Journal ArticleUnknown
Machine learning and bioinformatics models to identify gene expression patterns of ovarian cancer associated with disease progression and mortality
Author Affiliations
Manarat International University, Jahangirnagar University, Garvan Institute of Medical Research, The University of Sydney
Published InJournal of Biomedical Informatics
Year2019
Citations79
Abstract
Ovarian cancer (OC) is a common cause of cancer death among women worldwide, so there is a pressing need to identify factors influencing OC mortality. Much OC patient clinical data is publicly accessible via the Broad Institute Cancer Genome Atlas (TCGA) datasets which include patient age, cancer site, stage and subtype and patient survival, as well as OC gene transcription profiles. These allow studies correlation of OC patient survival (and other clinical variables) with gene expression to identify new OC biomarkers to predict patient mortality. We integrated clinical and tissue transcriptome data from patients available from the TCGA portal. We determined OC mRNA expression levels (compared to normal ovarian tissue) of 41 genes already implicated in OC progression, and assessed…
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