Challenges in conducting fractional polynomial and standard parametric network meta-analyses of immune checkpoint inhibitors for first-line advanced renal cell carcinoma

Author:

Petersohn Svenja1ORCID,McGregor Bradley2,Klijn Sven L3,May Jessica R3,Ejzykowicz Flavia4,Kurt Murat4,Dyer Matthew3,Malcolm Bill3,Branchoux Sébastien5,Nickel Katharina6,George Saby7,Kroep Sonja1

Affiliation:

1. OPEN Health Evidence & Access, Marten Meesweg 107, 3068 AV Rotterdam, The Netherlands

2. The Lank Center for Genitourinary Oncology at Dana-Farber Cancer Institute, 450 Brookline Ave, Boston, MA 02215, USA

3. Bristol Myers Squibb, Sanderson Rd, Denham, Uxbridge UB8 1DH, UK

4. Bristol Myers Squibb, 100 Nassau Park Blvd #300, Princeton, NJ 08540, USA

5. Bristol Myers Squibb, 3 Rue Joseph Monier, 92506 Rueil-Malmaison, France

6. OPEN Health Evidence & Access, Krausenstraße 8, 10117, Berlin, Germany

7. Roswell Park Cancer Institute, 665 Elm St, Buffalo, NY 14203, USA

Abstract

Aim: Network meta-analyses (NMAs) increasingly feature time-varying hazards to account for non-proportional hazards between different drug classes. This paper outlines an algorithm for selecting clinically plausible fractional polynomial NMA models. Methods: The NMA of four immune checkpoint inhibitors (ICIs) + tyrosine kinase inhibitors (TKIs) and one TKI therapy for renal cell carcinoma (RCC) served as case study. Overall survival (OS) and progression free survival (PFS) data were reconstructed from the literature, 46 models were fitted. The algorithm entailed a-priori face validity criteria for survival and hazards, based on clinical expert input, and predictive accuracy against trial data. Selected models were compared with statistically best-fitting models. Results: Three valid PFS and two OS models were identified. All models overestimated PFS, the OS model featured crossing ICI + TKI versus TKI curves as per expert opinion. Conventionally selected models showed implausible survival. Conclusion: The selection algorithm considering face validity, predictive accuracy, and expert opinion improved the clinical plausibility of first-line RCC survival models.

Funder

Bristol-Myers Squibb

Publisher

Becaris Publishing Limited

Subject

Health Policy

Reference45 articles.

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3. FDA. FDA approves avelumab plus axitinib for renal cell carcinoma (2019). www.fda.gov/drugs/resources-information-approved-drugs/fda-approves-avelumab-plus-axitinib-renal-cell-carcinoma

4. FDA. FDA approves nivolumab plus cabozantinib for advanced renal cell carcinoma (2021). www.fda.gov/drugs/resources-information-approved-drugs/fda-approves-nivolumab-plus-cabozantinib-advanced-renal-cell-carcinoma

5. FDA. FDA approves pembrolizumab plus axitinib for advanced renal cell carcinoma (2019). www.fda.gov/drugs/drug-approvals-and-databases/fda-approves-pembrolizumab-plus-axitinib-advanced-renal-cell-carcinoma

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