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Projecting partial least square and principle component regression across microarray studies

机译:在微阵列研究中投射部分最小二乘和主要成分回归

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The study was to compare principle component (PC) versus partial least square (PLS) regression, the former unsupervised and the latter supervised gene component analysis, for highly complicated and correlated microarray gene expression profile. Projection of derived classifiers into independent samples for clinical phenotype prediction was evaluated as well. Previous studies had suggested that PLS might be superior to PC regression in the task of tumor classification since the covariance between predictive and respondent variables was maximized for latent factor extraction. We applied both algorithms for classifier construction and validated their prediction performance on independent microarray experiments. The statistical strategy could reduce high-dimensionality of microarray features and avoid the collinearity problem inherited in gene expression profiles. Proposed predictive model could discriminate breast cancers with positive and negative estrogen receptor status successfully and was feasible for both Taiwanese and Chinese females, both with the same Han Chinese ethnic origin.
机译:该研究是将原理成分(PC)与部分最小二乘(PLS)回归进行比较,前者无监督和后一种监督基因组分分析,用于高度复杂和相关的微阵列基因表达谱。还评价衍生分类器的衍生分类器进入临床表型预测的独立样品。以前的研究表明,由于预测性和受访者变量之间的协方差最大化了潜在因子提取,PLS在肿瘤分类任务中可能优于PC回归。我们应用了两种分类器结构算法,并在独立的微阵列实验上验证了它们的预测性能。统计策略可以减少微阵列特征的高度,避免基因表达谱中遗传的共同性问题。提出的预测模型可以成功地区分乳腺癌,积极的雌激素受体状态,这对于台湾和中国女性来说是可行的,都与同样的汉族族裔血统。

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