From Bench-to-Bedside: How Artificial Intelligence is Changing Thyroid Nodule Diagnostics, a Systematic Review

Author:

Sant Vivek R1ORCID,Radhachandran Ashwath2ORCID,Ivezic Vedrana2ORCID,Lee Denise T3ORCID,Livhits Masha J4ORCID,Wu James X4ORCID,Masamed Rinat5ORCID,Arnold Corey W2ORCID,Yeh Michael W4ORCID,Speier William2ORCID

Affiliation:

1. Division of Endocrine Surgery, UT Southwestern Medical Center , Dallas, TX 75390 , USA

2. Biomedical Artificial Intelligence Research Lab, UCLA Department of Bioengineering , Los Angeles, CA 90024 , USA

3. Department of Surgery, Icahn School of Medicine at Mount Sinai Hospital , New York, NY 10029 , USA

4. Section of Endocrine Surgery, UCLA David Geffen School of Medicine , Los Angeles, CA 90095 , USA

5. Department of Radiology, University of California, Los Angeles , Los Angeles, CA 90095 , USA

Abstract

Abstract Context Use of artificial intelligence (AI) to predict clinical outcomes in thyroid nodule diagnostics has grown exponentially over the past decade. The greatest challenge is in understanding the best model to apply to one's own patient population, and how to operationalize such a model in practice. Evidence Acquisition A literature search of PubMed and IEEE Xplore was conducted for English-language publications between January 1, 2015 and January 1, 2023, studying diagnostic tests on suspected thyroid nodules that used AI. We excluded articles without prospective or external validation, nonprimary literature, duplicates, focused on nonnodular thyroid conditions, not using AI, and those incidentally using AI in support of an experimental diagnostic outside standard clinical practice. Quality was graded by Oxford level of evidence. Evidence Synthesis A total of 61 studies were identified; all performed external validation, 16 studies were prospective, and 33 compared a model to physician prediction of ground truth. Statistical validation was reported in 50 papers. A diagnostic pipeline was abstracted, yielding 5 high-level outcomes: (1) nodule localization, (2) ultrasound (US) risk score, (3) molecular status, (4) malignancy, and (5) long-term prognosis. Seven prospective studies validated a single commercial AI; strengths included automating nodule feature assessment from US and assisting the physician in predicting malignancy risk, while weaknesses included automated margin prediction and interobserver variability. Conclusion Models predominantly used US images to predict malignancy. Of 4 Food and Drug Administration–approved products, only S-Detect was extensively validated. Implementing an AI model locally requires data sanitization and revalidation to ensure appropriate clinical performance.

Funder

National Institute of Biomedical Imaging and Bioengineering

National Institutes of Health

UCLA Radiology Exploratory Research

Publisher

The Endocrine Society

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