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Semi-supervised learning via penalized mixture model with application to microarray sample classification

机译:惩罚混合模型的半监督学习及其在微阵列样品分类中的应用

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Motivation: It is biologically interesting to address whether human blood outgrowth endothelial cells (BOECs) belong to or are closer to large vessel endothelial cells (LVECs) or microvascular endothelial cells (MVECs) based on global expression profiling. An earlier analysis using a hierarchical clustering and a small set of genes suggested that BOECs seemed to be closer to MVECs. By taking advantage of the two known classes, LVEC and MVEC, while allowing BOEC samples to belong to either of the two classes or to form their own new class, we take a semi-supervised learning approach; for high-dimensional data as encountered here, we propose a penalized mixture model with a weighted L-1 penalty to realize automatic feature selection while fitting the model.
机译:动机:基于全局表达谱分析,人类血液生长内皮细胞(BOEC)是属于大血管内皮细胞(LVEC)还是更接近大血管内皮细胞(MVEC),在生物学上很有趣。较早的使用层次聚类和少量基因的分析表明,BOEC似乎更接近MVEC。通过利用LVEC和MVEC这两个已知的类,同时允许BOEC样本属于两个类中的一个或形成自己的新类,我们采用了半监督学习方法;对于此处遇到的高维数据,我们提出了一种加权L-1罚分的惩罚混合模型,以在拟合模型的同时实现自动特征选择。

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