Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY VOL. 65, NO. 24, 2015 ª 2015 BY THE AMERICAN COLLEGE OF CARDIOLOGY FOUNDATION ISSN 0735-1097/$36.00 PUBLISHED BY ELSEVIER INC. http://dx.doi.org/10.1016/j.jacc.2015.04.033 The Relationship Between Level of Adherence to Automatic Wireless Remote Monitoring and Survival in Pacemaker and Defibrillator Patients Niraj Varma, MD, PHD,* Jonathan P. Piccini, MD, MHSC,y Jeffery Snell, BA,z Avi Fischer, MD,z Nirav Dalal, MS,z Suneet Mittal, MDx ABSTRACT BACKGROUND Remote monitoring (RM) technology embedded within cardiac rhythm devices permits continuous monitoring, which may result in improved patient outcomes. OBJECTIVES This study used “big data” to assess whether RM is associated with improved survival and whether this is influenced by the type of cardiac device and/or its degree of use. METHODS We studied 269,471 consecutive U.S. patients implanted between 2008 and 2011 with pacemakers (PMs), implantable cardioverter-defibrillators (ICDs), or cardiac resynchronization therapy (CRT) with pacing capability (CRT-P)/defibrillation capability (CRT-D) with wireless RM. We analyzed weekly use and all-cause survival for each device type by the percentage of time in RM (%TRM) stratified by age. Socioeconomic influences on %TRM were assessed using 8 census variables from 2012. RESULTS The group had implanted PMs (n ¼ 115,076; 43%), ICDs (n ¼ 85,014; 32%), CRT-D (n ¼ 61,475; 23%), and CRT-P (n ¼ 7,906; 3%). When considered together, 127,706 patients (47%) used RM, of whom 67,920 (53%) had $75%TRM (high %TRM) and 59,786 (47%) <75%TRM (low %TRM); 141,765 (53%) never used RM (RM None). RM use was not affected by age or sex, but demonstrated wide geographic and socioeconomic variability. Survival was better in high %TRM versus RM None (hazard ratio [HR]: 2.10; p < 0.001), in high %TRM versus low %TRM (HR: 1.32; p < 0.001), and also in low %TRM versus RM None (HR: 1.58; p < 0.001). The same relationship was observed when assessed by individual device type. CONCLUSIONS RM is associated with improved survival, irrespective of device type (including PMs), but demonstrates a graded relationship with the level of adherence. The results support the increased application of RM to improve patient outcomes. (J Am Coll Cardiol 2015;65:2601–10) © 2015 by the American College of Cardiology Foundation. R emote monitoring (RM) of patients with car- a method for improving patient outcomes (2–8). diac electronic implantable devices (CIEDs) Newer technologies embedded in CIEDs permit daily continues to evolve (1). Although originally monitoring with automatic early notification of devised to facilitate patient access and/or clinic changes in patient’s clinical condition and device efficiency by replacing the need for in-person (mal)function (9). These notifications enable prompt follow-up evaluations, RM is now being explored as clinical intervention, irrespective From the *Heart and Vascular Institute, Cleveland Clinic, Cleveland, Ohio; yDuke Clinical Research Institute, Duke University Medical Center, Duke University, Durham, North Carolina; zScientific Division, St. Jude Medical, Inc., Sylmar, California; and the xDepartment of Electrophysiology, Valley Health System, New York, New York and Ridgewood, New Jersey. Dr. Varma has received consulting fees/honoraria from St. Jude Medical, Boston Scientific, Sorin, Biotronik, and Medtronic. Dr. Piccini has received research grants from ARCA Biopharma, Boston Scientific, Gilead, Janssen, ResMed, and St. Jude Medical; and is a consultant for Bayer, ChanRx, JNJ, Medtronic, and Spectranetics. Drs. Fischer, Snell, and Dalal are employees of St. Jude Medical. Dr. Mittal is a consultant for Boston Scientific, Medtronic, Sorin, and St. Jude Medical. Listen to this manuscript’s audio summary by JACC Editor-in-Chief Dr. Valentin Fuster. Manuscript received January 14, 2015; revised manuscript received March 23, 2015, accepted April 7, 2015. of follow-up 2602 Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 Adherence to Remote Monitoring and Survival ABBREVIATIONS schedule (4,6,10). However, whether these Death Master File. Age, sex, device type, and follow- AND ACRONYMS actions have a tangible effect on patient up duration were ascertained using manufacturer outcome remains an area of active investiga- device tracking data. Remote monitoring status was tion. First reports from studies using high- determined from the Merlin patient care network voltage CIEDs indicated improved survival (St. Jude Medical) and date of death from the U.S. among patients assigned to remote manage- Social Security Death Master File, with all death re- ment in both an observational cohort (ALTI- cords through November 30, 2013. We added death TUDE) (11) and the randomized IN-TIME reports through this date made directly to the device CI = confidence interval CIED = cardiac electronic implantable device CRT = cardiac resynchronization therapy CRT-D = cardiac resynchronization therapy with (Influence of Home Monitoring on Mortality manufacturer’s U.S. tracking system by health care defibrillation capability and Morbidity in Heart Failure Patients with providers or family members (this accounted for <1% CRT-P = cardiac resynchronization therapy with pacing capability HR = hazard ratio Impaired Left Ventricular Function) trial (5). of deaths). Socioeconomic data were gathered from Mechanisms remain unclear, but facilitation the 2012 U.S. Census Bureau American Community of ventricular arrhythmia/shock manage- Survey, 2008 to 2012, by individual ZIP code tabula- ment has been proposed as one explanation. ICD = implantable cardioverter-defibrillator SEE PAGE 2611 MIR = mortality incidence rate tion area, specifically, 4-year college degree, median income, below poverty level, telephone or cell phone service, employment status, health care insurance, To better understand the influence of RM and total urban/rural classification of population on outcomes, we hypothesized that survival counts (12). The urban percentage for a region was would be better in patients with greater RM computed as the ratio of urban to total population use and should apply to all types of CIEDs: counts. We obtained data without patient identifiers patients with pacemakers (PMs) who have from implant registration records of devices manu- less cardiovascular risk as well as those with factured by St. Jude Medical, Inc. Data included date implantable cardioverter-defibrillators (ICDs) of implantation, age at implantation, sex, patient ZIP monitoring and cardiac resynchronization therapy (CRT) code, site ZIP code, and device model numbers. For %TRM = percentage of time in with pacing/defibrillation capability (CRT-P/ patients enrolled in the Merlin patient care network remote monitoring CRT-D). We tested this in a cohort of CIED remote monitoring, we obtained data without patient MIRR = mortality incidence rate ratio PM = pacemaker RM = remote monitoring RM None = never used remote monitoring TRM = time in remote patients, all receiving automatic RM devices, by identifiers consisting of maintenance transmission leveraging “big data” from a nationwide RM system- dates linked to implant registration data. collects Among RM-capable patients, RM service use was comprehensive longitudinal follow-up data in hun- computed using weekly status data sent from each dreds of thousands of patients. user of Merlin to the central server. A multiple-retry generated proprietary database, which algorithm ensured the status data were communi- METHODS cated when an attempt to send data to the server failed. Those patients having had at least 1 trans- STUDY DESIGN AND PATIENT SELECTION. This mission ever were classed as RM Any. RM adherence retrospective, national, observational cohort study per patient was defined as the proportion of total evaluated 371,217 consecutive patients receiving new follow-up weeks having at least 1 status transmission implants of market-released PMs, ICDs, CRT-Ps, and or percentage of time in RM (%TRM). To determine CRT-Ds (St. Jude Medical, Inc., Sylmar, California). To whether %TRM affected outcome, RM-capable pa- assess the impact of RM use on outcome, patients tients were assigned to 1 of 3 groups based on extent of whose implanted device did not support automatic their RM use. Those with 0%TRM were designated as daily monitoring were excluded (deemed not auto- RM None. RM Any patients were further divided into matic RM capable) (Figure 1). The remaining patients high %TRM or low %TRM groups by a cut point of 75% with ICD/CRT-D devices implanted between October use (this value approximated median %TRM) Thus, 2008 and December 2011 and PM/CRT-P devices low %TRM patients were those sending weekly main- implanted between October 2009 and December 2011 tenance records to the server <75% (but >0%) of their comprised the study cohort (automatic RM capable). follow-up time in this study, whereas high %TRM pa- Patients enrolled in another clinical trial or with tients were those who sent weekly maintenances re- follow-up time <90 days also were excluded. cord to the server $75% of their follow-up time. Included patients were followed until death or device STATISTICAL ANALYSIS. The primary endpoint of replacement/removal through November 2013. this study was all-cause mortality, which was deter- Study data were obtained from 4 sources: device mined using unadjusted mortality incidence rates implant registration, device RM, postal (ZIP) code (MIRs) and adjusted survival via Cox proportional sociodemographic data, and the U.S. Social Security hazards survival models. The MIR ratio (MIRR), RM Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 2603 Adherence to Remote Monitoring and Survival Any/RM None, and 95% confidence intervals (CIs) were determined from the patient deaths, and the follow-up F I G U R E 1 Study Design duration determined for patients in each group. Allcause survival was compared for each device type CIEDs N = 371,217 among patients with high %TRM, low %TRM, and RM None using multivariable Cox proportional hazards Not Automatic RM Capable N = 101,746 Source modeling with stratification based on age and covariates of sex plus the RM predictor census variables. Automatic RM Capable N = 269,471 The Cox proportional hazard ratio (HR) and 95% CI were determined. Length of follow-up was calculated for each patient as the time from device implantation until device explantation, replacement, death, or end Cohort ICD/CRT-D Implants PM/CRT-P Implants Implant Oct 2008 to Nov 2011 Implant Oct 2009 to Nov 2011 of study surveillance. To assess socioeconomic influences on %TRM, the 8 census variables were evaluated between high %TRM and low %TRM using logistic regression and stepwise backward elimination for p values <0.2. These variables were then used for Time adjustment in the Cox survival regression. All statistical analyses were performed with Follow-up to Nov 2013 N = 269,471 Revolution R Enterprise 7.1.0 (Revolution Analytics, Mountain View, California). Patient demographics were assessed as mean SD, median (interquartile RM Any (%TRM > 0) range), or n (%). The Student t test was used to determine the p value for mean comparison and the chi-square test for the p value for count. RM Adherence High %TRM N = 67,920 25% To assess the geographic distribution of RM use across the United States, a 2-dimensional clustering Low %TRM N = 59,786 22% RM None N = 141,765 53% of RM Any patients was performed based on latitude and longitude from the 3-digit ZIP code. For lowdensity regions, additional aggregation was performed using a nearest-neighbor method to combine Outcomes Mortality adjacent ZIP codes until a minimum of 100 patients per geographic grouping was obtained. The groups were then merged, and the center of the combined Only patients receiving devices embedded with the ability for automatic daily remote group was determined as the weighted average of the monitoring (RM) were evaluated (Automatic RM Capable), categorized by the degree of RM latitude and longitude for the combined group. All use: high %TRM ($75%), low %TRM (0% to 75%), and those who never used RM (RM None). (Patients with devices not equipped with radiofrequency antennae and those using resulting geographic groups were divided into tertiles wanded telemetry were excluded [Not Automatic RM Capable]). %TRM ¼ percentage of based on the mean %TRM in each group. time in remote monitoring; CIEDs ¼ cardiac electronic implantable devices; CRT-D, cardiac resynchronization therapy with defibrillation capability; CRT-P, cardiac resynchronization RESULTS therapy with pacing capability; ICD ¼ implantable cardioverter-defibrillator; PM ¼ pacemaker. From the initial 371,217 patients, 101,746 whose devices were not RM capable were excluded (Figure 1). The study cohort consisted of 269,471 automatic RM time. Dichotomization by a 75% use value (close to the capable patients (age, 71.0 13.5 years; 64.8% male) median) divided RM Any into relatively balanced pa- with a mean follow-up of 2.9 1.0 years (Table 1). tient populations of high %TRM (n ¼ 67,920 [53.1%]) Missing ZIP code data accounted for <0.1% (1,694) of and low %TRM (n ¼ 59,786 [46.9%]). Thus, high %TRM patients for whom missing values were imputed from comprised 25.2% (67,920 of 269,471) of all automatic the median value for the state of residence. RM capable patients. The median (interquartile range) Overall, 141,765 (53%) patients with automatic RM- time to initiation of RM from device implantation was capable devices never used RM (RM None). Among 12 (4 to 33) weeks for RM Any, 33 (11 to 74) weeks for those patients using RM (RM Any; n ¼ 127,706), dis- low %TRM, and 6 (3 to 15) weeks for high %TRM. tribution of use was skewed (Central Illustration, top), MORTALITY AND SURVIVAL RESULTS. Overall, sur- but 90,087 patients (70.6%) used RM $50% of the vival was greater in those patients with some %TRM 2604 Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 Adherence to Remote Monitoring and Survival Figure 2 with HR and p value. Overall, outcomes were T A B L E 1 Patient Demographic Characteristics Parameter Follow-up, yrs superior in high %TRM and low %TRM compared All (N ¼ 269,471) RM None* (n ¼ 141,765) RM Any* (n ¼ 127,706) p Value 2.9 1.0 2.8 1.1 3.0 1.0 <0.001 <0.001 with RM None for all device types including PMs. Outcomes were also better in high %TRM compared to low %TRM, except for CRT-P, likely due to the much 71.0 13.5 70.8 14.0 71.1 12.9 174,553 (64.8) 92,103 (65.0) 82,450 (64.6) 0.028 ICD 85,014 (31.6) 45,232 (31.9) 39,782 (31.2) <0.001 groups) (Table 2), we anticipate that a larger study PM 115,076 (42.7) 60,494 (42.7) 54,582 (42.7) <0.001 population and/or longer follow-up may reveal a CRT† 69,381 (25.8) 36,039 (25.4) 33,342 (26.1) <0.001 significant difference between these 2 categories for RM use, % NA NA 78.1 (41.6–92.9) First RM transmission, weeks NA NA 12 (4–33) SOCIOECONOMIC ANALYSIS. All 8 socioeconomic variables linked by ZIP code to the patients in this Age, yrs Male Remote monitoring Last RM transmission, weeks CRT-P. NA NA 1 (1–10) Bachelor’s degree 26.2 15.1 26.1 15.1 26.3 15.1 0.023 Median income 54.6 21.8 54.3 22.1 54.9 21.4 <0.001 Below poverty line 14.1 8.4 14.6 8.8 13.4 7.8 <0.001 Have telephone 97.5 2.3 97.4 2.5 97.6 2.1 <0.001 1.1 1.1 1.2 1.1 1.1 1.1 <0.001 study were found to be statistically significant in ZIP code–linked data‡ Receive SNAP smaller number of patients studied. Because the trend was directionally consistent with CRT-D (and other Device type predicting degree of RM use (high %TRM or low %TRM), but the magnitude of the associations was insubstantial. A landline phone or cell phone in the home and completion of at least 4 years of college Uninsured 14.6 7.5 15.2 7.9 13.9 6.9 <0.001 were positive predictors of RM use. Living below the Residence: urban 76.3 33.4 79.4 21.5 72.4 35.1 <0.001 poverty line, lacking health insurance, unemployed, Not in labor force 37.4 8.9 37.5 8.9 37.4 9.0 <0.001 not in the work force, lower median income, and 9.7 4.4 10.1 4.5 9.3 4.2 <0.001 living in an urban neighborhood predicted less Unemployed Values are mean SD, n (%), or median (interquartile range). *For some parameters, comparison between RM Any and RM None yields differences that are very small in magnitude but statistically significant. This is due to the huge number of patients in each group, for whom even a small difference between largely similar populations becomes significant statistically. †CRT included CRT-D (n ¼ 61,475; 23% total) and CRT-P (n ¼ 7,906; 3% total) devices. ‡All parameters in this section were measured as % in ZIP code except median income, which was thousands of dollars in ZIP code. CRT ¼ cardiac resynchronization therapy; CRT-D ¼ cardiac resynchronization therapy with defibrillation capability; CRT-P ¼ cardiac resynchronization therapy with pacing capability; ICD ¼ implantable cardioverterdefibrillator; NA ¼ not available; PM ¼ pacemaker; RM ¼ remote monitoring; RM Any ¼ remote monitoring used at least once; RM None ¼ no remote monitoring use; SNAP ¼ Supplemental Nutrition Assistance Program. RM use (all p < 0.001). Neither age nor sex affected RM use substantially (RM None vs. RM Any: 70.8 vs. 71.1 years; 65.0% female vs. 64.6% male). (Note that the economic status and education of the specific patients were not known: this was simply an analysis of ZIP code–associated data). The geographic distribution of %TRM is shown in tertiles of use (Figure 3). The apparent scarcity of patients in the High Plains and Intermountain West is compared with those who failed to use RM at all due to aggregation of data to maintain patient pri- (Table 2). This relationship existed in all CIED cate- vacy. There are fewer patients in that region, but they gories, including PMs. The MIRR for RM Any versus are more dispersed than suggested by this projection. RM None was #0.55 across all CIED devices, demon- There is wide geographic and socioeconomic vari- strating that patients using RM have substantially ability in the degree of RM use nationally, with a decreased mortality. The Central Illustration shows small but statistically significant bias toward rural that for all devices, patients with high %TRM had a residence for high %TRM patients. lower MIR (MIR: 3,083 of 6,330 deaths per 100,000 patient-years; MIRR: 0.49) and greater survival than DISCUSSION RM None (adjusted HR: 2.10; 95% CI: 2.04 to 2.16; p < 0.001). Significantly, patients with low %TRM also In this nationwide comparative effectiveness study of had lower mortality (MIR: 3,865 of 6,330; MIRR: 0.61) RM use in more than 269,000 patients with implanted and greater survival than patients with RM None CIEDs, there are 3 main findings. First, RM use was (adjusted HR: 1.58; 95% CI: 1.54 to 1.62; p < 0.001). associated with improved survival. Second, the de- Patients with high %TRM had lower mortality than gree of adherence to remote management correlated those with low %TRM (adjusted HR: 1.32; 95% CI: 1.27 strikingly with the magnitude of survival gain, sug- to 1.36; p < 0.001). (These differences remained un- gesting a gradient of effect. Thus, patients with high changed whether 75% use or median [78.1%] was used %TRM ($75%) exhibited the best survival, but those as a cut point to split RM Any into high %TRM and low with low %TRM still had markedly better survival %TRM groups.) These observations indicate a gradient compared with patients not using RM at all. For all between the relationship of RM use and outcome. devices, the MIR (per 100,000 patient-years) was These relationships were explored further accord- 3,083 for high %TRM, 3,865 for low %TRM, and 6,330 ing to individual device types. Results are depicted in for RM None (p < 0.001). Finally, the association Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 CENTRAL I LLU ST RAT ION Adherence to Remote Monitoring and Survival Remote Monitoring Use and Impact Varma, N. et al. J Am Coll Cardiol. 2015; 65(24):2601–10. Remote monitoring (RM) technology embedded in cardiac rhythm devices enables continuous monitoring, but the degree of automaticity (i.e., requirement for active patient participation in using this service) varies. In this study, RM was not used in 53% of patients (RM None) (top). Among those patients using RM at least once (RM Any), median RM use was 78.1% (range, 41.6 to 92.9). In this group, the number of patients according to adherence level (%) was >0% to <25%, 20,796; $25% to <50%,16,823; $50% to <75%, 22,167; and $75% to #100%, 67,920. RM use was divided by a 75% cut point into high %TRM ($75% use) and low %TRM (<75% use). Greater RM use demonstrably improved patient survival for all devices (bottom). In summary, patients who never used RM (RM None) and low %TRM accounted for 74.7% of all patients; hence, only one-fourth of the U.S. population receiving an automatic RM-capable device maximize its usefulness. 2605 2606 Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 Adherence to Remote Monitoring and Survival T A B L E 2 Mortality, MIR, and MIRR MIR (per 100,000 pt-yr) n Deaths RM Any (%) RM None (95% CI) RM Any (95% CI) All 269,471 38,130 (4.9) 47.4 6,329.9 (6,252.0–6,408.8) 3,457.0 (3,398.2–3,516.7) 0.55 PM 115,076 13,256 (4.2) 47.4 5,364.5 (5,252.8–5,478.6) 3,016.7 (2,930.7–3,105.3) 0.56 Device CRT-P MIRR 7,906 1,345 (6.6) 45.9 8,612.0 (8,070.1–9,190.9) 4,501.7 (4,099.3–4,944.2) 0.52 ICD 85,014 11,652 (4.5) 46.8 5,816.9 (5,689.5–5,947.1) 3,019.7 (2,925.4–3,117.00) 0.52 CRT-D 61,475 11,877 (6.6) 48.3 8,592.8 (8,402.3–8,787.7) 4,698.4 (4,559.1–4,842.0) 0.55 Values are n (% per pt-yr) unless otherwise indicated. CI ¼ confidence interval; MIR ¼ mortality incidence rate; MIRR ¼ mortality incidence rate ratio; pt-yr ¼ patient-year; other abbreviations as in Table 1. between RM and use persisted across the spectrum of analysis exhibited the best survival among the CIED patients receiving CIEDs, including CRT-D, ICD, groups tested, with or without RM (Table 2). This and, importantly, PMs. These associations were not suggests that RM has advantages in patients regard- altered substantively by age, sex, or socioeconomic less of their susceptibility to ventricular arrhythmias variations. Remarkably, only one-fourth of all patients and/or shock therapies, which were considered factors receiving automatic RM–capable CIEDs in this nation- contributing to results in the ALTITUDE study. Iden- wide analysis were in the high %TRM category, indi- tification of atrial arrhythmias, high-rate episodes, cating that the vast majority of recipients do not use and changes in pacing and lead parameters may all the full capabilities of their implantable devices. represent potential actionable findings in patients The ALTITUDE observational study in patients with with PMs (9). Earlier intervention for these problems ICDs and CRT-Ds reported improved survival in pa- may lead to improved outcomes. This hypothesis was tients assigned to remote management compared with supported by the results of the COMPAS (Comparative those without (11). Our results are important for not Follow-up Schedule with Home Monitoring) random- only confirming this association in a larger patient ized clinical trial, although the study was not suffi- cohort and with a separate proprietary remote tech- ciently powered to evaluate survival (15). nology, but also for extending this to analysis of PMs The current results illustrate the critical impact of and to testing the effect of differing levels of RM use. adherence. To benefit from RM, patients (and pro- Furthermore, an ALTITUDE substudy analysis recog- viders) must use it. Earlier activation and then main- nized that physician and hospital factors determined a tenance of consistent transmissions were associated lack of patient enrollment in RM. In these patients, with the best outcomes. The demonstration of a other practice constraints and lower adherence to graded effect of RM use on outcome extends the value other recommended treatments possibly may have of an observational analysis beyond that of previous contributed to poorer patient outcome (13). (A review work that simply compared effects of RM on or off of CIED follow-up practice among U.S. Medicare bene- (12,13). In support of a direct RM effect, our results for ficiaries from 2005 to 2008 revealed that patient high %TRM parallel the degree of survival benefit survival with noted among heart failure patients treated with ICDs infrequent post-CIED follow-up [14]). Unlike the and CRT randomized to RM with a different pro- ALTITUDE study, we restricted our analysis to only prietary technology (Home Monitoring, Biotronik, patients who received devices capable of automatic Berlin, Germany) when a consistently high (85%) level RM, thereby eliminating at least 1 level of selection of connection was ensured (5). Nevertheless, here we was diminished among patients bias. Hence, our results showing the correlation of RM demonstrated that patients maintaining some level with survival gain and its modulation by degree of use of connectivity, although gaining less benefit, still are unlikely to be due to systematic differences in RM derived some survival advantage compared with those availability. not using RM at all. This relationship is analogous to An important discovery in our study is that the the achievement of therapeutic anticoagulation in strong association between RM and improved survival patients with atrial fibrillation: %TRM may be as extended to patients with PMs who typically do not important for device patients as the time in thera- have left ventricular dysfunction or heart failure. peutic range is for patients with atrial fibrillation Consistent with this “lower risk,” PM patients in our taking warfarin. Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 Adherence to Remote Monitoring and Survival F I G U R E 2 Kaplan-Meier Survival Curves A B Pacemaker 1.00 Proportion Surviving Proportion Surviving 1.00 ICD 0.95 0.90 0.85 0.80 0.75 0.70 High %TRM Low %TRM RM None 0.65 0.95 0.90 0.85 0.80 0.75 0.70 High %TRM Low %TRM RM None 0.65 0.60 0.60 0 1 4 2 3 Years from Implant 5 0 1 - - - Number at Risk - - High %TRM 31,652 30,843 28,227 12,170 Low %TRM 22,930 21,988 20,164 10,197 RM None 60,494 55,934 50,463 24,026 High %TRM 19,427 18,913 17,454 9,971 4,067 Low %TRM 20,355 19,530 18,094 12,057 5,761 RM None 45,232 41,196 36,847 23,050 10,140 D CRT-P CRT-D 1.00 Proportion Surviving Proportion Surviving 354 709 1,211 - - - Cox Survival - - High %TRM vs. RM None HR: 2.24 [2.13–2.36], p<0.001 Low %TRM vs. RM None HR: 1.78 [1.69–1.87], p<0.001 High %TRM vs. Low %TRM HR: 1.26 [1.18–1.34], p<0.001 Mean follow-up: 3.07 (1.15) years 1.00 0.95 0.90 0.85 0.80 0.75 0.70 High %TRM Low %TRM RM None 0.65 0.95 0.90 0.85 0.80 0.75 0.70 High %TRM Low %TRM RM None 0.65 0.60 0.60 0 1 2 3 Years from Implant 4 5 - - - Number at Risk - - High %TRM Low %TRM RM None 5 - - - Number at Risk - - - 1,101 1,152 2,183 - - - Cox Survival - - High %TRM vs. RM None HR: 1.93 [1.84–2.02], p<0.001 HR: 1.45 [1.38–1.51], p<0.001 Low %TRM vs. RM None High %TRM vs. Low %TRM HR: 1.31 [1.24–1.39], p<0.001 Mean follow-up: 2.73 (0.85) years C 4 2 3 Years from Implant 1,991 1,634 4,281 1,918 1,552 3,776 1,710 1,398 3,288 631 611 1,244 47 45 101 - - - Cox Survival - - High %TRM vs. RM None HR: 1.82 [1.58–2.11], p<0.001 Low %TRM vs. RM None HR: 1.79 [1.54–2.09], p<0.001 High %TRM vs. Low %TRM HR: 1.01 [0.83–1.22], p<0.929 Mean follow-up: 2.56 (0.89) years 0 1 4 2 3 Years from Implant 5 - - - Number at Risk - - High %TRM 14,850 14,423 Low %TRM 14,867 14,151 RM None 31,758 28,231 13,128 7,040 12,817 7,854 24,632 14,400 2,511 3,279 5,599 179 333 542 - - - Cox Survival - - High %TRM vs. RM None HR: 2.11 [2.00–2.22], p<0.001 Low %TRM vs. RM None HR: 1.64 [1.57–1.72], p<0.001 High %TRM vs. Low %TRM HR: 1.28 [1.20–1.36], p<0.001 Mean follow-up: 2.91 (1.14) years High %TRM patients (orange line) consistently have higher survival curves compared with low %TRM (green line) and RM None patients (blue line) for pacemakers (A), ICDs (B), CRT-P devices (C), and CRT-D devices (D). HR ¼ hazard ratio; other abbreviations as in Figure 1. RM in isolation is not a treatment but a mechanism responses are unavailable given the nature of the for accessing important data regarding device func- current study. Several interdependent cardiovascular tion or incipient clinical conditions. Alerts that drive factors (e.g., arrhythmias, shifts in right ventricular/ urgent in-person evaluation carry a high probability biventricular pacing burden, vagal withdrawal, de- of actionability for reprogramming and/or changes creased patient activity) may change several days to in drug therapy, either of which has the potential weeks before clinical deterioration (16,17), permitting to improve outcome (4,10). However, physician provider intervention based on RM data upstream 2607 2608 Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 Adherence to Remote Monitoring and Survival F I G U R E 3 U.S. Geographic RM Distribution Geographic Distribution of Remote Monitoring Continental United States Alaska Legend Low Mean %TRM Moderate Mean %TRM Hawaii High Mean %TRM 100 - 199 200 - 599 600 - 999 1,000 - 1,999 A clear geographic pattern emerges with regard to RM in the United States as seen both in tertiles of %TRM: high (green) (mean %TRM $72%), moderate (yellow) (mean %TRM 21% to <72%), and low (red) (mean %TRM <21%), and according to the density of the RM population, from high density (large circles ¼ population $2,000) to low density (small circles ¼ population <200). Abbreviations as in Figure 1. of clinical symptoms. Optimized management of clin- In this regard, our observations in low-voltage ical conditions and/or device function may underlie CIED categories are salient: a similar increment in the survival advantage among remotely managed survival gained by high adherence in both PM and patients (5,16,17). CRT-D patients supports an effect of RM use that is Our observational study cannot confirm a di- independent of the gravity of underlying cardiac rect cause-and-effect relationship between RM and disease and associated comorbidities. The similar survival, although alignment of the described mor- gain among different CIED categories also indicates tality effect with that in a smaller numbers of patients that the RM effect is independent of the degree of managed remotely in randomized trials may point programming versatility or therapeutic potential of to such an effect (5). Association may be attributed the CIED itself (greatest in CRT-D, least in PMs). to a “healthy-user effect,” that is, patients who use Notably, RM more are less sick and more compliant in general Routine Office Device Follow-up) trial demonstrated and/or have physicians who are more up to date with that use of RM itself facilitated patient compliance recommended treatment. An ALTITUDE subanalysis because randomization to RM promoted patient indicated that both implantation of an RM-capable engagement with follow-up services (18). A similar device and patient activation were diminished in effect was observed in follow-up clinics: randomiza- patients with disadvantaged socioeconomic status tion to RM improved patient retention to long-term and/or greater comorbidities (13). However, account- follow-up (18,19). Collectively, these actions (to the TRUST (Lumos-T Safely RedUceS ing for 17 such factors generated a modest area under “induce” a positive behavioral change) may improve the curve of only 0.62, meaning this “risk-treatment initiation and maintenance of recommended treat- paradox” was an incomplete explanation of the RM ments (e.g., medications), extending effects beyond effect. device management. These actions may account for Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 Adherence to Remote Monitoring and Survival the graded relationship between RM use and survival CONCLUSIONS noted here. Clearly, the benefit of RM is multifactorial. This may explain why no single intervention RM of patients with cardiovascular disease receiving leading to a clear-cut mortality benefit was isolated all types of CIEDs (including PMs) is associated with in the IN-TIME trial. In this regard, our nationwide improved all-cause survival, but maximal gain de- “big data” analysis is more likely to discover and pends on earlier implementation and consistent confirm the total result of interconnected factors adherence. Although our observational study cannot than a randomized trial with a narrow field of view determine a cause-and-effect relationship, the re- (20,21). striction of our analysis to only patients receiving STUDY LIMITATIONS. Our results apply to implant- wireless RM, the correlation with survival to the de- able units enabled with automatic remote trans- gree of use, and similar gains irrespective of device mission technology and cannot be extended to other type among patients with differing gravity of under- remote management systems. In particular, non- lying disease provide strong indirect evidence of an implantable RM systems (characterized by modest independent influence of RM on patient outcome. adherence) have failed to improve patient outcomes Our findings endorse recommendations advocating (22). Causes of discontinuation or lost transmission in the importance of post-implantation CIED follow-up, the current study cannot be ascertained. Although but also support extension of function from a peri- socioeconomic factors significantly affected connec- odic remote interrogation mechanism to a daily tivity, the magnitude of this association was slight monitoring system enabling improved outcome (2,7). and insufficient to affect outcomes. Inclusion of This result has a potential impact on millions of in- earlier versions of RM technology demanding greater dividuals with implanted devices worldwide. patient participation are more vulnerable to trans- ACKNOWLEDGMENT Data were provided by St. Jude mission loss (23). Change of residence may account Medical. for some attrition (19). Our study period commenced after publication of recommendations for CIED REPRINT REQUESTS AND CORRESPONDENCE: Dr. follow-up describing the role of RM as an adjunctive Niraj Varma, Heart and Vascular Institute, J2-2, mechanism to in-person evaluation, without advo- Cleveland Clinic, 9500 Euclid Avenue, Cleveland, cating for continuous monitoring functions (2). This Ohio 44195. E-mail: [email protected]. may have contributed to variable connectivity among our patients. Clinical profiles beyond age and sex were unavailable. Demographic characteristics, med- PERSPECTIVES ications, etiology of heart failure and left ventricular function, comorbidities, heart failure hospitaliza- COMPETENCY IN PATIENT CARE: RM technology embedded tions, and, importantly, individual responses to in cardiac rhythm devices enables close follow-up of patients remotely acquired data may all affect mortality. This after implantation and is associated with improved clinical study was not a randomized clinical trial and there- outcomes proportionate to adherence to periodic data fore cannot comment on efficacy. However, although transmissions. lacking access to detailed clinical data, this analysis reports outcomes from consecutive patients in a nationwide clinical practice, and, as such, the data are generalizable as opposed to the highly controlled, selected, and relatively small populations studied in TRANSLATIONAL OUTLOOK: Understanding the mechanisms by which RM confers survival benefit and the factors responsible for patient nonadherence to RM are important objectives for future investigations. clinical trials (20,21). REFERENCES 1. Varma N, Brugada P. Automatic remote moni- 3. Schoenfeld MH, Compton SJ, Mead RH, 5. Hindricks G, Taborsky M, Glikson M, et al. toring: milestones reached, paths to pave. Europace 2013;15:i69–71. et al. Remote monitoring of implantable cardioverter defibrillators: a prospective analysis. Pacing Clin Electrophysiol 2004;27: 757–63. Implant-based multiparameter telemonitoring of patients with heart failure (IN-TIME): a randomised controlled trial. Lancet 2014;384: 583–90. 4. Varma N, Epstein A, Irimpen A, et al. Efficacy and safety of automatic remote monitoring for ICD Follow-Up: the TRUST trial. Circulation 2010;122: 325–32. 6. Crossley G, Boyle A, Vitense H, Chang Y, Mead RH. The clinical evaluation of remote notification to reduce time to clinical decision (CONNECT) trial: the value of wireless remote 2. Wilkoff BL, Auricchio A, Brugada J, et al. HRS/ EHRA expert consensus on the monitoring of cardiovascular implantable electronic devices (CIEDs): description of techniques, indications, personnel, frequency and ethical considerations. Heart Rhythm 2008;5:907–25. 2609 2610 Varma et al. JACC VOL. 65, NO. 24, 2015 JUNE 23, 2015:2601–10 Adherence to Remote Monitoring and Survival monitoring with automatic clinician alerts. J Am Coll Cardiol 2011;57:1181–9. at: http://factfinder2.census.gov. November 25, 2014. Accessed of remote patient management in the TRUST trial (abstr). Eur Heart J 2013;34:263. 7. Burri H. Remote follow-up and continuous remote monitoring, distinguished. Europace 2013; 15:i14–6. 13. Akar JG, Bao H, Jones P, et al. Use of remote monitoring of newly implanted cardioverterdefibrillators: insights from the patient related determinants of ICD remote monitoring (PREDICT RM) study. Circulation 2013;128:2372–83. 19. Varma N, Michalski J, Stambler B, Pavri BB, for the TRUST Investigators. Superiority of automatic remote monitoring compared with in-person evaluation for scheduled ICD follow-up in the 8. Ricci RP, Morichelli L, D’Onofrio A, et al. Effectiveness of remote monitoring of CIEDs in detection and treatment of clinical and devicerelated cardiovascular events in daily practice: the HomeGuide Registry. Europace 2013;15:970–7. 9. Varma N, Stambler B, Chun S. Detection of atrial fibrillation by implanted devices with wireless data transmission capability. Pacing Clin Electrophysiol 2005;28:S133–6. 10. Varma N, Michalski J, Epstein AE, Schweikert R. Automatic remote monitoring of implantable cardioverter-defibrillator lead and generator performance: the Lumos-T Safely RedUceS RouTine Office Device Follow-Up (TRUST) trial. Circ Arrhythm Electrophysiol 2010;3:428–36. 11. Saxon LA, Hayes DL, Gilliam FR, et al. Long-term outcome after ICD and CRT implantation and influence of remote device follow-up: the ALTITUDE survival study. Circulation 2010;122:2359–67. 14. Al-Khatib SM, Mi X, Wilkoff BL, et al. Follow-up of patients with new cardiovascular implantable electronic devices: are experts’ recommendations implemented in routine clinical practice? Circ Arrhythm Electrophysiol 2012;6:108–16. 15. Mabo P, Victor F, Bazin P, et al. A randomized trial of long-term remote monitoring of pacemaker recipients (the COMPAS trial). Eur Heart J 2012;33:1105–11. TRUST trial-testing execution of the recommendations. Eur Heart J 2014;35:1345–52. 20. Krumholz HM. Big data and new knowledge in medicine: the thinking, training, and tools needed for a learning health system. Health Aff (Millwood) 2014;33:1163–70. 21. National Institutes of Health Data Science. Big data to knowledge. Available at: http://bd2k.nih. gov/#sthash.pPqLQlZn.TLzfFIoN.dpbs. Accessed November 25, 2014. 16. Varma N, Wilkoff B. Device features for managing patients with heart failure. Heart Fail Clin 2011;7:215–25, viii. 22. Chaudhry SI, Mattera JA, Curtis JP, et al. Tel- 17. Whellan DJ, Ousdigian KT, Al-Khatib SM, et al. Combined heart failure device diagnostics identify patients at higher risk of subsequent heart failure hospitalizations: results from PARTNERS HF (Program to Access and Review Trending Information and Evaluate Correlation to Symptoms in 23. Cronin E, Ching EA, Varma N, Martin DO, Wilkoff B, Lindsay BD. Remote monitoring of cardiovascular devices- a time and activity analysis. Heart Rhythm 2012;9:1947–51. Patients With Heart Failure) study. J Am Coll Cardiol 2010;55:1803–10. emonitoring in patients with heart failure. N Engl J Med 2010;363:2301–9. 12. Survey UCBAC. U.S. Census Bureau; American Community Survey, 2008-2012 American Community Survey 5-Year Estimates, Tables DP03, DP04, DP05, S1501, S2201, S2701; 18. Varma N, Michalski J. Home monitored ICD KEY WORDS big data, cardiac electronic implantable devices, cardiac resynchronization therapy, device, mortality, survival, using American FactFinder [Internet]. Available patients are more loyal to follow up-the paradox time in remote monitoring