A novel nomogram predicting lymph node invasion among patients with prostate cancer: The importance of extracapsular extension at multiparametric magnetic resonance imaging

•The extraprostatic extension at mpMRI is the most important predictor of LNI at final pathology.•The present risk tool considers the 5-point ECE score as recommended in 2012 by the ESUR.•Our nomogram could be more easily used in everyday clinical practice.•Our tool was developed in a large cohort o...

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Veröffentlicht in:Urologic oncology 2021-07, Vol.39 (7), p.431.e15-431.e22
Hauptverfasser: Di Trapani, E., Luzzago, S., Peveri, G., Catellani, M., Ferro, M., Cordima, G., Mistretta, F.A., Bianchi, R., Cozzi, G., Alessi, S., Matei, D.V., Bagnardi, V., Petralia, G., Musi, G., De Cobelli, O.
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Sprache:eng
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Zusammenfassung:•The extraprostatic extension at mpMRI is the most important predictor of LNI at final pathology.•The present risk tool considers the 5-point ECE score as recommended in 2012 by the ESUR.•Our nomogram could be more easily used in everyday clinical practice.•Our tool was developed in a large cohort of RARP patients, with a consistent number of events (LNI: 20.1%), which confers reliability to our model. To develop a novel risk tool that allows the prediction of lymph node invasion (LNI) among patients with prostate cancer (PCa) treated with robot-assisted radical prostatectomy (RARP) and extended pelvic lymph node dissection (ePLND). We retrospectively identified 742 patients treated with RARP + ePLND at a single center between 2012 and 2018. All patients underwent multiparametric magnetic resonance imaging (mpMRI) and were diagnosed with targeted biopsies. First, the nomogram published by Briganti et al. was validated in our cohort. Second, three novel multivariable logistic regression models predicting LNI were developed: (1) a complete model fitted with PSA, ISUP grade groups, percentage of positive cores (PCP), extracapsular extension (ECE), and Prostate Imaging Reporting and Data System (PI-RADS) score; (2) a simplified model where ECE score was not included (model 1); and (3) a simplified model where PI-RADS score was not included (model 2). The predictive accuracy of the models was assessed with the receiver operating characteristic-derived area under the curve (AUC). Calibration plots and decision curve analyses were used. Overall, 149 patients (20%) had LNI. In multivariable logistic regression models, PSA (OR: 1.03; P= 0.001), ISUP grade groups (OR: 1.33; P= 0.001), PCP (OR: 1.01; P= 0.01), and ECE score (ECE 4 vs. 3 OR: 2.99; ECE 5 vs. 3 OR: 6.97; P< 0.001) were associated with higher rates of LNI. The AUC of the Briganti et al. model was 74%. Conversely, the AUC of model 1 vs. model 2 vs. complete model was, respectively, 78% vs. 81% vs. 81%. Simplified model 1 (ECE score only) was then chosen as the best performing model. A nomogram to calculate the individual probability of LNI, based on model 1 was created. Setting our cut-off at 5% we missed only 2.6% of LNI patients. We developed a novel nomogram that combines PSA, ISUP grade groups, PCP, and mpMRI-derived ECE score to predict the probability of LNI at final pathology in RARP candidates. The application of a nomogram derived cut-off of 5% allows to avoid a consistent number of ePLND procedu
ISSN:1078-1439
1873-2496
DOI:10.1016/j.urolonc.2020.11.040