Cargando…

A deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study

OBJECTIVES: Preoperative lymph node (LN) status is essential in formulating the treatment strategy among pancreatic cancer patients. However, it is still challenging to evaluate the preoperative LN status precisely now. METHODS: A multivariate model was established based on the multiview-guided two-...

Descripción completa

Detalles Bibliográficos
Autores principales: Fu, Ningzhen, Fu, Wenli, Chen, Haoda, Chai, Weimin, Qian, Xiaohua, Wang, Weishen, Jiang, Yu, Shen, Baiyong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10442094/
https://www.ncbi.nlm.nih.gov/pubmed/37216230
http://dx.doi.org/10.1097/JS9.0000000000000469
_version_ 1785093512217231360
author Fu, Ningzhen
Fu, Wenli
Chen, Haoda
Chai, Weimin
Qian, Xiaohua
Wang, Weishen
Jiang, Yu
Shen, Baiyong
author_facet Fu, Ningzhen
Fu, Wenli
Chen, Haoda
Chai, Weimin
Qian, Xiaohua
Wang, Weishen
Jiang, Yu
Shen, Baiyong
author_sort Fu, Ningzhen
collection PubMed
description OBJECTIVES: Preoperative lymph node (LN) status is essential in formulating the treatment strategy among pancreatic cancer patients. However, it is still challenging to evaluate the preoperative LN status precisely now. METHODS: A multivariate model was established based on the multiview-guided two-stream convolution network (MTCN) radiomics algorithms, which focused on primary tumor and peri-tumor features. Regarding discriminative ability, survival fitting, and model accuracy, different models were compared. RESULTS: Three hundred and sixty-three pancreatic cancer patients were divided in to train and test cohorts by 7:3. The modified MTCN (MTCN+) model was established based on age, CA125, MTCN scores, and radiologist judgement. The MTCN+ model outperformed the MTCN model and the artificial model in discriminative ability and model accuracy. [Train cohort area under curve (AUC): 0.823 vs. 0.793 vs. 0.592; train cohort accuracy (ACC): 76.1 vs. 74.4 vs. 56.7%; test cohort AUC: 0.815 vs. 0.749 vs. 0.640; test cohort ACC: 76.1 vs. 70.6 vs. 63.3%; external validation AUC: 0.854 vs. 0.792 vs. 0.542; external validation ACC: 71.4 vs. 67.9 vs. 53.5%]. The survivorship curves fitted well between actual LN status and predicted LN status regarding disease free survival and overall survival. Nevertheless, the MTCN+ model performed poorly in assessing the LN metastatic burden among the LN positive population. Notably, among the patients with small primary tumors, the MTCN+ model performed steadily as well (AUC: 0.823, ACC: 79.5%). CONCLUSIONS: A novel MTCN+ preoperative LN status predictive model was established and outperformed the artificial judgement and deep-learning radiomics judgement. Around 40% misdiagnosed patients judged by radiologists could be corrected. And the model could help precisely predict the survival prognosis.
format Online
Article
Text
id pubmed-10442094
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Lippincott Williams & Wilkins
record_format MEDLINE/PubMed
spelling pubmed-104420942023-08-22 A deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study Fu, Ningzhen Fu, Wenli Chen, Haoda Chai, Weimin Qian, Xiaohua Wang, Weishen Jiang, Yu Shen, Baiyong Int J Surg Original Research OBJECTIVES: Preoperative lymph node (LN) status is essential in formulating the treatment strategy among pancreatic cancer patients. However, it is still challenging to evaluate the preoperative LN status precisely now. METHODS: A multivariate model was established based on the multiview-guided two-stream convolution network (MTCN) radiomics algorithms, which focused on primary tumor and peri-tumor features. Regarding discriminative ability, survival fitting, and model accuracy, different models were compared. RESULTS: Three hundred and sixty-three pancreatic cancer patients were divided in to train and test cohorts by 7:3. The modified MTCN (MTCN+) model was established based on age, CA125, MTCN scores, and radiologist judgement. The MTCN+ model outperformed the MTCN model and the artificial model in discriminative ability and model accuracy. [Train cohort area under curve (AUC): 0.823 vs. 0.793 vs. 0.592; train cohort accuracy (ACC): 76.1 vs. 74.4 vs. 56.7%; test cohort AUC: 0.815 vs. 0.749 vs. 0.640; test cohort ACC: 76.1 vs. 70.6 vs. 63.3%; external validation AUC: 0.854 vs. 0.792 vs. 0.542; external validation ACC: 71.4 vs. 67.9 vs. 53.5%]. The survivorship curves fitted well between actual LN status and predicted LN status regarding disease free survival and overall survival. Nevertheless, the MTCN+ model performed poorly in assessing the LN metastatic burden among the LN positive population. Notably, among the patients with small primary tumors, the MTCN+ model performed steadily as well (AUC: 0.823, ACC: 79.5%). CONCLUSIONS: A novel MTCN+ preoperative LN status predictive model was established and outperformed the artificial judgement and deep-learning radiomics judgement. Around 40% misdiagnosed patients judged by radiologists could be corrected. And the model could help precisely predict the survival prognosis. Lippincott Williams & Wilkins 2023-05-20 /pmc/articles/PMC10442094/ /pubmed/37216230 http://dx.doi.org/10.1097/JS9.0000000000000469 Text en Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) (CCBY-NC-ND), where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal. http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/)
spellingShingle Original Research
Fu, Ningzhen
Fu, Wenli
Chen, Haoda
Chai, Weimin
Qian, Xiaohua
Wang, Weishen
Jiang, Yu
Shen, Baiyong
A deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study
title A deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study
title_full A deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study
title_fullStr A deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study
title_full_unstemmed A deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study
title_short A deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study
title_sort deep-learning radiomics-based lymph node metastasis predictive model for pancreatic cancer: a diagnostic study
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10442094/
https://www.ncbi.nlm.nih.gov/pubmed/37216230
http://dx.doi.org/10.1097/JS9.0000000000000469
work_keys_str_mv AT funingzhen adeeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT fuwenli adeeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT chenhaoda adeeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT chaiweimin adeeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT qianxiaohua adeeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT wangweishen adeeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT jiangyu adeeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT shenbaiyong adeeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT funingzhen deeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT fuwenli deeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT chenhaoda deeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT chaiweimin deeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT qianxiaohua deeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT wangweishen deeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT jiangyu deeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy
AT shenbaiyong deeplearningradiomicsbasedlymphnodemetastasispredictivemodelforpancreaticcanceradiagnosticstudy