Cargando…
New evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis
BACKGROUND: A better understanding of the tumor immune microenvironment (TIME) will facilitate the development of prognostic biomarkers and more effective therapeutic strategies in patients with lung cancer. However, little has been reported on the comprehensive evaluation of complex interactions am...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
BMJ Publishing Group
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8996063/ https://www.ncbi.nlm.nih.gov/pubmed/35396225 http://dx.doi.org/10.1136/jitc-2021-003765 |
_version_ | 1784684418461335552 |
---|---|
author | Shinohara, Shuichi Takahashi, Yusuke Komuro, Hiroyasu Matsui, Takuya Sugita, Yusuke Demachi-Okamura, Ayako Muraoka, Daisuke Takahara, Hirotomo Nakada, Takeo Sakakura, Noriaki Masago, Katsuhiro Miyai, Manami Nishida, Reina Shomura, Shin Shigematsu, Yoshiki Hatooka, Shunzo Sasano, Hajime Watanabe, Fumiaki Adachi, Katsutoshi Fujinaga, Kazuya Kaneda, Shinji Takao, Motoshi Ohtsuka, Takashi Yamaguchi, Rui Kuroda, Hiroaki Matsushita, Hirokazu |
author_facet | Shinohara, Shuichi Takahashi, Yusuke Komuro, Hiroyasu Matsui, Takuya Sugita, Yusuke Demachi-Okamura, Ayako Muraoka, Daisuke Takahara, Hirotomo Nakada, Takeo Sakakura, Noriaki Masago, Katsuhiro Miyai, Manami Nishida, Reina Shomura, Shin Shigematsu, Yoshiki Hatooka, Shunzo Sasano, Hajime Watanabe, Fumiaki Adachi, Katsutoshi Fujinaga, Kazuya Kaneda, Shinji Takao, Motoshi Ohtsuka, Takashi Yamaguchi, Rui Kuroda, Hiroaki Matsushita, Hirokazu |
author_sort | Shinohara, Shuichi |
collection | PubMed |
description | BACKGROUND: A better understanding of the tumor immune microenvironment (TIME) will facilitate the development of prognostic biomarkers and more effective therapeutic strategies in patients with lung cancer. However, little has been reported on the comprehensive evaluation of complex interactions among cancer cells, immune cells, and local immunosuppressive elements in the TIME. METHODS: Whole-exome sequencing and RNA sequencing were carried out on 113 lung cancers. We performed single sample gene set enrichment analysis on TIME-related gene sets to develop a new scoring system (TIME score), consisting of T-score (tumor proliferation), I-score (antitumor immunity) and S-score (immunosuppression). Lung cancers were classified according to a combination of high or low T-score, I-score, and S-scores (eight groups; G1-8). Clinical and genomic features, and immune landscape were investigated among eight groups. The external data sets of 990 lung cancers from The Cancer Genome Atlas and 76 melanomas treated with immune checkpoint inhibitors (ICI) were utilized to evaluate TIME scoring and explore prognostic and predictive accuracy. RESULTS: The representative histological type including adenocarcinoma and squamous cell carcinoma, and driver mutations such as epidermal growth factor receptor and TP53 mutations were different according to the T-score. The numbers of somatic mutations and predicted neoantigens were higher in T(hi) (G5-8) than T(lo) (G1-4) tumors. Immune selection pressure against neoantigen expression occurred only in T(hi) and was dampened in T(hi)/I(lo) (G5-6), possibly due to a reduced number of T cells with a high proportion of tumor specific but exhausted cells. T(hi)/I(lo)/S(hi) (G5) displayed the lowest immune responses by additional immune suppressive mechanisms. The T-score, I-score and S-scores were independent prognostic factors, with survival curves well separated into eight groups with G5 displaying the worst overall survival, while the opposite group T(lo)/I(hi)/S(lo) (G4) had the best prognosis. Several oncogenic signaling pathways influenced on T-score and I-scores but not S-score, and PI3K pathway alteration correlated with poor prognosis in accordance with higher T-score and lower I-score. Moreover, the TIME score predicted the efficacy of ICI in patients with melanoma. CONCLUSION: The TIME score capturing complex interactions among tumor proliferation, antitumor immunity and immunosuppression could be useful for prognostic predictions or selection of treatment strategies in patients with lung cancer. |
format | Online Article Text |
id | pubmed-8996063 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | BMJ Publishing Group |
record_format | MEDLINE/PubMed |
spelling | pubmed-89960632022-04-27 New evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis Shinohara, Shuichi Takahashi, Yusuke Komuro, Hiroyasu Matsui, Takuya Sugita, Yusuke Demachi-Okamura, Ayako Muraoka, Daisuke Takahara, Hirotomo Nakada, Takeo Sakakura, Noriaki Masago, Katsuhiro Miyai, Manami Nishida, Reina Shomura, Shin Shigematsu, Yoshiki Hatooka, Shunzo Sasano, Hajime Watanabe, Fumiaki Adachi, Katsutoshi Fujinaga, Kazuya Kaneda, Shinji Takao, Motoshi Ohtsuka, Takashi Yamaguchi, Rui Kuroda, Hiroaki Matsushita, Hirokazu J Immunother Cancer Basic Tumor Immunology BACKGROUND: A better understanding of the tumor immune microenvironment (TIME) will facilitate the development of prognostic biomarkers and more effective therapeutic strategies in patients with lung cancer. However, little has been reported on the comprehensive evaluation of complex interactions among cancer cells, immune cells, and local immunosuppressive elements in the TIME. METHODS: Whole-exome sequencing and RNA sequencing were carried out on 113 lung cancers. We performed single sample gene set enrichment analysis on TIME-related gene sets to develop a new scoring system (TIME score), consisting of T-score (tumor proliferation), I-score (antitumor immunity) and S-score (immunosuppression). Lung cancers were classified according to a combination of high or low T-score, I-score, and S-scores (eight groups; G1-8). Clinical and genomic features, and immune landscape were investigated among eight groups. The external data sets of 990 lung cancers from The Cancer Genome Atlas and 76 melanomas treated with immune checkpoint inhibitors (ICI) were utilized to evaluate TIME scoring and explore prognostic and predictive accuracy. RESULTS: The representative histological type including adenocarcinoma and squamous cell carcinoma, and driver mutations such as epidermal growth factor receptor and TP53 mutations were different according to the T-score. The numbers of somatic mutations and predicted neoantigens were higher in T(hi) (G5-8) than T(lo) (G1-4) tumors. Immune selection pressure against neoantigen expression occurred only in T(hi) and was dampened in T(hi)/I(lo) (G5-6), possibly due to a reduced number of T cells with a high proportion of tumor specific but exhausted cells. T(hi)/I(lo)/S(hi) (G5) displayed the lowest immune responses by additional immune suppressive mechanisms. The T-score, I-score and S-scores were independent prognostic factors, with survival curves well separated into eight groups with G5 displaying the worst overall survival, while the opposite group T(lo)/I(hi)/S(lo) (G4) had the best prognosis. Several oncogenic signaling pathways influenced on T-score and I-scores but not S-score, and PI3K pathway alteration correlated with poor prognosis in accordance with higher T-score and lower I-score. Moreover, the TIME score predicted the efficacy of ICI in patients with melanoma. CONCLUSION: The TIME score capturing complex interactions among tumor proliferation, antitumor immunity and immunosuppression could be useful for prognostic predictions or selection of treatment strategies in patients with lung cancer. BMJ Publishing Group 2022-04-05 /pmc/articles/PMC8996063/ /pubmed/35396225 http://dx.doi.org/10.1136/jitc-2021-003765 Text en © Author(s) (or their employer(s)) 2022. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited, appropriate credit is given, any changes made indicated, and the use is non-commercial. See http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) . |
spellingShingle | Basic Tumor Immunology Shinohara, Shuichi Takahashi, Yusuke Komuro, Hiroyasu Matsui, Takuya Sugita, Yusuke Demachi-Okamura, Ayako Muraoka, Daisuke Takahara, Hirotomo Nakada, Takeo Sakakura, Noriaki Masago, Katsuhiro Miyai, Manami Nishida, Reina Shomura, Shin Shigematsu, Yoshiki Hatooka, Shunzo Sasano, Hajime Watanabe, Fumiaki Adachi, Katsutoshi Fujinaga, Kazuya Kaneda, Shinji Takao, Motoshi Ohtsuka, Takashi Yamaguchi, Rui Kuroda, Hiroaki Matsushita, Hirokazu New evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis |
title | New evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis |
title_full | New evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis |
title_fullStr | New evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis |
title_full_unstemmed | New evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis |
title_short | New evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis |
title_sort | new evaluation of the tumor immune microenvironment of non-small cell lung cancer and its association with prognosis |
topic | Basic Tumor Immunology |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8996063/ https://www.ncbi.nlm.nih.gov/pubmed/35396225 http://dx.doi.org/10.1136/jitc-2021-003765 |
work_keys_str_mv | AT shinoharashuichi newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT takahashiyusuke newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT komurohiroyasu newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT matsuitakuya newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT sugitayusuke newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT demachiokamuraayako newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT muraokadaisuke newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT takaharahirotomo newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT nakadatakeo newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT sakakuranoriaki newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT masagokatsuhiro newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT miyaimanami newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT nishidareina newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT shomurashin newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT shigematsuyoshiki newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT hatookashunzo newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT sasanohajime newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT watanabefumiaki newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT adachikatsutoshi newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT fujinagakazuya newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT kanedashinji newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT takaomotoshi newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT ohtsukatakashi newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT yamaguchirui newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT kurodahiroaki newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis AT matsushitahirokazu newevaluationofthetumorimmunemicroenvironmentofnonsmallcelllungcanceranditsassociationwithprognosis |