Skip to main content
Erschienen in: Applied Health Economics and Health Policy 3/2016

Open Access 01.06.2016 | Original Research Article

Cost-Effectiveness Analysis of Iodine-123 Meta-Iodobenzylguanidine Imaging for Screening Heart Failure Patients Eligible for an Implantable Cardioverter Defibrillator in the USA

verfasst von: Ken O’Day, Wayne C. Levy, Meridith Johnson, Arnold F. Jacobson

Erschienen in: Applied Health Economics and Health Policy | Ausgabe 3/2016

Abstract

Background

Many guideline-eligible heart failure (HF) patients do not receive a survival benefit from implantable cardioverter defibrillators (ICDs). Improved risk stratification may help to reduce costs and improve the cost effectiveness of ICDs.

Objective

To estimate the potential outcomes, costs, and cost effectiveness of using iodine-123 meta-iodobenzylguanidine (I-mIBG) to screen HF patients eligible for an ICD.

Methods

A decision-analytic model was developed to compare screening with I-mIBG imaging and no screening over 2-year and 10-year time horizons from a US payer perspective. Data on I-mIBG imaging and risk stratification were obtained from the ADMIRE-HF/HFX (AdreView Myocardial Imaging for Risk Evaluation in Heart Failure) trial. Data on ICD effectiveness for prevention of sudden cardiac death (SCD) were obtained from a meta-analysis. Costs of ICDs and costs of generator and lead procedures were obtained from the Agency for Healthcare Research and Quality National Inpatient Sample. Age-specific mortality was modeled using US life tables and data from the ACT (Advancements in ICD Therapy) Registry on risks of SCD and non-SCD mortality. Sensitivity analyses were conducted.

Results

In the analysis, screening with I-mIBG imaging was associated with a reduction in ICD utilization of 21 %, resulting in a number needed to screen to prevent 1 ICD implantation of 5. Screening reduced the costs per patient by US$5500 and US$13,431 (in 2013 dollars) over 2 and 10 years, respectively, in comparison with no screening and resulted in losses of 0.001 and 0.040 life-years, respectively, over 2 and 10 years. Screening was decrementally cost effective, with savings of US$5,248,404 and US$513,036 per quality-adjusted life-year lost over 2 and 10 years, respectively. In subgroup analyses, cost savings were greater for patients with an ejection fraction (EF) of 25–35 % than for those with an EF <25 %.

Conclusions

According to the model, screening of guideline-eligible patients selected for ICDs with I-mIBG imaging may be cost effective and may help reduce costs associated with implantation of ICDs, with a minimal impact on survival.
Key Points for Decision Makers
Over 2 and 10 years, this analysis found that screening had the potential to reduce costs by US$5500 and US$13,431, respectively, with less than 1 day and 2 weeks of life lost, respectively, per patient.
Screening was cost effective, with savings of US$5,248,404 and US$513,036 per quality-adjusted life-year lost, respectively, over 2-year and 10-year horizons.
Screening improved the cost effectiveness of implantable cardioverter defibrillators (ICDs) by approximately 10 %.
Iodine-123 meta-iodobenzylguanidine (I-mIBG) screening may help healthcare policy makers control costs associated with provision of ICDs to guideline-eligible patients, with a minimal impact on patient mortality.

1 Introduction

Sudden cardiac death (SCD) accounts for 300,000–400,000 deaths annually in the USA [1]. Risk factors for SCD include age, male sex, coronary artery disease, a prior coronary event, and heart failure (HF) [2]. American College of Cardiology (ACC)/American Heart Association (AHA)/Heart Rhythm Society (HRS) guidelines recommend implantable cardioverter defibrillators (ICDs) for primary prevention of SCD in patients with New York Heart Association (NYHA) class II or III HF and a left ventricular ejection fraction (LVEF) ≤35 % due to prior myocardial infarction and in patients with non-ischemic dilated cardiomyopathy and NYHA class I HF of ischemic etiology and an LVEF <30 % [3].
Selection of patients for an ICD is heavily influenced by the ejection fraction (EF), given its use in guidelines (≤35 % for NYHA class II–III or ≤30 % for ischemic NYHA class I) and the corresponding evidence base from clinical trials demonstrating efficacy of ICDs in HF patients with a reduced EF [46]. Cost-effectiveness analyses, including a recent systematic review, have generally found ICDs to be cost effective [7]. However, a substantial proportion of patients receiving ICDs will obtain no survival benefit from the device, as they will die of other causes prior to any ICD shocks. As the ICD-eligible patient population includes individuals at varying risk of arrhythmic death, additional risk stratification of patients may help to reduce costs and improve the cost effectiveness of ICDs by identifying patients at lower risk of arrhythmic death or at higher risk of non-arrhythmic death who are not likely to obtain a meaningful benefit from ICDs [810].
Iodine-123 meta-iodobenzylguanidine (I-mIBG) is a molecular imaging agent, which received US Food and Drug Administration (FDA) approval in 2013 for scintigraphic imaging assessment of sympathetic innervation of the myocardium to assist in the evaluation of adult patients with NYHA class II or III HF and an LVEF ≤35 % to help identify patients with lower 1- and 2-year mortality risks as indicated by a heart/mediastinum (H/M) ratio ≥1.6. The ADMIRE-HF (AdreView Myocardial Imaging for Risk Evaluation in Heart Failure) trial prospectively studied I-mIBG imaging in predicting prognosis for significant cardiac events [11]. Patients in ADMIRE-HF with an H/M ratio ≥1.6 had significantly reduced risks of a cardiac event [hazard ratio (HR) 0.40, P < 0.001], HF progression (HR 0.49; P = 0.002), potentially life-threatening arrhythmia (HR 0.37; P = 0.020), and cardiac death (HR 0.14; P = 0.006) in comparison with patients with an H/M ratio <1.6 [11]. The addition of I-mIBG to a number of multivariable risk models, including the Seattle Heart Failure Model, was found to improve risk stratification in comparison with the risk models alone [12, 13].
In selecting HF patients for an ICD, clinicians and patients must balance potential survival benefits against potential risks. Identification of patients at low risk of a significant cardiac event with I-mIBG imaging may help to provide decision support to clinicians regarding patients who may not want an ICD or where there is uncertainty about whether the risks associated with an ICD may outweigh the potential benefits. The objectives of this study were to assess the potential clinical and economic impact of I-mIBG imaging in screening guideline-eligible patients referred for an ICD and to assess the costs, outcomes, and cost effectiveness of screening.

2 Methods

2.1 Model Description

A decision analytic model was developed using Microsoft Excel® 2010 software to estimate the costs, outcomes, and cost effectiveness of I-mIBG imaging for risk stratification of HF patients with an LVEF ≤35 % who were referred for ICD implantation on the basis of current guidelines. The model compared outcomes [the ICD implantation rate, survival, life-years (LYs), and quality-adjusted life-years (QALYs)] and costs (in 2013 dollars) of current practice versus a one-time screening with I-mIBG imaging from a US payer perspective over short-term (2-year) and long-term (10-year) time horizons, incorporating direct medical costs. Subgroup analyses were conducted to assess outcomes and costs for patients with an LVEF <25 % and for those with an LVEF of 25–35 %.
A Markov cohort analysis was used to model survival of patients over time in terms of SCD mortality, non-SCD cardiac mortality due to HF, and other mortality (Fig. 1). In the no-screening arm, all patients were assumed to receive an ICD, as the patient population consisted of guideline-eligible patients referred for an ICD. In the screening arm, patients underwent screening with I-mIBG imaging. Patients with an H/M ratio ≥1.6 (low risk) were assumed to forgo an ICD, while patients with an H/M ratio <1.6 (non-low risk) were assumed to receive an ICD. In subsequent cycles, patient mortality was modeled as a function of SCD, non-SCD cardiac mortality, and other mortality (i.e., non-cardiac causes). For mortality calculations in the model, patients were stratified into low-risk and non-low-risk groups based on the H/M ratio, with the low-risk group incurring a reduced risk of SCD. All patients receiving ICDs incurred an additional reduced risk of SCD. The model utilized a monthly cycle over the duration of the modeled time horizon.

2.2 Model Outcomes

The primary model outcomes were LYs, QALYs, and healthcare costs. LYs were calculated on the basis of overall survival, and QALYs were calculated on the basis of overall survival, a utility adjustment for HF, and age-weighted utilities. Costs (in 2013 US dollars) included the initial costs of screening, ICD implantation, generator and lead procedures, ICD evaluation, medical costs for surviving HF patients, and end-of-life care for dying patients. Costs and outcomes were discounted using a standard 3 % discount rate, with undiscounted LYs also presented. An incremental cost-effectiveness ratio (ICER) was computed as the ratio of the difference in costs divided by the difference in discounted LYs or QALYs between screening and no screening. Other model outcomes included the ICD implantation rate, cumulative mortality, and the number needed to screen to prevent 1 ICD implantation. An additional analysis was also conducted to estimate the contribution that screening made to the overall cost effectiveness of ICDs by evaluating the ICER of ICDs versus no ICDs in a screening scenario in comparison with the ICER of ICDs versus no ICDs in a no-screening scenario.

2.3 Model Inputs

2.3.1 Patient Characteristics and Screening Effectiveness

The model used data from the ADMIRE-HF and HFX prospective studies of I-mIBG imaging [11, 15]. Accordingly, the characteristics of the modeled patient population included a mean age of 62 years, NYHA class II–III HF (83 % of patients were in NYHA class II), LVEF ≤35, 80 % male, and a late H/M ratio <1.6 in 79 % of patients.
In ADMIRE-HF, patients underwent I-mIBG imaging and clinical follow-up to document the occurrence of cardiac events, including non-fatal arrhythmias (sustained ventricular tachycardia, resuscitated cardiac arrest, and appropriate ICD activations), cardiac death, and all-cause mortality. The HRs for arrhythmia and cardiac death during a median 17-month follow-up period were 0.37 (P = 0.02) and 0.14 (P = 0.006), respectively. ADMIRE-HFX extended the follow-up for study subjects to a median of 24 months. For the purposes of this model, a separate analysis was conducted to estimate the HR for patients with a sudden cardiac event (SCE), consisting of SCD or an appropriate ICD shock (defibrillation) as determined by the study adjudication committee. Because the ADMIRE study population included patients with ICDs, this composite endpoint was used as a surrogate measure to account for SCD events that might have been prevented by the ICDs present in 20 % of ADMIRE subjects at baseline (increasing to 43 % of subjects during the course of ADMIRE-HFX). In SCD-HeFT (the Sudden Cardiac Death in Heart Failure Trial), the annual ICD shock rate was 7.5 versus a 1.4 % reduction in all-cause mortality; thus, only 1 in 5 ICD shocks were likely lifesaving. In MADIT-II (the Multicenter Automatic Defibrillator Implantation Trial II), the annual ICD shock rate was ~35 % (420 ICD shocks in 720 patients over 20 months) versus an ~3.4 % annual reduction in all-cause mortality; thus, only 1 in 10 ICD shocks were likely lifesaving. Longer detection intervals have shown that 91 % of fast ventricular tachycardias and 67 % of ventricular fibrillations may self-terminate and not require an ICD shock [16]. To account for the fact that <33 % of ICD shocks are lifesaving, the SCE rate was adjusted conservatively to include only 50 % of ICD defibrillations for the base-case analysis. Additional analyses were conducted assuming that 33 and 66 % of ICD defibrillations were lifesaving in the sensitivity analysis. The screening inputs are presented in Table 1.
Table 1
Model inputs
Input
Base-case estimate; mean (SE)a
1-way sensitivity analysis
References
Low
High
Screening inputs
 Proportion of patients with H/M <1.6
  EF <35 %
0.791 (0.013)
0.765
0.816
[11, 12]
  EF 25–35 %
0.759 (0.016)
0.727
0.790
  EF <25 %
0.876 (0.021)
0.832
0.914
 SCE rate in patients with H/M <1.6; 2 years
  EF <35 %
0.058 (0.004)
0.050
0.066
[11, 12]
  EF 25–35 %
0.047 (0.004)
0.040
0.054
  EF <25 %
0.084 (0.005)
0.073
0.094
 RR of SCE in patients with H/M ≥1.6
  EF <35 %
0.290 (0.092)
0.161
0.523
[11, 12]
  EF 25–35 %
0.340 (0.135)
0.168
0.690
  EF <25 %
0.250 (0.171)
0.082
0.766
 Non-SCD HF death rate; 2 years
  EF <35 %
0.032 (0.006)
0.021
0.045
[11, 12]
  EF 25–35 %
0.024 (0.006)
0.014
0.037
  EF <25 %
0.052 (0.015)
0.027
0.085
ICD inputs
 ICD RR of SCD; patients with H/M ≥1.6
0.40 (0.23)
0.255
0.628
[16]
 ICD RR of SCD; patients with H/M <1.6
0.40 (0.23)
0.255
0.628
[16]
 ICD perioperative mortality risk
0.0034 (0.0002)
0.0030
0.0038
[17]
Cost/resource inputs
 I-mIBG drug cost ($)
2900 (145)
2623
3191
[14]
 I-mIBG imaging test cost ($)
309 (15)
279
340
[14]
 ICD implant cost ($)
41,486 (1036)
39,480
43,541
[21]
 ICD generator replacement cost ($)
31,547 (1544)
28,593
34,644
[21]
 Frequency of generator replacement (years)
5.0 (0.5)
4.0
6.0
[22]
 ICD lead procedure cost ($)
19,139 (877)
17,458
20,896
[21]
 ICD lead procedure (proportion of patients per year)
0.008 (0.0009)
0.006
0.01
[23]
 Cost of ICD evaluation ($)
91 (5)
82
100
[37]
 Frequency of ICD evaluation; per year
3.0 (0.5)
2.0
4.0
[24]
 Cost of ICD inappropriate shock evaluation ($)
2008 (100)
1816
2209
[26]
 Inappropriate shock (proportion of patients per year)
0.028 (0.006)
0.016
0.04
[25]
 HF patient medical costs; per month ($)
1208 (63)
1088
1335
[27]
 End-of-life costs; final 6 months of life ($)
43,757 (282)
43,206
44,311
[28]
Utility inputs
 Utility of HF; age 55–64 years
0.808 (0.003)
0.802
0.814
[29]
 Utility increment/decrement of ICD
0.0 (0.0)
0.000
0.000
Assumption
EF ejection fraction, HF heart failure, H/M heart/mediastinum ratio, ICD implantable cardioverter defibrillator, I-mIBG iodine-123 meta-iodobenzylguanidine, RR relative risk, SCD sudden cardiac death, SCE sudden cardiac event, SE standard error
aStandard errors used for sampling in probabilistic sensitivity analysis

2.3.2 ICDs

ICD efficacy inputs reflecting the relative risk reduction of SCD for patients with ICDs were obtained from a meta-analysis [17] of randomized, controlled ICD trials, identified by a clinical expert as the best estimate of the overall treatment effect of ICDs, and were assumed to apply equivalently to patients with late H/M ratios of <1.6 and ≥1.6. The perioperative mortality risk of an ICD procedure was obtained from a published analysis [18].

2.3.3 Mortality

Life tables representing all-cause mortality by age and sex were obtained from the National Center for Health Statistics [19]. To avoid double-counting the mortality associated with HF, life tables were adjusted by removal of the proportion of deaths due to HF [20]. To account for age-specific risks associated with non-SCD and SCD mortality as the model cohort aged, the baseline risks of mortality due to non-SCD and SCE from the ADMIRE study were multiplied by the age-specific relative risk of non-SCD and SCD mortality. According to data from a registry, the relative risks of non-SCD and SCD mortality are 1.48 and 0.49, respectively, for 60- to 69-year-olds, 2.39 and 0.89, respectively, for 70- to 79-year-olds, and 2.17 and 1.91, respectively, for ≥80-year-olds compared with 50- to 59-year-olds [21]. Thus, in the model, mortality risks associated with HF due to non-SCD steadily increased with age, while risks associated with SCD were U shaped. Annual mortality rates were then adjusted to monthly mortality rates.

2.3.4 Costs

The cost of screening with I-mIBG imaging included both the cost of the drug, based on the average sales price, and the imaging test cost of a cardiovascular nuclear examination [Current Procedural Terminology (CPT) code 78499]. The weighted average costs of the ICD device and the implantation procedure in patients with (22 %) and without (78 %) complications [Diagnosis-Related Groups (DRG) 226 and 227, respectively], ICD generator replacement (DRG 245), and ICD lead replacement (DRG 265) were based on data from the Agency for Healthcare Research and Quality 2010 National Inpatient Sample [22]. Generator and lead-replacement procedures were assumed not to occur in the first 2 years after ICD implantation; thereafter, generators were replaced once every 5 years, on average, with lead procedures being performed in 0.8 % of patients per year [23, 24]. ICD evaluation was assumed to occur 3 times per year, on average, and was assumed to be conducted remotely [25]. The cost of ICD evaluation was based on the Centers for Medicare and Medicaid Services (CMS) 2013 reimbursement for CPT codes 93295 and 93296. The proportion of ICD patients experiencing inappropriate shocks was 2.8 % per year [26]. Inappropriate shocks were assumed to be evaluated in the emergency department, and costs were obtained from the 2010 Agency for Healthcare Research and Quality Medical Expenditure Panel Survey [27]. The monthly follow-up healthcare costs of HF patients were obtained from a study estimating the annual total medical costs of HF patients, excluding those who died in the prior year [28]. End-of-life costs were based on a study examining healthcare resource use in HF patients in the final 6 months of life [29]. All costs were inflated to 2013 US dollars, using the Medical Care Component of the Bureau of Labor Statistics Consumer Price Index.

2.3.5 Utilities

The baseline utility of an HF patient aged 55–64 years was obtained from the literature and estimated to be 0.808, based on the EQ-5D in US patients [30]. Age-specific utility weights were obtained from the literature, and the utilities of patients as they aged in the model were adjusted accordingly [31]. It was assumed in the model that there was no change in utility for patients with an ICD versus those with no ICD, consistent with other evaluations of ICDs [23] and based on a systematic review that identified conflicting studies on whether or not ICDs improve quality of life [7].

2.4 Sensitivity Analyses

A univariate deterministic sensitivity analysis was conducted by varying model inputs around the base-case value bounded by the lower and upper values as indicated in Table 1. The discount rate was varied between 1 and 5 %.
A probabilistic sensitivity analysis (PSA) was conducted to assess the impact of varying all model parameters simultaneously on the model outcomes. Each model parameter was sampled from an appropriate distribution (beta distribution for proportions and utilities, log-normal distribution for relative risks, and gamma distribution for costs) using the mean and standard error over 1000 simulations to estimate the joint uncertainty. On the basis of the PSA, 95 % CIs for the model outcomes were estimated. A cost-effectiveness acceptability curve was also developed to show the probability that screening was more cost effective than no screening across a range of willingness-to-pay thresholds.

3 Results

3.1 Model Validation

Multiple methods were used to validate the model. See the Appendix for the model validation results.

3.2 Costs, Outcomes, and Cost Effectiveness of Screening

A total of 5 patients (rounded up from 4.8, per standard practice for reporting the number needed to treat) would need to be screened with I-mIBG imaging to prevent 1 ICD implantation. The reduction in ICD implantations resulted in estimated total cost savings of US$5500 and US$13,431 per screened patient over 2-year and 10-year time horizons, respectively. In comparison with no screening, screening resulted in −0.001 LYs (−0.5 life-days) and −0.001 QALYs (−0.4 quality-adjusted life-days) per patient over a 2-year horizon and −0.040 LYs (−14.7 life-days) and −0.026 QALYs (−9.6 quality-adjusted life-days) per patient over a 10-year horizon. Figure 2 shows lifetime survival curves for use of no ICDs (i.e., assuming no patients received an ICD), ICDs without screening, and ICDs with screening. Disaggregated costs and outcomes are shown in Table 2 for 2 and 10 years (lifetime outcomes are shown in the Appendix). Given these differences in costs and outcomes over a 2-year time horizon, screening saved US$4,033,719 per LY lost and US$5,248,404 per QALY lost, in comparison with no screening, and over a 10-year horizon, screening saved US$334,178 per LY lost and US$513,036 per QALY lost, in comparison with no screening.
Table 2
Disaggregated results; left ventricular ejection fraction ≤35 %
 
2 years
10 years
No ICD
ICD
Difference between screening and no screening
No ICD
ICD
Difference between screening and no screening
No screening
Screening
No screening
Screening
Outcomes
 ICD (%)
0.0
100.0
79.1
−20.9
0.0
100.0
79.1
−20.9
 Mortality (%)
11.2
8.1
8.3
0.2
47.8
39.3
40.0
0.7
 LYs
1.922
1.953
1.952
−0.001
7.508
8.072
8.032
−0.040
 LYs; discounted
1.866
1.896
1.895
−0.001
6.598
7.068
7.035
−0.033
 QALYs; discounted
1.508
1.532
1.531
−0.001
5.243
5.454
5.411
−0.043
Costs ($)
 Screening
0
0
3209
3209
0
0
3209
3209
 ICD
0
41,486
32,815
−8671
0
41,486
32,815
−8671
 Battery/lead replacement
0
0
0
0
0
33,422
26,143
−7279
 ICD evaluation
0
611
482
−129
0
2313
1814
−500
 Medical costs
31,217
30,177
30,268
91
113,278
116,560
116,370
−190
 Total
31,217
72,274
66,774
−5500
113,278
193,781
180,351
−13,431
The numbers may not sum because of rounding
ICD implantable cardioverter defibrillator, LY life-year, QALY quality-adjusted life-year

3.3 Subgroup Analyses

The results of the subgroup analyses of LVEF 25–35 % and LVEF <25 % are shown in Table 3. The numbers needed to screen to prevent one ICD implantation were 5 (rounded up from 4.1) in the LVEF 25–35 % subgroup and 9 (rounded up from 8.1) in the LVEF <25 % group. In comparison with no screening, screening resulted in greater cost savings over a 2-year horizon in patients with LVEF 25–35 % (US$6838) than in patients with LVEF <25 % (US$1947). In the LVEF 25–35 % subgroup, screening resulted in −0.001 LYs (−0.5 life-days) and −0.001 QALYs (−0.4 quality-adjusted life-days) per patient, in comparison with −0.001 LYs (−0.4 life-days) and −0.001 QALYs (−0.3 quality-adjusted life-days) per patient in the LVEF <25 % subgroup. In the LVEF 25–35 % subgroup, screening would save US$4,864,621 per LY lost and US$6,337,756 per QALY lost, in comparison with no screening. In the LVEF <25 % subgroup, screening would save US$1,592,033 per LY lost and US$2,063,871 per QALY lost, in comparison with no screening.
Table 3
Subgroup analyses; 2-year horizon
 
LVEF 25–35 %
LVEF ≤25 %
No ICD
ICD
Difference between screening and no screening
No ICD
ICD
Difference between screening and no screening
No screening
Screening
No screening
Screening
Outcomes
 ICD (%)
0.0
100.0
75.9
−24.1
0.0
100.0
87.6
−12.4
 Mortality (%)
9.4
6.9
7.1
0.2
16.0
11.1
11.3
0.1
 LYs
1.942
1.966
1.964
−0.001
1.869
1.920
1.919
−0.001
 LYs; discounted
1.885
1.908
1.907
−0.001
1.815
1.865
1.863
−0.001
 QALYs; discounted
1.523
1.542
1.541
−0.001
1.467
1.507
1.506
−0.001
Costs ($)
 Screening
0
0
3209
3209
0
0
3209
3209
 ICD
0
41,486
31,488
−9998
0
41,486
36,342
−5144
 Battery/lead replacement
0
0
0
0
0
0
0
−0
 ICD evaluation
0
615
466
−149
0
600
525
−76
 Medical costs
30,713
29,581
29,952
101
32,510
31,012
31,075
−63
 Total
30,713
71,952
65,114
−6838
32,510
73,098
71,150
−1947
The numbers may not sum because of rounding
ICD implantable cardioverter defibrillator, LVEF left ventricular ejection fraction, LY life-year, QALY quality-adjusted life-year

3.4 Impact of Screening on the Cost Effectiveness of ICDs

We also conducted an analysis to assess the impact of screening on the cost effectiveness of ICDs. With screening and risk stratification of patients for ICDs, patients at low risk of SCD may forgo an ICD, resulting in potentially improved cost effectiveness of ICDs in a population of patients at comparatively higher risk of SCD. First, the model was reconfigured to compare the cost effectiveness of ICDs and no ICDs in a no-screening scenario. This resulted in ICERs per QALY of US$1,688,124, US$217,155, and US$126,193 over 2-year, 10-year, and lifetime horizons, respectively. Then the model was adjusted to compare the cost effectiveness of ICDs and no ICDs in a screening scenario. This resulted in ICERs per QALY of US$1,527,818, US$194,673, and US$113,904 over 2-year, 10-year, and lifetime horizons, respectively. The analysis showed that screening patients with I-mIBG imaging improved the cost effectiveness of ICDs and reduced the ICERs by approximately 10 %.

3.5 Sensitivity Analyses

The results of the one-way sensitivity analysis are displayed in the tornado diagrams for the 2-year (Fig. 3a) and 10-year (Fig. 3b) analyses. The output for the one-way sensitivity analysis was the incremental cost per patient of screening versus no screening (base-case value, reductions of US$5500 over 2 years and US$13,431 over 10 years). Over 2 years, the model results were most sensitive to the proportion of patients with an H/M ratio <1.6, ICD implant cost, I-mIBG drug cost, and relative risk of SCE in patients with an H/M ratio ≥1.6. Over 10 years, the model results were most sensitive to the proportion of patients with an H/M ratio <1.6, frequency of generator replacement, and discount rate for costs. Assuming that 33 or 66 % of ICD shocks were lifesaving had little impact on cost differences over 2 years (savings of US$5510 and US$5490, respectively) and 10 years (savings of US$13,416 and US$13,445, respectively), little impact on mortality differences over 2 years (0.2 %), and minimal impact over 10 years (0.8 and 0.7 %, respectively). The sensitivity analysis showed that screening with I-mIBG imaging was cost saving across the full range of tested model parameters, with a minimum expected cost saving of US$4462 over 2 years and US$11,448 over 10 years.
The results of the PSA estimated cost savings of US$5508 (95 % CI US$4395–6839) over 2 years and US$13,498 (95 % CI US$10,976–16,474) over 10 years. In the PSA, screening with I-mIBG imaging had a 100 % probability of being more cost effective than no screening, up to a willingness-to-pay threshold of US$1,000,000 per QALY over a 2-year time horizon. Over a 10-year time horizon, screening was more likely cost effective than no screening, up to a willingness-to-pay threshold of over US$500,000 per QALY (Fig. 4).

4 Discussion

This analysis found that screening NYHA class II or III HF patients who are eligible on the basis of ACC/AHA/HRS guidelines for primary-prevention ICD implantation with I-mIBG imaging has the potential to reduce costs associated with ICDs, with a minimal impact on patient mortality. In the model, screening resulted in approximately one in every 5 patients being identified as low risk for SCD. On the basis of data from the ADMIRE-HF/HFX studies, patients with an H/M ratio ≥1.6 had a lower risk of SCD and mortality over 2 years. Assuming these patients forgo an ICD, the high costs of the device, surgical implantation, and subsequent generator and lead replacement can be reduced significantly at a population level while maintaining the beneficial impact of ICDs in reducing SCD and extending life (Fig. 2). With screening, overall per-patient costs were reduced by US$5500 over 2 years and by US$13,431 over 10 years, while expected LYs per patient for the modeled cohort were reduced by less than a day over a 2-year horizon and by about 2 weeks over a 10-year horizon.
It has been suggested that cost-saving innovations may improve overall outcomes, even when they are slightly less effective, under conditions of resource constraint [32]. A “decrementally cost-effective” intervention is defined as one in which there are savings of at least US$100,000 per QALY lost. However, decrementally cost-effective medical innovations are rare, with only 8 innovations identified in 887 publications. Screening HF patients with I-mIBG imaging would be an example of a decrementally cost-effective intervention, with savings of US$5,248,404 per QALY lost over a 2-year time horizon and savings of US$513,036 per QALY lost over a 10-year time horizon. Generally, healthcare payers, clinicians, and patients are accustomed to incrementally cost-effective interventions. However, payers, in particular, may want to offer clinicians and patients the option of screening in cases where the clinician is uncertain about the risk/benefit profile of an ICD or where the patient has significant reservations in order to control or limit costs.
On the basis of randomized, controlled trials establishing the efficacy of ICDs in preventing SCD in patients with HF [4, 5], guidelines recommend the use of ICDs for patients with NYHA class II or III HF and an LVEF ≤35 % due to prior myocardial infarction and for patients with non-ischemic dilated cardiomyopathy [3]. However, studies also show that the majority of patients receiving an ICD do not benefit, as they die of causes other than SCD without the device activating (i.e., death prior to an ICD shock). Identifying patients who are guideline eligible but are not likely to benefit from an ICD may assist clinicians and patients in deciding to forgo an ICD.
The overall cost of ICDs to the healthcare system is significant. According to the AHA, about 100,000 ICDs are implanted each year in the USA [33]. At a cost of about US$40,000 per device, this translates into an annual cost of approximately US$4.0 billion. These high costs are incurred despite the fact that most guideline-eligible patients do not receive an ICD [34]. The result is a concern among healthcare payers that adherence to treatment guidelines and a corresponding increase in ICD utilization would further increase costs [35]. The use of I-mIBG imaging has the potential to contain or reduce the use of ICDs by identifying patients at lower risk of SCD who are likely not to derive a meaningful benefit from an ICD. Even if ICDs are cost effective as currently used, screening would help to improve their cost effectiveness and allow policy makers to make better use of limited healthcare resources [7].
Patients who might be appropriate candidates for screening include those considered for a primary-prevention ICD where the clinician or patient is unsure whether the risks (e.g., the procedure, device complications, and inappropriate shocks) outweigh the benefit of the ICD in preventing SCD. Our analysis indicates that screening in patients with an EF of 25–35 % resulted in greater cost savings with a similar minimal effect on survival, in comparison with patients with an EF ≤25 %. This was primarily the result of identifying a greater proportion of patients with an H/M ratio ≥1.6 in the EF 25–35 % group who were at lower risk of SCD. The EF may therefore be a useful marker to select patients for screening with I-mIBG imaging. Targeting patients in the EF 25–35 % group is also consistent with recent evidence from the National Cardiovascular Data Registry showing a lesser benefit of ICDs among patients with higher EFs [36]. Additionally, 25 % of patients who received an ICD for primary prevention may no longer meet guideline indications for ICD use at the time of generator replacement, defined as EF ≤35 % or a prior appropriate shock [37]. Patients who did not meet guideline criteria for ICD use had a subsequent ICD shock rate that was approximately one quarter of the rate in those who met the criteria. Screening with I-mIBG imaging may be useful in identifying patients with an EF ≤35 % without a prior appropriate ICD shock, who may be candidates for ICD generator explantation versus replacement.

4.1 Limitations

This study had several limitations. Data on the effectiveness of I-mIBG imaging were obtained from the ADMIRE-HF/HFX prospective studies [11, 15]. For the purposes of this model, an analysis was conducted to estimate the baseline rate and HR of SCE, defined as SCD or an appropriate ICD shock (i.e., defibrillation). This was necessary since the ADMIRE-HF/HFX study populations included patients with ICDs (most of whom never received an appropriate ICD shock), and ICDs prevent SCD only via an appropriate shock. But appropriate ICD firing is not equivalent to SCD, as fewer than one in three such events are likely to be lifesaving [26]. Therefore, in the model, we adjusted for the baseline risk of SCE by using a conservative assumption that 50 % of appropriate firings were lifesaving (and we tested a range of values from 33 to 66 % in a sensitivity analysis). The SCE relative risk (0.29; 95 % CI 0.16–0.52) used in the model was a proxy for the true relative risk of SCD, which is not known, but this SCE estimate was consistent with the HRs from the ADMIRE-HF study for arrhythmic events (0.37) and cardiac death (0.14). Additionally, the proportion of defibrillations among trial subjects with ICDs (8.5 %) was less than twice that of SCD among trial subjects without ICDs (4.6 %), suggesting that the SCE endpoint with an adjustment for non-lifesaving defibrillations provides a reasonable approach and is preferable to ignoring the effect of ICDs or treating all ICD activations as equivalent to SCD prevention. Finally, the model results in the sensitivity analysis were robust across the tested range for the SCE relative risk.
The ADMIRE-HF study had a 2-year study duration [11]. ICDs are generally recommended only in patients with a minimum 1-year expected survival, as patients with short-term expected survival are unlikely to benefit from ICDs, as they are at markedly increased risk of non-SCD-related mortality. Moreover, cost-effectiveness analyses, including this analysis, have found that the cost-effectiveness ratios for ICDs are substantially more favorable over a longer time horizon. Consequently, it was necessary to extrapolate the time horizon of the model beyond the 2-year study duration. In extrapolating, we assumed that the prognostic value of I-mIBG imaging persisted over the duration of the analysis and, as in other models of ICDs, we also assumed that the relative risk reduction of ICDs persisted over the duration of the analysis. A long-term study in Japan found that a single I-mIBG imaging test was predictive of mortality over a 10-year period [38]. Additionally, to address the potential limitations associated with extrapolation, we conducted a short-term (2-year) analysis in addition to a long-term (10-year) analysis and found that screening was cost saving and cost effective over all modeled time horizons. See the Appendix for additional information on validation of the model predictions over the extrapolated time period and lifetime analyses.
We did not account for the possibility of serial screening, where low-risk patients who do not receive an ICD may undergo a repeat test after a period of time. Additional analyses are necessary to assess the potential impact of serial screening on clinical outcomes and costs when sufficient data on disease progression are available. In the meantime, the finding that screening was cost effective over a 2-year time horizon suggests that serial screening may be cost effective in an appropriate patient population; however, the impact will depend on the frequency of rescreening and the rate of disease progression, which affect the durability of the prognostic information provided by the test. Additionally, the Japanese analysis by Nakata et al. [38] found that a single I-mIBG imaging test with a high H/M ratio was predictive of a low mortality risk over a 10-year period. This suggests that a longer rescreening interval may be appropriate, assuming no changes in other clinically relevant indicators, which would improve the cost effectiveness of a screening program in comparison with one with a shorter rescreening interval. Nor did we account for the possibility that patients who are screened and do not receive an ICD may receive one subsequently, thus only delaying the costs of ICDs. However, there is an economic benefit from delaying the costs of the device and reducing the number of generator and lead procedures. Additionally, in this patient population, it is also likely that some screened patients will die of non-arrhythmic causes prior to being reconsidered for an ICD.
Finally, this modeling study provided a population-level analysis and does not necessarily apply to any particular individual patient. The clinical risks and benefits of I-mIBG imaging for screening HF patients to identify those at low risk of SCD will need to be assessed by clinicians on the basis of the specific characteristics of individual patients. However, on the basis of the subgroup analyses we conducted, screening would generally be more effective and cost effective in patients with an LVEF of 25–35 % in comparison with patients with an LVEF <25 %.

4.2 Conclusion

According to the model, incorporating I-mIBG imaging into the assessment of guideline-eligible patients selected for ICDs may reduce costs associated with implantation of ICDs, with a minimal impact on patient outcomes. This modeling study found that screening reduced costs, in comparison with no screening, by US$5500 and US$13,431 per patient over 2 and 10 years, respectively, with less than 1 day and 2 weeks of life lost over 2 and 10 years, respectively. Additional studies are warranted to further evaluate the costs and effectiveness of screening.

Author contributions

All authors were involved in the conception and design of the study, data collection, and critical revision of the manuscript. Ken O’Day developed the model, ran the analyses, and drafted the manuscript.

Compliance with Ethical Standards

Funding source

This study was funded by a grant from GE Healthcare US.

Conflict of interest disclosure statements

Ken O’Day is an employee of the consulting company Xcenda, LLC, which received funding from GE Healthcare US to conduct this research.
Wayne Levy is an employee of the University of Washington and a consultant to GE Healthcare US. He is the local investigator in the ADMIRE-HF trial and a steering committee member of a potential ICD trial using MIBG imaging. He is also a consultant to Biotronik and has received research funding from Medtronic.
Meridith Johnson is an employee of GE Healthcare US.
At the time of this research, Arnold Jacobson was an employee of GE Healthcare US.
Open AccessThis article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 International License (http://creativecommons.org/licenses/by-nc/4.0/), which permits any noncommercial use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.

Unsere Produktempfehlungen

e.Med Interdisziplinär

Kombi-Abonnement

Für Ihren Erfolg in Klinik und Praxis - Die beste Hilfe in Ihrem Arbeitsalltag

Mit e.Med Interdisziplinär erhalten Sie Zugang zu allen CME-Fortbildungen und Fachzeitschriften auf SpringerMedizin.de.

e.Dent – Das Online-Abo der Zahnmedizin

Online-Abonnement

Mit e.Dent erhalten Sie Zugang zu allen zahnmedizinischen Fortbildungen und unseren zahnmedizinischen und ausgesuchten medizinischen Zeitschriften.

Anhänge

Appendix

Model Validation

Multiple methods were used to attempt to validate the model predictions and results.
First, the model results were cross-validated against a published decision model estimating the cost effectiveness of ICDs [23]. The Sanders model utilized data from multiple ICD trials to estimate the cost effectiveness of ICDs over a lifetime horizon and found that, depending upon the data source used, an ICD would add between 1.01 and 2.99 QALYs and between US$68,300 and US$101,500 in costs over a lifetime horizon, resulting in ICERs ranging from US$34,000 to US$70,200 per QALY. Accordingly, we reconfigured our model inputs to estimate the cost effectiveness of an ICD versus no ICD (as opposed to screening versus no screening), and we modified the cost and utility inputs in the model with values from the analysis by Sanders et al. while leaving all mortality-related inputs intact. With these inputs, over a lifetime horizon, our model estimated a gain of 1.00 QALY (1.8 undiscounted LYs) and a cost increase of US$67,183, resulting in an ICER of US$67,265 per QALY for ICDs. These results are comparable to the results obtained by Sanders et al.
Second, in our model, mortality due to SCD was separated from mortality due to pump failure and other causes of death. For the measure of ICD effectiveness, we utilized the relative risk of SCD mortality (0.40) in patients receiving ICDs in a large meta-analysis [17]. The same published meta-analysis reported a relative risk of 0.73 for ICD all-cause mortality, which was consistent with our model’s estimated relative risk of 0.75 for all-cause mortality in patients with ICDs over 5 years, thereby validating the proportion of deaths due to SCD versus other causes in our analysis.
Finally, we compared survival outcomes from our analysis with the outcomes from the MADIT-II and SCD-HeFT clinical trials. The observed 5-year mortality rates among no-ICD and ICD patients were 43 and 33 %, respectively, in MADIT-II, and 36 and 29 %, respectively, in SCD-HeFT [4, 5]. Over 5 years, our model predicted mortality rates of 26 % in patients not receiving an ICD and 19 % in patients receiving an ICD. The somewhat higher mortality rates in MADIT-II and SCD-HeFT, in comparison with our analysis, can be accounted for by the lower-risk patient population in ADMIRE, which was used for the base-case analysis. The median EF in ADMIRE was 27 versus 23 % and 25 % in MADIT-II and SCD-HeFT, respectively. In ADMIRE, only 17 % of patients were in NYHA class III, versus 24 % in MADIT-II (with an additional 5 % in class IV) and 30 % in class III in SCD-HeFT. The effect sizes for ICDs were similar across all three populations, with a 5-year predicted relative risk of mortality of 0.75 in our model and observed HRs of 0.66 and 0.77, respectively, in MADIT-II and SCD-HeFT. Varying these parameters within the sensitivity analyses did not substantially change the model results.
Lifetime outcomes for patients with an LVEF ≤35 % are listed in Table 4.
Table 4
Lifetime outcomes for patients with a left ventricular ejection fraction ≤35 %
 
No ICD
ICD
Difference between screening and no screening
No screening
Screening
Outcomes
 ICD (%)
0.0
100.0
79.1
−20.9
 Mortality (%)
100.0
100.0
100.0
0.0
 LYs
11.726
13.532
13.377
−0.155
 LYs; discounted
9.232
10.430
10.331
−0.099
 QALYs; discounted
7.236
8.153
8.077
−0.076
Costs ($)
 Screening
0
0
3209
3209
 ICD
0
41,486
32,815
−8671
 Battery/lead replacement
0
55,148
42,776
12,372
 ICD evaluation
0
3420
2661
−759
 Medical costs
164,997
180,669
179,391
−1278
 Total
164,997
280,724
260,853
−19,871
The numbers may not sum because of rounding
HF heart failure, ICD implantable cardioverter defibrillator, LY life-year, QALY quality-adjusted life-year
Literatur
1.
Zurück zum Zitat Zheng ZJ, Croft JB, Giles WH, Mensah GA. Sudden cardiac death in the United States, 1989 to 1998. Circulation. 2001;104:2158–63.CrossRefPubMed Zheng ZJ, Croft JB, Giles WH, Mensah GA. Sudden cardiac death in the United States, 1989 to 1998. Circulation. 2001;104:2158–63.CrossRefPubMed
3.
Zurück zum Zitat Epstein AE, DiMarco JP, Ellenbogen KA, et al. ACC/AHA/HRS 2008 guidelines for device-based therapy of cardiac rhythm abnormalities: executive summary. J Am Coll Cardiol. 2008;51:2085–105.CrossRef Epstein AE, DiMarco JP, Ellenbogen KA, et al. ACC/AHA/HRS 2008 guidelines for device-based therapy of cardiac rhythm abnormalities: executive summary. J Am Coll Cardiol. 2008;51:2085–105.CrossRef
4.
Zurück zum Zitat Moss AJ, Zareba W, Hall WJ, Klein H, Wilber DJ, Cannom DS, Daubert JP, Higgins SL, Brown MW, Andrews ML, Multicenter Automatic Defibrillator Implantation Trial II Investigators. Prophylactic implantation of a defibrillator in patients with myocardial infarction and reduced ejection fraction. New Engl J Med. 2002;346:877–83.CrossRefPubMed Moss AJ, Zareba W, Hall WJ, Klein H, Wilber DJ, Cannom DS, Daubert JP, Higgins SL, Brown MW, Andrews ML, Multicenter Automatic Defibrillator Implantation Trial II Investigators. Prophylactic implantation of a defibrillator in patients with myocardial infarction and reduced ejection fraction. New Engl J Med. 2002;346:877–83.CrossRefPubMed
5.
Zurück zum Zitat Bardy GH, Lee KL, Mark DB, Sudden Cardiac Death in Heart Failure Trial (SCD-HeFT) Investigators, et al. Amiodarone or an implantable cardioverter-defibrillator for congestive heart failure. New Engl J Med. 2005;352:225–37.CrossRefPubMed Bardy GH, Lee KL, Mark DB, Sudden Cardiac Death in Heart Failure Trial (SCD-HeFT) Investigators, et al. Amiodarone or an implantable cardioverter-defibrillator for congestive heart failure. New Engl J Med. 2005;352:225–37.CrossRefPubMed
6.
Zurück zum Zitat Kadish A, Schaechter A, Subacius H, Thattassery E, Sanders W, Anderson KP, Dyer A, Goldberger J, Levine J. Patients with recently diagnosed nonischemic cardiomyopathy benefit from implantable cardioverter-defibrillators. J Am Coll Cardiol. 2006;47:2477–82.CrossRefPubMed Kadish A, Schaechter A, Subacius H, Thattassery E, Sanders W, Anderson KP, Dyer A, Goldberger J, Levine J. Patients with recently diagnosed nonischemic cardiomyopathy benefit from implantable cardioverter-defibrillators. J Am Coll Cardiol. 2006;47:2477–82.CrossRefPubMed
7.
Zurück zum Zitat Gialama F, Prezerakos P, Maniadakis N. The cost effectiveness of implantable cardioverter defibrillators: a systematic review of economic evaluations. Appl Health Econ Health Policy. 2014;12:41–9.CrossRefPubMed Gialama F, Prezerakos P, Maniadakis N. The cost effectiveness of implantable cardioverter defibrillators: a systematic review of economic evaluations. Appl Health Econ Health Policy. 2014;12:41–9.CrossRefPubMed
8.
Zurück zum Zitat Goldenberg I, Vyas AK, Hall WJ, Moss AJ, Wang H, He H, Zareba W, McNitt S, Andrews ML, MADIT II Investigators. Risk stratification for primary implantation of a cardioverter-defibrillator in patients with ischemic left ventricular dysfunction. J Am Coll Cardiol. 2008;51:288–96.CrossRefPubMed Goldenberg I, Vyas AK, Hall WJ, Moss AJ, Wang H, He H, Zareba W, McNitt S, Andrews ML, MADIT II Investigators. Risk stratification for primary implantation of a cardioverter-defibrillator in patients with ischemic left ventricular dysfunction. J Am Coll Cardiol. 2008;51:288–96.CrossRefPubMed
9.
Zurück zum Zitat Lorvidhaya P, Addo K, Chodosh A, Iyer V, Lum J, Buxton AE. Sudden cardiac death risk stratification in patients with heart failure. Heart Fail Clin. 2011;7(2):157–74, vii. Lorvidhaya P, Addo K, Chodosh A, Iyer V, Lum J, Buxton AE. Sudden cardiac death risk stratification in patients with heart failure. Heart Fail Clin. 2011;7(2):157–74, vii.
10.
Zurück zum Zitat van Rees JB, Borleffs CJ, van Welsenes GH, et al. Clinical prediction model for death prior to appropriate therapy in primary prevention implantable cardioverter defibrillator patients with ischaemic heart disease: the FADES Risk Score. Heart. 2012;98:872–7.CrossRefPubMed van Rees JB, Borleffs CJ, van Welsenes GH, et al. Clinical prediction model for death prior to appropriate therapy in primary prevention implantable cardioverter defibrillator patients with ischaemic heart disease: the FADES Risk Score. Heart. 2012;98:872–7.CrossRefPubMed
11.
Zurück zum Zitat Jacobson AF, Senior R, Cerqueira MD, ADMIRE-HF Investigators, et al. Myocardial iodine-123 meta-iodobenzylguanidine imaging and cardiac events in heart failure: results of the prospective ADMIRE-HF (AdreView Myocardial Imaging for Risk Evaluation in Heart Failure) Study. J Am Coll Cardiol. 2010;55:2212–21.CrossRefPubMed Jacobson AF, Senior R, Cerqueira MD, ADMIRE-HF Investigators, et al. Myocardial iodine-123 meta-iodobenzylguanidine imaging and cardiac events in heart failure: results of the prospective ADMIRE-HF (AdreView Myocardial Imaging for Risk Evaluation in Heart Failure) Study. J Am Coll Cardiol. 2010;55:2212–21.CrossRefPubMed
12.
Zurück zum Zitat Ketchum ES, Jacobson AF, Caldwell JH, et al. Selective improvement in Seattle Heart Failure Model risk stratification using iodine-123 meta-iodobenzylguanidine imaging. J Nucl Cardiol. 2012;19:1007–16.CrossRefPubMed Ketchum ES, Jacobson AF, Caldwell JH, et al. Selective improvement in Seattle Heart Failure Model risk stratification using iodine-123 meta-iodobenzylguanidine imaging. J Nucl Cardiol. 2012;19:1007–16.CrossRefPubMed
13.
Zurück zum Zitat Jain JK, Hauptman PJ, Spertus JA, et al. Incremental utility of iodine-123 meta-iodobenzylguanidine imaging beyond established heart failure risk models. J Cardiac Fail. 2014;20:577–83.CrossRef Jain JK, Hauptman PJ, Spertus JA, et al. Incremental utility of iodine-123 meta-iodobenzylguanidine imaging beyond established heart failure risk models. J Cardiac Fail. 2014;20:577–83.CrossRef
14.
15.
Zurück zum Zitat Narula J, Gerson M, Thomas GS, Cerqueira MD, Jacobson AF. I-MIBG imaging for prediction of mortality and potentially fatal events in heart failure: the ADMIRE-HFX study. J Nucl Med. 2015;56:1011–8.CrossRefPubMed Narula J, Gerson M, Thomas GS, Cerqueira MD, Jacobson AF. I-MIBG imaging for prediction of mortality and potentially fatal events in heart failure: the ADMIRE-HFX study. J Nucl Med. 2015;56:1011–8.CrossRefPubMed
16.
Zurück zum Zitat Gasparini M, Menozzi C, Proclemer A, et al. A simplified biventricular defibrillator with fixed long detection intervals reduces implantable cardioverter defibrillator (ICD) interventions and heart failure hospitalizations in patients with non-ischaemic cardiomyopathy implanted for primary prevention: the RELEVANT study. Eur Heart J. 2009;30:2758–67.CrossRefPubMedPubMedCentral Gasparini M, Menozzi C, Proclemer A, et al. A simplified biventricular defibrillator with fixed long detection intervals reduces implantable cardioverter defibrillator (ICD) interventions and heart failure hospitalizations in patients with non-ischaemic cardiomyopathy implanted for primary prevention: the RELEVANT study. Eur Heart J. 2009;30:2758–67.CrossRefPubMedPubMedCentral
17.
Zurück zum Zitat Theuns DA, Smith T, Hunink MG, Bardy GH, Jordaens L. Effectiveness of prophylactic implantation of cardioverter-defibrillators without cardiac resynchronization therapy in patients with ischaemic or non-ischaemic heart disease: a systematic review and meta-analysis. Europace. 2010;12:1564–70.CrossRefPubMedPubMedCentral Theuns DA, Smith T, Hunink MG, Bardy GH, Jordaens L. Effectiveness of prophylactic implantation of cardioverter-defibrillators without cardiac resynchronization therapy in patients with ischaemic or non-ischaemic heart disease: a systematic review and meta-analysis. Europace. 2010;12:1564–70.CrossRefPubMedPubMedCentral
18.
Zurück zum Zitat Dewland TA, Pellegrini CN, Wang Y, Marcus GM, Keung E, Varosy PD. Dual-chamber implantable cardioverter-defibrillator selection is associated with increased complication rates and mortality among patients enrolled in the NCDR Implantable Cardioverter-Defibrillator Registry. J Am Coll Cardiol. 2011;58:1007–13.CrossRefPubMed Dewland TA, Pellegrini CN, Wang Y, Marcus GM, Keung E, Varosy PD. Dual-chamber implantable cardioverter-defibrillator selection is associated with increased complication rates and mortality among patients enrolled in the NCDR Implantable Cardioverter-Defibrillator Registry. J Am Coll Cardiol. 2011;58:1007–13.CrossRefPubMed
19.
Zurück zum Zitat Arias E. United States life tables, 2008. National vital statistics reports, vol. 61(3). Hyattsville: National Center for Health Statistics; 2012. Arias E. United States life tables, 2008. National vital statistics reports, vol. 61(3). Hyattsville: National Center for Health Statistics; 2012.
20.
Zurück zum Zitat Murphy SL, Xu J, Kochanek KD. Deaths: final data for 2009. National vital statistics reports. Vol 60(4). Hyattsville: National Center for Health Statistics; 2012. Murphy SL, Xu J, Kochanek KD. Deaths: final data for 2009. National vital statistics reports. Vol 60(4). Hyattsville: National Center for Health Statistics; 2012.
21.
Zurück zum Zitat Epstein AE, Kay GN, Plumb VJ, ACT Investigators, et al. Implantable cardioverter-defibrillator prescription in the elderly. Heart Rhythm. 2009;6:1136–43.CrossRefPubMed Epstein AE, Kay GN, Plumb VJ, ACT Investigators, et al. Implantable cardioverter-defibrillator prescription in the elderly. Heart Rhythm. 2009;6:1136–43.CrossRefPubMed
23.
Zurück zum Zitat Sanders GD, Hlatky MA, Owens DK. Cost-effectiveness of implantable cardioverter-defibrillators. New Engl J Med. 2005;353:1471–80.CrossRefPubMed Sanders GD, Hlatky MA, Owens DK. Cost-effectiveness of implantable cardioverter-defibrillators. New Engl J Med. 2005;353:1471–80.CrossRefPubMed
24.
Zurück zum Zitat Rordorf R, Poggio L, Savastano S, et al. Failure of implantable cardioverter-defibrillator leads: a matter of lead size? Heart Rhythm. 2013;10:184–90.CrossRefPubMed Rordorf R, Poggio L, Savastano S, et al. Failure of implantable cardioverter-defibrillator leads: a matter of lead size? Heart Rhythm. 2013;10:184–90.CrossRefPubMed
25.
Zurück zum Zitat Wilkoff BL, Auricchio A, Brugada J, Heart Rhythm Society (HRS), European Heart Rhythm Association (EHRA), American College of Cardiology (ACC), American Heart Association (AHA), European Society of Cardiology (ESC), Heart Failure Association of ESC (HFA), Heart Failure Society of America (HFSA), et al. HRS/EHRA expert consensus on the monitoring of cardiovascular implantable electronic devices (CIEDs): description of techniques, indications, personnel, frequency and ethical considerations. Europace. 2008;10:707–25.CrossRefPubMed Wilkoff BL, Auricchio A, Brugada J, Heart Rhythm Society (HRS), European Heart Rhythm Association (EHRA), American College of Cardiology (ACC), American Heart Association (AHA), European Society of Cardiology (ESC), Heart Failure Association of ESC (HFA), Heart Failure Society of America (HFSA), et al. HRS/EHRA expert consensus on the monitoring of cardiovascular implantable electronic devices (CIEDs): description of techniques, indications, personnel, frequency and ethical considerations. Europace. 2008;10:707–25.CrossRefPubMed
26.
Zurück zum Zitat Poole JE, Johnson GW, Hellkamp AS, et al. Prognostic importance of defibrillator shocks in patients with heart failure. New Engl J Med. 2008;359:1009–17.CrossRefPubMedPubMedCentral Poole JE, Johnson GW, Hellkamp AS, et al. Prognostic importance of defibrillator shocks in patients with heart failure. New Engl J Med. 2008;359:1009–17.CrossRefPubMedPubMedCentral
28.
Zurück zum Zitat Li Y, Levy WC, Neilson MP, et al. Associations between Seattle Heart Failure Model scores and medical resource use and costs: findings from HF-ACTION. J Cardiac Fail. 2014;20:541–7.CrossRef Li Y, Levy WC, Neilson MP, et al. Associations between Seattle Heart Failure Model scores and medical resource use and costs: findings from HF-ACTION. J Cardiac Fail. 2014;20:541–7.CrossRef
29.
Zurück zum Zitat Unroe KT, Greiner MA, Hernandez AF, Whellan DJ, Kaul P, Schulman KA, Peterson ED, Curtis LH. Resource use in the last 6 months of life among Medicare beneficiaries with heart failure, 2000–2007. Arch Intern Med. 2011;171:196–203.CrossRefPubMed Unroe KT, Greiner MA, Hernandez AF, Whellan DJ, Kaul P, Schulman KA, Peterson ED, Curtis LH. Resource use in the last 6 months of life among Medicare beneficiaries with heart failure, 2000–2007. Arch Intern Med. 2011;171:196–203.CrossRefPubMed
30.
Zurück zum Zitat Li Y, Neilson MP, Whellan DJ, Schulman KA, Levy WC, Reed SD. Associations between Seattle Heart Failure Model scores and health utilities: findings from HF-ACTION. J Cardiac Fail. 2013;19:311–6.CrossRef Li Y, Neilson MP, Whellan DJ, Schulman KA, Levy WC, Reed SD. Associations between Seattle Heart Failure Model scores and health utilities: findings from HF-ACTION. J Cardiac Fail. 2013;19:311–6.CrossRef
31.
Zurück zum Zitat Fryback DG, Dasbach EJ, Klein R, Klein BE, Dorn N, Peterson K, Martin PA. The Beaver Dam Health Outcomes Study: initial catalog of health state quality factors. Med Decis Making. 1993;13:89–102.CrossRefPubMed Fryback DG, Dasbach EJ, Klein R, Klein BE, Dorn N, Peterson K, Martin PA. The Beaver Dam Health Outcomes Study: initial catalog of health state quality factors. Med Decis Making. 1993;13:89–102.CrossRefPubMed
32.
Zurück zum Zitat Nelson AL, Cohen JT, Greenberg D, Kent DM. Much cheaper, almost as good: decrementally cost-effective medical innovation. Ann Intern Med. 2009;151(9):662–7.CrossRefPubMed Nelson AL, Cohen JT, Greenberg D, Kent DM. Much cheaper, almost as good: decrementally cost-effective medical innovation. Ann Intern Med. 2009;151(9):662–7.CrossRefPubMed
33.
Zurück zum Zitat Go AS, Mozaffarian D, Roger VL, et al. Heart disease and stroke statistics—2013 update: a report from the American Heart Association. Circulation. 2013;127(1):e6–245.CrossRefPubMed Go AS, Mozaffarian D, Roger VL, et al. Heart disease and stroke statistics—2013 update: a report from the American Heart Association. Circulation. 2013;127(1):e6–245.CrossRefPubMed
34.
Zurück zum Zitat Mehra MR, Albert NM, Curtis AB, Gheorghiade M, Heywood JT, Liu Y, O’Connor CM, Reynolds D, Walsh MN, Yancy CW, Fonarow GC. Factors associated with improvement in guideline-based use of ICDs in eligible heart failure patients. Pacing Clin Electrophysiol. 2012;35:135–45.CrossRefPubMed Mehra MR, Albert NM, Curtis AB, Gheorghiade M, Heywood JT, Liu Y, O’Connor CM, Reynolds D, Walsh MN, Yancy CW, Fonarow GC. Factors associated with improvement in guideline-based use of ICDs in eligible heart failure patients. Pacing Clin Electrophysiol. 2012;35:135–45.CrossRefPubMed
35.
Zurück zum Zitat Pedretti RFE, Curnis A, Massa R, et al. Proportion of patients needing an implantable cardioverter defibrillator on the basis of current guidelines: impact on healthcare resources in Italy and the USA. Data from the ALPHA study registry. Europace. 2010;12:1105–11.CrossRefPubMed Pedretti RFE, Curnis A, Massa R, et al. Proportion of patients needing an implantable cardioverter defibrillator on the basis of current guidelines: impact on healthcare resources in Italy and the USA. Data from the ALPHA study registry. Europace. 2010;12:1105–11.CrossRefPubMed
36.
Zurück zum Zitat Al-Khatib SM, Hellkamp AS, Fonarow GC, et al. Association between prophylactic implantable cardioverter-defibrillators and survival in patients with left ventricular ejection fraction between 30 % and 35 %. J Am Med Assoc. 2014;311(21):2209–15.CrossRef Al-Khatib SM, Hellkamp AS, Fonarow GC, et al. Association between prophylactic implantable cardioverter-defibrillators and survival in patients with left ventricular ejection fraction between 30 % and 35 %. J Am Med Assoc. 2014;311(21):2209–15.CrossRef
37.
Zurück zum Zitat Kini V, Soufi MK, Deo R, Epstein AE, Bala R, Riley M, Groeneveld PW, Shalaby A, Dixit S. Appropriateness of primary prevention implantable cardioverter-defibrillators at the time of generator replacement: are indications still met? J Am Coll Cardiol. 2014;63(22):2388–94.CrossRefPubMed Kini V, Soufi MK, Deo R, Epstein AE, Bala R, Riley M, Groeneveld PW, Shalaby A, Dixit S. Appropriateness of primary prevention implantable cardioverter-defibrillators at the time of generator replacement: are indications still met? J Am Coll Cardiol. 2014;63(22):2388–94.CrossRefPubMed
38.
Zurück zum Zitat Nakata T, Nakajima K, Yamashina S, et al. A pooled analysis of multicenter cohort studies of 123i-mibg imaging of sympathetic innervation for assessment of long-term prognosis in heart failure. J Am Coll Cardiol Img. 2013;6:772–84.CrossRef Nakata T, Nakajima K, Yamashina S, et al. A pooled analysis of multicenter cohort studies of 123i-mibg imaging of sympathetic innervation for assessment of long-term prognosis in heart failure. J Am Coll Cardiol Img. 2013;6:772–84.CrossRef
Metadaten
Titel
Cost-Effectiveness Analysis of Iodine-123 Meta-Iodobenzylguanidine Imaging for Screening Heart Failure Patients Eligible for an Implantable Cardioverter Defibrillator in the USA
verfasst von
Ken O’Day
Wayne C. Levy
Meridith Johnson
Arnold F. Jacobson
Publikationsdatum
01.06.2016
Verlag
Springer International Publishing
Erschienen in
Applied Health Economics and Health Policy / Ausgabe 3/2016
Print ISSN: 1175-5652
Elektronische ISSN: 1179-1896
DOI
https://doi.org/10.1007/s40258-016-0234-5

Weitere Artikel der Ausgabe 3/2016

Applied Health Economics and Health Policy 3/2016 Zur Ausgabe