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Development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study

BACKGROUND: For patients with sentinel lymph node (SLN) metastasis and low risk of residual non-SLN (NSLN) metastasis, axillary lymph node (ALN) dissection could lead to overtreatment. This study aimed to develop and validate an automated preoperative deep learning-based tool to predict the risk of...

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Autores principales: Chen, Mingzhen, Kong, Chunli, Lin, Guihan, Chen, Weiyue, Guo, Xinyu, Chen, Yaning, Cheng, Xue, Chen, Minjiang, Shi, Changsheng, Xu, Min, Sun, Junhui, Lu, Chenying, Ji, Jiansong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10474371/
https://www.ncbi.nlm.nih.gov/pubmed/37662514
http://dx.doi.org/10.1016/j.eclinm.2023.102176
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author Chen, Mingzhen
Kong, Chunli
Lin, Guihan
Chen, Weiyue
Guo, Xinyu
Chen, Yaning
Cheng, Xue
Chen, Minjiang
Shi, Changsheng
Xu, Min
Sun, Junhui
Lu, Chenying
Ji, Jiansong
author_facet Chen, Mingzhen
Kong, Chunli
Lin, Guihan
Chen, Weiyue
Guo, Xinyu
Chen, Yaning
Cheng, Xue
Chen, Minjiang
Shi, Changsheng
Xu, Min
Sun, Junhui
Lu, Chenying
Ji, Jiansong
author_sort Chen, Mingzhen
collection PubMed
description BACKGROUND: For patients with sentinel lymph node (SLN) metastasis and low risk of residual non-SLN (NSLN) metastasis, axillary lymph node (ALN) dissection could lead to overtreatment. This study aimed to develop and validate an automated preoperative deep learning-based tool to predict the risk of SLN and NSLN metastasis in patients with breast cancer (BC) using dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) images. METHODS: In this machine learning study, we retrospectively enrolled 988 women with BC from three hospitals in Zhejiang, China between June 1, 2013 to December 31, 2021, June 1, 2017 to December 31, 2021, and January 1, 2019 to June 30, 2023, respectively. Patients were divided into the training set (n = 519), internal validation set (n = 129), external test set 1 (n = 296), and external test set 2 (n = 44). A convolutional neural network (CNN) model was proposed to predict the SLN and NSLN metastasis and was compared with clinical and radiomics approaches. The performance of different models to detect ALN metastasis was measured by the area under the curve (AUC), accuracy, sensitivity, and specificity. This study is registered at ChiCTR, ChiCTR2300070740. FINDINGS: For SLN prediction, the top-performing model (i.e., the CNN algorithm) achieved encouraging predictive performance in the internal validation set (AUC 0.899, 95% CI, 0.887–0.911), external test set 1 (AUC 0.885, 95% CI, 0.867–0.903), and external test set 2 (AUC 0.768, 95% CI, 0.738–0.798). For NSLN prediction, the CNN-based model also exhibited satisfactory performance in the internal validation set (AUC 0.800, 95% CI, 0.783–0.817), external test set 1 (AUC 0.763, 95% CI, 0.732–0.794), and external test set 2 (AUC 0.728, 95% CI, 0.719–0.738). Based on the subgroup analysis, the CNN model performed well in tumour group smaller than 2.0 cm, with the AUC of 0.801 (internal validation set) and 0.823 (external test set 1). Of 469 patients with BC, the false positive rate of SLN prediction declined from 77.9% to 32.9% using CNN model. INTERPRETATION: The CNN model can predict the SLN status of any detectable lesion size and condition of NSLN in patients with BC. Overall, the CNN model, employing ready DCE-MRI images could serve as a potential technique to assist surgeons in the personalized axillary treatment of in patients with BC non-invasively. FUNDING: National Key Research and Development projects intergovernmental cooperation in science and technology of China, 10.13039/501100001809National Natural Science Foundation of China, 10.13039/501100004731Natural Science Foundation of Zhejiang Province, and Zhejiang Medical and Health Science Project.
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spelling pubmed-104743712023-09-03 Development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study Chen, Mingzhen Kong, Chunli Lin, Guihan Chen, Weiyue Guo, Xinyu Chen, Yaning Cheng, Xue Chen, Minjiang Shi, Changsheng Xu, Min Sun, Junhui Lu, Chenying Ji, Jiansong eClinicalMedicine Articles BACKGROUND: For patients with sentinel lymph node (SLN) metastasis and low risk of residual non-SLN (NSLN) metastasis, axillary lymph node (ALN) dissection could lead to overtreatment. This study aimed to develop and validate an automated preoperative deep learning-based tool to predict the risk of SLN and NSLN metastasis in patients with breast cancer (BC) using dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) images. METHODS: In this machine learning study, we retrospectively enrolled 988 women with BC from three hospitals in Zhejiang, China between June 1, 2013 to December 31, 2021, June 1, 2017 to December 31, 2021, and January 1, 2019 to June 30, 2023, respectively. Patients were divided into the training set (n = 519), internal validation set (n = 129), external test set 1 (n = 296), and external test set 2 (n = 44). A convolutional neural network (CNN) model was proposed to predict the SLN and NSLN metastasis and was compared with clinical and radiomics approaches. The performance of different models to detect ALN metastasis was measured by the area under the curve (AUC), accuracy, sensitivity, and specificity. This study is registered at ChiCTR, ChiCTR2300070740. FINDINGS: For SLN prediction, the top-performing model (i.e., the CNN algorithm) achieved encouraging predictive performance in the internal validation set (AUC 0.899, 95% CI, 0.887–0.911), external test set 1 (AUC 0.885, 95% CI, 0.867–0.903), and external test set 2 (AUC 0.768, 95% CI, 0.738–0.798). For NSLN prediction, the CNN-based model also exhibited satisfactory performance in the internal validation set (AUC 0.800, 95% CI, 0.783–0.817), external test set 1 (AUC 0.763, 95% CI, 0.732–0.794), and external test set 2 (AUC 0.728, 95% CI, 0.719–0.738). Based on the subgroup analysis, the CNN model performed well in tumour group smaller than 2.0 cm, with the AUC of 0.801 (internal validation set) and 0.823 (external test set 1). Of 469 patients with BC, the false positive rate of SLN prediction declined from 77.9% to 32.9% using CNN model. INTERPRETATION: The CNN model can predict the SLN status of any detectable lesion size and condition of NSLN in patients with BC. Overall, the CNN model, employing ready DCE-MRI images could serve as a potential technique to assist surgeons in the personalized axillary treatment of in patients with BC non-invasively. FUNDING: National Key Research and Development projects intergovernmental cooperation in science and technology of China, 10.13039/501100001809National Natural Science Foundation of China, 10.13039/501100004731Natural Science Foundation of Zhejiang Province, and Zhejiang Medical and Health Science Project. Elsevier 2023-08-24 /pmc/articles/PMC10474371/ /pubmed/37662514 http://dx.doi.org/10.1016/j.eclinm.2023.102176 Text en © 2023 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
Chen, Mingzhen
Kong, Chunli
Lin, Guihan
Chen, Weiyue
Guo, Xinyu
Chen, Yaning
Cheng, Xue
Chen, Minjiang
Shi, Changsheng
Xu, Min
Sun, Junhui
Lu, Chenying
Ji, Jiansong
Development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study
title Development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study
title_full Development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study
title_fullStr Development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study
title_full_unstemmed Development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study
title_short Development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study
title_sort development and validation of convolutional neural network-based model to predict the risk of sentinel or non-sentinel lymph node metastasis in patients with breast cancer: a machine learning study
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10474371/
https://www.ncbi.nlm.nih.gov/pubmed/37662514
http://dx.doi.org/10.1016/j.eclinm.2023.102176
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