Development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinoma
Abstract Background Integrating phenotypic and genotypic information to improve prognostic prediction is under active investigation for lung adenocarcinoma (LUAD). In this study, we developed a new prognostic model for event-free survival (EFS) and recurrence-free survival (RFS) based on the combina...
Main Authors: | , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
BMC
2020-09-01
|
Series: | World Journal of Surgical Oncology |
Subjects: | |
Online Access: | http://link.springer.com/article/10.1186/s12957-020-02025-0 |
id |
doaj-632e94098fb045e78ad29c8a58053288 |
---|---|
record_format |
Article |
spelling |
doaj-632e94098fb045e78ad29c8a580532882020-11-25T03:02:52ZengBMCWorld Journal of Surgical Oncology1477-78192020-09-011811910.1186/s12957-020-02025-0Development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinomaGuofeng Li0Guangsuo Wang1Yanhua Guo2Shixuan Li3Youlong Zhang4Jialu Li5Bin Peng6Department of Thoracic Surgery, Shenzhen People’s Hospital, Second Clinical Medical College of Jinan UniversityDepartment of Thoracic Surgery, Shenzhen People’s Hospital, Second Clinical Medical College of Jinan UniversityDepartment of Thoracic Surgery, Shanghai Pulmonary Hospital, School of Medicine, Tongji UniversityDepartment of Thoracic Surgery, Shenzhen People’s Hospital, Second Clinical Medical College of Jinan UniversityDepartment of Biostatistics, HuaJia Biomedical IntelligenceDepartment of Biostatistics, HuaJia Biomedical IntelligenceDepartment of Thoracic Surgery, Shenzhen People’s Hospital, Second Clinical Medical College of Jinan UniversityAbstract Background Integrating phenotypic and genotypic information to improve prognostic prediction is under active investigation for lung adenocarcinoma (LUAD). In this study, we developed a new prognostic model for event-free survival (EFS) and recurrence-free survival (RFS) based on the combination of clinicopathologic variables, gene expression, and mutation data. Methods We enrolled a total of 408 patients from the Cancer Genome Atlas Lung Adenocarcinoma (TCGA-LUAD) project for the study. We pre-selected gene expression or mutation features and constructed 14 different input feature sets for predictive model development. We assessed model performance with multiple evaluation metrics including the distribution of C-index on testing dataset, risk score significance, and time-dependent AUC under competing risks scenario. We stratified patients into higher- and lower-risk subgroups by the final risk score and further investigated underlying immune phenotyping variations associated with the differential risk. Results The model integrating all three types of data achieved the best prediction performance. The resultant risk score provided a higher-resolution risk stratification than other models within pathologically defined subgroups. The score could account for extra EFS-related variations that were not captured by clinicopathologic scores. Being validated for RFS prediction under a competing risks modeling framework, the score achieved a significantly higher time-dependent AUC as compared to that of the conventional clinicopathologic variables-based model (0.772 vs. 0.646, p value < 0.001). The higher-risk patients were characterized with transcriptional aberrations of multiple immune-related genes, and a significant depletion of mast cells and natural killer cells. Conclusions We developed a novel prognostic risk score with improved prediction accuracy, using clinicopathologic variables, gene expression and mutation profiles as input, for LUAD. Such score was a significant predictor of both EFS and RFS. Trial registration This study was based on public open data from TCGA and hence the study objects were retrospectively registered.http://link.springer.com/article/10.1186/s12957-020-02025-0PrognosisGene expression profilesLung adenocarcinomaCompeting risks analysisRisk stratificationEvent-free survival |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Guofeng Li Guangsuo Wang Yanhua Guo Shixuan Li Youlong Zhang Jialu Li Bin Peng |
spellingShingle |
Guofeng Li Guangsuo Wang Yanhua Guo Shixuan Li Youlong Zhang Jialu Li Bin Peng Development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinoma World Journal of Surgical Oncology Prognosis Gene expression profiles Lung adenocarcinoma Competing risks analysis Risk stratification Event-free survival |
author_facet |
Guofeng Li Guangsuo Wang Yanhua Guo Shixuan Li Youlong Zhang Jialu Li Bin Peng |
author_sort |
Guofeng Li |
title |
Development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinoma |
title_short |
Development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinoma |
title_full |
Development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinoma |
title_fullStr |
Development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinoma |
title_full_unstemmed |
Development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinoma |
title_sort |
development of a novel prognostic score combining clinicopathologic variables, gene expression, and mutation profiles for lung adenocarcinoma |
publisher |
BMC |
series |
World Journal of Surgical Oncology |
issn |
1477-7819 |
publishDate |
2020-09-01 |
description |
Abstract Background Integrating phenotypic and genotypic information to improve prognostic prediction is under active investigation for lung adenocarcinoma (LUAD). In this study, we developed a new prognostic model for event-free survival (EFS) and recurrence-free survival (RFS) based on the combination of clinicopathologic variables, gene expression, and mutation data. Methods We enrolled a total of 408 patients from the Cancer Genome Atlas Lung Adenocarcinoma (TCGA-LUAD) project for the study. We pre-selected gene expression or mutation features and constructed 14 different input feature sets for predictive model development. We assessed model performance with multiple evaluation metrics including the distribution of C-index on testing dataset, risk score significance, and time-dependent AUC under competing risks scenario. We stratified patients into higher- and lower-risk subgroups by the final risk score and further investigated underlying immune phenotyping variations associated with the differential risk. Results The model integrating all three types of data achieved the best prediction performance. The resultant risk score provided a higher-resolution risk stratification than other models within pathologically defined subgroups. The score could account for extra EFS-related variations that were not captured by clinicopathologic scores. Being validated for RFS prediction under a competing risks modeling framework, the score achieved a significantly higher time-dependent AUC as compared to that of the conventional clinicopathologic variables-based model (0.772 vs. 0.646, p value < 0.001). The higher-risk patients were characterized with transcriptional aberrations of multiple immune-related genes, and a significant depletion of mast cells and natural killer cells. Conclusions We developed a novel prognostic risk score with improved prediction accuracy, using clinicopathologic variables, gene expression and mutation profiles as input, for LUAD. Such score was a significant predictor of both EFS and RFS. Trial registration This study was based on public open data from TCGA and hence the study objects were retrospectively registered. |
topic |
Prognosis Gene expression profiles Lung adenocarcinoma Competing risks analysis Risk stratification Event-free survival |
url |
http://link.springer.com/article/10.1186/s12957-020-02025-0 |
work_keys_str_mv |
AT guofengli developmentofanovelprognosticscorecombiningclinicopathologicvariablesgeneexpressionandmutationprofilesforlungadenocarcinoma AT guangsuowang developmentofanovelprognosticscorecombiningclinicopathologicvariablesgeneexpressionandmutationprofilesforlungadenocarcinoma AT yanhuaguo developmentofanovelprognosticscorecombiningclinicopathologicvariablesgeneexpressionandmutationprofilesforlungadenocarcinoma AT shixuanli developmentofanovelprognosticscorecombiningclinicopathologicvariablesgeneexpressionandmutationprofilesforlungadenocarcinoma AT youlongzhang developmentofanovelprognosticscorecombiningclinicopathologicvariablesgeneexpressionandmutationprofilesforlungadenocarcinoma AT jialuli developmentofanovelprognosticscorecombiningclinicopathologicvariablesgeneexpressionandmutationprofilesforlungadenocarcinoma AT binpeng developmentofanovelprognosticscorecombiningclinicopathologicvariablesgeneexpressionandmutationprofilesforlungadenocarcinoma |
_version_ |
1724687959595155456 |