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Diseased thyroid tissue classification in OCT images using deep learning: towards surgical decision support

Authors :
Tampu, Iulian Emil
Eklund, Anders
Johansson, Kenth
Gimm, Oliver
Haj-Hosseini, Neda
Tampu, Iulian Emil
Eklund, Anders
Johansson, Kenth
Gimm, Oliver
Haj-Hosseini, Neda
Publication Year :
2023

Abstract

Intraoperative guidance tools for thyroid surgery based on optical coherence tomography (OCT) could aid distinguish between normal and diseased tissue. However, OCT images are difficult to interpret, thus, real-time automatic analysis could support the clinical decision-making. In this study, several deep learning models were investigated for thyroid disease classification on 2D and 3D OCT data obtained from ex vivo specimens of 22 patients undergoing surgery and diagnosed with several thyroid pathologies. Additionally, two open-access datasets were used to evaluate the custom models. On the thyroid dataset, the best performance was achieved by the 3D vision transformer model with a Matthews correlation coefficient (MCC) of 0.79 (accuracy = 0.90) for the normal-versus-abnormal classification. On the open-access datasets, the custom models achieved the best performance (MCC > 0.88, accuracy > 0.96). Results obtained for the normal-versus-abnormal classification suggest OCT, complemented with deep learning-based analysis, as a tool for real-time automatic diseased tissue identification in thyroid surgery.<br />Funding: Ake Wiberg Stiftelse [M19-0455 M20-0034 M21-0083]; Forskningsradet i Sydostra Sverige [931466]; VINNOVA via Medtech4Health; AIDA(1908) [2017-02447]; Vetenskapsradet-Swedish Research Council [2018-05250]

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1374233129
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1002.jbio.202200227