Cargando…
A deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage IV non-small cell lung cancer patients: A multicenter, prognostic study
BACKGROUND: For clinical decision making, it is crucial to identify patients with stage IV non-small cell lung cancer (NSCLC) who may benefit from tyrosine kinase inhibitors (TKIs) and immune checkpoint inhibitors (ICIs). In this study, a deep learning-based system was designed and validated using p...
Autores principales: | , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9256845/ https://www.ncbi.nlm.nih.gov/pubmed/35813093 http://dx.doi.org/10.1016/j.eclinm.2022.101541 |
_version_ | 1784741210784530432 |
---|---|
author | Deng, Kexue Wang, Lu Liu, Yuchan Li, Xin Hou, Qiuyang Cao, Mulan Ng, Nathan Norton Wang, Huan Chen, Huanhuan Yeom, Kristen W. Zhao, Mingfang Wu, Ning Gao, Peng Shi, Jingyun Liu, Zaiyi Li, Weimin Tian, Jie Song, Jiangdian |
author_facet | Deng, Kexue Wang, Lu Liu, Yuchan Li, Xin Hou, Qiuyang Cao, Mulan Ng, Nathan Norton Wang, Huan Chen, Huanhuan Yeom, Kristen W. Zhao, Mingfang Wu, Ning Gao, Peng Shi, Jingyun Liu, Zaiyi Li, Weimin Tian, Jie Song, Jiangdian |
author_sort | Deng, Kexue |
collection | PubMed |
description | BACKGROUND: For clinical decision making, it is crucial to identify patients with stage IV non-small cell lung cancer (NSCLC) who may benefit from tyrosine kinase inhibitors (TKIs) and immune checkpoint inhibitors (ICIs). In this study, a deep learning-based system was designed and validated using pre-therapy computed tomography (CT) images to predict the survival benefits of EGFR-TKIs and ICIs in stage IV NSCLC patients. METHODS: This retrospective study collected data from 570 patients with stage IV EGFR-mutant NSCLC treated with EGFR-TKIs at five institutions between 2010 and 2021 (data of 314 patients were from a previously registered study), and 129 patients with stage IV NSCLC treated with ICIs at three institutions between 2017 and 2021 to build the ICI test dataset. Five-fold cross-validation was applied to divide the EGFR-TKI-treated patients from four institutions into training and internal validation datasets randomly in a ratio of 80%:20%, and the data from another institution was used as an external test dataset. An EfficientNetV2-based survival benefit prognosis (ESBP) system was developed with pre-therapy CT images as the input and the probability score as the output to identify which patients would receive additional survival benefit longer than the median PFS. Its prognostic performance was validated on the ICI test dataset. For diagnosing which patient would receive additional survival benefit, the accuracy of ESBP was compared with the estimations of three radiologists and three oncologists with varying degrees of expertise (two, five, and ten years). Improvements in the clinicians’ diagnostic accuracy with ESBP assistance were then quantified. FINDINGS: ESBP achieved positive predictive values of 80·40%, 75·40%, and 77·43% for additional EGFR-TKI survival benefit prediction using the probability score of 0·2 as the threshold on the training, internal validation, and external test datasets, respectively. The higher ESBP score (>0·2) indicated a better prognosis for progression-free survival (hazard ratio: 0·36, 95% CI: 0·19–0·68, p<0·0001) in patients on the external test dataset. Patients with scores >0·2 in the ICI test dataset also showed better survival benefit (hazard ratio: 0·33, 95% CI: 0·18–0·55, p<0·0001). This suggests the potential of ESBP to identify the two subgroups of benefiting patients by decoding the commonalities from pre-therapy CT images (stage IV EGFR-mutant NSCLC patients receiving additional survival benefit from EGFR-TKIs and stage IV NSCLC patients receiving additional survival benefit from ICIs). ESBP assistance improved the diagnostic accuracy of the clinicians with two years of experience from 47·91% to 66·32%, and the clinicians with five years of experience from 53·12% to 61·41%. INTERPRETATION: This study developed and externally validated a preoperative CT image-based deep learning model to predict the survival benefits of EGFR-TKI and ICI therapies in stage IV NSCLC patients, which will facilitate optimized and individualized treatment strategies. FUNDING: This study received funding from the National Natural Science Foundation of China (82001904, 81930053, and 62027901), and Key-Area Research and Development Program of Guangdong Province (2021B0101420005). |
format | Online Article Text |
id | pubmed-9256845 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-92568452022-07-07 A deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage IV non-small cell lung cancer patients: A multicenter, prognostic study Deng, Kexue Wang, Lu Liu, Yuchan Li, Xin Hou, Qiuyang Cao, Mulan Ng, Nathan Norton Wang, Huan Chen, Huanhuan Yeom, Kristen W. Zhao, Mingfang Wu, Ning Gao, Peng Shi, Jingyun Liu, Zaiyi Li, Weimin Tian, Jie Song, Jiangdian eClinicalMedicine Articles BACKGROUND: For clinical decision making, it is crucial to identify patients with stage IV non-small cell lung cancer (NSCLC) who may benefit from tyrosine kinase inhibitors (TKIs) and immune checkpoint inhibitors (ICIs). In this study, a deep learning-based system was designed and validated using pre-therapy computed tomography (CT) images to predict the survival benefits of EGFR-TKIs and ICIs in stage IV NSCLC patients. METHODS: This retrospective study collected data from 570 patients with stage IV EGFR-mutant NSCLC treated with EGFR-TKIs at five institutions between 2010 and 2021 (data of 314 patients were from a previously registered study), and 129 patients with stage IV NSCLC treated with ICIs at three institutions between 2017 and 2021 to build the ICI test dataset. Five-fold cross-validation was applied to divide the EGFR-TKI-treated patients from four institutions into training and internal validation datasets randomly in a ratio of 80%:20%, and the data from another institution was used as an external test dataset. An EfficientNetV2-based survival benefit prognosis (ESBP) system was developed with pre-therapy CT images as the input and the probability score as the output to identify which patients would receive additional survival benefit longer than the median PFS. Its prognostic performance was validated on the ICI test dataset. For diagnosing which patient would receive additional survival benefit, the accuracy of ESBP was compared with the estimations of three radiologists and three oncologists with varying degrees of expertise (two, five, and ten years). Improvements in the clinicians’ diagnostic accuracy with ESBP assistance were then quantified. FINDINGS: ESBP achieved positive predictive values of 80·40%, 75·40%, and 77·43% for additional EGFR-TKI survival benefit prediction using the probability score of 0·2 as the threshold on the training, internal validation, and external test datasets, respectively. The higher ESBP score (>0·2) indicated a better prognosis for progression-free survival (hazard ratio: 0·36, 95% CI: 0·19–0·68, p<0·0001) in patients on the external test dataset. Patients with scores >0·2 in the ICI test dataset also showed better survival benefit (hazard ratio: 0·33, 95% CI: 0·18–0·55, p<0·0001). This suggests the potential of ESBP to identify the two subgroups of benefiting patients by decoding the commonalities from pre-therapy CT images (stage IV EGFR-mutant NSCLC patients receiving additional survival benefit from EGFR-TKIs and stage IV NSCLC patients receiving additional survival benefit from ICIs). ESBP assistance improved the diagnostic accuracy of the clinicians with two years of experience from 47·91% to 66·32%, and the clinicians with five years of experience from 53·12% to 61·41%. INTERPRETATION: This study developed and externally validated a preoperative CT image-based deep learning model to predict the survival benefits of EGFR-TKI and ICI therapies in stage IV NSCLC patients, which will facilitate optimized and individualized treatment strategies. FUNDING: This study received funding from the National Natural Science Foundation of China (82001904, 81930053, and 62027901), and Key-Area Research and Development Program of Guangdong Province (2021B0101420005). Elsevier 2022-07-01 /pmc/articles/PMC9256845/ /pubmed/35813093 http://dx.doi.org/10.1016/j.eclinm.2022.101541 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). |
spellingShingle | Articles Deng, Kexue Wang, Lu Liu, Yuchan Li, Xin Hou, Qiuyang Cao, Mulan Ng, Nathan Norton Wang, Huan Chen, Huanhuan Yeom, Kristen W. Zhao, Mingfang Wu, Ning Gao, Peng Shi, Jingyun Liu, Zaiyi Li, Weimin Tian, Jie Song, Jiangdian A deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage IV non-small cell lung cancer patients: A multicenter, prognostic study |
title | A deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage IV non-small cell lung cancer patients: A multicenter, prognostic study |
title_full | A deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage IV non-small cell lung cancer patients: A multicenter, prognostic study |
title_fullStr | A deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage IV non-small cell lung cancer patients: A multicenter, prognostic study |
title_full_unstemmed | A deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage IV non-small cell lung cancer patients: A multicenter, prognostic study |
title_short | A deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage IV non-small cell lung cancer patients: A multicenter, prognostic study |
title_sort | deep learning-based system for survival benefit prediction of tyrosine kinase inhibitors and immune checkpoint inhibitors in stage iv non-small cell lung cancer patients: a multicenter, prognostic study |
topic | Articles |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9256845/ https://www.ncbi.nlm.nih.gov/pubmed/35813093 http://dx.doi.org/10.1016/j.eclinm.2022.101541 |
work_keys_str_mv | AT dengkexue adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT wanglu adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT liuyuchan adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT lixin adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT houqiuyang adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT caomulan adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT ngnathannorton adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT wanghuan adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT chenhuanhuan adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT yeomkristenw adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT zhaomingfang adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT wuning adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT gaopeng adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT shijingyun adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT liuzaiyi adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT liweimin adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT tianjie adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT songjiangdian adeeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT dengkexue deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT wanglu deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT liuyuchan deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT lixin deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT houqiuyang deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT caomulan deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT ngnathannorton deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT wanghuan deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT chenhuanhuan deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT yeomkristenw deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT zhaomingfang deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT wuning deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT gaopeng deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT shijingyun deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT liuzaiyi deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT liweimin deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT tianjie deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy AT songjiangdian deeplearningbasedsystemforsurvivalbenefitpredictionoftyrosinekinaseinhibitorsandimmunecheckpointinhibitorsinstageivnonsmallcelllungcancerpatientsamulticenterprognosticstudy |