Affiliation:
1. Department of Transfusion Medicine, West China Hospital of Sichuan
University, Chengdu, China
2. Department of Ultrasound, Sichuan Provincial People’s Hospital,
University of Electronic Science and Technology of China, Chengdu,
China
Abstract
AbstractRecent studies have confirmed that tumor immune cell infiltration (ICI) is
associated with sensitivity of ovarian cancer (OC) immunotherapy and disease
progression of OC patients. However, studies related to immune infiltration in
OC, has not been elucidated. Two algorithms are used to analyze the OC data in
the TCGA and GEO databases. After combining the two data sets, the immune cell
content of the sample was estimated by Cell-type Identification By Estimate
Relative Subsets of RNA Transcripts (CIBERSORT method). An unsupervised
consistent clustering algorithm was used to analyze ICI subtypes and their
differentially expressed genes (DEGs). Two subgroups and three ICI gene clusters
were identified by unsupervised consensus clustering algorithm. The ICI score
was obtained by analyzing the gene characteristics through principal component
analysis (PCA). The ICI score ranged from –15.8132 to 18.7211, which was
associated with the prognosis of OC patients with immunotherapy. The Toll-like
receptor pathway, B-cell receptor pathway, antigen processing and presentation
pathway, NK-cell-mediated cytotoxicity pathway, and arginine-proline metabolism
pathway were activated in the high ICI score group, suggesting that immune cells
in the high ICI score group were activated, thus leading to a better prognosis
in this group of patients. Patients with G3–G4 in the high ICI rating
group were more sensitive to immunotherapy and had a better prognosis in
patients with high tumor mutation burden (TMB). This study suggests that ICI
scores can be used as a feasible auxiliary indicator for predicting the
prognosis of patients with OC.