Abstract

BackgroundThe evaluation of thyroid nodules with ultrasonography has created a large burden for radiologists. Artificial intelligence technology has been rapidly developed in recent years to reduce the cost of labor and improve the differentiation of thyroid malignancies. This study aimed to investigate the diagnostic performance of a novel computer-aided diagnosing system (CADs: S-detect) for the ultrasound (US) interpretation of thyroid nodule subtypes in a specialized thyroid center.MethodsOur study prospectively included 180 thyroid nodules that underwent ultrasound interpretation. The CADs and radiologist assessed all nodules. The ultrasonographic features of different subtypes were analyzed, and the diagnostic performances of the CADs and radiologist were compared.ResultsThere were seven subtypes of thyroid nodules, among which papillary thyroid cancer (PTC) accounted for 50.6% and follicular thyroid carcinoma (FTC) accounted for 2.2%. Among all thyroid nodules, the CADs presented a higher sensitivity and lower specificity than the radiologist (90.5% vs 81.1%; 41.2% vs 83.5%); the radiologist had a higher accuracy than the CADs (82.2% vs 67.2%) for diagnosing malignant thyroid nodules. The accuracy of the CADs was not as good as that of the radiologist in diagnosing PTCs (70.9% vs 82.1%). The CADs and radiologist presented accuracies of 43.8% and 60.9% in identifying FTCs, respectively.ConclusionsThe ultrasound CADs presented a higher sensitivity for identifying malignant thyroid nodules than experienced radiologists. The CADs was not as good as experienced radiologists in a specialized thyroid center in identifying PTCs. Radiologists maintained a higher specificity than the CADs for FTC detection.

Highlights

  • The evaluation of thyroid nodules with ultrasonography has created a large burden for radiologists

  • papillary thyroid cancer (PTC) accounted for 50.6% of all thyroid nodules, and follicular thyroid carcinoma (FTC) accounted for 2.2% of all thyroid nodules

  • Ill-defined margins were more likely to be found in PTCs (P = 0.000) than in follicular neoplasms and were often observed in thyroiditis than in other benign neoplasms; well-defined margins were more frequently observed in follicular neoplasms, goiters, and cysts than in other subtypes

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Summary

Introduction

The evaluation of thyroid nodules with ultrasonography has created a large burden for radiologists. Artificial intelligence technology has been rapidly developed in recent years to reduce the cost of labor and improve the differentiation of thyroid malignancies. The incidence of thyroid cancer has increased exponentially in the past decades and is ascribed to the improved ultrasonographic techniques and the application of fineneedle aspiration (FNA) [1, 2]. Among these new cases, papillary thyroid cancer (PTC) accounts for the largest percentage with a high number of papillary thyroid microcarcinomas (PTMCs, < 1 cm) [3].

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