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A decomposition model to track gene expression signatures: preview on observer-independent classification of ovarian cancer

机译:追踪基因表达特征的分解模型:不依赖观察者的卵巢癌分类预告

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摘要

Motivation: A number of algorithms and analytical models have been employed to reduce the multidimensional complexity of DNA array data and attempt to extract some meaningful interpretation of the results. These include clustering, principal components analysis, self-organizing maps, and support vector machine analysis. Each method assumes an implicit model for the data, many of which separate genes into distinct clusters defined by similar expression profiles in the samples tested. A point of concern is that many genes may be involved in a number of distinct behaviours, and should therefore be modelled to fit into as many separate clusters as detected in the multidimensional gene expression space. The analysis of gene expression data using a decomposition model that is independent of the observer involved would be highly beneficial to improve standard and reproducible classification of clinical and research samples.
机译:动机:已采用多种算法和分析模型来降低DNA阵列数据的多维复杂度,并尝试提取一些有意义的结果解释。其中包括聚类,主成分分析,自组织图和支持向量机分析。每种方法均假定数据的隐式模型,其中许多模型将基因分成不同的簇,这些簇由测试样品中的相似表达谱定义。值得关注的一点是,许多基因可能涉及许多不同的行为,因此应进行建模以适合多维基因表达空间中检测到的许多单独簇。使用独立于所涉及观察者的分解模型对基因表达数据进行分析,将对改善临床和研究样品的标准和可重现分类非常有益。

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