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Validation study on magnitude of tumorshrinkage as a prognostic marker
Proposal
675
Title of Proposed Research
Validation study on magnitude of tumorshrinkage as a prognostic marker
Lead Researcher
Viktor Grünwald
Affiliation
Medical School HannoverHannover, Germany
Funding Source
none
Potential Conflicts of Interest
Consultancy: GSK, Pfizer, Novartis, Astellas, Mologen, Bayer
Lectures: GSK, Pfizer, Novartis, Astellas, Bayer
Data Sharing Agreement Date
17 October 2014
Lay Summary
Since the introduction of targeted therapies for cancer treatment the role of objective response rate (ORR) has been questioned for its clinical relevance. We recently published the lack of correlation between ORR and prognosis in a retrospective series in mRCC (Busch et al. European Journal Cancer 2013; doi:10.1016/j.ejca.2013.10.017). However, tumor shrinkage of at least 10% occurring within 3 months of treatment has been associated with over all survival (OS) in another retrospective series by our group (Seidel C. et al. (2013). Br J Cancer doi:10.1038/bjc.2013.662).
In order to explore whether the extent of tumor shrinkage correlates with distinct clinical outcomes, we investigated this question in a Pfizer pooled clinical trial population of mRCC treated in 1st or 2nd line with various agents. A total of 2749 pts. have been analyzed for that purpose. Pts were characterized by maximal tumor shrinkage from baseline (-100% to <-60%, =60% to <-30%, =-30% to <0%, =0 to <+20%, =+20%). Kaplan Meier (K-M) plots have been used for OS estimates and a Cox proportional hazard analysis with 6 months landmark showed its role as an independent prognostic marker (Grünwald et al. ESMO 2013 #2702). If validated, this finding could set a benchmark for early clinical trial endpoints in mRCC.
The aim of the current study is to validate these findings by K-M plots and Cox-proportional hazard analysis (6 mo. landmark) with data from the COMPARZ trial. Furthermore, the role of tumor shrinkage at 3 months will be assessed as a putative early endpoint in clinical trials. Because the depth of remission has been shown to be a prognostic factor in our analysis, COMPARZ provides the only prospective data with head to head comparison of sunitinib and pazopanib. Despite the similar ORR for these agents, their ability to induce deep remission remains unknown.
Study Data Provided
[{ "PostingID": 4164, "Title": "NOVARTIS-VEG105192", "Description": "A Randomised, Double-blind, Placebo controlled, Multi-center Phase III Study to Evaluate the Efficacy and Safety of Pazopanib (GW786034) Compared to Placebo in Patients with Locally Advanced and/or Metastatic Renal Cell Carcinoma" }]
Statistical Analysis Plan
Statistical plan: The primary endpoint of the study will be OS, and the secondary endpoint will be PFS as defined in the studies. The primary prognostic factor of interest will be depth of remission (tumour shrinkage), defined using the sum of longest diameter (SLD) of target lesions on imaging as per the RECIST v1.0 guidelines, as per study protocols. As with the prior analysis, patients will be categorized by maximal tumor shrinkage from baseline (-100% to <-60%, =60% to <-30%, =-30% to <0%, =0 to <+20%, =+20%) and calculated as (nadir on study SLD - baseline SLD) / baseline SLD * 100%. Patients without post-baseline scans will be grouped and analyzed separately.Estimates of OS and PFS will be calculated using the Kaplan-Meier method and 95% confidence intervals (CI) reported. Log-rank and univariate Cox regression analyses will be used to investigate prognostic ability of depth of remission, and other factors, with OS or PFS. A multivariate Cox proportional hazards model will be used to evaluate the effect of depth of remission, adjusted for sex, race, treatment, and Memorial Sloan-Kettering Cancer Center (MSKCC) risk factors. An interaction term will be evaluated to determine whether any effect due to depth of remission is constant across treatments. To correct for the bias inherent in the analysis of time-to-event outcome a 6-month landmark analysis will be performed, hence, any patient who died or had disease progression prior to 6-months will be excluded from the analyses with OS and PFS outcomes respectively. All tests will be two-sided and statistical significance will be defined at the a=0.05 level.Statistical Power: Response rates, OS, and PFS are similar between the COMPARZ study, the Seidel et al study and in the Grünwald analysis (Grünwald et al. ESMO 2013 #2702). Hence, it will be assumed for statistical power calculations that the COMPARZ study will have similar results to what was observed by Grünwald et al. In the Grünwald et al study, 10%, 20%, 42%, 14%, 6% and 8% patients had tumour shrinkage in each depth of remission category, with observed hazard ratios of 0.27, 0.70, REFERENCE, 1.62, 1.92 and 4.37 in the multivariable regression model respectively. Applying these groups to the COMPARZ study, and excluding the ~200 patients who have no survival data beyond 6 months, it is expected that there will be approximately 90, 180, 378, 126, 54 and 72 patients per group. Assuming similar results as in the Grünwald study and with follow-up and accrual as described in the COMPARZ study, it is expected that there would be >96% power to detect a difference between the =60% to <-30% subgroup and the reference group (=-30% to <0%), or alternatively between the =0 to <+20% and the reference group (calculated using NCSS-PASS, v2005). Given that the multivariable Cox model will evaluate depth of remission across all subgroups simultaneously, there should be sufficient statistical power to detect differences between categories even after adjusting for the other covariates which will be included in the model.
Publication Citation
V. Grünwald, M. Dietrich, G.R. Pond. 2016 Annals of Oncology 27(suppl_6). 817P - Prognostic ability of HR-QoL parameters in metastatic renal cell carcinoma (mRCC).
DOI:10.1093/annonc/mdw373.44
M.J.Sorich, A.Rowland, G.Kichenadasse, R.J.Woodman, A.A.Mangoni. British Journal of Cancer volume 114, pages 1313-1317 (2016). Risk factors of proteinuria in renal cell carcinoma patients treated with VEGF inhibitors: a secondary analysis of pooled clinical trial data.
DOI: 10.1038/bjc.2016.147
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