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Graphical methods for class prediction using dimension reduction techniques on DNA microarray data

机译:使用降维技术对DNA微阵列数据进行类别预测的图形方法

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Motivation: We introduce simple graphical classification and prediction tools for tumor status using gene-expression profiles. They are based on two dimension estimation techniques sliced average variance estimation (SAVE) and sliced inverse regression (SIR). Both SAVE and SIR are used to infer on the dimension of the classification problem and obtain linear combinations of genes that contain sufficient information to predict class membership, such as tumor type. Plots of the estimated directions as well as numerical thresholds estimated from the plots are used to predict tumor classes in cDNA microarrays and the performance of the class predictors is assessed by cross-validation. A microarray simulation study is carried out to compare the power and predictive accuracy of the two methods. Results: The methods are applied to cDNA microarray data on BRCA1 and BRCA2 mutation carriers as well as sporadic tumors from Hedenfalk et al. (2001). All samples are correctly classified.
机译:动机:我们使用基因表达谱为肿瘤状态引入简单的图形分类和预测工具。它们基于切片平均方差估计(SAVE)和切片逆回归(SIR)的二维估计技术。 SAVE和SIR都可用于推断分类问题的范围,并获得基因的线性组合,这些线性组合包含足以预测类成员的信息,例如肿瘤类型。估计方向的图以及从图中估计的数字阈值用于预测cDNA微阵列中的肿瘤类别,并通过交叉验证评估类别预测因子的性能。进行了微阵列仿真研究,以比较两种方法的功效和预测准确性。结果:该方法用于BRCA1和BRCA2突变携带者以及Hedenfalk等人的零星肿瘤的cDNA微阵列数据。 (2001)。所有样本均已正确分类。

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