Immune-related pan-cancer gene expression signatures of patient survival revealed by NanoString-based analyses

Author:

D’Angelo AlbertoORCID,Kilili HuseyinORCID,Chapman RobertORCID,Generali Daniele,Tinhofer Ingeborg,Luminari Stefano,Donati Benedetta,Ciarrocchi Alessia,Giannini Riccardo,Moretto Roberto,Cremolini Chiara,Pietrantonio Filippo,Sobhani NavidORCID,Bonazza DeboraORCID,Prins Robert,Song Seung Geun,Jeon Yoon Kyung,Pisignano Giuseppina,Cinelli Mattia,Bagby Stefan,Urrutia Araxi O.

Abstract

The immune system plays a central role in the onset and progression of cancer. A better understanding of transcriptional changes in immune cell-related genes associated with cancer progression, and their significance in disease prognosis, is therefore needed. NanoString-based targeted gene expression profiling has advantages for deployment in a clinical setting over RNA-seq technologies. We analysed NanoString PanCancer Immune Profiling panel gene expression data encompassing 770 genes, and overall survival data, from multiple previous studies covering 10 different cancer types, including solid and blood malignancies, across 515 patients. This analysis revealed an immune gene signature comprising 39 genes that were upregulated in those patients with shorter overall survival; of these 39 genes, three (MAGEC2, SSX1 and ULBP2) were common to both solid and blood malignancies. Most of the genes identified have previously been reported as relevant in one or more cancer types. Using Cibersort, we investigated immune cell levels within individual cancer types and across groups of cancers, as well as in shorter and longer overall survival groups. Patients with shorter survival had a higher proportion of M2 macrophages and γδ T cells. Patients with longer overall survival had a higher proportion of CD8+ T cells, CD4+ T memory cells, NK cells and, unexpectedly, T regulatory cells. Using a transcriptomics platform with certain advantages for deployment in a clinical setting, our multi-cancer meta-analysis of immune gene expression and overall survival data has identified a specific transcriptional profile associated with poor overall survival.

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

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