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Prognosis of stage pT0 after prolonged neoadjuvant endocrine therapy of prostate cancer: a matched-pair analysis.

作者信息

Köllermann Jens, Hopfenmüller Werner, Caprano Jörg, Budde Anke, Weidenfeld Helga, Weidenfeld Michael, Helpap Burkhard

机构信息

Department of Urology, University Hospital Benjamin Franklin, Free University, Hindenburgdamm 30, 12200, Berlin, Germany.

出版信息

Eur Urol. 2004 Jan;45(1):42-5. doi: 10.1016/j.eururo.2003.06.001.

Abstract

OBJECTIVES

Stage pT0 following prolonged neoadjuvant endocrine therapy (PPNET) of prostate cancer is of great clinical interest, because this finding suggests maximum tumor damage. Therefore pT0 patients are expected to have an extremely favorable PSA progression rate. The purpose of this study was to assess whether the PSA progression rate of pT0 patients after PPNET is lower than that of non-pT0 patients after PPNET.

METHODS

174 patients with previously untreated, clinical stage cT1-3 carcinomas were submitted to PSA monitored complete androgen deprivation therapy followed by radical prostatectomy (RP). In 138 patients the RP specimens showed residual cancer, in 36 patients no residual cancer was found. Biochemical progression was defined as PSA >/=0.2ng/ml. To control for confounding prognostic factors (Gleason score, cT-stage) between both groups a matched-pair analysis for the cumulative risk of biochemical failure was performed, resulting in 30 matched pairs.

RESULTS

With a median follow-up of 37.9 and 46.0 months in the matched non-pT0 and pT0 cohort respectively, matched-pair analysis failed to demonstrate significant differences in crude PSA relapse-free survival between both groups (p=0.7758).

CONCLUSION

The results suggest that patients converted into pT0 after PPNET do not represent a subgroup with an extremely favorable prognosis. However our results have to be confirmed by the assessment of larger cohorts of pT0 patients with a longer follow-up. The presented data do not allow drawing any conclusions on the prognostic impact of PPNET in general.

摘要

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