Cargando…

Deep Learning Using Endobronchial-Ultrasound-Guided Transbronchial Needle Aspiration Image to Improve the Overall Diagnostic Yield of Sampling Mediastinal Lymphadenopathy

Lung cancer is the biggest cause of cancer-related death worldwide. An accurate nodal staging is critical for the determination of treatment strategy for lung cancer patients. Endobronchial-ultrasound-guided transbronchial needle aspiration (EBUS-TBNA) has revolutionized the field of pulmonology and...

Descripción completa

Detalles Bibliográficos
Autores principales: Wang, Ching-Wei, Khalil, Muhammad-Adil, Lin, Yi-Jia, Lee, Yu-Ching, Huang, Tsai-Wang, Chao, Tai-Kuang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9497910/
https://www.ncbi.nlm.nih.gov/pubmed/36140635
http://dx.doi.org/10.3390/diagnostics12092234
_version_ 1784794624540278784
author Wang, Ching-Wei
Khalil, Muhammad-Adil
Lin, Yi-Jia
Lee, Yu-Ching
Huang, Tsai-Wang
Chao, Tai-Kuang
author_facet Wang, Ching-Wei
Khalil, Muhammad-Adil
Lin, Yi-Jia
Lee, Yu-Ching
Huang, Tsai-Wang
Chao, Tai-Kuang
author_sort Wang, Ching-Wei
collection PubMed
description Lung cancer is the biggest cause of cancer-related death worldwide. An accurate nodal staging is critical for the determination of treatment strategy for lung cancer patients. Endobronchial-ultrasound-guided transbronchial needle aspiration (EBUS-TBNA) has revolutionized the field of pulmonology and is considered to be extremely sensitive, specific, and secure for lung cancer staging through rapid on-site evaluation (ROSE), but manual visual inspection on the entire slide of EBUS smears is challenging, time consuming, and worse, subjective, on a large interobserver scale. To satisfy ROSE’s needs, a rapid, automated, and accurate diagnosis system using EBUS-TBNA whole-slide images (WSIs) is highly desired to improve diagnosis accuracy and speed, minimize workload and labor costs, and ensure reproducibility. We present a fast, efficient, and fully automatic deep-convolutional-neural-network-based system for advanced lung cancer staging on gigapixel EBUS-TBNA cytological WSIs. Each WSI was converted into a patch-based hierarchical structure and examined by the proposed deep convolutional neural network, generating the segmentation of metastatic lesions in EBUS-TBNA WSIs. To the best of the authors’ knowledge, this is the first research on fully automated enlarged mediastinal lymph node analysis using EBUS-TBNA cytological WSIs. We evaluated the robustness of the proposed framework on a dataset of 122 WSIs, and the proposed method achieved a high precision of 93.4%, sensitivity of 89.8%, DSC of 82.2%, and IoU of 83.2% for the first experiment (37.7% training and 62.3% testing) and a high precision of 91.8 ± 1.2, sensitivity of 96.3 ± 0.8, DSC of 94.0 ± 1.0, and IoU of 88.7 ± 1.8 for the second experiment using a three-fold cross-validation, respectively. Furthermore, the proposed method significantly outperformed the three state-of-the-art baseline models, including U-Net, SegNet, and FCN, in terms of precision, sensitivity, DSC, and Jaccard index, based on Fisher’s least significant difference (LSD) test ([Formula: see text]). For a computational time comparison on a WSI, the proposed method was 2.5 times faster than U-Net, 2.3 times faster than SegNet, and 3.4 times faster than FCN, using a single GeForce GTX 1080 Ti, respectively. With its high precision and sensitivity, the proposed method demonstrated that it manifested the potential to reduce the workload of pathologists in their routine clinical practice.
format Online
Article
Text
id pubmed-9497910
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-94979102022-09-23 Deep Learning Using Endobronchial-Ultrasound-Guided Transbronchial Needle Aspiration Image to Improve the Overall Diagnostic Yield of Sampling Mediastinal Lymphadenopathy Wang, Ching-Wei Khalil, Muhammad-Adil Lin, Yi-Jia Lee, Yu-Ching Huang, Tsai-Wang Chao, Tai-Kuang Diagnostics (Basel) Article Lung cancer is the biggest cause of cancer-related death worldwide. An accurate nodal staging is critical for the determination of treatment strategy for lung cancer patients. Endobronchial-ultrasound-guided transbronchial needle aspiration (EBUS-TBNA) has revolutionized the field of pulmonology and is considered to be extremely sensitive, specific, and secure for lung cancer staging through rapid on-site evaluation (ROSE), but manual visual inspection on the entire slide of EBUS smears is challenging, time consuming, and worse, subjective, on a large interobserver scale. To satisfy ROSE’s needs, a rapid, automated, and accurate diagnosis system using EBUS-TBNA whole-slide images (WSIs) is highly desired to improve diagnosis accuracy and speed, minimize workload and labor costs, and ensure reproducibility. We present a fast, efficient, and fully automatic deep-convolutional-neural-network-based system for advanced lung cancer staging on gigapixel EBUS-TBNA cytological WSIs. Each WSI was converted into a patch-based hierarchical structure and examined by the proposed deep convolutional neural network, generating the segmentation of metastatic lesions in EBUS-TBNA WSIs. To the best of the authors’ knowledge, this is the first research on fully automated enlarged mediastinal lymph node analysis using EBUS-TBNA cytological WSIs. We evaluated the robustness of the proposed framework on a dataset of 122 WSIs, and the proposed method achieved a high precision of 93.4%, sensitivity of 89.8%, DSC of 82.2%, and IoU of 83.2% for the first experiment (37.7% training and 62.3% testing) and a high precision of 91.8 ± 1.2, sensitivity of 96.3 ± 0.8, DSC of 94.0 ± 1.0, and IoU of 88.7 ± 1.8 for the second experiment using a three-fold cross-validation, respectively. Furthermore, the proposed method significantly outperformed the three state-of-the-art baseline models, including U-Net, SegNet, and FCN, in terms of precision, sensitivity, DSC, and Jaccard index, based on Fisher’s least significant difference (LSD) test ([Formula: see text]). For a computational time comparison on a WSI, the proposed method was 2.5 times faster than U-Net, 2.3 times faster than SegNet, and 3.4 times faster than FCN, using a single GeForce GTX 1080 Ti, respectively. With its high precision and sensitivity, the proposed method demonstrated that it manifested the potential to reduce the workload of pathologists in their routine clinical practice. MDPI 2022-09-16 /pmc/articles/PMC9497910/ /pubmed/36140635 http://dx.doi.org/10.3390/diagnostics12092234 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
Wang, Ching-Wei
Khalil, Muhammad-Adil
Lin, Yi-Jia
Lee, Yu-Ching
Huang, Tsai-Wang
Chao, Tai-Kuang
Deep Learning Using Endobronchial-Ultrasound-Guided Transbronchial Needle Aspiration Image to Improve the Overall Diagnostic Yield of Sampling Mediastinal Lymphadenopathy
title Deep Learning Using Endobronchial-Ultrasound-Guided Transbronchial Needle Aspiration Image to Improve the Overall Diagnostic Yield of Sampling Mediastinal Lymphadenopathy
title_full Deep Learning Using Endobronchial-Ultrasound-Guided Transbronchial Needle Aspiration Image to Improve the Overall Diagnostic Yield of Sampling Mediastinal Lymphadenopathy
title_fullStr Deep Learning Using Endobronchial-Ultrasound-Guided Transbronchial Needle Aspiration Image to Improve the Overall Diagnostic Yield of Sampling Mediastinal Lymphadenopathy
title_full_unstemmed Deep Learning Using Endobronchial-Ultrasound-Guided Transbronchial Needle Aspiration Image to Improve the Overall Diagnostic Yield of Sampling Mediastinal Lymphadenopathy
title_short Deep Learning Using Endobronchial-Ultrasound-Guided Transbronchial Needle Aspiration Image to Improve the Overall Diagnostic Yield of Sampling Mediastinal Lymphadenopathy
title_sort deep learning using endobronchial-ultrasound-guided transbronchial needle aspiration image to improve the overall diagnostic yield of sampling mediastinal lymphadenopathy
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9497910/
https://www.ncbi.nlm.nih.gov/pubmed/36140635
http://dx.doi.org/10.3390/diagnostics12092234
work_keys_str_mv AT wangchingwei deeplearningusingendobronchialultrasoundguidedtransbronchialneedleaspirationimagetoimprovetheoveralldiagnosticyieldofsamplingmediastinallymphadenopathy
AT khalilmuhammadadil deeplearningusingendobronchialultrasoundguidedtransbronchialneedleaspirationimagetoimprovetheoveralldiagnosticyieldofsamplingmediastinallymphadenopathy
AT linyijia deeplearningusingendobronchialultrasoundguidedtransbronchialneedleaspirationimagetoimprovetheoveralldiagnosticyieldofsamplingmediastinallymphadenopathy
AT leeyuching deeplearningusingendobronchialultrasoundguidedtransbronchialneedleaspirationimagetoimprovetheoveralldiagnosticyieldofsamplingmediastinallymphadenopathy
AT huangtsaiwang deeplearningusingendobronchialultrasoundguidedtransbronchialneedleaspirationimagetoimprovetheoveralldiagnosticyieldofsamplingmediastinallymphadenopathy
AT chaotaikuang deeplearningusingendobronchialultrasoundguidedtransbronchialneedleaspirationimagetoimprovetheoveralldiagnosticyieldofsamplingmediastinallymphadenopathy