Cargando…

A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts Tumor Immune Profiles in Non-Small Cell Lung Cancer: A Retrospective Multicohort Study

BACKGROUND: The tumor immune microenvironment (TIME) phenotypes have been reported to mainly impact the efficacy of immunotherapy. Given the increasing use of immunotherapy in cancers, knowing an individual’s TIME phenotypes could be helpful in screening patients who are more likely to respond to im...

Descripción completa

Detalles Bibliográficos
Autores principales: Tong, Haipeng, Sun, Jinju, Fang, Jingqin, Zhang, Mi, Liu, Huan, Xia, Renxiang, Zhou, Weicheng, Liu, Kaijun, Chen, Xiao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9105942/
https://www.ncbi.nlm.nih.gov/pubmed/35572597
http://dx.doi.org/10.3389/fimmu.2022.859323
_version_ 1784708161114996736
author Tong, Haipeng
Sun, Jinju
Fang, Jingqin
Zhang, Mi
Liu, Huan
Xia, Renxiang
Zhou, Weicheng
Liu, Kaijun
Chen, Xiao
author_facet Tong, Haipeng
Sun, Jinju
Fang, Jingqin
Zhang, Mi
Liu, Huan
Xia, Renxiang
Zhou, Weicheng
Liu, Kaijun
Chen, Xiao
author_sort Tong, Haipeng
collection PubMed
description BACKGROUND: The tumor immune microenvironment (TIME) phenotypes have been reported to mainly impact the efficacy of immunotherapy. Given the increasing use of immunotherapy in cancers, knowing an individual’s TIME phenotypes could be helpful in screening patients who are more likely to respond to immunotherapy. Our study intended to establish, validate, and apply a machine learning model to predict TIME profiles in non-small cell lung cancer (NSCLC) by using (18)F-FDG PET/CT radiomics and clinical characteristics. METHODS: The RNA-seq data of 1145 NSCLC patients from The Cancer Genome Atlas (TCGA) cohort were analyzed. Then, 221 NSCLC patients from Daping Hospital (DPH) cohort received(18)F-FDG PET/CT scans before treatment and CD8 expression of the tumor samples were tested. The Artificial Intelligence Kit software was used to extract radiomic features of PET/CT images and develop a radiomics signature. The models were established by radiomics, clinical features, and radiomics-clinical combination, respectively, the performance of which was calculated by receiver operating curves (ROCs) and compared by DeLong test. Moreover, based on radiomics score (Rad-score) and clinical features, a nomogram was established. Finally, we applied the combined model to evaluate TIME phenotypes of NSCLC patients in The Cancer Imaging Archive (TCIA) cohort (n = 39). RESULTS: TCGA data showed CD8 expression could represent the TIME profiles in NSCLC. In DPH cohort, PET/CT radiomics model outperformed CT model (AUC: 0.907 vs. 0.861, P = 0.0314) to predict CD8 expression. Further, PET/CT radiomics-clinical combined model (AUC = 0.932) outperformed PET/CT radiomics model (AUC = 0.907, P = 0.0326) or clinical model (AUC = 0.868, P = 0.0036) to predict CD8 expression. In the TCIA cohort, the predicted CD8-high group had significantly higher immune scores and more activated immune pathways than the predicted CD8-low group (P = 0.0421). CONCLUSION: Our study indicates that (18)F-FDG PET/CT radiomics-clinical combined model could be a clinically practical method to non-invasively detect the tumor immune status in NSCLCs.
format Online
Article
Text
id pubmed-9105942
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-91059422022-05-14 A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts Tumor Immune Profiles in Non-Small Cell Lung Cancer: A Retrospective Multicohort Study Tong, Haipeng Sun, Jinju Fang, Jingqin Zhang, Mi Liu, Huan Xia, Renxiang Zhou, Weicheng Liu, Kaijun Chen, Xiao Front Immunol Immunology BACKGROUND: The tumor immune microenvironment (TIME) phenotypes have been reported to mainly impact the efficacy of immunotherapy. Given the increasing use of immunotherapy in cancers, knowing an individual’s TIME phenotypes could be helpful in screening patients who are more likely to respond to immunotherapy. Our study intended to establish, validate, and apply a machine learning model to predict TIME profiles in non-small cell lung cancer (NSCLC) by using (18)F-FDG PET/CT radiomics and clinical characteristics. METHODS: The RNA-seq data of 1145 NSCLC patients from The Cancer Genome Atlas (TCGA) cohort were analyzed. Then, 221 NSCLC patients from Daping Hospital (DPH) cohort received(18)F-FDG PET/CT scans before treatment and CD8 expression of the tumor samples were tested. The Artificial Intelligence Kit software was used to extract radiomic features of PET/CT images and develop a radiomics signature. The models were established by radiomics, clinical features, and radiomics-clinical combination, respectively, the performance of which was calculated by receiver operating curves (ROCs) and compared by DeLong test. Moreover, based on radiomics score (Rad-score) and clinical features, a nomogram was established. Finally, we applied the combined model to evaluate TIME phenotypes of NSCLC patients in The Cancer Imaging Archive (TCIA) cohort (n = 39). RESULTS: TCGA data showed CD8 expression could represent the TIME profiles in NSCLC. In DPH cohort, PET/CT radiomics model outperformed CT model (AUC: 0.907 vs. 0.861, P = 0.0314) to predict CD8 expression. Further, PET/CT radiomics-clinical combined model (AUC = 0.932) outperformed PET/CT radiomics model (AUC = 0.907, P = 0.0326) or clinical model (AUC = 0.868, P = 0.0036) to predict CD8 expression. In the TCIA cohort, the predicted CD8-high group had significantly higher immune scores and more activated immune pathways than the predicted CD8-low group (P = 0.0421). CONCLUSION: Our study indicates that (18)F-FDG PET/CT radiomics-clinical combined model could be a clinically practical method to non-invasively detect the tumor immune status in NSCLCs. Frontiers Media S.A. 2022-04-29 /pmc/articles/PMC9105942/ /pubmed/35572597 http://dx.doi.org/10.3389/fimmu.2022.859323 Text en Copyright © 2022 Tong, Sun, Fang, Zhang, Liu, Xia, Zhou, Liu and Chen https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Immunology
Tong, Haipeng
Sun, Jinju
Fang, Jingqin
Zhang, Mi
Liu, Huan
Xia, Renxiang
Zhou, Weicheng
Liu, Kaijun
Chen, Xiao
A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts Tumor Immune Profiles in Non-Small Cell Lung Cancer: A Retrospective Multicohort Study
title A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts Tumor Immune Profiles in Non-Small Cell Lung Cancer: A Retrospective Multicohort Study
title_full A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts Tumor Immune Profiles in Non-Small Cell Lung Cancer: A Retrospective Multicohort Study
title_fullStr A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts Tumor Immune Profiles in Non-Small Cell Lung Cancer: A Retrospective Multicohort Study
title_full_unstemmed A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts Tumor Immune Profiles in Non-Small Cell Lung Cancer: A Retrospective Multicohort Study
title_short A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts Tumor Immune Profiles in Non-Small Cell Lung Cancer: A Retrospective Multicohort Study
title_sort machine learning model based on pet/ct radiomics and clinical characteristics predicts tumor immune profiles in non-small cell lung cancer: a retrospective multicohort study
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9105942/
https://www.ncbi.nlm.nih.gov/pubmed/35572597
http://dx.doi.org/10.3389/fimmu.2022.859323
work_keys_str_mv AT tonghaipeng amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT sunjinju amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT fangjingqin amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT zhangmi amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT liuhuan amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT xiarenxiang amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT zhouweicheng amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT liukaijun amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT chenxiao amachinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT tonghaipeng machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT sunjinju machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT fangjingqin machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT zhangmi machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT liuhuan machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT xiarenxiang machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT zhouweicheng machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT liukaijun machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy
AT chenxiao machinelearningmodelbasedonpetctradiomicsandclinicalcharacteristicspredictstumorimmuneprofilesinnonsmallcelllungcanceraretrospectivemulticohortstudy