The Mount Sinai Prebiopsy Risk Calculator for Predicting any Prostate Cancer and Clinically Significant Prostate Cancer: Development of a Risk Predictive Tool and Validation with Advanced Neural Networking, Prostate Magnetic Resonance Imaging Outcome Database, and European Randomized Study of Screening for Prostate Cancer Risk Calculator

We developed the Mount Sinai Prebiopsy Risk Calculator (MSP-RC) to assess the likelihood of any prostate cancer and clinically significant disease based on a combination of clinical and imaging characteristics. MSP-RC is applicable to all patient settings and accessible online. The European Associat...

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Veröffentlicht in:EUROPEAN UROLOGY OPEN SCIENCE 2022-07, Vol.41, p.45-54
Hauptverfasser: Parekh, Sneha, Ratnani, Parita, Falagario, Ugo, Lundon, Dara, Kewlani, Deepshikha, Nasri, Jordan, Dovey, Zach, Stroumbakis, Dimitrios, Ranti, Daniel, Grauer, Ralph, Sobotka, Stanislaw, Pedraza, Adriana, Wagaskar, Vinayak, Mistry, Lajja, Jambor, Ivan, Lantz, Anna, Ettala, Otto, Stabile, Armando, Taimen, Pekka, Aronen, Hannu J., Knaapila, Juha, Perez, Ileana Montoya, Gandaglia, Giorgio, Martini, Alberto, Picker, Wolfgang, Haug, Erik, Cormio, Luigi, Nordström, Tobias, Briganti, Alberto, Boström, Peter J., Carrieri, Giuseppe, Haines, Kenneth, Gorin, Michael A., Wiklund, Peter, Menon, Mani, Tewari, Ash
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Zusammenfassung:We developed the Mount Sinai Prebiopsy Risk Calculator (MSP-RC) to assess the likelihood of any prostate cancer and clinically significant disease based on a combination of clinical and imaging characteristics. MSP-RC is applicable to all patient settings and accessible online. The European Association of Urology guidelines recommend the use of imaging, biomarkers, and risk calculators in men at risk of prostate cancer. Risk predictive calculators that combine multiparametric magnetic resonance imaging with prebiopsy variables aid as an individualized decision-making tool for patients at risk of prostate cancer, and advanced neural networking increases reliability of these tools. To develop a comprehensive risk predictive online web-based tool using magnetic resonance imaging (MRI) and clinical data, to predict the risk of any prostate cancer (PCa) and clinically significant PCa (csPCa) applicable to biopsy-naïve men, men with a prior negative biopsy, men with prior positive low-grade cancer, and men with negative MRI. Institutional review board–approved prospective data of 1902 men undergoing biopsy from October 2013 to September 2021 at Mount Sinai were collected. Univariable and multivariable analyses were used to evaluate clinical variables such as age, race, digital rectal examination, family history, prostate-specific antigen (PSA), biopsy status, Prostate Imaging Reporting and Data System score, and prostate volume, which emerged as predictors for any PCa and csPCa. Binary logistic regression was performed to study the probability. Validation was performed with advanced neural networking (ANN), multi-institutional European cohort (Prostate MRI Outcome Database [PROMOD]), and European Randomized Study of Screening for Prostate Cancer Risk Calculator (ERSPC RC) 3/4. Overall, 2363 biopsies had complete clinical information, with 57.98% any cancer and 31.40% csPCa. The prediction model was significantly associated with both any PCa and csPCa having an area under the curve (AUC) of 81.9% including clinical data. The AUC for external validation was calculated in PROMOD, ERSPC RC, and ANN for any PCa (0.82 vs 0.70 vs 0.90) and csPCa (0.82 vs 0.78 vs 0.92), respectively. This study is limited by its retrospective design and overestimation of csPCa in the PROMOD cohort. The Mount Sinai Prebiopsy Risk Calculator combines PSA, imaging and clinical data to predict the risk of any PCa and csPCa for all patient settings. With accurate validation results in a larg
ISSN:2666-1683
2666-1691
2666-1683
DOI:10.1016/j.euros.2022.04.017