| Literature DB >> 31350728 |
Tereza Lanitis1, Irina Proskorovsky2, Apoorva Ambavane3, Matthias Hunger4, Ying Zheng5, Murtuza Bharmal6, Hemant Phatak5.
Abstract
INTRODUCTION: Complex underlying risk functions associated with immuno-oncology treatments have led to exploration of different methods (parametric survival, spline, landmark, and cure-fraction models) to estimate long-term survival outcomes. The objective of this study was to examine differences in estimated short- and long-term survival in previously treated metastatic Merkel cell carcinoma (mMCC) patients receiving avelumab, when using alternative extrapolation approaches.Entities:
Keywords: Avelumab; Extrapolation; Immuno-oncology; Landmark analyses; Merkel cell carcinoma; Overall survival; Post-progression survival; Standard parametric analysis
Mesh:
Substances:
Year: 2019 PMID: 31350728 PMCID: PMC6822847 DOI: 10.1007/s12325-019-01034-0
Source DB: PubMed Journal: Adv Ther ISSN: 0741-238X Impact factor: 3.845
Fig. 1Projected OS using standard parametric survival analysis
Fig. 2Projected OS in patients a without response and b with response using landmark/response-based approach. c Projected OS using landmark/response-based approach
Fig. 3a Projected PFS and TTP using a spline-based model. b Projected PPS using standard parametric survival analysis. c Projected OS using the PFS + PPS approach
Projected OS rates over 10 years with avelumab
| Approaches to OS projection | Alive at different time points (%) | Average life expectancy, years | Probabilistic mean | 95% percentiles | |||
|---|---|---|---|---|---|---|---|
| 2 years | 3 years | 5 years | 10 years | ||||
| Standard parametric survival analysisa | 32% | 22% | 12% | 5% | 2.48 | 2.53 | 1.58–3.75 |
| Response-based landmarkb | 36% | 30% | 23% | 11% | 3.15 | 3.17 | 2.34–4.17 |
| Patients with response | 87% | 79% | 64% | 32% | 7.53c | 7.60 | 6.46–9.04 |
| Patients without response | 17% | 10% | 5% | 2% | 1.22c | 1.26 | 0.70–2.10 |
| PFS + PPSd | 33% | 26% | 19% | 11% | 3.54 | 3.64 | 2.43–5.16 |
OS overall survival, PFS progression-free survival, PPS post-progression survival
aExtrapolated for overall population using a log-normal distribution
bExtrapolated for responders using general population mortality and an HR of 4.5, and non-responders using a log-normal distribution
cReflects life expectancy beyond landmark point of 89 days
dTime to progression and progression free-survival extrapolated for overall population using spline-based models. Post-progression survival extrapolated using log-normal distribution
Fig. 4Projected OS using alternative approaches