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Bayesian binary kernel probit model for microarray based cancer classification and gene selection

机译:基于贝叶斯二进制核概率模型的基于微阵列的癌症分类和基因选择

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With the arrival of gene expression microarrays a new challenge has opened up for identification or classification of cancer tissues. Due to the large number of genes providing valuable information simultaneously compared to very few available tissue samples the cancer staging or classification becomes very tricky. In this paper we introduce a hierarchical Bayesian probit model for two class cancer classification. Instead of assuming a linear structure for the function that relates the gene expressions with the cancer types we only assume that the relationship is explained by an unknown function which belongs to an abstract functional space like the reproducing kernel Hilbert space. Our formulation automatically reduces the dimension of the problem from the large number of covariates or genes to a small sample size. We incorporate a Bayesian gene selection scheme with the automatic dimension reduction to adaptively select important genes and classify cancer types under an unified model. Our model is highly flexible in terms of explaining the relationship between the cancer types and gene expression measurements and picking up the differentially expressed genes. The proposed model is successfully tested on three simulated data sets and three publicly available leukemia cancer, colon cancer, and prostate cancer real life data sets.
机译:随着基因表达微阵列的到来,对癌症组织的鉴定或分类提出了新的挑战。由于与很少的可用组织样本相比,大量基因同时提供有价值的信息,因此癌症的分期或分类变得非常棘手。在本文中,我们介绍了用于两类癌症分类的分层贝叶斯概率模型。与其假设基因表达与癌症类型相关的功能没有线性结构,我们仅假设这种关系是由未知功能解释的,该功能属于抽象功能空间,如繁殖核希尔伯特空间。我们的公式自动将问题的范围从大量协变量或基因减少到小样本量。我们将贝叶斯基因选择方案与自动降维功能结合在一起,以自适应地选择重要基因并在统一模型下对癌症类型进行分类。我们的模型在解释癌症类型与基因表达测量之间的关系以及选择差异表达基因方面具有高度的灵活性。该模型在三个模拟数据集和三个公众可获得的白血病,结肠癌和前列腺癌现实生活数据集上成功进行了测试。

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