Interpretation of PSMA-PET Among Urologists: A Prospective Multicentric Evaluation
Guglielmo Mantica, Francesco Chierigo, Francesca Ambrosini, Francesca D’Amico, Greta Celesti, Arianna Ferrari, Fabrizio Gallo, Maurizio Schenone, Andrea Benelli, Carlo Introini, Rosario Leonardi, Alessandro Calarco, Francesco Esperto, Andrea Pacchetti, Rocco Papalia, Giorgio Bozzini, Armando Serao, Valentina Pau, Gianmario Sambuceti, Carlo Terrone
- 发表年份
- 2025
- 引用次数
- 1
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摘要
BACKGROUND: Prostate-specific membrane antigen (PSMA)-PET imaging has significantly improved prostate cancer (PCa) staging, yet its interpretation remains challenging, even for experienced specialists. No prior study has assessed urologists' ability to interpret PSMA-PET. METHODS: We conducted a multicenter prospective study involving 63 urologists from eight Italian institutions. Participants evaluated 20 PSMA-PET scans of high-risk PCa cases, with no clinical information provided. Proficiency was defined as correctly identifying at least two of three staging components (T, N, M) in ≥75% of cases. Associations between performance and factors such as hierarchy (resident vs. consultant), institution type, surgical volume, and multidisciplinary team (MDT) presence were analyzed using univariable and multivariable logistic regression. RESULTS: Only one participant achieved full staging proficiency, while 44% reached the ≥75% threshold for partial (almost correct) staging. Urologists from centers with ≥300 PCa diagnoses per year demonstrated better T and M stage identification. Institutions with ≥150 robot-assisted radical prostatectomies (RARPs) per year and those with MDTs showed higher accuracy in M staging. No significant predictors of proficiency emerged in the multivariable analysis, although hierarchy and surgical volume approached significance for nodal metastasis detection. CONCLUSION: PSMA-PET interpretation is complex for urologists, with particular challenges in T and M staging. High institutional case volumes and MDT involvement may enhance interpretation skills. Structured training programs and increased exposure to multidisciplinary imaging discussions are essential to optimize urologists' diagnostic proficiency and ultimately improve patient care.
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