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Integrated gene expression analysis of multiple microarray data sets based on a normalization technique and on adaptive connectionist model

机译:基于归一化技术和自适应连接模型的多个微阵列数据集的整合基因表达分析

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Research with microarray gene expression analysis has primarily been on expression profiling based on one set of microarray data. This paper presents a novel approach to integrated analysis and modeling of microarray data from multiple sources. Normalization method is applied to different data sets before they are used together in an adaptive connectionist classification system. The method is demonstrated on a bench-mark case study problem of classifying Diffuse Large B-cell lymphoma (DLBCL) and Follicular lymphoma (FL). For the purpose of comparison, different normalization techniques were applied and connectionist models were created from one or more microarray data sets and then tested on the others. The results show that with the use of proper normalization and modeling techniques, a model based on one set of data can be used to classify microarray data from totally different sources. For the modeling part, evolving connectionist systems (ECOS) are used that allow for new data to be added in an incremental way so that connectionist systems can be built for on-line adaptive learning where new data from various sources can be added into the system.
机译:微阵列基因表达分析的研究主要是基于一组微阵列数据进行表达谱分析。本文提出了一种新颖的方法,可以对来自多个来源的微阵列数据进行综合分析和建模。归一化方法适用于不同的数据集,然后在自适应连接主义分类系统中一起使用它们。该方法在将弥漫性大B细胞淋巴瘤(DLBCL)和滤泡性淋巴瘤(FL)进行分类的基准案例研究问题上得到证明。为了进行比较,应用了不同的归一化技术,并从一个或多个微阵列数据集创建了连接模型,然后在其他数据集上进行了测试。结果表明,通过使用适当的归一化和建模技术,可以使用基于一组数据的模型对来自完全不同来源的微阵列数据进行分类。对于建模部分,使用不断发展的连接系统(ECOS),该系统允许以增量方式添加新数据,以便可以建立连接系统以进行在线自适应学习,其中可以将来自各种来源的新数据添加到系统中。 。

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