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Leveraging deep learning to identify calcification and colloid in thyroid nodules

BACKGROUND: Both calcification and colloid in thyroid nodules are reflected as echogenic foci in ultrasound images. However, calcification and colloid have significantly different probabilities of malignancy. We explored the performance of a deep learning (DL) model in distinguishing the echogenic f...

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Autores principales: Chen, Chen, Liu, Yuanzhen, Yao, Jincao, Lv, Lujiao, Pan, Qianmeng, Wu, Jinxin, Zheng, Changfu, Wang, Hui, Jiang, Xianping, Wang, Yifan, Xu, Dong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10450979/
https://www.ncbi.nlm.nih.gov/pubmed/37636449
http://dx.doi.org/10.1016/j.heliyon.2023.e19066
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author Chen, Chen
Liu, Yuanzhen
Yao, Jincao
Lv, Lujiao
Pan, Qianmeng
Wu, Jinxin
Zheng, Changfu
Wang, Hui
Jiang, Xianping
Wang, Yifan
Xu, Dong
author_facet Chen, Chen
Liu, Yuanzhen
Yao, Jincao
Lv, Lujiao
Pan, Qianmeng
Wu, Jinxin
Zheng, Changfu
Wang, Hui
Jiang, Xianping
Wang, Yifan
Xu, Dong
author_sort Chen, Chen
collection PubMed
description BACKGROUND: Both calcification and colloid in thyroid nodules are reflected as echogenic foci in ultrasound images. However, calcification and colloid have significantly different probabilities of malignancy. We explored the performance of a deep learning (DL) model in distinguishing the echogenic foci of thyroid nodules as calcification or colloid. METHODS: We conducted a retrospective study using ultrasound image sets. The DL model was trained and tested on 30,388 images of 1127 nodules. All nodules were pathologically confirmed. The area under the receiver-operator characteristic curve (AUC) was employed as the primary evaluation index. RESULTS: The YoloV5 (You Only Look Once Version 5) transfer learning model for thyroid nodules based on DL detection showed that the average sensitivity, specificity, and accuracy of distinguishing echogenic foci in the test 1 group (n = 192) was 78.41%, 91.36%, and 77.81%, respectively. The average sensitivity, specificity, and accuracy of the three radiologists were 51.14%, 82.58%, and 61.29%, respectively. The average sensitivity, specificity, and accuracy of distinguishing small echogenic foci in the test 2 group (n = 58) was 70.17%, 77.14%, and 73.33%, respectively. Correspondingly, the average sensitivity, specificity, and accuracy of the radiologists were 57.69%, 63.29%, and 59.38%. CONCLUSIONS: The study demonstrated that DL performed far better than radiologists in distinguishing echogenic foci of thyroid nodules as calcifications or colloid.
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spelling pubmed-104509792023-08-26 Leveraging deep learning to identify calcification and colloid in thyroid nodules Chen, Chen Liu, Yuanzhen Yao, Jincao Lv, Lujiao Pan, Qianmeng Wu, Jinxin Zheng, Changfu Wang, Hui Jiang, Xianping Wang, Yifan Xu, Dong Heliyon Research Article BACKGROUND: Both calcification and colloid in thyroid nodules are reflected as echogenic foci in ultrasound images. However, calcification and colloid have significantly different probabilities of malignancy. We explored the performance of a deep learning (DL) model in distinguishing the echogenic foci of thyroid nodules as calcification or colloid. METHODS: We conducted a retrospective study using ultrasound image sets. The DL model was trained and tested on 30,388 images of 1127 nodules. All nodules were pathologically confirmed. The area under the receiver-operator characteristic curve (AUC) was employed as the primary evaluation index. RESULTS: The YoloV5 (You Only Look Once Version 5) transfer learning model for thyroid nodules based on DL detection showed that the average sensitivity, specificity, and accuracy of distinguishing echogenic foci in the test 1 group (n = 192) was 78.41%, 91.36%, and 77.81%, respectively. The average sensitivity, specificity, and accuracy of the three radiologists were 51.14%, 82.58%, and 61.29%, respectively. The average sensitivity, specificity, and accuracy of distinguishing small echogenic foci in the test 2 group (n = 58) was 70.17%, 77.14%, and 73.33%, respectively. Correspondingly, the average sensitivity, specificity, and accuracy of the radiologists were 57.69%, 63.29%, and 59.38%. CONCLUSIONS: The study demonstrated that DL performed far better than radiologists in distinguishing echogenic foci of thyroid nodules as calcifications or colloid. Elsevier 2023-08-11 /pmc/articles/PMC10450979/ /pubmed/37636449 http://dx.doi.org/10.1016/j.heliyon.2023.e19066 Text en © 2023 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research Article
Chen, Chen
Liu, Yuanzhen
Yao, Jincao
Lv, Lujiao
Pan, Qianmeng
Wu, Jinxin
Zheng, Changfu
Wang, Hui
Jiang, Xianping
Wang, Yifan
Xu, Dong
Leveraging deep learning to identify calcification and colloid in thyroid nodules
title Leveraging deep learning to identify calcification and colloid in thyroid nodules
title_full Leveraging deep learning to identify calcification and colloid in thyroid nodules
title_fullStr Leveraging deep learning to identify calcification and colloid in thyroid nodules
title_full_unstemmed Leveraging deep learning to identify calcification and colloid in thyroid nodules
title_short Leveraging deep learning to identify calcification and colloid in thyroid nodules
title_sort leveraging deep learning to identify calcification and colloid in thyroid nodules
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10450979/
https://www.ncbi.nlm.nih.gov/pubmed/37636449
http://dx.doi.org/10.1016/j.heliyon.2023.e19066
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