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Screening adequacy of unstained thyroid fine needle aspiration samples using a deep learning-based classifier.

Scientific reports 2023 Vol.13(1) p. 13525

Jang J, Kim YH, Westgate B, Zong Y, Hallinan C, Akalin A, Lee K

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Fine needle aspiration (FNA) biopsy of thyroid nodules is a safe, cost-effective, and accurate diagnostic method for detecting thyroid cancer.

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APA Jang J, Kim YH, et al. (2023). Screening adequacy of unstained thyroid fine needle aspiration samples using a deep learning-based classifier.. Scientific reports, 13(1), 13525. https://doi.org/10.1038/s41598-023-40652-1
MLA Jang J, et al.. "Screening adequacy of unstained thyroid fine needle aspiration samples using a deep learning-based classifier.." Scientific reports, vol. 13, no. 1, 2023, pp. 13525.
PMID 37598279

Abstract

Fine needle aspiration (FNA) biopsy of thyroid nodules is a safe, cost-effective, and accurate diagnostic method for detecting thyroid cancer. However, about 10% of initial FNA biopsy samples from patients are non-diagnostic and require repeated FNA, which delays the diagnosis and appropriate care. On-site evaluation of the FNA sample can be performed to filter out non-diagnostic FNA samples. Unfortunately, it involves a time-consuming staining process, and a cytopathologist has to be present at the time of FNA. To bypass the staining process and expert interpretation of FNA specimens at the clinics, we developed a deep learning-based ensemble model termed FNA-Net that allows in situ screening of adequacy of unstained thyroid FNA samples smeared on a glass slide which can decrease the non-diagnostic rate in thyroid FNA. FNA-Net combines two deep learning models, a patch-based whole slide image classifier and Faster R-CNN, to detect follicular clusters with high precision. Then, FNA-Net classifies sample slides to be non-diagnostic if the total number of detected follicular clusters is less than a predetermined threshold. With bootstrapped sampling, FNA-Net achieved a 0.81 F1 score and 0.84 AUC in the precision-recall curve for detecting the non-diagnostic slides whose follicular clusters are less than six. We expect that FNA-Net can dramatically reduce the diagnostic cost associated with FNA biopsy and improve the quality of patient care.

MeSH Terms

Humans; Biopsy, Fine-Needle; Deep Learning; Thyroid Gland; Glass; Mental Recall

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