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Differentiation of malignant from benign pleural effusions based on artificial intelligence

INTRODUCTION: This study aimed to construct artificial intelligence models based on thoracic CT images to perform segmentation and classification of benign pleural effusion (BPE) and malignant pleural effusion (MPE). METHODS: A total of 918 patients with pleural effusion were initially included, wit...

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Autores principales: Wang, Sufei, Tan, Xueyun, Li, Piqiang, Fan, Qianqian, Xia, Hui, Tian, Shan, Pan, Feng, Zhan, Na, Yu, Rong, Zhang, Liang, Duan, Yanran, Xu, Juanjuan, Ma, Yanling, Chen, Wenjuan, Li, Yan, Zhao, Zilin, Liu, Chaoyang, Bao, Qingjia, Yang, Lian, Jin, Yang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10086496/
https://www.ncbi.nlm.nih.gov/pubmed/36180066
http://dx.doi.org/10.1136/thorax-2021-218581
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author Wang, Sufei
Tan, Xueyun
Li, Piqiang
Fan, Qianqian
Xia, Hui
Tian, Shan
Pan, Feng
Zhan, Na
Yu, Rong
Zhang, Liang
Duan, Yanran
Xu, Juanjuan
Ma, Yanling
Chen, Wenjuan
Li, Yan
Zhao, Zilin
Liu, Chaoyang
Bao, Qingjia
Yang, Lian
Jin, Yang
author_facet Wang, Sufei
Tan, Xueyun
Li, Piqiang
Fan, Qianqian
Xia, Hui
Tian, Shan
Pan, Feng
Zhan, Na
Yu, Rong
Zhang, Liang
Duan, Yanran
Xu, Juanjuan
Ma, Yanling
Chen, Wenjuan
Li, Yan
Zhao, Zilin
Liu, Chaoyang
Bao, Qingjia
Yang, Lian
Jin, Yang
author_sort Wang, Sufei
collection PubMed
description INTRODUCTION: This study aimed to construct artificial intelligence models based on thoracic CT images to perform segmentation and classification of benign pleural effusion (BPE) and malignant pleural effusion (MPE). METHODS: A total of 918 patients with pleural effusion were initially included, with 607 randomly selected cases used as the training cohort and the other 311 as the internal testing cohort; another independent external testing cohort with 362 cases was used. We developed a pleural effusion segmentation model (M1) by combining 3D spatially weighted U-Net with 2D classical U-Net. Then, a classification model (M2) was built to identify BPE and MPE using a CT volume and its 3D pleural effusion mask as inputs. RESULTS: The average Dice similarity coefficient, Jaccard coefficient, precision, sensitivity, Hausdorff distance 95% (HD95) and average surface distance indicators in M1 were 87.6±5.0%, 82.2±6.2%, 99.0±1.0%, 83.0±6.6%, 6.9±3.8 and 1.6±1.1, respectively, which were better than those of the 3D U-Net and 3D spatially weighted U-Net. Regarding M2, the area under the receiver operating characteristic curve, sensitivity and specificity obtained with volume concat masks as input were 0.842 (95% CI 0.801 to 0.878), 89.4% (95% CI 84.4% to 93.2%) and 65.1% (95% CI 57.3% to 72.3%) in the external testing cohort. These performance metrics were significantly improved compared with those for the other input patterns. CONCLUSIONS: We applied a deep learning model to the segmentation of pleural effusions, and the model showed encouraging performance in the differential diagnosis of BPE and MPE.
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spelling pubmed-100864962023-04-12 Differentiation of malignant from benign pleural effusions based on artificial intelligence Wang, Sufei Tan, Xueyun Li, Piqiang Fan, Qianqian Xia, Hui Tian, Shan Pan, Feng Zhan, Na Yu, Rong Zhang, Liang Duan, Yanran Xu, Juanjuan Ma, Yanling Chen, Wenjuan Li, Yan Zhao, Zilin Liu, Chaoyang Bao, Qingjia Yang, Lian Jin, Yang Thorax Pleural Disease INTRODUCTION: This study aimed to construct artificial intelligence models based on thoracic CT images to perform segmentation and classification of benign pleural effusion (BPE) and malignant pleural effusion (MPE). METHODS: A total of 918 patients with pleural effusion were initially included, with 607 randomly selected cases used as the training cohort and the other 311 as the internal testing cohort; another independent external testing cohort with 362 cases was used. We developed a pleural effusion segmentation model (M1) by combining 3D spatially weighted U-Net with 2D classical U-Net. Then, a classification model (M2) was built to identify BPE and MPE using a CT volume and its 3D pleural effusion mask as inputs. RESULTS: The average Dice similarity coefficient, Jaccard coefficient, precision, sensitivity, Hausdorff distance 95% (HD95) and average surface distance indicators in M1 were 87.6±5.0%, 82.2±6.2%, 99.0±1.0%, 83.0±6.6%, 6.9±3.8 and 1.6±1.1, respectively, which were better than those of the 3D U-Net and 3D spatially weighted U-Net. Regarding M2, the area under the receiver operating characteristic curve, sensitivity and specificity obtained with volume concat masks as input were 0.842 (95% CI 0.801 to 0.878), 89.4% (95% CI 84.4% to 93.2%) and 65.1% (95% CI 57.3% to 72.3%) in the external testing cohort. These performance metrics were significantly improved compared with those for the other input patterns. CONCLUSIONS: We applied a deep learning model to the segmentation of pleural effusions, and the model showed encouraging performance in the differential diagnosis of BPE and MPE. BMJ Publishing Group 2023-04 2022-09-30 /pmc/articles/PMC10086496/ /pubmed/36180066 http://dx.doi.org/10.1136/thorax-2021-218581 Text en © Author(s) (or their employer(s)) 2023. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited, appropriate credit is given, any changes made indicated, and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) .
spellingShingle Pleural Disease
Wang, Sufei
Tan, Xueyun
Li, Piqiang
Fan, Qianqian
Xia, Hui
Tian, Shan
Pan, Feng
Zhan, Na
Yu, Rong
Zhang, Liang
Duan, Yanran
Xu, Juanjuan
Ma, Yanling
Chen, Wenjuan
Li, Yan
Zhao, Zilin
Liu, Chaoyang
Bao, Qingjia
Yang, Lian
Jin, Yang
Differentiation of malignant from benign pleural effusions based on artificial intelligence
title Differentiation of malignant from benign pleural effusions based on artificial intelligence
title_full Differentiation of malignant from benign pleural effusions based on artificial intelligence
title_fullStr Differentiation of malignant from benign pleural effusions based on artificial intelligence
title_full_unstemmed Differentiation of malignant from benign pleural effusions based on artificial intelligence
title_short Differentiation of malignant from benign pleural effusions based on artificial intelligence
title_sort differentiation of malignant from benign pleural effusions based on artificial intelligence
topic Pleural Disease
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10086496/
https://www.ncbi.nlm.nih.gov/pubmed/36180066
http://dx.doi.org/10.1136/thorax-2021-218581
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