Cargando…

Non-Invasive Measurement Using Deep Learning Algorithm Based on Multi-Source Features Fusion to Predict PD-L1 Expression and Survival in NSCLC

BACKGROUND: Programmed death-ligand 1 (PD-L1) assessment of lung cancer in immunohistochemical assays was only approved diagnostic biomarker for immunotherapy. But the tumor proportion score (TPS) of PD-L1 was challenging owing to invasive sampling and intertumoral heterogeneity. There was a strong...

Descripción completa

Detalles Bibliográficos
Autores principales: Wang, Chengdi, Ma, Jiechao, Shao, Jun, Zhang, Shu, Li, Jingwei, Yan, Junpeng, Zhao, Zhehao, Bai, Congchen, Yu, Yizhou, Li, Weimin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9022118/
https://www.ncbi.nlm.nih.gov/pubmed/35464416
http://dx.doi.org/10.3389/fimmu.2022.828560
_version_ 1784690013649240064
author Wang, Chengdi
Ma, Jiechao
Shao, Jun
Zhang, Shu
Li, Jingwei
Yan, Junpeng
Zhao, Zhehao
Bai, Congchen
Yu, Yizhou
Li, Weimin
author_facet Wang, Chengdi
Ma, Jiechao
Shao, Jun
Zhang, Shu
Li, Jingwei
Yan, Junpeng
Zhao, Zhehao
Bai, Congchen
Yu, Yizhou
Li, Weimin
author_sort Wang, Chengdi
collection PubMed
description BACKGROUND: Programmed death-ligand 1 (PD-L1) assessment of lung cancer in immunohistochemical assays was only approved diagnostic biomarker for immunotherapy. But the tumor proportion score (TPS) of PD-L1 was challenging owing to invasive sampling and intertumoral heterogeneity. There was a strong demand for the development of an artificial intelligence (AI) system to measure PD-L1 expression signature (ES) non-invasively. METHODS: We developed an AI system using deep learning (DL), radiomics and combination models based on computed tomography (CT) images of 1,135 non-small cell lung cancer (NSCLC) patients with PD-L1 status. The deep learning feature was obtained through a 3D ResNet as the feature map extractor and the specialized classifier was constructed for the prediction and evaluation tasks. Then, a Cox proportional-hazards model combined with clinical factors and PD-L1 ES was utilized to evaluate prognosis in survival cohort. RESULTS: The combination model achieved a robust high-performance with area under the receiver operating characteristic curves (AUCs) of 0.950 (95% CI, 0.938–0.960), 0.934 (95% CI, 0.906–0.964), and 0.946 (95% CI, 0.933–0.958), for predicting PD-L1ES <1%, 1–49%, and ≥50% in validation cohort, respectively. Additionally, when combination model was trained on multi-source features the performance of overall survival evaluation (C-index: 0.89) could be superior compared to these of the clinical model alone (C-index: 0.86). CONCLUSION: A non-invasive measurement using deep learning was proposed to access PD-L1 expression and survival outcomes of NSCLC. This study also indicated that deep learning model combined with clinical characteristics improved prediction capabilities, which would assist physicians in making rapid decision on clinical treatment options.
format Online
Article
Text
id pubmed-9022118
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-90221182022-04-22 Non-Invasive Measurement Using Deep Learning Algorithm Based on Multi-Source Features Fusion to Predict PD-L1 Expression and Survival in NSCLC Wang, Chengdi Ma, Jiechao Shao, Jun Zhang, Shu Li, Jingwei Yan, Junpeng Zhao, Zhehao Bai, Congchen Yu, Yizhou Li, Weimin Front Immunol Immunology BACKGROUND: Programmed death-ligand 1 (PD-L1) assessment of lung cancer in immunohistochemical assays was only approved diagnostic biomarker for immunotherapy. But the tumor proportion score (TPS) of PD-L1 was challenging owing to invasive sampling and intertumoral heterogeneity. There was a strong demand for the development of an artificial intelligence (AI) system to measure PD-L1 expression signature (ES) non-invasively. METHODS: We developed an AI system using deep learning (DL), radiomics and combination models based on computed tomography (CT) images of 1,135 non-small cell lung cancer (NSCLC) patients with PD-L1 status. The deep learning feature was obtained through a 3D ResNet as the feature map extractor and the specialized classifier was constructed for the prediction and evaluation tasks. Then, a Cox proportional-hazards model combined with clinical factors and PD-L1 ES was utilized to evaluate prognosis in survival cohort. RESULTS: The combination model achieved a robust high-performance with area under the receiver operating characteristic curves (AUCs) of 0.950 (95% CI, 0.938–0.960), 0.934 (95% CI, 0.906–0.964), and 0.946 (95% CI, 0.933–0.958), for predicting PD-L1ES <1%, 1–49%, and ≥50% in validation cohort, respectively. Additionally, when combination model was trained on multi-source features the performance of overall survival evaluation (C-index: 0.89) could be superior compared to these of the clinical model alone (C-index: 0.86). CONCLUSION: A non-invasive measurement using deep learning was proposed to access PD-L1 expression and survival outcomes of NSCLC. This study also indicated that deep learning model combined with clinical characteristics improved prediction capabilities, which would assist physicians in making rapid decision on clinical treatment options. Frontiers Media S.A. 2022-04-07 /pmc/articles/PMC9022118/ /pubmed/35464416 http://dx.doi.org/10.3389/fimmu.2022.828560 Text en Copyright © 2022 Wang, Ma, Shao, Zhang, Li, Yan, Zhao, Bai, Yu and Li 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
Wang, Chengdi
Ma, Jiechao
Shao, Jun
Zhang, Shu
Li, Jingwei
Yan, Junpeng
Zhao, Zhehao
Bai, Congchen
Yu, Yizhou
Li, Weimin
Non-Invasive Measurement Using Deep Learning Algorithm Based on Multi-Source Features Fusion to Predict PD-L1 Expression and Survival in NSCLC
title Non-Invasive Measurement Using Deep Learning Algorithm Based on Multi-Source Features Fusion to Predict PD-L1 Expression and Survival in NSCLC
title_full Non-Invasive Measurement Using Deep Learning Algorithm Based on Multi-Source Features Fusion to Predict PD-L1 Expression and Survival in NSCLC
title_fullStr Non-Invasive Measurement Using Deep Learning Algorithm Based on Multi-Source Features Fusion to Predict PD-L1 Expression and Survival in NSCLC
title_full_unstemmed Non-Invasive Measurement Using Deep Learning Algorithm Based on Multi-Source Features Fusion to Predict PD-L1 Expression and Survival in NSCLC
title_short Non-Invasive Measurement Using Deep Learning Algorithm Based on Multi-Source Features Fusion to Predict PD-L1 Expression and Survival in NSCLC
title_sort non-invasive measurement using deep learning algorithm based on multi-source features fusion to predict pd-l1 expression and survival in nsclc
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9022118/
https://www.ncbi.nlm.nih.gov/pubmed/35464416
http://dx.doi.org/10.3389/fimmu.2022.828560
work_keys_str_mv AT wangchengdi noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT majiechao noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT shaojun noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT zhangshu noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT lijingwei noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT yanjunpeng noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT zhaozhehao noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT baicongchen noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT yuyizhou noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc
AT liweimin noninvasivemeasurementusingdeeplearningalgorithmbasedonmultisourcefeaturesfusiontopredictpdl1expressionandsurvivalinnsclc