首页> 外文会议>Eighth Pacific Symposium on Biocomputing (PSB), Jan 3-7, 2003, Kauai, Hawaii >KERNEL COX REGRESSION MODELS FOR LINKING GENE EXPRESSION PROFILES TO CENSORED SURVIVAL DATA
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KERNEL COX REGRESSION MODELS FOR LINKING GENE EXPRESSION PROFILES TO CENSORED SURVIVAL DATA

机译:内核COX回归模型,用于将基因表达谱与经审查的生存数据相关联

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In functional genomics, one important problem is to relate the microarray gene expression profiles to various clinical phenotypes from patients. The success has been demonstrated in molecular classification of cancer in which gene expression data serve as predictors and different types of cancer are the binary or multi-categorical outcome variable. However, there has been less research in linking gene expression profiles to other types of phenotypes, in particular, the censored survival data such as patients' overall survival or cancer relapse times. In the paper, we develop a kernel Cox regression model for relating gene expression profiles to censored phenotypes in the framework the penalization method in terms of function estimation in reproducing kernel Hilbert spaces. To circumvent the problem of censoring, we use the negative partial likelihood as a loss function in the estimation procedure. The functional combinations of the original gene expression data identified by the method are highly correlated with the patients' survival times and at the same time account for the variability in the gene expression levels. We apply our method to data sets from diffuse large B-cell lymphoma, lung adenocarcinoma and breast carcinoma studies to verify its effectiveness. The results from these analysis indicate that the proposed method works very well in identifying subgroups of patients with different risks of death or relapse and in predicting the risk of relapse or death based on the gene expression profiles measured from the tumor samples taken from the patients.
机译:在功能基因组学中,一个重要的问题是将微阵列基因表达谱与患者的各种临床表型相关联。在癌症的分子分类中已经证明了成功,其中基因表达数据充当预测因子,而不同类型的癌症是二元或多分类结果变量。然而,将基因表达谱与其他类型的表型联系起来的研究还很少,特别是受审查的生存数据,例如患者的总体生存或癌症复发时间。在本文中,我们开发了一种核Cox回归模型,用于在惩罚性方法框架内根据复制核Hilbert空间中的函数估计,将基因表达谱与审查表型相关联。为了避免检查问题,我们在估计过程中使用负偏似然作为损失函数。通过该方法鉴定的原始基因表达数据的功能组合与患者的生存时间高度相关,同时也说明了基因表达水平的差异。我们将我们的方法应用于弥漫性大B细胞淋巴瘤,肺腺癌和乳腺癌研究的数据集,以验证其有效性。这些分析的结果表明,所提出的方法在识别具有不同死亡或复发风险的患者亚组以及基于从患者肿瘤样品中测得的基因表达谱预测复发或死亡风险方面非常有效。

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