Cargando…

Development and validation of a novel diagnostic model for assessing lung cancer metastasis in a Chinese population based on multicenter real-world data

BACKGROUND: Accurate disease staging plays an important role in lung cancer's clinical management. However, due to the limitation of the CT scan, it is still an unmet medical need in practice. In the present study, we attempted to develop diagnostic models based on biomarkers and clinical param...

Descripción completa

Detalles Bibliográficos
Autores principales: Yao, Yiyong, Yan, Cunling, Zhang, Wei, Wu, San-Gang, Guan, Jie, Zeng, Gang, Du, Qiang, Huang, Chun, Zhang, Hui, Wang, Huiling, Hou, Yanfeng, Li, Zhiyan, Wang, Lixin, Zheng, Yijie, Li, Xun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dove 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6827356/
https://www.ncbi.nlm.nih.gov/pubmed/31807063
http://dx.doi.org/10.2147/CMAR.S217970
_version_ 1783465291075813376
author Yao, Yiyong
Yan, Cunling
Zhang, Wei
Wu, San-Gang
Guan, Jie
Zeng, Gang
Du, Qiang
Huang, Chun
Zhang, Hui
Wang, Huiling
Hou, Yanfeng
Li, Zhiyan
Wang, Lixin
Zheng, Yijie
Li, Xun
author_facet Yao, Yiyong
Yan, Cunling
Zhang, Wei
Wu, San-Gang
Guan, Jie
Zeng, Gang
Du, Qiang
Huang, Chun
Zhang, Hui
Wang, Huiling
Hou, Yanfeng
Li, Zhiyan
Wang, Lixin
Zheng, Yijie
Li, Xun
author_sort Yao, Yiyong
collection PubMed
description BACKGROUND: Accurate disease staging plays an important role in lung cancer's clinical management. However, due to the limitation of the CT scan, it is still an unmet medical need in practice. In the present study, we attempted to develop diagnostic models based on biomarkers and clinical parameters for assessing lung cancer metastasis. METHODS: This study consisted of 799 patients with pulmonary lesions from three regional centers in China. It included 274 benign lesions patients, 326 primary lung cancer patients without metastasis, and 199 advanced lung cancer patients with lymph node or organ metastasis. The patients were divided into nodules group and masses group according to tumor size. RESULTS: Four nomogram models based on patient characteristics and tumor biomarkers were developed and evaluated for patients with nodules and masses, respectively. In patients with pulmonary nodules, the AUC to identify metastatic lung cancer from unidentified nodules (including benign nodules and lung cancer, model 1) reached 0.859 (0.827–0.887, 95% CI). Model 2 was used to predict metastasis in patients with lung cancer with AUC of 0.838 (0.795–0.876, 95% CI). In patients with pulmonary masses, the AUC to identify metastatic lung cancer from unidentified masses (model 3) reached 0.773 (0.717–0.823, 95% CI). Model 4 was used to predict metastasis in patients with lung cancer and AUC reached 0.731 (0.771–0.793, 95% CI). Decision curve analysis corroborated good clinical applicability of the nomograms in predicting metastasis. CONCLUSION: All new models demonstrated promising discrimination, allowing for estimating the risk of lymph node or organ metastasis of lung cancer. Such integration of blood biomarker testing with CT imaging results will be an efficient and effective approach to benefit the accurate staging and treatment of lung cancer.
format Online
Article
Text
id pubmed-6827356
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Dove
record_format MEDLINE/PubMed
spelling pubmed-68273562019-12-05 Development and validation of a novel diagnostic model for assessing lung cancer metastasis in a Chinese population based on multicenter real-world data Yao, Yiyong Yan, Cunling Zhang, Wei Wu, San-Gang Guan, Jie Zeng, Gang Du, Qiang Huang, Chun Zhang, Hui Wang, Huiling Hou, Yanfeng Li, Zhiyan Wang, Lixin Zheng, Yijie Li, Xun Cancer Manag Res Original Research BACKGROUND: Accurate disease staging plays an important role in lung cancer's clinical management. However, due to the limitation of the CT scan, it is still an unmet medical need in practice. In the present study, we attempted to develop diagnostic models based on biomarkers and clinical parameters for assessing lung cancer metastasis. METHODS: This study consisted of 799 patients with pulmonary lesions from three regional centers in China. It included 274 benign lesions patients, 326 primary lung cancer patients without metastasis, and 199 advanced lung cancer patients with lymph node or organ metastasis. The patients were divided into nodules group and masses group according to tumor size. RESULTS: Four nomogram models based on patient characteristics and tumor biomarkers were developed and evaluated for patients with nodules and masses, respectively. In patients with pulmonary nodules, the AUC to identify metastatic lung cancer from unidentified nodules (including benign nodules and lung cancer, model 1) reached 0.859 (0.827–0.887, 95% CI). Model 2 was used to predict metastasis in patients with lung cancer with AUC of 0.838 (0.795–0.876, 95% CI). In patients with pulmonary masses, the AUC to identify metastatic lung cancer from unidentified masses (model 3) reached 0.773 (0.717–0.823, 95% CI). Model 4 was used to predict metastasis in patients with lung cancer and AUC reached 0.731 (0.771–0.793, 95% CI). Decision curve analysis corroborated good clinical applicability of the nomograms in predicting metastasis. CONCLUSION: All new models demonstrated promising discrimination, allowing for estimating the risk of lymph node or organ metastasis of lung cancer. Such integration of blood biomarker testing with CT imaging results will be an efficient and effective approach to benefit the accurate staging and treatment of lung cancer. Dove 2019-10-29 /pmc/articles/PMC6827356/ /pubmed/31807063 http://dx.doi.org/10.2147/CMAR.S217970 Text en © 2019 Yao et al. http://creativecommons.org/licenses/by-nc/3.0/ This work is published and licensed by Dove Medical Press Limited. The full terms of this license are available at https://www.dovepress.com/terms.php and incorporate the Creative Commons Attribution – Non Commercial (unported, v3.0) License (http://creativecommons.org/licenses/by-nc/3.0/). By accessing the work you hereby accept the Terms. Non-commercial uses of the work are permitted without any further permission from Dove Medical Press Limited, provided the work is properly attributed. For permission for commercial use of this work, please see paragraphs 4.2 and 5 of our Terms (https://www.dovepress.com/terms.php).
spellingShingle Original Research
Yao, Yiyong
Yan, Cunling
Zhang, Wei
Wu, San-Gang
Guan, Jie
Zeng, Gang
Du, Qiang
Huang, Chun
Zhang, Hui
Wang, Huiling
Hou, Yanfeng
Li, Zhiyan
Wang, Lixin
Zheng, Yijie
Li, Xun
Development and validation of a novel diagnostic model for assessing lung cancer metastasis in a Chinese population based on multicenter real-world data
title Development and validation of a novel diagnostic model for assessing lung cancer metastasis in a Chinese population based on multicenter real-world data
title_full Development and validation of a novel diagnostic model for assessing lung cancer metastasis in a Chinese population based on multicenter real-world data
title_fullStr Development and validation of a novel diagnostic model for assessing lung cancer metastasis in a Chinese population based on multicenter real-world data
title_full_unstemmed Development and validation of a novel diagnostic model for assessing lung cancer metastasis in a Chinese population based on multicenter real-world data
title_short Development and validation of a novel diagnostic model for assessing lung cancer metastasis in a Chinese population based on multicenter real-world data
title_sort development and validation of a novel diagnostic model for assessing lung cancer metastasis in a chinese population based on multicenter real-world data
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6827356/
https://www.ncbi.nlm.nih.gov/pubmed/31807063
http://dx.doi.org/10.2147/CMAR.S217970
work_keys_str_mv AT yaoyiyong developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT yancunling developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT zhangwei developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT wusangang developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT guanjie developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT zenggang developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT duqiang developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT huangchun developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT zhanghui developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT wanghuiling developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT houyanfeng developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT lizhiyan developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT wanglixin developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT zhengyijie developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata
AT lixun developmentandvalidationofanoveldiagnosticmodelforassessinglungcancermetastasisinachinesepopulationbasedonmulticenterrealworlddata