Cargando…

Automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study

BACKGROUND: Currently, follicular thyroid carcinoma (FTC) has a relatively low incidence with a lack of effective preoperative diagnostic means. To reduce the need for invasive diagnostic procedures and to address information deficiencies inherent in a small dataset, we utilized interpretable foregr...

Descripción completa

Detalles Bibliográficos
Autores principales: Yang, Zheyu, Yao, Siqiong, Heng, Yu, Shen, Pengcheng, Lv, Tian, Feng, Siqi, Tao, Lei, Zhang, Weituo, Qiu, Weihua, Lu, Hui, Cai, Wei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10498847/
https://www.ncbi.nlm.nih.gov/pubmed/37204464
http://dx.doi.org/10.1097/JS9.0000000000000506
_version_ 1785105604443897856
author Yang, Zheyu
Yao, Siqiong
Heng, Yu
Shen, Pengcheng
Lv, Tian
Feng, Siqi
Tao, Lei
Zhang, Weituo
Qiu, Weihua
Lu, Hui
Cai, Wei
author_facet Yang, Zheyu
Yao, Siqiong
Heng, Yu
Shen, Pengcheng
Lv, Tian
Feng, Siqi
Tao, Lei
Zhang, Weituo
Qiu, Weihua
Lu, Hui
Cai, Wei
author_sort Yang, Zheyu
collection PubMed
description BACKGROUND: Currently, follicular thyroid carcinoma (FTC) has a relatively low incidence with a lack of effective preoperative diagnostic means. To reduce the need for invasive diagnostic procedures and to address information deficiencies inherent in a small dataset, we utilized interpretable foreground optimization network deep learning to develop a reliable preoperative FTC detection system. METHODS: In this study, a deep learning model (FThyNet) was established using preoperative ultrasound images. Data on patients in the training and internal validation cohort (n=432) were obtained from Ruijin Hospital, China. Data on patients in the external validation cohort (n=71) were obtained from four other clinical centers. We evaluated the predictive performance of FThyNet and its ability to generalize across multiple external centers and compared the results yielded with assessments from physicians directly predicting FTC outcomes. In addition, the influence of texture information around the nodule edge on the prediction results was evaluated. RESULTS: FThyNet had a consistently high accuracy in predicting FTC with an area under the receiver operating characteristic curve (AUC) of 89.0% [95% CI 87.0–90.9]. Particularly, the AUC for grossly invasive FTC reached 90.3%, which was significantly higher than that of the radiologists (56.1% [95% CI 51.8–60.3]). The parametric visualization study found that those nodules with blurred edges and relatively distorted surrounding textures were more likely to have FTC. Furthermore, edge texture information played an important role in FTC prediction with an AUC of 68.3% [95% CI 61.5–75.5], and highly invasive malignancies had the highest texture complexity. CONCLUSION: FThyNet could effectively predict FTC, provide explanations consistent with pathological knowledge, and improve clinical understanding of the disease.
format Online
Article
Text
id pubmed-10498847
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Lippincott Williams & Wilkins
record_format MEDLINE/PubMed
spelling pubmed-104988472023-09-14 Automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study Yang, Zheyu Yao, Siqiong Heng, Yu Shen, Pengcheng Lv, Tian Feng, Siqi Tao, Lei Zhang, Weituo Qiu, Weihua Lu, Hui Cai, Wei Int J Surg Original Research BACKGROUND: Currently, follicular thyroid carcinoma (FTC) has a relatively low incidence with a lack of effective preoperative diagnostic means. To reduce the need for invasive diagnostic procedures and to address information deficiencies inherent in a small dataset, we utilized interpretable foreground optimization network deep learning to develop a reliable preoperative FTC detection system. METHODS: In this study, a deep learning model (FThyNet) was established using preoperative ultrasound images. Data on patients in the training and internal validation cohort (n=432) were obtained from Ruijin Hospital, China. Data on patients in the external validation cohort (n=71) were obtained from four other clinical centers. We evaluated the predictive performance of FThyNet and its ability to generalize across multiple external centers and compared the results yielded with assessments from physicians directly predicting FTC outcomes. In addition, the influence of texture information around the nodule edge on the prediction results was evaluated. RESULTS: FThyNet had a consistently high accuracy in predicting FTC with an area under the receiver operating characteristic curve (AUC) of 89.0% [95% CI 87.0–90.9]. Particularly, the AUC for grossly invasive FTC reached 90.3%, which was significantly higher than that of the radiologists (56.1% [95% CI 51.8–60.3]). The parametric visualization study found that those nodules with blurred edges and relatively distorted surrounding textures were more likely to have FTC. Furthermore, edge texture information played an important role in FTC prediction with an AUC of 68.3% [95% CI 61.5–75.5], and highly invasive malignancies had the highest texture complexity. CONCLUSION: FThyNet could effectively predict FTC, provide explanations consistent with pathological knowledge, and improve clinical understanding of the disease. Lippincott Williams & Wilkins 2023-05-18 /pmc/articles/PMC10498847/ /pubmed/37204464 http://dx.doi.org/10.1097/JS9.0000000000000506 Text en Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) (CCBY-NC-ND), where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal. http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/)
spellingShingle Original Research
Yang, Zheyu
Yao, Siqiong
Heng, Yu
Shen, Pengcheng
Lv, Tian
Feng, Siqi
Tao, Lei
Zhang, Weituo
Qiu, Weihua
Lu, Hui
Cai, Wei
Automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study
title Automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study
title_full Automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study
title_fullStr Automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study
title_full_unstemmed Automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study
title_short Automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study
title_sort automated diagnosis and management of follicular thyroid nodules based on the devised small-dataset interpretable foreground optimization network deep learning: a multicenter diagnostic study
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10498847/
https://www.ncbi.nlm.nih.gov/pubmed/37204464
http://dx.doi.org/10.1097/JS9.0000000000000506
work_keys_str_mv AT yangzheyu automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT yaosiqiong automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT hengyu automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT shenpengcheng automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT lvtian automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT fengsiqi automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT taolei automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT zhangweituo automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT qiuweihua automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT luhui automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy
AT caiwei automateddiagnosisandmanagementoffollicularthyroidnodulesbasedonthedevisedsmalldatasetinterpretableforegroundoptimizationnetworkdeeplearningamulticenterdiagnosticstudy