Brian Claggett1, Stuart Pocock2, L J Wei3, Marc A Pfeffer1, John J V McMurray4, Scott D Solomon1. 1. Cardiovascular Division, Brigham and Women's Hospital, Boston, MA (B.C., M.A.P., S.D.S.). 2. Department of Medical Statistics, London School of Hygiene, UK (S.P.). 3. Department of Biostatistics, Harvard School of Public Health, Boston, MA (L.J.W.). 4. British Heart Foundation Cardiovascular Research Centre, University of Glasgow, UK (J.J.V.M.).
Abstract
BACKGROUND: Most phase-3 trials feature time-to-first event end points for their primary and secondary analyses. In chronic diseases, where a clinical event can occur >1 time, recurrent-event methods have been proposed to more fully capture disease burden and have been assumed to improve statistical precision and power compared with conventional time-to-first methods. METHODS: To better characterize factors that influence statistical properties of recurrent-event and time-to-first methods in the evaluation of randomized therapy, we repeatedly simulated trials with 1:1 randomization of 4000 patients to active versus control therapy, with true patient-level risk reduction of 20% (ie, relative risk=0.80). For patients who discontinued active therapy after a first event, we assumed their risk reverted subsequently to their original placebo-level risk. Through simulation, we varied the degree of between-patient heterogeneity of risk and the extent of treatment discontinuation. Findings were compared with those from actual randomized clinical trials. RESULTS: As the degree of between-patient heterogeneity of risk increased, both time-to-first and recurrent-event methods lost statistical power to detect a true risk reduction and confidence intervals widened. The recurrent-event analyses continued to estimate the true relative risk (0.80) as heterogeneity increased, whereas the Cox model produced attenuated estimates. The power of recurrent-event methods declined as the rate of study drug discontinuation postevent increased. Recurrent-event methods provided greater power than time-to-first methods in scenarios where drug discontinuation was ≤30% after a first event, lesser power with drug discontinuation rates of ≥60%, and comparable power otherwise. We confirmed in several actual trials of chronic heart failure that treatment effect estimates were attenuated when estimated via the Cox model and that increased statistical power from recurrent-event methods was most pronounced in trials with lower treatment discontinuation rates. CONCLUSIONS: We find that the statistical power of both recurrent-events and time-to-first methods are reduced by increasing heterogeneity of patient risk, a parameter not included in conventional power and sample size formulas. Data from real clinical trials are consistent with simulation studies, confirming that the greatest statistical gains from use of recurrent-events methods occur in the presence of high patient heterogeneity and low rates of study drug discontinuation.
BACKGROUND: Most phase-3 trials feature time-to-first event end points for their primary and secondary analyses. In chronic diseases, where a clinical event can occur >1 time, recurrent-event methods have been proposed to more fully capture disease burden and have been assumed to improve statistical precision and power compared with conventional time-to-first methods. METHODS: To better characterize factors that influence statistical properties of recurrent-event and time-to-first methods in the evaluation of randomized therapy, we repeatedly simulated trials with 1:1 randomization of 4000 patients to active versus control therapy, with true patient-level risk reduction of 20% (ie, relative risk=0.80). For patients who discontinued active therapy after a first event, we assumed their risk reverted subsequently to their original placebo-level risk. Through simulation, we varied the degree of between-patient heterogeneity of risk and the extent of treatment discontinuation. Findings were compared with those from actual randomized clinical trials. RESULTS: As the degree of between-patient heterogeneity of risk increased, both time-to-first and recurrent-event methods lost statistical power to detect a true risk reduction and confidence intervals widened. The recurrent-event analyses continued to estimate the true relative risk (0.80) as heterogeneity increased, whereas the Cox model produced attenuated estimates. The power of recurrent-event methods declined as the rate of study drug discontinuation postevent increased. Recurrent-event methods provided greater power than time-to-first methods in scenarios where drug discontinuation was ≤30% after a first event, lesser power with drug discontinuation rates of ≥60%, and comparable power otherwise. We confirmed in several actual trials of chronic heart failure that treatment effect estimates were attenuated when estimated via the Cox model and that increased statistical power from recurrent-event methods was most pronounced in trials with lower treatment discontinuation rates. CONCLUSIONS: We find that the statistical power of both recurrent-events and time-to-first methods are reduced by increasing heterogeneity of patient risk, a parameter not included in conventional power and sample size formulas. Data from real clinical trials are consistent with simulation studies, confirming that the greatest statistical gains from use of recurrent-events methods occur in the presence of high patient heterogeneity and low rates of study drug discontinuation.
Authors: Panagiotis Savvoulidis; James V Snider; Sahil Rawal; Alanna A Morris; Javed Butler; Vasiliki V Georgiopoulou; Andreas P Kalogeropoulos Journal: Int J Cardiol Date: 2019-11-06 Impact factor: 4.164
Authors: Pardeep S Jhund; Piotr Ponikowski; Kieran F Docherty; Samvel B Gasparyan; Michael Böhm; Chern-En Chiang; Akshay S Desai; Jonathon Howlett; Masafumi Kitakaze; Mark C Petrie; Subodh Verma; Olof Bengtsson; Anna-Maria Langkilde; Mikaela Sjöstrand; Silvio E Inzucchi; Lars Køber; Mikhail N Kosiborod; Felipe A Martinez; Marc S Sabatine; Scott D Solomon; John J V McMurray Journal: Circulation Date: 2021-04-09 Impact factor: 29.690
Authors: Ernest Spitzer; Rebecca T Hahn; Philippe Pibarot; Ton de Vries; Jeroen J Bax; Martin B Leon; Nicolas M Van Mieghem Journal: Card Fail Rev Date: 2019-05-24
Authors: Javed Butler; Muhammad Shariq Usman; Muhammad Shahzeb Khan; Stephen J Greene; Tim Friede; Muthiah Vaduganathan; Gerasimos Filippatos; Andrew J Stewart Coats; Stefan D Anker Journal: ESC Heart Fail Date: 2020-12
Authors: Alice M Jackson; Pardeep S Jhund; Inder S Anand; Hans-Dirk Düngen; Carolyn S P Lam; Marty P Lefkowitz; Gerard Linssen; Lars H Lund; Aldo P Maggioni; Marc A Pfeffer; Jean L Rouleau; Jose F K Saraiva; Michele Senni; Orly Vardeny; Magnus O Wijkman; Mehmet B Yilmaz; Yoshihiko Saito; Michael R Zile; Scott D Solomon; John J V McMurray Journal: Eur Heart J Date: 2021-09-21 Impact factor: 29.983
Authors: Yao Hao Teo; Wilson W Tam; Chieh-Yang Koo; Aye-Thandar Aung; Ching-Hui Sia; Raymond C C Wong; William Kong; Kian-Keong Poh; Theodoros Kofidis; Pipin Kojodjojo; Chi-Hang Lee Journal: J Clin Sleep Med Date: 2021-12-01 Impact factor: 4.062