J Neuromonit Neurophysiol > Volume 6(1); 2026 > Article
Journal of Neuromonitoring & Neurophysiology 2026;6(1):8-18.
DOI: https://doi.org/10.54441/jnn.2026.6.1.8    Published online May 30, 2026.
Thyroid nodule ultrasonography: promising commercial AI tools and challenges in specificity and generalizability
Ji Won Kim 
Department of Otolaryngology-Head and Neck Surgery, Inha University College of Medicine, Incheon, Republic of Korea
Correspondence:  Ji Won Kim
Email: hopefuljw@gmail.com
Received: 7 May 2026   • Revised: 9 May 2026   • Accepted: 9 May 2026
Abstract
Thyroid nodules are common findings in clinical practice, detectable in 19%-68% of the general population by high-resolution ultrasonography (US). Accurate risk stratification is essential to identify the 7%-15% of nodules harboring malignancy while avoiding unnecessary fine-needle aspiration biopsies. Standardized reporting systems such as the American College of Radiology Thyroid Imaging Reporting and Data System and the Korean Thyroid Imaging Reporting and Data System were developed to improve consistency and reduce unnecessary biopsies, yet interobserver variability persists. Artificial intelligence (AI), particularly convolutional neural network- based deep learning, has been increasingly evaluated as a tool for automated image analysis, feature extraction, and risk assessment of thyroid nodules on US. As of early 2026, six AI platforms for assessing thyroid nodule sonograms have received U.S. Food and Drug Administration clearance. Published studies suggest that many of these systems can achieve sensitivity comparable to that of experienced radiologists, with potential incremental value for less experienced operators. This review examines the current landscape of commercially available AI tools for thyroid US, compares their diagnostic performance, discusses limitations, and identifies priorities for future research, with emphasis on external validation and alignment with regional risk stratification systems.
Key Words: Thyroid nodule, Ultrasonography, Artificial intelligence, Deep learning, Computer-assisted diagnosis
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ORCID iDs

Ji Won Kim
https://orcid.org/0000-0003-1587-9671

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