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The EMPaCT Classifier: A Validated Tool to Predict Postoperative Prostate Cancer-related Death Using Competing-risk Analysis

Articolo
Data di Pubblicazione:
2017
Abstract:
Background: Accurate prediction of survival after radical prostatectomy (RP) is important for making decisions regarding multimodal therapies. There is a lack of tools to predict prostate cancer-related death (PCRD) in patients with high-risk features. Objective: To develop and validate a prognostic model that predicts PCRD combining pathologic features and using competing-risks analysis. Design, setting, and participants: This was a retrospective multi-institutional observational cohort study of 5876 patients affected by high-risk prostate cancer. Patients were treated using RP and pelvic lymph node dissection (PLND) in a multimodal setting, with median follow-up of 49 mo. Outcome measurements and statistical analysis: For PCRD prediction, a multivariate model with correction for competing risks was constructed to evaluate pathologic high-risk features (pT3b-4, Gleason score â ¥8, and pN1) as predictors of mortality. All possible associations of the predictors were combined, and then subgroups with similar risk of PCRD were collapsed to obtain a simplified model encoding subgroups with significantly differing risk. Eightfold cross-validation of the model was performed. Results and limitations: After applying exclusion criteria, 2823 subjects were identified. pT3b-4, Gleason score â ¥8, and pN1 were all independent predictors of PCRD. The simplified model included the following prognostic groups: good prognosis, pN0 with 0-1 additional predictors; intermediate prognosis, pN1 with 0-1 additional predictors; poor prognosis, any pN with two additional predictors. The cross-validation yielded excellent median model accuracy of 88%. The retrospective design and the short follow-up could limit our findings. Conclusions: We developed and validated a novel and easy-to-use prognostic instrument to predict PCRD after RP + PLND. This model may allow clinicians to correctly counsel patients regarding the intensity of follow-up and to tailor adjuvant treatments. Patient summary: Prediction of mortality after primary surgery for prostate cancer is important for subsequent treatment plans. We present an accurate postoperative model to predict cancer mortality after radical prostatectomy for high-risk prostate cancer. The EMPaCT classifier can accurately predict the survival of patients with high-risk prostate cancer. The EMPaCT classifier can become a novel standard to support decision-making in the multimodal setting.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
High-risk disease; Prognosis; Prostate cancer; Surgery; Urology
Elenco autori:
Tosco, Lorenzo; Laenen, Annouschka; Briganti, Alberto; Gontero, Paolo; Karnes, R. Jeffrey; Bastian, Patrick J.; Chlosta, Piotr; Claessens, Frank; Chun, Felix K.; Everaerts, Wouter; Gratzke, Christian; Albersen, Maarten; Graefen, Markus; Kneitz, Burkhard; Marchioro, Giansilvio; Salas, Rafael Sanchez; Tombal, Bertrand; Van den Broeck, Thomas; Van Der Poel, Henk; Walz, Jochen; De Meerleer, Gert; Bossi, Alberto; Haustermans, Karin; Van Poppel, Hendrik; Spahn, Martin; Joniau, Steven
Autori di Ateneo:
BRIGANTI ALBERTO
Link alla scheda completa:
https://iris.unisr.it/handle/20.500.11768/76016
Pubblicato in:
EUROPEAN UROLOGY FOCUS
Journal
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URL

http://www.journals.elsevier.com/european-urology-focus
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