Author
Listed:
- Sebastian Stenman
- Nina Linder
- Mikael Lundin
- Caj Haglund
- Johanna Arola
- Johan Lundin
Abstract
Introduction: According to the World Health Organization, the tall cell variant (TCV) is an aggressive subtype of papillary thyroid carcinoma (PTC) comprising at least 30% epithelial cells two to three times as tall as they are wide. In practice, applying this definition is difficult causing substantial interobserver variability. We aimed to train a deep learning algorithm to detect and quantify the proportion of tall cells (TCs) in PTC. Methods: We trained the deep learning algorithm using supervised learning, testing it on an independent dataset, and further validating it on an independent set of 90 PTC samples from patients treated at the Hospital District of Helsinki and Uusimaa between 2003 and 2013. We compared the algorithm-based TC percentage to the independent scoring by a human investigator and how those scorings associated with disease outcomes. Additionally, we assessed the TC score in 71 local and distant tumor relapse samples from patients with aggressive disease. Results: In the test set, the deep learning algorithm detected TCs with a sensitivity of 93.7% and a specificity of 94.5%, whereas the sensitivity fell to 90.9% and specificity to 94.1% for non-TC areas. In the validation set, the deep learning algorithm TC scores correlated with a diminished relapse-free survival using cutoff points of 10% (p = 0.044), 20% (p
Suggested Citation
Sebastian Stenman & Nina Linder & Mikael Lundin & Caj Haglund & Johanna Arola & Johan Lundin, 2022.
"A deep learning–based algorithm for tall cell detection in papillary thyroid carcinoma,"
PLOS ONE, Public Library of Science, vol. 17(8), pages 1-14, August.
Handle:
RePEc:plo:pone00:0272696
DOI: 10.1371/journal.pone.0272696
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