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Automatic Image Selection Model Based on Machine Learning for Endobronchial Ultrasound Strain Elastography Videos

BACKGROUND: Endoscopic ultrasound (EBUS) strain elastography can diagnose intrathoracic benign and malignant lymph nodes (LNs) by reflecting the relative stiffness of tissues. Due to strong subjectivity, it is difficult to give full play to the diagnostic efficiency of strain elastography. This stud...

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Autores principales: Zhi, Xinxin, Li, Jin, Chen, Junxiang, Wang, Lei, Xie, Fangfang, Dai, Wenrui, Sun, Jiayuan, Xiong, Hongkai
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8201408/
https://www.ncbi.nlm.nih.gov/pubmed/34136402
http://dx.doi.org/10.3389/fonc.2021.673775
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author Zhi, Xinxin
Li, Jin
Chen, Junxiang
Wang, Lei
Xie, Fangfang
Dai, Wenrui
Sun, Jiayuan
Xiong, Hongkai
author_facet Zhi, Xinxin
Li, Jin
Chen, Junxiang
Wang, Lei
Xie, Fangfang
Dai, Wenrui
Sun, Jiayuan
Xiong, Hongkai
author_sort Zhi, Xinxin
collection PubMed
description BACKGROUND: Endoscopic ultrasound (EBUS) strain elastography can diagnose intrathoracic benign and malignant lymph nodes (LNs) by reflecting the relative stiffness of tissues. Due to strong subjectivity, it is difficult to give full play to the diagnostic efficiency of strain elastography. This study aims to use machine learning to automatically select high-quality and stable representative images from EBUS strain elastography videos. METHODS: LNs with qualified strain elastography videos from June 2019 to November 2019 were enrolled in the training and validation sets randomly at a quantity ratio of 3:1 to train an automatic image selection model using machine learning algorithm. The strain elastography videos in December 2019 were used as the test set, from which three representative images were selected for each LN by the model. Meanwhile, three experts and three trainees selected one representative image severally for each LN on the test set. Qualitative grading score and four quantitative methods were used to evaluate images above to assess the performance of the automatic image selection model. RESULTS: A total of 415 LNs were included in the training and validation sets and 91 LNs in the test set. Result of the qualitative grading score showed that there was no statistical difference between the three images selected by the machine learning model. Coefficient of variation (CV) values of the four quantitative methods in the machine learning group were all lower than the corresponding CV values in the expert and trainee groups, which demonstrated great stability of the machine learning model. Diagnostic performance analysis on the four quantitative methods showed that the diagnostic accuracies were range from 70.33% to 73.63% in the trainee group, 78.02% to 83.52% in the machine learning group, and 80.22% to 82.42% in the expert group. Moreover, there were no statistical differences in corresponding mean values of the four quantitative methods between the machine learning and expert groups (p >0.05). CONCLUSION: The automatic image selection model established in this study can help select stable and high-quality representative images from EBUS strain elastography videos, which has great potential in the diagnosis of intrathoracic LNs.
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spelling pubmed-82014082021-06-15 Automatic Image Selection Model Based on Machine Learning for Endobronchial Ultrasound Strain Elastography Videos Zhi, Xinxin Li, Jin Chen, Junxiang Wang, Lei Xie, Fangfang Dai, Wenrui Sun, Jiayuan Xiong, Hongkai Front Oncol Oncology BACKGROUND: Endoscopic ultrasound (EBUS) strain elastography can diagnose intrathoracic benign and malignant lymph nodes (LNs) by reflecting the relative stiffness of tissues. Due to strong subjectivity, it is difficult to give full play to the diagnostic efficiency of strain elastography. This study aims to use machine learning to automatically select high-quality and stable representative images from EBUS strain elastography videos. METHODS: LNs with qualified strain elastography videos from June 2019 to November 2019 were enrolled in the training and validation sets randomly at a quantity ratio of 3:1 to train an automatic image selection model using machine learning algorithm. The strain elastography videos in December 2019 were used as the test set, from which three representative images were selected for each LN by the model. Meanwhile, three experts and three trainees selected one representative image severally for each LN on the test set. Qualitative grading score and four quantitative methods were used to evaluate images above to assess the performance of the automatic image selection model. RESULTS: A total of 415 LNs were included in the training and validation sets and 91 LNs in the test set. Result of the qualitative grading score showed that there was no statistical difference between the three images selected by the machine learning model. Coefficient of variation (CV) values of the four quantitative methods in the machine learning group were all lower than the corresponding CV values in the expert and trainee groups, which demonstrated great stability of the machine learning model. Diagnostic performance analysis on the four quantitative methods showed that the diagnostic accuracies were range from 70.33% to 73.63% in the trainee group, 78.02% to 83.52% in the machine learning group, and 80.22% to 82.42% in the expert group. Moreover, there were no statistical differences in corresponding mean values of the four quantitative methods between the machine learning and expert groups (p >0.05). CONCLUSION: The automatic image selection model established in this study can help select stable and high-quality representative images from EBUS strain elastography videos, which has great potential in the diagnosis of intrathoracic LNs. Frontiers Media S.A. 2021-05-31 /pmc/articles/PMC8201408/ /pubmed/34136402 http://dx.doi.org/10.3389/fonc.2021.673775 Text en Copyright © 2021 Zhi, Li, Chen, Wang, Xie, Dai, Sun and Xiong 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
Zhi, Xinxin
Li, Jin
Chen, Junxiang
Wang, Lei
Xie, Fangfang
Dai, Wenrui
Sun, Jiayuan
Xiong, Hongkai
Automatic Image Selection Model Based on Machine Learning for Endobronchial Ultrasound Strain Elastography Videos
title Automatic Image Selection Model Based on Machine Learning for Endobronchial Ultrasound Strain Elastography Videos
title_full Automatic Image Selection Model Based on Machine Learning for Endobronchial Ultrasound Strain Elastography Videos
title_fullStr Automatic Image Selection Model Based on Machine Learning for Endobronchial Ultrasound Strain Elastography Videos
title_full_unstemmed Automatic Image Selection Model Based on Machine Learning for Endobronchial Ultrasound Strain Elastography Videos
title_short Automatic Image Selection Model Based on Machine Learning for Endobronchial Ultrasound Strain Elastography Videos
title_sort automatic image selection model based on machine learning for endobronchial ultrasound strain elastography videos
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8201408/
https://www.ncbi.nlm.nih.gov/pubmed/34136402
http://dx.doi.org/10.3389/fonc.2021.673775
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