Prognostic Factors for Survival in Noncastrate Metastatic Prostate Cancer: Validation of the Glass Model and Development of a Novel Simplified Prognostic Model

医学 前列腺癌 肿瘤科 前列腺 内科学 预测模型 总体生存率 癌症
作者
Gwénaëlle Gravis,Jean-Marie Boher,Karim Fizazi,Florence Joly,Franck Priou,Patricia Marino,I. Latorzeff,R. Delva,I. Krakowski,Brigitte Laguerre,Jochen Walz,Fréderic Rolland,Christine Théodore,Gaël Deplanque,Jean-­Marc Ferrero,Damien Pouessel,Loïc Mourey,Philippe Beuzeboc,Sylvie Zanetta,Muriel Habibian,Jean-François Berdah,Jérôme Dauba,Marjorie Baciuchka,Christian Platini,Claude Linassier,Jean-Luc Labourey,Jean Pascal Machiels,Claude El Kouri,Alain Ravaud,Etienne Suc,Jean‐Christophe Eymard,Ali Hasbini,Guilhem Bousquet,M. Soulié,Stéphane Oudard
出处
期刊:European Urology [Elsevier BV]
卷期号:68 (2): 196-204 被引量:105
标识
DOI:10.1016/j.eururo.2014.09.022
摘要

The Glass model developed in 2003 uses prognostic factors for noncastrate metastatic prostate cancer (NCMPC) to define subgroups with good, intermediate, and poor prognosis.To validate NCMPC risk groups in a more recently diagnosed population and to develop a more sensitive prognostic model.NCMPC patients were randomized to receive continuous androgen deprivation therapy (ADT) with or without docetaxel in the GETUG-15 phase 3 trial. Potential prognostic factors were recorded: age, performance status, Gleason score, hemoglobin (Hb), prostate-specific antigen, alkaline phosphatase (ALP), lactate dehydrogenase (LDH), metastatic localization, body mass index, and pain.These factors were used to develop a new prognostic model using a recursive partitioning method. Before analysis, the data were split into learning and validation sets. The outcome was overall survival (OS).For the 385 patients included, those with good (49%), intermediate (29%), and poor (22%) prognosis had median OS of 69.0, 46.5 and 36.6 mo (p=0.001), and 5-yr survival estimates of 60.7%, 39.4%, and 32.1%, respectively (p=0.001). The most discriminatory variables in univariate analysis were ALP, pain intensity, Hb, LDH, and bone metastases. ALP was the strongest prognostic factor in discriminating patients with good or poor prognosis. In the learning set, median OS in patients with normal and abnormal ALP was 69.1 and 33.6 mo, and 5-yr survival estimates were 62.1% and 23.2%, respectively. The hazard ratio for ALP was 3.11 and 3.13 in the learning and validation sets, respectively. The discriminatory ability of ALP (concordance [C] index 0.64, 95% confidence interval [CI] 0.58-0.71) was superior to that of the Glass risk model (C-index 0.59, 95% CI 0.52-0.66). The study limitations include the limited number of patients and low values for the C-index.A new and simple prognostic model was developed for patients with NCMPC, underlying the role of normal or abnormal ALP.We analyzed clinical and biological factors that could affect overall survival in noncastrate metastatic prostate cancer. We showed that normal or abnormal alkaline phosphatase at baseline might be useful in predicting survival.

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