated genes. Analysis of these genes by GO and KEGG led to identification of AD-related terms and pathways. These genes can act as predictors of the disease as well as a mean to find new candidate genes.
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