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Digital Versus Optical Diagnosis of Follicular Patterned Thyroid Lesions

King Abdullah University Hospital (KAUH), Jordan, University of Science and Technology (JUST), University of Porto,Campelos Sofia, Kuwait Institute for Medical Specializations,Vale Joao,Caramelo Ana

Head and Neck Pathology(2020)

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摘要
To study the concordance between pathologists in the diagnosis of follicular patterned thyroid lesions using both digital and conventional optical settings. Five pathologists reviewed 50 hematoxylin and eosin-stained slides of follicular patterned thyroid lesions using both digital (the D-Sight 2.0 scanner and navigator viewer) and conventional optical instruments with washout interval time. The mean concordance rate with the ground truth (GT) was similar between conventional optical and digital observation (83.2 and 85.2%, respectively). The most frequent reason for diagnostic discordance with GT on both systems was the evaluation of nuclear features (69.1% for conventional optical observation and 59.4% for digital observation). The intraobserver diagnostic concordance mean was 86.8%. Time for digital observation (mean time per case = 2.9 ± 0.8 min) was higher than that for conventional optical observation (mean time per case = 2.0 ± 0.7 min). Interobserver correlation of measurements was higher in the digital observation than the conventional optical observation. Conventional optical and digital observation settings showed a comparable accuracy for the diagnosis of follicular patterned thyroid nodules, as well as substantial intraobserver agreement and a significant improvement in the reproducibility of the measurements that support the use of digital diagnosis in thyroid pathology. The origins underlying the variability of the diagnosis were the same in both conventional optical microscopy and digital pathology systems.
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关键词
Digital pathology,Papillary thyroid carcinoma,Noninvasive follicular thyroid neoplasm with papillary-like nuclear features,Thyroid,Thyroid cancer
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