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Temporal Trends in Thyroid Nodule Size on Ultrasonography

Nature Biotechnology(2024)SCI 1区

Department of Surgery | Department of Radiology | Department of Otolaryngology–Head and Neck Surgery | Ebling Library for the Health Sciences | The VA Outcomes Group | Department of Medicine

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Abstract
ImportanceIn recent years, concern has grown around the overdetection of thyroid cancer. Changes to thyroid nodule risk stratification systems and guidelines were made to improve diagnostic yield. It is not known how these advancements have affected the size of thyroid nodules reported on ultrasonography over time.ObjectiveTo evaluate change in reported nodule size since 1990, particularly between studies of thyroid ultrasonography obtained for diagnostic vs screening purposes.Study SelectionThe systematic review included original research studies that reported thyroid nodule size in adults undergoing their first thyroid ultrasonography. Excluded studies were those that included patients with known thyroid disease, prior thyroid ultrasonography, nodules identified through other imaging modalities, and/or that had constraints on nodule size and/or characteristics.Data SourcesPubMed, SCOPUS, CENTRAL, and CINAHL were reviewed from January 1990 to March 2021. Study characteristics, patient demographic characteristics, nodule size, and ultrasonography techniques were independently extracted by multiple observers.Main Outcomes and MeasuresThe size of thyroid nodules reported via ultrasonography over time. Mixed-effects meta-regression models were used to evaluate mean nodule size (1) overall, (2) in studies that used ultrasonography diagnostically, and (3) in studies that used ultrasonography for screening.ResultsA total of 11 963 patients were included; the mean (SD) age was 47.6 (5.2) years. A total of 1097 studies were identified; of these, 395 full-text articles were assessed, and 18 studies met inclusion criteria. All were done at academic institutions. Altogether, these studies had 11 963 patients who underwent a first thyroid ultrasonography. Reported mean nodule size increased 0.52 mm each year from 1990 to 2021 (95% CI, 0.2-0.81). Diagnostic subgroup mean nodule size increased 0.57 mm each year from 1990 to 2021 (95% CI, 0.21-0.93). Screening subgroup mean nodule size decreased by 0.23 mm each year up to 2012 (95% CI, −0.40 to −0.07).ConclusionsThe results of this systematic review and meta-analysis suggest that thyroid nodule size reported on diagnostic ultrasonography has increased over time in conjunction with changes in risk stratification systems, nodule guidelines, and radiology practice patterns. Conversely, a decrease in size reported in asymptomatic, ultrasonography-screened populations was observed. Findings from screening studies show that subcentimeter nodules are prevalent and easily identified with ultrasonography, but clinical relevance is questionable. Altogether, these results may provide insight into how ultrasonography guidelines and practice patterns have changed thyroid nodule reporting over time and can inform future guidelines and policies associated with thyroid nodule management.
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