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Development of a Deep Learning System to Detect Esophageal Cancer by Barium Esophagram

BACKGROUND: Implementation of deep learning systems (DLSs) for analysis of barium esophagram, a cost-effective diagnostic test for esophageal cancer detection, is expected to reduce the burden to radiologists while ensuring the accuracy of diagnosis. OBJECTIVE: To develop an automated DLS to detect...

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Autores principales: Zhang, Peipei, She, Yifei, Gao, Junfeng, Feng, Zhaoyan, Tan, Qinghai, Min, Xiangde, Xu, Shengzhou
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9253273/
https://www.ncbi.nlm.nih.gov/pubmed/35800062
http://dx.doi.org/10.3389/fonc.2022.766243
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author Zhang, Peipei
She, Yifei
Gao, Junfeng
Feng, Zhaoyan
Tan, Qinghai
Min, Xiangde
Xu, Shengzhou
author_facet Zhang, Peipei
She, Yifei
Gao, Junfeng
Feng, Zhaoyan
Tan, Qinghai
Min, Xiangde
Xu, Shengzhou
author_sort Zhang, Peipei
collection PubMed
description BACKGROUND: Implementation of deep learning systems (DLSs) for analysis of barium esophagram, a cost-effective diagnostic test for esophageal cancer detection, is expected to reduce the burden to radiologists while ensuring the accuracy of diagnosis. OBJECTIVE: To develop an automated DLS to detect esophageal cancer on barium esophagram. METHODS: This was a retrospective study using deep learning for esophageal cancer detection. A two-stage DLS (including a Selection network and a Classification network) was developed. Five datasets based on barium esophagram were used for stepwise training, validation, and testing of the DLS. Datasets 1 and 2 were used to respectively train and test the Selection network, while Datasets 3, 4, and 5 were respectively used to train, validate, and test the Classification network. Finally, a positioning box with a probability value was outputted by the DLS. A region of interest delineated by experienced radiologists was selected as the ground truth to evaluate the detection and classification efficiency of the DLS. Standard machine learning metrics (accuracy, recall, precision, sensitivity, and specificity) were calculated. A comparison with the conventional visual inspection approach was also conducted. RESULTS: The accuracy, sensitivity, and specificity of our DLS in detecting esophageal cancer were 90.3%, 92.5%, and 88.7%, respectively. With the aid of DLS, the radiologists’ interpretation time was significantly shortened (Reader1, 45.7 s vs. 72.2 s without DLS aid; Reader2, 54.1 s vs. 108.7 s without DLS aid). Respective diagnostic efficiencies for Reader1 with and without DLS aid were 96.8% vs. 89.3% for accuracy, 97.5% vs. 87.5% for sensitivity, 96.2% vs. 90.6% for specificity, and 0.969 vs. 0.890 for AUC. Respective diagnostic efficiencies for Reader2 with and without DLS aid were 95.7% vs. 88.2% for accuracy, 92.5% vs. 77.5% for sensitivity, 98.1% vs. 96.2% for specificity, and 0.953 vs. 0.869 for AUC. Of note, the positioning boxes outputted by the DLS almost overlapped with those manually labeled by the radiologists on Dataset 5. CONCLUSIONS: The proposed two-stage DLS for detecting esophageal cancer on barium esophagram could effectively shorten the interpretation time with an excellent diagnostic performance. It may well assist radiologists in clinical practice to reduce their burden.
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spelling pubmed-92532732022-07-06 Development of a Deep Learning System to Detect Esophageal Cancer by Barium Esophagram Zhang, Peipei She, Yifei Gao, Junfeng Feng, Zhaoyan Tan, Qinghai Min, Xiangde Xu, Shengzhou Front Oncol Oncology BACKGROUND: Implementation of deep learning systems (DLSs) for analysis of barium esophagram, a cost-effective diagnostic test for esophageal cancer detection, is expected to reduce the burden to radiologists while ensuring the accuracy of diagnosis. OBJECTIVE: To develop an automated DLS to detect esophageal cancer on barium esophagram. METHODS: This was a retrospective study using deep learning for esophageal cancer detection. A two-stage DLS (including a Selection network and a Classification network) was developed. Five datasets based on barium esophagram were used for stepwise training, validation, and testing of the DLS. Datasets 1 and 2 were used to respectively train and test the Selection network, while Datasets 3, 4, and 5 were respectively used to train, validate, and test the Classification network. Finally, a positioning box with a probability value was outputted by the DLS. A region of interest delineated by experienced radiologists was selected as the ground truth to evaluate the detection and classification efficiency of the DLS. Standard machine learning metrics (accuracy, recall, precision, sensitivity, and specificity) were calculated. A comparison with the conventional visual inspection approach was also conducted. RESULTS: The accuracy, sensitivity, and specificity of our DLS in detecting esophageal cancer were 90.3%, 92.5%, and 88.7%, respectively. With the aid of DLS, the radiologists’ interpretation time was significantly shortened (Reader1, 45.7 s vs. 72.2 s without DLS aid; Reader2, 54.1 s vs. 108.7 s without DLS aid). Respective diagnostic efficiencies for Reader1 with and without DLS aid were 96.8% vs. 89.3% for accuracy, 97.5% vs. 87.5% for sensitivity, 96.2% vs. 90.6% for specificity, and 0.969 vs. 0.890 for AUC. Respective diagnostic efficiencies for Reader2 with and without DLS aid were 95.7% vs. 88.2% for accuracy, 92.5% vs. 77.5% for sensitivity, 98.1% vs. 96.2% for specificity, and 0.953 vs. 0.869 for AUC. Of note, the positioning boxes outputted by the DLS almost overlapped with those manually labeled by the radiologists on Dataset 5. CONCLUSIONS: The proposed two-stage DLS for detecting esophageal cancer on barium esophagram could effectively shorten the interpretation time with an excellent diagnostic performance. It may well assist radiologists in clinical practice to reduce their burden. Frontiers Media S.A. 2022-06-21 /pmc/articles/PMC9253273/ /pubmed/35800062 http://dx.doi.org/10.3389/fonc.2022.766243 Text en Copyright © 2022 Zhang, She, Gao, Feng, Tan, Min and Xu 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 Oncology
Zhang, Peipei
She, Yifei
Gao, Junfeng
Feng, Zhaoyan
Tan, Qinghai
Min, Xiangde
Xu, Shengzhou
Development of a Deep Learning System to Detect Esophageal Cancer by Barium Esophagram
title Development of a Deep Learning System to Detect Esophageal Cancer by Barium Esophagram
title_full Development of a Deep Learning System to Detect Esophageal Cancer by Barium Esophagram
title_fullStr Development of a Deep Learning System to Detect Esophageal Cancer by Barium Esophagram
title_full_unstemmed Development of a Deep Learning System to Detect Esophageal Cancer by Barium Esophagram
title_short Development of a Deep Learning System to Detect Esophageal Cancer by Barium Esophagram
title_sort development of a deep learning system to detect esophageal cancer by barium esophagram
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9253273/
https://www.ncbi.nlm.nih.gov/pubmed/35800062
http://dx.doi.org/10.3389/fonc.2022.766243
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