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Clinically Applicable Pathological Diagnosis System for Cell Clumps in Endometrial Cancer Screening via Deep Convolutional Neural Networks

SIMPLE SUMMARY: The soaring demand for endometrial cancer screening has exposed a huge shortage of cytopathologists worldwide. Deep learning algorithms, based on convolutional neural networks, have been successfully applied to the classification and segmentation of medical images. The aim was to est...

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Autores principales: Li, Qing, Wang, Ruijie, Xie, Zhonglin, Zhao, Lanbo, Wang, Yiran, Sun, Chao, Han, Lu, Liu, Yu, Hou, Huilian, Liu, Chen, Zhang, Guanjun, Shi, Guizhi, Zhong, Dexing, Li, Qiling
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9454725/
https://www.ncbi.nlm.nih.gov/pubmed/36077646
http://dx.doi.org/10.3390/cancers14174109
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author Li, Qing
Wang, Ruijie
Xie, Zhonglin
Zhao, Lanbo
Wang, Yiran
Sun, Chao
Han, Lu
Liu, Yu
Hou, Huilian
Liu, Chen
Zhang, Guanjun
Shi, Guizhi
Zhong, Dexing
Li, Qiling
author_facet Li, Qing
Wang, Ruijie
Xie, Zhonglin
Zhao, Lanbo
Wang, Yiran
Sun, Chao
Han, Lu
Liu, Yu
Hou, Huilian
Liu, Chen
Zhang, Guanjun
Shi, Guizhi
Zhong, Dexing
Li, Qiling
author_sort Li, Qing
collection PubMed
description SIMPLE SUMMARY: The soaring demand for endometrial cancer screening has exposed a huge shortage of cytopathologists worldwide. Deep learning algorithms, based on convolutional neural networks, have been successfully applied to the classification and segmentation of medical images. The aim was to establish an artificial intelligence system that automatically recognizes and diagnoses pathological images of endometrial cell clumps (ECCs). Total 39,000 ECCs (26,880 for training, 11,520 for testing and 600 malignant for verification) patches were obtained by the segmentation network. The training set reached 100% accuracy, the testing set gained 93.5% accuracy, 92.2% specificity, and 92.0% sensitivity. Therefore, an artificial intelligence system was successfully built to classify malignant and benign ECCs for reducing pathologists’ workload, providing decision-making assistance and promoting the development of endometrial cancer screening. ABSTRACT: Objectives: The soaring demand for endometrial cancer screening has exposed a huge shortage of cytopathologists worldwide. To address this problem, our study set out to establish an artificial intelligence system that automatically recognizes and diagnoses pathological images of endometrial cell clumps (ECCs). Methods: We used Li Brush to acquire endometrial cells from patients. Liquid-based cytology technology was used to provide slides. The slides were scanned and divided into malignant and benign groups. We proposed two (a U-net segmentation and a DenseNet classification) networks to identify images. Another four classification networks were used for comparison tests. Results: A total of 113 (42 malignant and 71 benign) endometrial samples were collected, and a dataset containing 15,913 images was constructed. A total of 39,000 ECCs patches were obtained by the segmentation network. Then, 26,880 and 11,520 patches were used for training and testing, respectively. On the premise that the training set reached 100%, the testing set gained 93.5% accuracy, 92.2% specificity, and 92.0% sensitivity. The remaining 600 malignant patches were used for verification. Conclusions: An artificial intelligence system was successfully built to classify malignant and benign ECCs.
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spelling pubmed-94547252022-09-09 Clinically Applicable Pathological Diagnosis System for Cell Clumps in Endometrial Cancer Screening via Deep Convolutional Neural Networks Li, Qing Wang, Ruijie Xie, Zhonglin Zhao, Lanbo Wang, Yiran Sun, Chao Han, Lu Liu, Yu Hou, Huilian Liu, Chen Zhang, Guanjun Shi, Guizhi Zhong, Dexing Li, Qiling Cancers (Basel) Article SIMPLE SUMMARY: The soaring demand for endometrial cancer screening has exposed a huge shortage of cytopathologists worldwide. Deep learning algorithms, based on convolutional neural networks, have been successfully applied to the classification and segmentation of medical images. The aim was to establish an artificial intelligence system that automatically recognizes and diagnoses pathological images of endometrial cell clumps (ECCs). Total 39,000 ECCs (26,880 for training, 11,520 for testing and 600 malignant for verification) patches were obtained by the segmentation network. The training set reached 100% accuracy, the testing set gained 93.5% accuracy, 92.2% specificity, and 92.0% sensitivity. Therefore, an artificial intelligence system was successfully built to classify malignant and benign ECCs for reducing pathologists’ workload, providing decision-making assistance and promoting the development of endometrial cancer screening. ABSTRACT: Objectives: The soaring demand for endometrial cancer screening has exposed a huge shortage of cytopathologists worldwide. To address this problem, our study set out to establish an artificial intelligence system that automatically recognizes and diagnoses pathological images of endometrial cell clumps (ECCs). Methods: We used Li Brush to acquire endometrial cells from patients. Liquid-based cytology technology was used to provide slides. The slides were scanned and divided into malignant and benign groups. We proposed two (a U-net segmentation and a DenseNet classification) networks to identify images. Another four classification networks were used for comparison tests. Results: A total of 113 (42 malignant and 71 benign) endometrial samples were collected, and a dataset containing 15,913 images was constructed. A total of 39,000 ECCs patches were obtained by the segmentation network. Then, 26,880 and 11,520 patches were used for training and testing, respectively. On the premise that the training set reached 100%, the testing set gained 93.5% accuracy, 92.2% specificity, and 92.0% sensitivity. The remaining 600 malignant patches were used for verification. Conclusions: An artificial intelligence system was successfully built to classify malignant and benign ECCs. MDPI 2022-08-25 /pmc/articles/PMC9454725/ /pubmed/36077646 http://dx.doi.org/10.3390/cancers14174109 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Li, Qing
Wang, Ruijie
Xie, Zhonglin
Zhao, Lanbo
Wang, Yiran
Sun, Chao
Han, Lu
Liu, Yu
Hou, Huilian
Liu, Chen
Zhang, Guanjun
Shi, Guizhi
Zhong, Dexing
Li, Qiling
Clinically Applicable Pathological Diagnosis System for Cell Clumps in Endometrial Cancer Screening via Deep Convolutional Neural Networks
title Clinically Applicable Pathological Diagnosis System for Cell Clumps in Endometrial Cancer Screening via Deep Convolutional Neural Networks
title_full Clinically Applicable Pathological Diagnosis System for Cell Clumps in Endometrial Cancer Screening via Deep Convolutional Neural Networks
title_fullStr Clinically Applicable Pathological Diagnosis System for Cell Clumps in Endometrial Cancer Screening via Deep Convolutional Neural Networks
title_full_unstemmed Clinically Applicable Pathological Diagnosis System for Cell Clumps in Endometrial Cancer Screening via Deep Convolutional Neural Networks
title_short Clinically Applicable Pathological Diagnosis System for Cell Clumps in Endometrial Cancer Screening via Deep Convolutional Neural Networks
title_sort clinically applicable pathological diagnosis system for cell clumps in endometrial cancer screening via deep convolutional neural networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9454725/
https://www.ncbi.nlm.nih.gov/pubmed/36077646
http://dx.doi.org/10.3390/cancers14174109
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