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1 Mechanisms underlying increased mortality risk in patients with heart failure with reduced ejection fraction randomized to adaptive servo-ventilation in the SERVE-HF study: results of multistate modelling Christine Eulenburg, Karl Wegscheider, Holger Woehrle, Christiane Angermann, Marie-Pia d’Ortho, Erland Erdmann, Patrick Levy, Anita K. Simonds, Virend K. Somers, Faiez Zannad, Helmut Teschler, Martin R Cowie Department of Medical Biometry and Epidemiology, University Medical Center Eppendorf, Hamburg, Germany (Dr C Eulenburg, Prof. K Wegscheider); Department for Epidemiology, University Medical Center Groningen, Groningen, The Netherlands (Dr C Eulenburg); ResMed Science Center, ResMed Germany Inc., Martinsried, Germany (H Woehrle); Sleep and Ventilation Center Blaubeuren, Respiratory Center Ulm, Ulm, Germany (H Woehrle); Department of Medicine I and Comprehensive Heart Failure Center, University Hospital and University of Würzburg, Würzburg, Germany (Prof. C Angermann); University Paris Diderot, Sorbonne Paris Cité, Hôpital Bichat, Explorations Fonctionnelles, DHU FIRE, AP-HP, Paris, France (Prof. M-P d’Ortho); Heart Center, University of Cologne, Cologne, Germany (Dr E Erdmann); CHU de Grenoble, Grenoble, France (Prof. P Levy); Royal Brompton Hospital, London, United Kingdom (Prof. A Simonds); Mayo Clinic and Mayo Foundation, Rochester, Minnesota, USA (Prof. V K Somers); Inserm, Université de Lorraine, CHU Nancy, France (Prof. F Zannad); Department of Pneumology, Ruhrlandklinik, West German Lung Center, University Hospital Essen, University Duisburg-Essen, Essen, Germany (Prof. H Teschler); Imperial College London, London, United Kingdom (Prof. M Cowie) Correspondence to: 1 2 Dr Christine Eulenburg, Department for Epidemiology, University Medical Center Groningen, Groningen, The Netherlands; Tel: +31 50 361 0937; Fax: +31 50 361 4493; Email: [email protected] 2 3 ABSTRACT Background A large randomized treatment trial (SERVE-HF) showed that treatment of central sleep apnoea (CSA) with adaptive servo-ventilation (ASV) in patients with heart failure (HF) and reduced ejection fraction (HFrEF) increases mortality, although the analysis of the primary endpoint, which was the time to first event of death from any cause, lifesaving cardiovascular intervention, or unplanned hospitalisation for worsening HF, was neutral. This multistate model analysis of SERVE-HF investigated associations between ASV and individual study primary endpoint components to try to better understand mechanisms underlying the increased mortality. Methods Individual components of the primary SERVE-HF endpoint were analysed separately in a multistate model investigating individual endpoints separately, before and after adjustment for potential confounding factors (ICD at baseline, LVEF, proportion of CheyneStokes’ Respiration (CSR)). Findings Univariate analysis showed an increased risk of both cardiovascular death without prior hospitalisation (hazard ratio [HR] 2·59, 95% confidence interval [CI] 1·54–4·37; p<0·001) and cardiovascular death after a life-saving event (HR 1·57, 95% CI 1·01–2·44; p=0·045) in the ASV versus control group. On adjusted analysis, there was a significant interaction between ASV treatment and LVEF for cardiovascular death without prior hospitalisation and hospitalisation for worsening HF, and between the CSR pattern and hospitalisation for worsening HF. When LVEF was ≤30%, ASV markedly increased the risk of cardiovascular death without prior hospitalisation (HR 5·21, 95% CI 2·11–12·89). Interpretation ASV has been shown to be associated with an increased risk of cardiovascular death. This multistate model analysis shows that this risk is elevated for cardiovascular death without prior hospitalisation, presumably sudden death. This risk is higher in patients with poorer left ventricular function. 3 4 Funding ResMed. Keywords: heart failure; sleep-disordered breathing; central sleep apnea; Cheyne-Stokes’ respiration; adaptive servo-ventilation; cardiovascular death Research in context Evidence before this study The primary intention-to-treat analysis of the Treatment of Sleep-Disordered Breathing With Predominant Central Sleep Apnea by Adaptive Servo-Ventilation in Patients With Heart Failure (SERVE-HF) was neutral for the primary endpoint (time to first event of death from any cause, lifesaving cardiovascular intervention [cardiac transplantation, implantation of a ventricular assist device, resuscitation after sudden cardiac arrest, or appropriate lifesaving shock], or unplanned hospitalisation for worsening heart failure) but showed a significant increase in all-cause, and cardiovascular, mortality in the adaptive servo ventilation (ASV) versus control group. However, mechanisms underlying this increase in mortality risk and outcomes in specific patient subgroups remain unclear. Added value of this study This multistate model analysis of SERVE-HF data allows the effects of ASV therapy on different elements of the study’s composite endpoint to be determined, providing insight into potential mechanisms underlying the increased risk of cardiovascular death in the ASV group, and defining a subgroup of heart failure patients with more severely reduced ejection fraction with predominant central sleep apnoea (CSA) who do particularly badly when ASV is added to optimal medial therapy. Implications of all the available evidence ASV therapy should not be used in systolic heart failure patients with predominant CSA due to the increased mortality risk. This risk is due to sudden death, presumably due to 4 5 arrhythmia, and is particularly marked in those with the lowest ejection fraction. The pathophysiological mechanism of this effect remains to be elucidated. 5 6 Introduction The Treatment of Sleep-Disordered Breathing With Predominant Central Sleep Apnea by Adaptive Servo Ventilation in Patients With Heart Failure (SERVE-HF) study investigated the effect of adaptive servo ventilation (ASV) added to optimal medical therapy on outcomes in patients with heart failure and reduced ejection fraction (HFrEF) and predominant central sleep apnoea (CSA).1 The main study findings were neutral with respect to the primary endpoint, which was the time to first event of death from any cause, lifesaving cardiovascular intervention (cardiac transplantation, implantation of a ventricular assist device, resuscitation after sudden cardiac arrest, or appropriate lifesaving shock), or unplanned hospitalisation for worsening heart failure. However, all-cause mortality (and in particular cardiovascular mortality) was significantly increased in the ASV compared with control group.1 Previous studies, although small and often uncontrolled, had suggested that ASV should have beneficial effects on the individual components of the SERVE-HF primary endpoint.2-6 The unexpected finding of increased mortality risk in the ASV group in SERVE-HF could bring into question the appropriateness of the composite primary endpoint used in this study. Also, associations between ASV and the individual components of the composite endpoint may reveal important information about potential mechanisms for the excess mortality seen in the ASV group. Multistate modelling is a methodological approach for the statistical analysis of multiple endpoints and their relationships.7, 8 Multistate models can provide examples of disease progression that include multiple potential endpoints, each of which may affect the occurrence probability of another endpoint. Such multistate analyses can accurately describe the transitions between disease states (defined by the potential endpoints), and the associations with potential risk factors. This analysis of SERVE-HF used multistate modelling to investigate associations between the randomised allocation to ASV and the individual components of the study’s endpoints in 6 7 order to better understand the mechanisms underlying the increased mortality observed with ASV therapy in this population. Methods Study design and participants SERVE-HF was a multinational, multicentre, randomised, parallel-group, event-driven study. Full details of the study design have been reported previously.1, 9 The SERVE-HF study protocol was approved by the ethics committee at each participating centre. The trial was conducted according to Good Clinical Practice and the Principles of the Declaration of Helsinki. All participants gave written informed consent. Randomisation and masking In the SERVE-HF study, patients were randomized in a 1:1 ratio to the ASV or control group. Randomization was performed using codes generated by a central computer. The study had an open-label design because of the practical, scientific and ethical issues, and problems with investigator blinding associated with delivery of sham positive airway pressure therapy.10 Procedures SERVE-HF participants were randomised to receive optimal medical therapy for heart failure alone, or in combination with ASV (Auto Set CS, ResMed). For full details of ASV titration and settings, please see the primary publication.1 Outcomes In this multistate analysis, individual components of the primary endpoint of the SERVE-HF study (the first event of death from any cause, lifesaving cardiovascular intervention [cardiac 7 8 transplantation, implantation of a ventricular assist device, resuscitation after sudden cardiac arrest, or appropriate lifesaving shock], or unplanned hospitalisation for worsening HF) were investigated separately as competing events. Thus, outcomes analysed were hospitalisation for worsening heart failure as a first event, one of the life-saving events as a first event (cardiac transplantation, implantation of a ventricular assist device, resuscitation after sudden cardiac arrest, or appropriate lifesaving shock), cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event, non-sudden cardiovascular death, sudden noncardiovascular death and non-sudden non-cardiovascular death, see Figure 1. Death was classified as cardiovascular unless an unequivocal non-cardiovascular cause of death was confirmed by the central adjudication committee. Cardiovascular death included sudden death; death due to myocardial infarction, heart failure, or stroke; procedure-related death (death during a cardiovascular investigation/procedure/operation); death due to other specified cardiovascular causes; and presumed cardiovascular deaths (e.g. those for whom a noncardiovascular cause could not be clearly established). Statistical analysis For investigating the effects of therapy on the individual disease course, a multistate model considering the outcomes described above was developed. Multistate models are useful to analyse multiple endpoints and their relations simultaneously and also to consider covariables. 7, 8 The analysed endpoints and sub-processes are referred to as ‘states’ and ‘transitions’. All patients were defined as starting the study in a healthy state. State structure and transitions analysed in the current analysis are shown in Figure 1. To account for the competing-ness of distinct transitions (i.e. different components of the composite endpoint, and different causes of death), Cox proportional cause-specific hazards models were applied, in other words a Cox’s proportional hazards model was used to model the hazard for each type of event treating the other events as being censored. In the primary analysis, therapy effects were 8 9 estimated without further adjustments. In the next step, analyses were adjusted for the presence of an implantable cardioverter defibrillator (ICD) at baseline because the occurrence of an ICD shock as a life-saving event is dependent on this factor. Interactions between ICD at baseline and allocation to ASV therapy were considered where they were statistically significant. Thirdly, interactions between the randomised study intervention and baseline measures of LVEF (≤30%, 31-36%, and >36%) and CSR (<20%, 20-50% or >50%) were tested because of the potential influence of these factors on the different study outcomes, as indicated in a univariate subgroup analyses of the main SERVE-HF results.1 The division of CSR into three categories was introduced prospectively since it was speculated that outcomes might be different in different subgroups. LVEF was split according to tertiles. Two-sided tests were performed keeping a significance level of 5%. Results were visualized with cumulative incidence curves.8 Trial registration: ClinicalTrials.gov, NCT00733343 Role of the funding source The SERVE-HF study was supported by ResMed Ltd. The steering committee oversaw the conduct of the trial and data analysis in collaboration with the sponsor according to a predefined statistical analysis plan. The trial was reviewed by an independent data and safety monitoring committee. The first draft of the manuscript was prepared by the first three authors and the final two authors, who had unrestricted access to the data, with the assistance of an independent medical writer funded by ResMed. The manuscript was reviewed and edited by all the authors. All authors made the decision to submit the manuscript for publication and assume responsibility for the accuracy and completeness of the analyses and for the fidelity of this report to the trial protocol. 9 10 Results All 1325 patients enrolled in the SERVE-HF study (between February 2008 and May 2013) were included in this analysis. A total of 666 (50·3%) patients were randomized to the ASV treatment group and 659 (49·7%) to the control group. Follow-up was 0–80 (median 31) months. The number of patients who had an ICD at baseline was 316 (47·5%) in the ASV group and 314 (47·7%) in the control group. Patient characteristics are summarized in Table 1 and have been described in detail previously.1 A schematic representation of the different health states and possible transitions, including the number of patients with each type of event, is shown in Figure 1. Hospitalisation for worsening heart failure was the first primary endpoint event in 428/1325 patients (32·3%), while 166/1325 patients (12·5%) had a ‘life-saving event’ as their first primary endpoint event. Overall, 357 cardiovascular deaths were documented, of which 68 (19·0%) were classified as cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event, and there were 68 deaths from other causes. The frequency of observed transitions is outlined in Table 2. Univariate comparisons showed an increased risk of cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event in patients allocated to the ASV group compared with control (hazard ratio [HR] 2·59, 95% confidence interval [CI] 1·54, 4·37; p<0·001) (Table 3). In addition, the frequency of cardiovascular death after a life-saving event was higher in the ASV group than in the control group (HR 1·57, 95% CI 1·01, 2·44; p=0·045) (Table 3). No significant associations were identified for any of the other transitions tested (Table 3). Both of the significant associations persisted after adjustment for the presence of an ICD at baseline (HR 2·59, 95% CI 1·53, 4·36; p<0.001 with no ICD at baseline and HR 1·57, 95% CI 1·01, 2·44; p=0·044 with an ICD at baseline). There was a significant interaction between the presence of an ICD at baseline and non-cardiovascular death after hospitalisation for worsening heart failure (p=0·033); hazard ratios for this 10 11 endpoint in patients with versus without an ICD were 3·03 (95% CI 0·85, 10·75; p=0·086) and 0·41 (0·11, 1·56; p=0·192), respectively. A further significant interaction was found for both CSR proportion at baseline (<20%, 2050% or >50%, as classified by the recruiting centres) and LVEF (≤30%, 31-36% or >36% on baseline echocardiography). With respect to both hospitalisation for worsening heart failure and cardiovascular death without prior hospitalisation for worsening heart failure or lifesaving event, there was a significant interaction between allocation to ASV and LVEF (interaction p-values: 0·039 for hospitalisation for worsening heart failure [Table 4] and 0·026 for cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event [Table 5]). For both of these endpoints, the association between allocation to ASV and outcome was strongest in patients with LVEF ≤30% compared to those with LVEF 31%-36% or >36% (Table 4 and 5). Analyses stratified by the presence of an ICD failed to show statistical significance. However, in the subgroup without an ICD at baseline and LVEF ≤30%, the HR was estimated as 24·08 (95% CI 3·14, 184·46; p=0·003). In patients with an ICD at baseline, the HR for the same effect was estimated to be 1·89 (95% CI 0·63, 5·68; p=0·259). There was also a significant interaction between ASV allocation and CSR proportion at baseline with respect to hospitalisation for worsening heart failure. This event was somewhat less likely in those with CSR <20% and significantly more likely in those with CSR >50% (interaction p-value=0·021) (Table 4). Discussion The SERVE-HF primary intention-to-treat analysis1 formed the basis of the current multistate model analysis. It showed a neutral result with respect to the primary composite endpoint and identified significantly increased all-cause and cardiovascular mortality in the ASV versus control group.1 The current multistate model analysis provided additional differentiation of these results by investigating individual components of the composite endpoint. 11 12 Each component was analysed separately and the disease course after the first event was studied. The multistate analysis showed that the randomised allocation to ASV significantly increased the risk of cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event. This suggests sudden death as the key detrimental mechanism. In addition, there was a trend to increased cardiovascular mortality after a life-saving intervention, which is also likely to be due to sudden death. Interactions were detected between ASV therapy and LVEF with respect to cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event (and hospitalisation for worsening heart failure), and between ASV therapy and CSR proportion in terms of hospitalisation for worsening heart failure. There were no associations between randomised allocation to ASV and hospitalisation for worsening heart failure, or life-saving cardiovascular intervention or non-cardiovascular mortality. The multistate model findings of an interaction between baseline LVEF and worse outcomes in patients allocated to ASV confirms the results of our previously published subgroup analysis of the intention-to-treat population showing that LVEF significantly modified the effects of ASV on the primary study endpoint.1 In addition, the interaction between CSR proportion at baseline and hospitalisation for worsening heart failure in this multistate analysis provides further insight into the primary ITT results of SERVE-HF, and suggests that there is heterogeneity within the CSA patient population depending on the proportion of CSR. The ITT subgroup analysis indicated that HFrEF patients with CSA but a low proportion of CSR at baseline (<20%) may have better outcomes when allocated to ASV compared with control.1 This suggests that if CSR is indeed a compensatory mechanism in severe HF,11 then alleviating this adaptive breathing pattern would be most detrimental in the sickest HF patients (i.e. those with the lowest left ventricular ejection fraction). While the precise mechanism by which alleviation of CSR could increase the risk of presumed sudden death cannot be determined from our data, it is likely that a change in 12 13 autonomic balance plays a role. It has previously been shown that resolution of CSR during treatment with nocturnal oxygen or carbon dioxide was associated with significant increases in plasma noradrenaline levels, indicative of increased sympathetic activation.12 Autonomic dysfunction is an important marker of adverse outcome in coronary heart disease and chronic heart failure patients,13, 14 and the potential risks associated with therapies that have sympathomimetic effects in patients with cardiovascular disease has been recognized.13 In addition, the current findings do not support a contribution of ASV pressures to the increased cardiovascular mortality observed in the ITT analysis: if excessive pressure played a key role in the outcomes observed then we would expect to also see more hospitalisations for worsening HF, but this was not the case. Furthermore one would also expect to see a worsening in the overall heart failure syndrome (i.e. cardiac structure and function, and cardiac and renal biomarkers), something that was not detected in the SERVE-HF major echocardiographic substudy (data not shown). Composite endpoints are often used in clinical trials, especially in cardiology, as has been summarised previously.16 Advantages include decreased sample size requirements and the assessment of treatment effects in the presence of competing risks.17, 18 It has been suggested that composite endpoints should be used with caution in heart failure trials, 18, 19 and our findings in this multistate analysis of SERVE-HF also raise questions as to whether use of a composite endpoint is meaningful or whether individual components should be investigated (and monitored by a data safety committee) separately. In SERVE-HF, components of the composite endpoint have different levels of importance and occur at different frequencies. Associations between ASV treatment and individual components differ. By combining these individual outcomes into a composite endpoint, effects are averaged, and more frequent events are automatically given more weight in the analysis. In addition, composite outcomes usually only focus on the first event to occur (e.g. hospitalisation), and subsequent effects (e.g. death) may not be included in the analysis. 18 As a result, the strong association between 13 14 ASV and cardiovascular death without prior hospitalisation for worsening heart failure or lifesaving event shown in this multistate analysis was diluted in the analysis of the primary composite endpoint and also in the analysis of cardiovascular mortality.1 In general, theuse of a composite endpoint diminishes the possibility of detecting an important treatment effect on individual components of that endpoint. The results become more challenging to interpret,20 and the applicability of study results to clinical practice and individual patients becomes less certain. Although our multistate analysis of SERVE-HF data provides useful insights into the effects of the randomised allocation to ASV on individual components of the primary composite endpoint, the results need to be interpreted with caution because this is a post-hoc analysis. In addition, hypotheses on interactions between allocation to ASV and an ICD, CSR proportion and LVEF were proposed post-hoc, and the number of events available for analysis decreased for each subsequent transition of the multistate model. Further, the analyses presented here are on an ITT basis and did not consider crossovers, meaning the change of allocated treatment of individual patients. Since there is no sham ASV device, patients and physicians were unblinded in this trial, which again increased the number of crossovers. On-treatment analyses on the other hand are not protected against bias by randomisation. In conclusion, this multistate model analysis of the SERVE-HF data identified that the increased risk of cardiovascular death is mainly seen when death occurs without a preceding hospitalisation, pointing towards sudden death as the mechanism of harm. A significant interaction between allocation to ASV and LVEF with respect to cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event was found. There was also a significant interaction between both LVEF and CSR proportion at baseline for hospitalisation for worsening heart failure. 14 15 Author contributions The SERVE-HF study protocol was designed by the steering committee with the support of the scientific advisory board. The steering committee oversaw the conduct of the trial and data analysis in collaboration with the sponsor according to a predefined statistical analysis plan. The trial was reviewed by an independent data and safety monitoring committee. For this multistate model, statistical analysis was performed by CE and KW. The first draft of the manuscript was prepared by CE, KW, HW and MRC, who had unrestricted access to the data, with the assistance of an independent medical writer funded by ResMed. The manuscript was reviewed and edited by all the authors. All authors made the decision to submit the manuscript for publication and assume responsibility for the accuracy and completeness of the analyses and for the fidelity of this report to the trial protocol. Conflict of interest Prof. Cowie’s and Prof. Simond’s salaries are supported by the National Institute for Health Research Cardiovascular and Respiratory Biomedical Research Units, respectively, at the Royal Brompton Hospital, London, UK. VKS was supported by NIH R01HL065176. The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health. Dr Eulenburg and Prof. Wegscheider, receiving grant support from ResMed; Dr. Woehrle, being an employee of ResMed; Prof. Angermann, receiving fees for serving on advisory boards from ResMed, Servier, Boehringer Ingelheim, and Vifor Pharma, fees for serving on a steering committee from ResMed, lecture fees from Servier and Vifor Pharma, grant support from ResMed, Thermo Fisher Scientific, Boehringer Ingelheim, Lundbeck, and Vifor Pharma, financial support for statistical analyses from Thermo Fisher Scientific, and study medication 15 16 from Lundbeck; Prof. d’Ortho, receiving fees for serving on advisory boards from ResMed and IP Santé, lecture fees from ResMed, Philips, IP Santé, and VitalAire, grant support from Fisher and Paykel Healthcare, ResMed, Philips, ADEP Assistance, and IP Santé, and small material donations from VitalAire; Prof. Erdmann, receiving fees for serving on advisory boards and honoraria for lecturing from ResMed; Prof. Levy and Prof. Simonds, no potential conflicts of interest outside the submitted work; Prof. Somers, receiving consulting fees from PricewaterhouseCoopers, Sorin, GlaxoSmithKline, Respicardia, uHealth, Ronda Grey, Philips Respironics and ResMed, working with Mayo Medical Ventures on intellectual property related to sleep and cardiovascular disease, and having a pending patent (12/680073) related to biomarkers of sleep apnoea; Prof. Zannad, receiving fees for serving on steering committees from Janssen Pharmaceutica, Bayer, Pfizer, Novartis, Boston Scientific, ResMed, and Takeda Pharmaceutical, receiving consulting fees from Servier, Stealth Peptides, Amgen, and CVRx, and receiving lecture fees from Mitsubishi; Prof. Teschler, receiving consulting fees, grant support, and hardware and software for the development of devices from ResMed; and Prof. Cowie reports receiving consulting fees from Servier, Novartis, Pfizer, St. Jude Medical, Boston Scientific, Respicardia, and Medtronic and grant support through his institution from Bayer. No other potential conflict of interest relevant to this article was reported. Acknowledgements This work was supported by ResMed Ltd. The authors would like to thank the team from CRI (the Clinical Research Institute, Munich, Germany) for their expertise in overseeing the SERVE-HF trial. Medical writing support was provided by Nicola Ryan, independent medical writer, funded by ResMed. 16 17 References 1. Cowie MR, Woehrle H, Wegscheider K, Angermann C, d'Ortho MP, Erdmann E, Levy P, Simonds AK, Somers VK, Zannad F, Teschler H. Adaptive Servo-Ventilation for Central Sleep Apnea in Systolic Heart Failure. N Engl J Med 2015;373(12):1095-105. 2. D'Elia E, Vanoli E, La Rovere MT, Fanfulla F, Maggioni A, Casali V, Damiano S, Specchia G, Mortara A. Adaptive servo ventilation reduces central sleep apnea in chronic heart failure patients: beneficial effects on autonomic modulation of heart rate. J Cardiovasc Med (Hagerstown) 2013;14(4):296-300. 3. Hastings PC, Vazir A, Meadows GE, Dayer M, Poole-Wilson PA, McIntyre HF, Morrell MJ, Cowie MR, Simonds AK. Adaptive servo-ventilation in heart failure patients with sleep apnea: a real world study. Int J Cardiol 2010;139(1):17-24. 4. Kourouklis SP, Vagiakis E, Paraskevaidis IA, Farmakis D, Kostikas K, Parissis JT, Katsivas A, Kremastinos DT, Anastasiou-Nana M, Filippatos G. Effective sleep apnoea treatment improves cardiac function in patients with chronic heart failure. Int J Cardiol 2013;168(1):157-62. 5. Oldenburg O, Schmidt A, Lamp B, Bitter T, Muntean BG, Langer C, Horstkotte D. Adaptive servoventilation improves cardiac function in patients with chronic heart failure and Cheyne-Stokes respiration. Eur J Heart Fail 2008;10(6):581-6. 6. Takama N, Kurabayashi M. Effect of adaptive servo-ventilation on 1-year prognosis in heart failure patients. Circ J 2012;76(3):661-7. 7. Andersen PK, Keiding N. Multi-state models for event history analysis. Stat Methods Med Res 2002;11(2):91-115. 8. Putter H, Fiocco M, Geskus RB. Tutorial in biostatistics: competing risks and multistate models. Stat Med 2007;26(11):2389-430. 17 18 9. Cowie MR, Woehrle H, Wegscheider K, Angermann C, d'Ortho MP, Erdmann E, Levy P, Simonds A, Somers VK, Zannad F, Teschler H. Rationale and design of the SERVEHF study: treatment of sleep-disordered breathing with predominant central sleep apnoea with adaptive servo-ventilation in patients with chronic heart failure. Eur J Heart Fail 2013;15(8):937-43. 10. Djavadkhani Y, Marshall NS, D'Rozario AL, Crawford MR, Yee BJ, Grunstein RR, Phillips CL. Ethics, consent and blinding: lessons from a placebo/sham controlled CPAP crossover trial. Thorax 2015;70(3):265-9. 11. Naughton MT. Cheyne-Stokes respiration: friend or foe? Thorax 2012;67(4):357-60. 12. Andreas S, Weidel K, Hagenah G, Heindl S. Treatment of Cheyne-Stokes respiration with nasal oxygen and carbon dioxide. Eur Respir J 1998;12(2):414-9. 13. Curtis BM, O'Keefe JH, Jr. Autonomic tone as a cardiovascular risk factor: the dangers of chronic fight or flight. Mayo Clin Proc 2002;77(1):45-54. 14. Nolan J, Batin PD, Andrews R, Lindsay SJ, Brooksby P, Mullen M, Baig W, Flapan AD, Cowley A, Prescott RJ, Neilson JM, Fox KA. Prospective study of heart rate variability and mortality in chronic heart failure: results of the United Kingdom heart failure evaluation and assessment of risk trial (UK-heart). Circulation 1998;98(15):1510-6. 15. Bitter T, Fox H, Dimitriadis Z, Niedermeyer J, Prib N, Prinz C, Horstkotte D, Oldenburg O. Circadian variation of defibrillator shocks in patients with chronic heart failure: the impact of Cheyne-Stokes respiration and obstructive sleep apnea. Int J Cardiol 2014;176(3):1033-5. 16. Gomez G, Gomez-Mateu M, Dafni U. Informed choice of composite end points in cardiovascular trials. Circ Cardiovasc Qual Outcomes 2014;7(1):170-8. 18 19 17. Ferreira-Gonzalez I, Alonso-Coello P, Sola I, Pacheco-Huergo V, Domingo-Salvany A, Alonso J, Montori V, Permanyer-Miralda G. [Composite endpoints in clinical trials]. Rev Esp Cardiol 2008;61(3):283-90. 18. Neaton JD, Gray G, Zuckerman BD, Konstam MA. Key issues in end point selection for heart failure trials: composite end points. J Card Fail 2005;11(8):567-75. 19. Kip KE, Hollabaugh K, Marroquin OC, Williams DO. The problem with composite end points in cardiovascular studies: the story of major adverse cardiac events and percutaneous coronary intervention. J Am Coll Cardiol 2008;51(7):701-7. 20. Freemantle N, Calvert M, Wood J, Eastaugh J, Griffin C. Composite outcomes in randomized trials: greater precision but with greater uncertainty? JAMA 2003;289(19):2554-9. 21. Ferreira-Gonzalez I, Busse JW, Heels-Ansdell D, Montori VM, Akl EA, Bryant DM, Alonso-Coello P, Alonso J, Worster A, Upadhye S, Jaeschke R, Schunemann HJ, Permanyer-Miralda G, Pacheco-Huergo V, Domingo-Salvany A, Wu P, Mills EJ, Guyatt GH. Problems with use of composite end points in cardiovascular trials: systematic review of randomised controlled trials. BMJ 2007;334(7597):786. 19 20 Figure Legends Figure 1. Multistate model, where boxes represent the different possible health states and arrows show transitions between states (CV, cardiovascular; HF, heart failure) Figure 2. Cumulative incidence curves comparing incidences of hospitalisation for worsening heart failure (A), cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event (B), and cardiovascular mortality after life-saving intervention (C) between the randomised arms. HR, hazard ratio. Figure 3. Cumulative incidence curves for different endpoints, stratified by randomization group and significant interaction variables: (A) cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event by baseline LVEF; (B) hospitalisation for worsening heart failure by baseline left ventricular ejection fraction (LVEF); (B) hospitalisation for worsening heart failure by Cheyne-Stokes respiration (CSR) proportion at baseline; 20 21 Text Tables Table 1: Baseline patient demographic data and clinical characteristics1 Characteristic Control ASV Total 69·3±10·4 69·6±9·5 69·4±10·0 599/659 (90·0) 599/666 (89·9) 28·6±5·1 28·4±4·7 28·5±4·9 II 194/654 (29·7) 195/662 (29·5) 389/1316 (29·6) III or IV 460/654 (69·4) 467/662 (70·5) 927/1316 (70·4) ≤30 237/533 (44·5) 249/536 (46·5) 486/1069 (45·5) 31 – 36 126/533 (23.6) 117/536 (21.8) 243/1069 (22.7) >36 170/533 (31·9) 170/536 (31·7) 340/1069 (31·8) 252/653 (38·6) 254/660 (38·5) 506/1313 (38·5) Ischaemic 366/641 (57·1) 390/651 (59·9) 756/1292 (58·5) Non-ischaemic 275/641 (42·9) 261/651 (40·1) 536/1292 (41·5) SBP (mmHg) 122·1±19·6 122·3±19·0 122·2±19·3 DBP (mmHg) 73·3±11·5 73·7±11·3 73·5±11·4 cAHI/AHI 81·8±15·7 80·8±15·5 81·3±15·6 Left-bundle branch block¶ 135/456 (29·6) 166/467 (35·5) 301/923 (32·6) Sinus rhythm 395/646 (61·1) 372/650 (57·2) 767/1296 (59·2) Atrial fibrillation 147/646 (22·8) 178/650 (27·4) 325/1296 (25·1) CSR <20% 116/585 (19·8) 121/581 (20·8) 237/1166 (20·3) CSR 20-50% 218/585 (37·3) 221/581 (38.0) 439/1166 (37.7) CSR >50% 251/585 (42·9) 239/581 (41·1) 490/1166 (42·0) Age (years) Male sex – no. (%) BMI (kg/m2)‡ 1198/1325 (90·4) NYHA class – no. (%) LVEF Diabetes mellitus – no. (%) Heart failure aetiology – no. (%) ECG findings – no. (%) 21 22 Implanted device – no. (%) Non-CRT pacemaker 29/364 (8·0) 32/362 (8·8) 61/726 (8·4) 161/364 (44·2) 163/362 (45·0) 324/726 (44·6) CRT-P 21/364 (5·8) 14/362 (3·9) 35/726 (4·8) CRT-D 153/364 (42·0) 153/362 (42·3) 306/726 (42·1) Hemoglobin (g/dL)‡ 13·9±1·5 13·9±1·6 13·9±1·5 Creatinine (mg/dL)‡ 1·4±0·6 1·4±0.6 1·4±0·6 Males (n=1148) 59·3 ±20·8 58·2±21·1 58·8±21·0 Females (n=121) 59·5±20·9 54·4±20·5 56·8±20·8 340·0±125·0 336·6±123·4 338·3±124·1 ACEI/ARB 603/659 (91·5) 612/666 (91·9) 1215/1325 (91·7) ß-blockers 611/659 (92·7) 611/666 (91·7) 1222/1325 (92·2) Aldosterone antagonists 325/659 (49·3) 315/666 (47·3) 640/1325 (48·3) Diuretics 561/659 (85·1) 560/666 (84·1) 1121/1325 (84·6) Cardiac glycosides 124/659 (18·8) 148/666 (22·2) 272/1325 (20·5) Antiarrhythmics 89/659 (13·5) 128/666 (19·2)† 217/1325 (16·4) ICD eGFR (mL/min/1.73m2) 6MWD (m)‡§ Concomitant cardiac medication – no. (%) Data are mean (standard deviation) or number of patients (%), unless otherwise stated. There were no significant differences between the control and ASV groups, apart from the rate of antiarrhythmic use, which was higher in the ASV group († p=0·005). ‡ Data available in a subset of patients: BMI (n=1308); LVEF (n=1067; measurement of LVEF was added to the study protocol 32 months after the first patient was randomized); BNP (n=544); diabetes (n=1313); SBP (n=1299); DBP (n=1298); haemoglobin (n=1276); creatinine (n=1269); 6MWD (n=1240); ESS (n=1303); cAI (n=1324); cAHI (n=1324); central apnoea proportion (n=1324); desaturation index (n=1315); SaO2 (n=1322); minimum SaO2 (n=1321); time with SaO2 <90% (n=1311). ¶ In patients without a pacemaker; p=0·054 for difference between groups. § 6MWD is reported for patients who walked >0 metres. 6MWD, 6-minute walk distance; ACEI, angiotensin converting enzyme inhibitor; AHI, apneahypopnea index; ARB, angiotensin receptor blocker; ASV, adaptive servo-ventilation; BMI, body mass index; cAHI, central apnea-hypopnea index; cAI, central apnea index; CSR, Cheyne-Stokes respiration; DBP, diastolic BP; ECG, electrocardiogram; eGFR, estimated glomerular filtration rate; ESS, Epworth Sleepiness Scale; ICD, implantable cardioverter defibrillator; CRT-D, cardiac 22 23 resynchronization device with defibrillator function; CRT-P, cardiac resynchronization device with pacemaker function; LVEF; left ventricular ejection fraction; NYHA, New York Heart Association; SaO2, oxygen saturation; SBP, systolic blood pressure. 23 24 Table 2: Frequency of observed transitions Number of events Transition Overall Control group ASV group Life-saving event 166 86 80 Hospitalisation for worsening HF 428 211 217 Direct CV death 68 20 48 Direct non-CV death 33 18 15 CV death after lifesaving intervention 81 35 46 Non-CV death after life-saving intervention 9 6 3 CV death after hospitalisation 208 103 105 Non-CV death after hospitalisation 26 11 15 Censored 630 ASV, adaptive servo-ventilation; CV, cardiovascular; HF, heart failure. 24 25 Table 3: Univariate associations between adaptive servo-ventilation therapy and individual transitions Hazard ratio 95% Confidence interval p-value Life-saving event 0·97 0·72, 1·32 0·844 Hospitalisation for worsening HF 1·08 0·90, 1·31 0·407 Direct CV death 2·59 1·54, 4·37 <0·001 Direct non-CV death 0·91 0·72; 1·24 0·780 CV death after lifesaving intervention 1·57 1·01, 2·44 0·045 Non-CV death after life-saving intervention 0·58 0·14, 2·30 0·433 CV death after hospitalisation 0·94 0·72, 1·24 0·660 Non-CV death after hospitalisation 1·26 0·58, 2·75 0·557 Censored 630 Transition CV, cardiovascular; HF, heart failure. 25 26 Table 4: Associations between adaptive servo-ventilation therapy and hospitalisation for worsening heart failure, adjusted for implantable cardioverter defibrillator (ICD), CheyneStokes respiration (CSR) proportion at baseline and baseline left ventricular ejection fraction (LVEF). Significant interactions are reported. Subgroup N (%) Hazard ratio 95% CI CSR <20% 237 (17·9) 0·64 0·40, 1·02 CSR 20-50% 439 (33.1) 1·31 0·92, 1·86 CSR >50% 490 (37·0) 1·36 1·01, 1·83 LVEF >36% 486 (36·7) 0·85 0·56, 1·30 LVEF 31–36% 243 (18·3) 0·84 0·54, 1·32 LVEF ≤30% 340 (25·7) 1·38 1·02, 1·86 p-value for interaction 0·021 0·039 CI, confidence interval. 159 and 256 patients (12% and 19.3%) had missing data with respect to CSR and LVEF, respectively. In these categories, the HR values for hospitalisation for worsening heart failure were 0·85 (95% CI 0·51, 1·42) for missing CSR and HR 1·21 (95% CI 0·80, 1·83) for missing LVEF. 26 27 Table 5: Associations between adaptive servo-ventilation therapy and cardiovascular death without prior hospitalisation for worsening heart failure or life-saving event, adjusted for implantable cardioverter defibrillator (ICD), Cheyne-Stokes respiration (CSR) proportion at baseline and baseline left ventricular ejection fraction (LVEF). Significant interactions are reported. Subgroup N (%) Hazard ratio 95% CI LVEF >36% 486 (36·7) 1·21 0·48, 3·08 LVEF 31–36% 243 (18·3) 2·33 0·60, 9·03 LVEF ≤30% 340 (25·7) 5·21 2·11, 12·89 p-value for interaction 0·026 CI, confidence interval. 256 patients (19·3%) had missing data with respect to LVEF. In this category, the HR value was 3·04 (95% CI 0·84, 11·56). 27