Development and Validation of a Novel 11-Gene Prognostic Model for Serous Ovarian Carcinomas Based on Lipid Metabolism Expression Profile

Author:

Zheng Mingjun,Mullikin Heather,Hester Anna,Czogalla BastianORCID,Heidegger Helene,Vilsmaier Theresa,Vattai Aurelia,Chelariu-Raicu Anca,Jeschke UdoORCID,Trillsch FabianORCID,Mahner Sven,Kaltofen TillORCID

Abstract

(1) Background: Biomarkers might play a significant role in predicting the clinical outcomes of patients with ovarian cancer. By analyzing lipid metabolism genes, future perspectives may be uncovered; (2) Methods: RNA-seq data for serous ovarian cancer were downloaded from The Cancer Genome Atlas and Gene Expression Omnibus databases. The non-negative matrix factorization package in programming language R was used to classify molecular subtypes of lipid metabolism genes and the limma package in R was performed for functional enrichment analysis. Through lasso regression, we constructed a multi-gene prognosis model; (3) Results: Two molecular subtypes were obtained and an 11-gene signature was constructed (PI3, RGS, ADORA3, CH25H, CCDC80, PTGER3, MATK, KLRB1, CCL19, CXCL9 and CXCL10). Our prognostic model shows a good independent prognostic ability in ovarian cancer. In a nomogram, the predictive efficiency was notably superior to that of traditional clinical features. Related to known models in ovarian cancer with a comparable amount of genes, ours has the highest concordance index; (4) Conclusions: We propose an 11-gene signature prognosis prediction model based on lipid metabolism genes in serous ovarian cancer.

Publisher

MDPI AG

Subject

Inorganic Chemistry,Organic Chemistry,Physical and Theoretical Chemistry,Computer Science Applications,Spectroscopy,Molecular Biology,General Medicine,Catalysis

Reference66 articles.

1. Cancer statistics 2019;Siegel;CA Cancer J. Clin.,2019

2. Epidemiology of malignant cervical, corpus uteri and ovarian tumours-current data and epidemiological trends;Waldmann;Geburtshilfe Frauenheilkd,2013

3. Ovarian cancer;Jayson;Lancet,2014

4. Ovarian cancer as a genetic disease;Lech;Front. Biosci.,2013

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