2016
DOI: 10.5539/ijsp.v5n6p57
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Identification of Biomarkers for Predicting the Overall Survival of Ovarian Cancer Patients: a Sparse Group Lasso Approach

Abstract: Next-generation sequencing has been routinely applied to cancer biology, making it possible for researchers to elucidate the molecular mechanisms underlying cancer initiation and progression. However, how to identify oncomarkers from massive complex genomic data poses a great challenge for both modeling and computing. In this paper, we propose a novel computational pipeline to identify genes related to the overall survival of ovarian cancer patients from the rich Cancer Genome Atlas data. Different from the ex… Show more

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Cited by 4 publications
(3 citation statements)
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“…To model the correlation between genes, we use Gaussian copula as it is convenient for multivariate problem. Another possible future work is to compare different latent variables and copula functions, e.g., Student's t copula (Nelson [1999]) and Gaussian mixture copula (Zhang & Shi [2016]), in a model comparison framework (Mai & Zhang [2016], Zhang et al [2014],…”
Section: Discussionmentioning
confidence: 99%
“…To model the correlation between genes, we use Gaussian copula as it is convenient for multivariate problem. Another possible future work is to compare different latent variables and copula functions, e.g., Student's t copula (Nelson [1999]) and Gaussian mixture copula (Zhang & Shi [2016]), in a model comparison framework (Mai & Zhang [2016], Zhang et al [2014],…”
Section: Discussionmentioning
confidence: 99%
“…We incorporated three data types into our model including gene expression level, DNA methylation level (in gene promoter region), and CNV. The data were normalized using a quantile normalization method by Bolstad et al 11 and Mai and Zhang 12 to correct the bias due to non-biological causes. In addition, we applied an effective method by Hsu et al 13 to remove age and batch effects (three age groups are defined as < 40, [40,70], and > 70 year old).…”
Section: Application To Tcga Ovarian Cancer Datamentioning
confidence: 99%
“…We incorporated three data types into our model including gene expression level, DNA methylation level (on gene promoter region) and CNV. The data were normalized using a quantile normalization method by Balstad et al [11,12] to correct the bias due to non-biological causes. In addition, we applied an effective method by Hsu et al [13] to remove age and batch effects (three age groups are defined as < 40 y.o., [40,70] y.o., and > 70 y.o.).…”
Section: Application To Tcga Ovarian Cancer Datamentioning
confidence: 99%