Abstract 304P
Background
Immune checkpoint inhibitors (ICI) have been widely used in melanoma, but to identify melanoma patients with survival benefit from ICI is still a challenge. There is an urgent need for prognostic signatures improving the prediction of immunotherapy responses of cancer patients.
Methods
We used data from EMBL-EBI database and analyzed RNA-seq information and clinical profiles in melanoma. Weighted gene co-expression network analysis (WGCNA) was used to identified the key module, then nonnegative matrix factorization (NMF) was conducted to cluster patients into two different cluster and compared them regarding overall survival (OS) and progression-free survival (PFS). Subsequently, the differentially expressed genes (DEGs) between different clusters were identified and their function and pathway annotation were performed.
Results
91 melanoma biopsies with complete survival information were included in our analyses and we first identified the key module (magenta) by WGCNA, then identified nine prognostic lncRNAs (ENSG00000258869, ENSG00000179840, ENSG00000206344, ENSG00000226777, ENSG00000205018, ENSG00000204261, ENSG00000163597, ENSG00000197536, and ENSG00000263069) signature that predicted for OS and PFS in patients treated with ICI by NMF. Finally, enrichment analysis showed that the functions of DEGs between two consensus clusters were mainly related to the immune process and treatment.
Conclusions
the nine lncRNAs signature is a novel effective predictor for OS and PFS in melanoma patients treated with ICI.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
360P - Number of lymph nodes examined was not an independent risk factor for the survival of patients with stage IA1-2 lung adenocarcinoma undergoing sublobar resection
Presenter: Zhenbin Qiu
Session: e-Poster Display Session
361P - Radiomic model predicting radiological response after thoracic stereotactic body radiotherapy regardless of tumor histology and staging
Presenter: Ben Man Fei Cheung
Session: e-Poster Display Session
362P - Integrative and comparative genomic analysis and immune microenvironment features of lung cancer patients with tuberculosis
Presenter: Xiaoling Xu
Session: e-Poster Display Session
363P - Genetic predisposition for pre-invasive lung adenocarcinoma manifesting as ground-glass nodules with family history of lung cancer
Presenter: Rui Fu
Session: e-Poster Display Session
364P - A deep learning model for the classification of lung cancer
Presenter: Gouji Toyokawa
Session: e-Poster Display Session
365P - Utilization of on-site pathology evaluation for lung cancer diagnosis in the Philippines’ National University Hospital
Presenter: Rich Ericson King
Session: e-Poster Display Session
367P - Detection of epidermal growth factor receptor mutations (EGFR-mut) from cell-free DNA in pleural effusion (PE-DNA) of patients with non-small cell lung cancer (NSCLC)
Presenter: Kirsty Lee
Session: e-Poster Display Session
368P - Real-world characteristics, treatment, and outcomes of stage III non-small cell lung cancer in Japan: SOLUTION study
Presenter: Haruyasu Murakami
Session: e-Poster Display Session
369P - The surgical perspective in neoadjuvant immunotherapy for resectable non-small cell lung cancer
Presenter: Long Jiang
Session: e-Poster Display Session
371P - Real-world insights into treatment patterns and outcomes in stage III non-small cell lung cancer (NSCLC): KINDLE study India analysis
Presenter: Kumar Prabhash
Session: e-Poster Display Session