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Annotation-free genetic mutation estimation of thyroid cancer using cytological slides from multi-centers.

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Diagnostic pathology 📖 저널 OA 95.2% 2025 Vol.20(1) p. 22
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Xiong S, Liu S, Zhang W, Zeng C, Liao D, Tang T, Wang S, Guo Y

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Thyroid cancer is the most common form of endocrine malignancy and fine needle aspiration (FNA) cytology is a reliable method for clinical diagnosis.

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APA Xiong S, Liu S, et al. (2025). Annotation-free genetic mutation estimation of thyroid cancer using cytological slides from multi-centers.. Diagnostic pathology, 20(1), 22. https://doi.org/10.1186/s13000-025-01618-1
MLA Xiong S, et al.. "Annotation-free genetic mutation estimation of thyroid cancer using cytological slides from multi-centers.." Diagnostic pathology, vol. 20, no. 1, 2025, pp. 22.
PMID 39985045

Abstract

Thyroid cancer is the most common form of endocrine malignancy and fine needle aspiration (FNA) cytology is a reliable method for clinical diagnosis. Identification of genetic mutation status has been proved efficient for accurate diagnosis and prognostic risk stratification. In this study, a dataset with thyroid cytological images of 310 indeterminate (TBS3 or 4) and 392 PTC (TBS5 or 6) was collected. We introduced a multimodal cascaded network framework to estimate BARF V600E and RAS mutations directly from thyroid cytological slides. The area under the curve in the external testing set achieved 0.902 ± 0.063 and 0.801 ± 0.137 AUCs for BRAF, and RAS, respectively. The results demonstrated that deep neural networks have the potential in cytologically predicting valuable diagnosis and comprehensive genetic status.

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