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. Author manuscript; available in PMC: 2022 Apr 28.
Published in final edited form as: Circulation. 2022 Mar 7;145(17):1312–1323. doi: 10.1161/CIRCULATIONAHA.121.057631

Beyond Ten-Year Risk: A Cost-Effectiveness Analysis of Statins for the Primary Prevention of Cardiovascular Disease

Ciaran N Kohli-Lynch 1,2,, James Lewsey 2, Kathleen A Boyd 2, Dustin D French 1,3,4, Neil Jordan 1,3,5, Andrew E Moran 6, Naveed Sattar 7, David Preiss 8, Andrew H Briggs 2,9
PMCID: PMC9022692  EMSID: EMS143923  PMID: 35249370

Abstract

Background

Cholesterol guidelines typically prioritize primary prevention statin therapy based on 10-year risk of cardiovascular disease. The advent of generic pricing may justify expansion of statin eligibility. Moreover, 10-year risk may not be the optimal approach for statin prioritization. We estimated the cost-effectiveness of expanding preventive statin eligibility and evaluated novel approaches to prioritization from a Scottish health sector perspective.

Methods

A computer simulation model predicted long-term health and cost outcomes in Scottish adults aged ≥40 years. Epidemiologic analysis was completed using the Scottish Heart Health Extended Cohort, Scottish Morbidity Records, and National Records of Scotland. A simulation cohort was constructed with data from the Scottish Health Survey 2011 and contemporary population estimates. Treatment and cost inputs were derived from published literature and health service cost data. The main outcome measure was the lifetime incremental cost-effectiveness ratio (ICER), evaluated as cost (GBP 2020) per quality-adjusted life year (QALY) gained.

Three approaches to statin prioritization were analyzed: 10-year risk scoring using the ASSIGN score, age-stratified (Age-Strat) risk thresholds to increase treatment rates in younger individuals, and absolute risk reduction (ARR)-guided therapy to increase treatment rates in individuals with elevated cholesterol levels. For each approach, two policies were considered: one which treats the same number of individuals as an ASSIGN score ≥20% (ASSIGN 20, Age-Strat 20, ARR 20) and one which treats the same number as an ASSIGN score ≥10% (ASSIGN 10, Age-Strat 10, ARR 10).

Results

Compared to ASSIGN 20, reducing the risk threshold for statin initiation to 10% expanded eligibility from 804,000 (32% of CVD-free adults aged ≥40 years) to 1,445,500 individuals (58%). This policy would be cost-effective (ICER: £12,300/QALY, 95% CI: £7,690/QALY-£26,500/QALY). Incremental to ASSIGN 20, ARR 20 produced around 8,800 QALYs and was cost-effective (£7,050/QALY, 95% CI: £4,560/QALY-£10,700/QALY). Incremental to ASSIGN 10, ARR 10 produced around 7,950 QALYs and was cost-effective (£11,700/QALY, 95% CI: £9,250/QALY-£16,900/QALY). Both age-stratified risk threshold strategies were dominated (i.e., more expensive and less effective than alternative treatment strategies).

Conclusions

Generic pricing has rendered preventive statin therapy cost-effective for many adults. Absolute risk reduction-guided therapy is more effective than 10-year risk scoring and is cost-effective.

Keywords: cardiovascular disease, risk, cost-effectiveness, cholesterol, statins

Introduction

Cardiovascular disease (CVD) is the leading cause of morbidity and mortality worldwide.1 In the U.K. more than 140,000 deaths were attributable to CVD in 2018 and rates are disproportionately high in Scotland.2,3 Hydroxymethylglutaryl–coenzyme A reductase inhibitors (statins) are a cornerstone treatment for the primary prevention of CVD. They are a first-line treatment for lipid-lowering therapy, their efficacy and safety has been established in high-quality clinical trials, and recent price reductions have made this drug class very affordable.

Individuals without CVD are often prioritized for preventive statin therapy based on 10-year risk of experiencing a primary CVD event, estimated using 10-year CVD risk scores.47 The National Institute for Health and Care Excellence (NICE) in England and Wales recommends statins for individuals aged 40 years and above with a 10-year CVD risk score ≥10%, type 1 diabetes mellitus, chronic kidney disease, or total cholesterol ≥ 7.5 mmol/L.5,8 The risk threshold for statin eligibility had previously been 20%.

Unlike NICE, the Scottish Intercollegiate Guidelines Network (SIGN) has retained a risk threshold of 20% for statin eligibility.6 SIGN recommends that risk is assessed using the ASSIGN risk score, which was developed with Scottish data. The risk factors included in the ASSIGN score are age, sex, diabetes, systolic blood pressure (SBP), total cholesterol (TC), high-density lipoprotein cholesterol (HDL-C), cigarettes per day (CPD), Scottish Index of Multiple Deprivation (SIMD), and family history of CVD.

Reducing the risk threshold in England and Wales was partly justified by the advent of generic pricing for most statin formulations. Generic statin pricing expanded the proportion of the population who would be cost-effective to treat.912 The cost-effectiveness of lowering the threshold or pursuing alternative prioritization strategies in Scotland has not been evaluated. Most other countries also still use 10-year risk thresholds.13

We aimed to (i) estimate the cost-effectiveness of lowering the 10-year CVD risk threshold for statin eligibility in Scotland, and (ii) estimate the cost-effectiveness of novel approaches to statin prioritization, an analysis highly relevant to future statin prescribing in many other countries worldwide.

Methods

The Scottish CVD Policy Model, the decision-analytic model employed in our analysis, and the program code used to run the model are publicly available and can be accessed at https://github.com/yiqiaoxin/CVDmodel. The Scottish Health Survey is publicly available from the UK Data Service and can be accessed at https://beta.ukdataservice.ac.uk/datacatalogue/series/series?id=2000047.

Novel Approaches to Statin Prioritization

Novel approaches to statin prioritization may be preferable to 10-year risk scoring. Two alternative approaches to statin prioritization are age-stratified risk thresholds and absolute risk reduction.

Age-stratified risk thresholds

The age-stratified risk threshold approach involves setting separate risk thresholds for statin initiation in different age-groups. This approach has been introduced in Norway and is predicated on the concept that risk scores are poorly calibrated for some subsets of the CVD-free population.14 This includes younger individuals who are at high-risk of developing CVD relative to their age-group peers.15

Some CVD risk factors are generic to a range of adverse health conditions. For example, age is a risk factor for CVD but is also predictive of non-CVD mortality. Ten-year CVD risk scores disregard the competing risk of non-CVD mortality and therefore may overstate potential benefit from preventive therapy. Using age-stratified risk thresholds to target treatment at younger individuals with unhealthy levels of modifiable risk factors may produce greater health benefits than current practice.

Absolute risk reduction

The absolute risk reduction (ARR) approach to statin prioritization recognizes that reduction in cholesterol is the major driver of statin benefit and that this can be estimated from baseline cholesterol.16 Several major clinical trials have analyzed the effect of statins on CVD risk. This enables powerful inference of statin effectiveness in patient subgroups. A key finding has been that relative risk reduction (RRR) of CVD from statin therapy is near constant at approximately 22% per 1.0 mmol/L reduction in low-density lipoprotein cholesterol (LDL-C) over five years.17 Further, statins tend to produce a greater reduction in individuals with higher baseline LDL-C. Combining these two findings – RRR applied to baseline absolute risk – suggests that individuals with higher baseline LDL-C achieve greater ARR from statin therapy.

Consider two individuals with same ASSIGN 10-year risk score, one with an LDL-C of 4.0 mmol/L and one with an LDL-C of 2.0 mmol/L. If atorvastatin 20mg reduces LDL-C by around 40%, giving it to these individuals yields reductions of a 1.6 mmol/L and 0.8 mmol/L, respectively. This translates to a 33% RRR for the former individual and an 18% RRR for the latter.

To prevent CVD events, we are ultimately concerned with absolute risk reduction. Thanassoulis et al. developed an equation to predict 10-year ARR from statin therapy.16 This equation predicts that ARR from statins is the product of an individual’s baseline 10-year risk and their baseline LDL-C (ldlb). The equation is as follows:

ARR=SunxSun;x=HRldlb*40%. (Equation 1)

Sun and HR represent 10-year untreated survival and the hazard ratio associated with a unitary reduction in LDL-C, respectively. The equation assumes that statins produce a 40% reduction in LDL-C. We modified this equation to account for the effect of statins on non-HDL cholesterol (non-HDL-C) rather than LDL-C in our analysis.

Scottish CVD Policy Model

The Scottish CVD Policy model was employed to estimate the cost-effectiveness of different statin policies (Supplemental Material, eTables 1-6). This open-source, decision-analytic model was developed in the R programming language (Version 4.0.4, R Core Team)18 and has been validated in the Scottish population (eFigures 1-2).1921 The model predicts life expectancy, quality-adjusted life years (QALYs), and healthcare costs for individuals receiving care in the Scottish National Health Service based on their ASSIGN risk factors.

Figure 1 shows a diagram of the model. Individuals enter CVD-free and transition to one of four primary event types throughout their lives: non-fatal coronary heart disease (CHD), non-fatal cerebrovascular disease (CBVD), fatal CVD, or fatal non-CVD. After the occurrence of a non-fatal primary event, individuals progress to an absorbing state representing all-cause mortality.

Figure 1. Structure of the Scottish CVD Policy Model.

Figure 1

CBVD – Cerebrovascular Disease, CHD – Coronary Heart Disease, CPD – Cigarettes per Day, CVD – Cardiovascular Disease, HDL-C – High-Density Lipoprotein Cholesterol, SBP – Systolic Blood Pressure, SIMD – Scottish Index of Multiple Deprivation

Probability of state transition was determined by competing risk parametric survival analysis of a linked Scottish Heart Health Extended Cohort (SHHEC)-Scottish Morbidity Records (SMR) dataset.22,23 SHHEC was used in the construction of the ASSIGN risk score. Researchers collected baseline risk factor information for more than 13,000 Scottish adults commencing in 1986. The SMR is an electronic database which records all hospitalized events that occur in the Scottish NHS. Baseline risk factors were linked with the SMR via participants’ unique NHS identification number.

Each state in the model has an assigned disutility value, derived from a survey of the Scottish population. Individuals who have not experienced a primary CVD event are attributed a background health-related quality of life, disaggregated by age and sex. Individuals inhabiting one of the two non-fatal chronic CVD states are assigned a decrement to their background quality of life, determined by the type of primary event (CHD or CBVD). Within the chronic disease states, individuals may experience further utility decrements attributable to secondary CVD events (i.e., myocardial infarctions, strokes, transient ischemic attacks, heart failure, peripheral artery disease, and ‘other’ CVD events).

All states in the model are assigned healthcare costs, derived from a combination of SMR data and English tariffs for elective and non-elective hospitalizations.24 When the primary event is non-fatal, linear equations predict pre- and post-event hospitalization costs. These equations include age at primary event, SIMD, and family history of CVD as covariates.

The model estimates outcomes through cohort simulation. It deterministically assigns individuals to health states, based on the SHHEC-SMR risk functions and a profile of CVD risk factors. Health and cost estimates are produced for each risk factor profile by summing the probability-weighted outcomes associated with each health state that an individual may encounter. This process is outlined in the Supplemental Material. Heterogeneity in the population is reflected by simulating multiple risk factor profiles that are reflective of the CVD-free Scottish population.

Simulation data

To simulate the Scottish CVD-free population, information on risk factor and age distributions were required. Our analysis was completed using a combination of the Scottish Health Survey (SHS) 2011 and contemporary population estimates from the National Records of Scotland.25,26

The SHS is a study of public health and ASSIGN risk factors values can be derived for all respondents from the 2011 survey data. The SHS 2011 is the most contemporaneous dataset regarding the distribution of CVD risk factors in Scotland. Subsequent waves of the survey have not included a nurse visit so have not collected blood samples or recorded SBP.

We excluded individuals aged <40 years and those with existing CVD from our dataset. Individuals currently receiving statins were ‘detreated’, by modifying cholesterol levels according to treatment effects observed in randomized clinical trials.17 A relatively small number of respondents received nurse visits. This meant that data were sparse for three important covariates: TC, HDL-C, and SBP. For most individuals, we assumed these variables were missing at random and they were imputed with stochastic regression.27 For individuals who refused nurse visits, we performed multiple imputation (eTable 7).28 Individuals with familial hypercholesterolaemia, defined as TC ≥7.5 mmol/L and a family history of premature CVD or TC ≥8.0 mmol/L, are high priority for statin therapy and were omitted from the analysis.6 In a scenario analysis, we further excluded individuals with diabetes mellitus.

More information on the SHS and our imputation procedure is included in the Supplemental Material.

Treatment criteria

We first aimed to establish the cost-effectiveness of expanding statin eligibility. This was achieved by analyzing three treatment strategies in the SHS cohort: no treatment, statins for individuals with ASSIGN score ≥20% (ASSIGN 20), and statins for individuals with ASSIGN score ≥10% (ASSIGN 10).

Our second objective was to estimate the cost-effectiveness of novel approaches to statin prioritization. Age-stratified risk thresholds and ARR were analyzed. Two strategies were defined for each novel strategy: one which treated approximately the same number of people as ASSIGN 20 (Age-Strat 20, ARR 20) and one which treated approximately the same number of people as ASSIGN 10 (Age-Strat 10, ARR 10).

For age-stratified risk threshold policies, we set separate risk thresholds for five-year age-groups from ages 40 to 79 and individuals aged ≥80 years. These thresholds targeted treatment at individuals who were high-risk relative to their age-group peers, so increased the proportion of younger individuals who were treated (Supplemental Material).

We estimated ARR from statins for everyone in the SHS cohort using a modified form of Equation 1. Due to data limitations, LDL-C was replaced with non-HDL-C. The percentage reduction in non-HDL-C and HR per 1.0 mmol/L reduction were altered in the equation accordingly. We established ARR thresholds that would treat the same proportion of the population as ASSIGN 20 and ASSIGN 10, respectively.

The specific age-stratified risk threshold and ARR policies that we analyzed are shown in Table 1. The proportions of the Scottish population eligible for treatment under different risk and ARR thresholds are presented in Table 1 and eFigures 3-5. Ten-year risk, age-stratified risk threshold, and absolute risk reduction strategies which treated the same number of people were compared using traditional cost-effectiveness decision rules.29

Table 1. Statin eligibility criteria and percentage eligible for treatment under different treatment strategies.

10-Year CVD Risk
Threshold (% Eligible)
10-Year ARR
Threshold (% Eligible)
ASSIGN
20
ASSIGN
10
Age-Strat
20
Age-Strat
10
ARR
20
ARR
10
Age-Group (Years) 40-44 20.0 (0.2) 10.0 (4.7) 4.8 (32.1) 3.3 (57.7) 3.97 (0.8) 2.00 (8.0)
45-49 20.0 (1.2) 10.0 (14.0) 7.2 (32.1) 4.9 (57.7) 3.97 (2.6) 2.00 (20.0)
50-54 20.0 (3.6) 10.0 (33.9) 10.3 (32.1) 7.2 (57.7) 3.97 (7.8) 2.00 (39.2)
55-59 20.0 (13.4) 10.0 (60.5) 14.4 (32.1) 10.4 (57.7) 3.97 (20.5) 2.00 (59.8)
60-64 20.0 (32.9) 10.0 (81.6) 20.4 (32.1) 14.9 (57.7) 3.97 (36.8) 2.00 (76.0)
65-69 20.0 (57.6) 10.0 (95.2) 26.6 (32.1) 20.0 (57.7) 3.97 (54.1) 2.00 (87.9)
70-74 20.0 (79.6) 10.0 (100.0) 36.4 (32.1) 26.9 (57.7) 3.97 (69.3) 2.00 (95.5)
75-79 20.0 (96.0) 10.0 (99.6) 43.8 (32.1) 34.8 (57.7) 3.97 (86.9) 2.00 (98.2)
80+ 20.0 (100.0) 10.0 (100.0) 62.9 (32.1) 48.8 (57.7) 3.97 (91.2) 2.00 (99.3)
Overall 20.0 (32.1) 10.0 (57.7) n/a (32.1) n/a (57.7) 3.97 (32.1) 2.00 (57.7)

ARR – absolute risk reduction; Age-Strat – age-stratified risk thresholds; CVD – cardiovascular disease

Statin treatment parameters

Statins reduced risk of non-fatal CHD, non-fatal CBVD, and fatal CVD in the model. This was achieved by lowering individuals’ non-HDL-C levels (Table 2). Patients receiving statins incurred side effects and accumulated treatment and monitoring costs (eTable 8).

Table 2. Intermediate-intensity statin treatment parameters.

Parameter Base
Case
PSA
Distribution
Lower Upper Source
Statin effectiveness
Non-HDL cholesterol reduction (%) -26.0 Beta -35.0 -15.0 17
Relative risk per 1.0 mmol/L reduction in non-HDL cholesterol
Non-fatal coronary heart disease 0.77 Beta 0.75 0.80 17
Non-fatal stroke 0.87 Beta 0.83 0.91 17
Fatal cardiovascular disease 0.90 Beta 0.86 0.92 17
Any cardiovascular disease* 0.79 np nt nt 17
Side effects and treatment disutility
Type-2 diabetes absolute risk increase (%) 0.5 Log-normal 0.1 1.0 33
Annual pill-taking disutility 0.002 Beta 0.000 0.004 11
Annual treatment-related costs (£)
Atorvastatin 20mg/daily 13.44 Gamma 12.65 26.35 35
Monitoring, first year 102.51 Gamma 63.51 141.51 5,34,36,38
Monitoring, subsequent 55.48 Gamma 16.48 94.48 5,34,36,38
Other costs
Risk assessment 17.68 Gamma 10.68 24.68 5,34,36,38
Annual type-2 diabetes treatment 314.33 Gamma 156.50 469.50 5,34,36,38
Annual discount rate (%) 3.5 np 1.5 5.5 37
*

Used to estimate individual-level absolute risk reduction from statin therapy

Assumed equal for health and cost outcomes

np – not included in probabilistic sensitivity analysis

nt – not included in traditional sensitivity analyses

The Scottish CVD Policy Model does not include LDL-C as a predictor of CVD risk. Instead, it includes TC and HDL-C. Similarly, the SHS only collected data on TC and HDL-C. Evidence suggests that statins produce a 26% reduction in non-HDL-C and are associated with relative risks of 0.77, 0.87, and 0.90 for non-fatal CHD, non-fatal stroke, and fatal CVD per 1.0 mmol/L reduction in non-HDL-C, respectively.17 These values were derived from secondary analysis of a Cholesterol Treatment Trialists’ meta-analysis and are likely conservative estimates of the impact of statins on CVD risk as mediated by non-HDL-C reduction.30

Statins are a relatively safe treatment with a well-established side effect profile.31,32 In the model, statins increased absolute risk of new onset diabetes by 0.5%.33 An annual pill-taking disutility of 0.002 QALYs was also applied.11

Statin costs were obtained from the British National Formulary.34 An annual cost of £13.44 was applied for every year on statin therapy, representing the annual NHS drug tariff price for generic atorvastatin 20mg.35 Alternative moderate-intensity statins are available, and their prices were used to define upper and lower limits in sensitivity analyses.

All individuals experienced screening costs upon entering the model. Patients prescribed statins were assigned monitoring costs which were largely obtained from a cost-effectiveness analysis of statin policy conducted for NICE and an analysis of unit costs for health and social care in England and Wales.5,36 Additional costs were added for each statin user attributable to their increased risk of diabetes.

Statistical Analysis

The Scottish CVD Policy Model simulated the cost-effectiveness of different risk- and absolute risk reduction-guided statin policies. A baseline simulation predicted treatment-free health and cost outcomes. Next, model parameters were altered to simulate the benefits, side effects, and costs associated with moderate-intensity statin therapy. If individuals in the SHS cohort met treatment criteria, they received the benefits and costs associated with statin therapy. Otherwise, they incurred no treatment costs or benefits. One ‘iteration’ of the model involved simulating every individual in the SHS cohort.

This study followed the Consolidated Health Economic Evaluation Reporting Standards reporting guideline (eTable 9). A health sector perspective was adopted which accounted for all screening, statin treatment, monitoring, CVD, and background healthcare costs incurred by the Scottish NHS. The primary outcome considered was the incremental cost (GBP 2020) per QALY gained for different treatment strategies with a lifetime horizon. Intermediate outcomes recorded were primary CVD events prevented, life years gained, and disaggregated healthcare costs. Future costs and health benefits were discounted at a rate of 3.5% annually.37 Model costs were inflated by 12.5% to account for health services pay and price inflation from 2014 to 2020.38 Cost-effectiveness analysis was performed with a health sector perspective and a strategy was deemed cost-effective if its incremental cost-effectiveness ratio (ICER) was below £20,000/QALY.39,40 This is a standard threshold used in cost-effectiveness analyses in Scotland and the U.K.6,37

Simulation analysis was completed by stochastically sampling Table 2 parameter distributions and risk factor hazard ratios, then estimating costs and QALYs for the respective treatment strategies in 1,000 independent iterations. Correlation between risk factor hazard ratios was accounted for with Cholesky decomposition.41 Base case results were derived from the mean values of the probabilistic analyses and 95% confidence intervals were presented as the 2.5th and 97.5th percentiles of the 1,000 iterations. Cost-effectiveness acceptability curves were produced with results from the probabilistic analysis.

Population estimates from the National Records of Scotland were used to project results onto the wider Scottish population.25 The number of individuals in each age-group was derived from these estimates. This number was multiplied by the respective proportion of CVD-free individuals in each age-group in SHS 2011 to obtain the number of individuals eligible for preventive treatment. The outcomes observed in the simulation were projected onto the Scottish population by multiplying average age-group-level outcomes in the simulation by the number of eligible patients in the wider population.

Sensitivity Analyses

Sensitivity analyses assessed the impact of key modelling parameters on cost-effectiveness estimates. Table 2 lists the lower and upper values employed in these analyses. Results from the sensitivity analysis were synthesized in tornado diagrams. These diagrams showed the impact of modelling assumptions on the cost-effectiveness of a treatment policy, represented by change in net monetary benefit (NMB). Unlike the ICER, NMB is a continuously defined, linear measure of cost-effectiveness and an increase represents increased cost-effectiveness.42 We estimated the NMB for all strategies at a range of values between the lower and upper limits defined in Table 2.

In our base case, we assumed ‘full adherence’ to statin therapy (i.e., effect size equal to effects observed in clinical trials). In a scenario analysis, we assumed 67% of patients would continue treatment in the first, 53% in the second, and 50% in subsequent years of statin initiation.43 Treatment efficacy, side effects, and monitoring costs were only experienced by persistent statin users. In a further scenario analysis, we excluded individuals with diabetes from the prospective patient population and assumed that they would be treated regardless of prioritization criteria. We additionally considered the net monetary benefit of each treatment strategy over a wide range of values for pill-taking disutility to establish optimal treatment strategies dependent on a patient’s aversion to daily pill-taking.

While the primary analysis was limited to two ASSIGN score thresholds for statin initiation, we considered the cost-effectiveness of reducing the threshold below ASSIGN 10 in a sensitivity analysis. Specifically, we considered the incremental cost-effectiveness of reducing the threshold at 1% increments from ASSSIGN 20 to treatment of the entire CVD-free adult population.

Institutional review board approval was not required as the study was a secondary analysis of publicly available and de-identified data.

Results

Descriptive statistics for the final dataset and treatment-eligible populations are displayed in eTable 10. The overall population was disproportionately female, likely because we excluded individuals with established CVD. Age-stratified risk thresholds and ARR strategies reduced the average age of treatment compared to standard 10-year risk scoring. The ARR strategies treated patients with higher TC, higher non-HDL-C, and lower HDL-C compared to the alternatives.

Our first objective was to estimate the cost-effectiveness of extending preventive statin therapy eligibility (Table 3). ASSIGN 20 was cost-effective compared to no treatment (ICER: £3,850/QALY; 95% CI: £957/QALY-£6,770/QALY). Implementing ASSIGN 10 would also be cost-effective (ICER vs. ASSIGN 20: £12,300/QALY; 95% CI: £7,690/QALY-£26,500/QALY).

Table 3. Cost-effectiveness of statin treatment strategies, mean and 95% confidence intervals from probabilistic analysis.

Policy Number
Treated
Primary CVD
Events Prevented
Undiscounted
Life Years
Discounted
QALYs Gained
Discounted
Cost (£1000’s)
ICER
(£/QALY)
Expanding treatment eligibility
No Treatment 0 Reference
ASSIGN 20 804,000 34,400 (21,000-49,600) 240,000 (106,000-405,000) 103,000 (49,100-168,000) 397,000 (46,800-791,000) 3,850 (957-10,100)
ASSIGN 10 1,445,500 62,100 (38,500-89,000) 463,000 (202,000-792,000) 172,000 (78,000-282,000) 1,240,000 (590,000-2,050,000) 12,300 (7,690-26,500)
Policies comparable to ASSIGN 20
ASSIGN 20 804,000 Reference
ARR 20 804,000 2,740 (1,750-3,990) 26,600 (6,410-51,300) 8,800 (3,870-14,400) 62,000 (27,600-104,000) 7,050 (4,560-10,700)
Age-Strat 20 804,000 1,700 (764-3,120) 24,900 (-83,900-115,000) -5,390 (-21,600-10,400) 417,000 (230,000-625,000) Dominated* (Dominated-Dominated)
Policies comparable to ASSIGN 10
ASSIGN 10 1,445,500 Reference
ARR 10 1,445,500 2,760 (1,790-4,000) 31,800 (6,830-58,400) 7,950 (3,660-13,000) 93,500 (54,500-138,000) 11,700 (9,250-16,900)
Age-Strat 10 1,445,500 2,510 (1,360-4,120) 34,800 (-63,800-124,000) -7,090 (-21,300-5,960) 450,000 (269,000-660,000) Dominated* (Dominated-Dominated)

ARR – absolute risk reduction; Age-Strat – age-stratified risk thresholds; CVD – cardiovascular disease; ICER – Incremental cost-effectiveness ratio; QALYs – quality-adjusted life years

*

More expensive and less effective than comparator

Reducing the ASSIGN risk threshold from 20% to 10% would extend statin eligibility by approximately 641,500 individuals, from 804,000 to 1,445,500. Statin eligibility would increase from 32% to 58% of Scottish CVD-free population aged ≥40 years. Reducing the threshold would prevent around 27,700 primary CVD events and produce around 223,000 life years and 69,000 discounted QALYs. Sensitivity analysis showed that it would be cost-effectiveness to further reduce the threshold to approximately 8.0% (eTable 11).

Our second objective was to estimate the cost-effectiveness of novel approaches to statin prioritization (Figure 2). Both age-stratified risk policies were dominated, meaning they were more expensive and less effective than alternative treatment options. Incremental to ASSIGN 20, ARR 20 treated approximately the same number of individuals, produced around 8,800 QALYs, and had an ICER of £7,050/QALY (95% CI: £4,560/QALY-£10,700/QALY). Incremental to ASSIGN 10, ARR 10 treated approximately the same number of individuals, produced around 7,950 QALYs, and had an ICER of £11,700/QALY (95% CI: £9,250/QALY-£16,900/QALY).

Figure 2. Cost-effectiveness plane for all treatment strategies.

Figure 2

QALY – Quality-Adjusted Life Year

Dashed line represents cost-effectiveness threshold of £20,000/QALY

Compared to no treatment, all statin strategies led to large reductions in CVD-related healthcare costs (eTable 12). However, these were offset by non-CVD healthcare, statin, monitoring, and risk assessment costs.

At cost-effectiveness thresholds less than £50,000/QALY, ARR-based prioritization was optimal in most probabilistic iterations of the model (Figure 3). When all treatment strategies were considered together, ARR 10 was optimal 88% of the time at a threshold of £20,000/QALY.

Figure 3. Cost-effectiveness acceptability curves for all treatment strategies.

Figure 3

QALY – Quality-Adjusted Life Year

The curves for Age-Strat-10 and Age-Strat-20 are indistinguishable from the 0% line

Reduction in non-HDL cholesterol, discount rate, the impact of statins on CVD mortality, pill-taking disutility, and ongoing monitoring costs had the greatest impact on cost-effectiveness estimates (Figure 4, eFigures 6-7). Absolute risk reduction remained the optimal approach to statin prioritization in most sensitivity analyses. However, at high levels of pill-taking disutility, treating fewer individuals was optimal (i.e., ARR 20 had greater NMB than ARR 10) (eFigure 8). Neither accounting for reduced patient adherence nor removing patients with diabetes from the simulation cohort greatly affected cost-effectiveness results, with ARR 10 remaining the optimal treatment strategy at a cost-effectiveness threshold of £20,000/QALY in both these analyses (eTables 13-14).

Figure 4. Tornado diagrams for most influential model parameters.

Figure 4

A. Strategies treating same number as ASSIGN 20

B. Strategies treating same number as ASSIGN 10

Quality-adjusted life years valued at £20,000

Increased net monetary benefit indicates increased cost-effectiveness

Discussion

The objectives of this study were to estimate the cost-effectiveness of expanding statin eligibility in Scotland and to estimate the cost-effectiveness of novel approaches to statin prioritization, relevant to all nations. Expanding statin eligibility in Scotland would be cost-effective and population health would be improved by using ARR, based on both 10-year CVD risk and non-HDL-C levels, to guide statin treatment decisions. This means, guideline committees should consider new ways to allocate statins based on ARR and not simply 10-year risk thresholds.

Absolute risk reduction may be more clinically acceptable than 10-year risk scoring. Some physicians were dismayed by NICE’s decision to reduce the risk threshold for statin initiation to 10%.44 Polypharmacy, ‘labelling’ and treatment of relatively healthy individuals, and potential adverse events were cited as concerns. These concerns may partly explain poor clinical adherence to statin guidelines.45 The absolute risk reduction approach treats patients with measurably unhealthy levels of a modifiable risk factor and may be more palatable to clinicians.

The benefits associated with age-stratified risk thresholds may also have been underestimated. Atherosclerosis is a cumulative process. Reducing exposure to risk factors that exacerbate atherosclerotic build-up in early life will have an outsized effect on averting later life CVD events.46,47 We did not account for cumulative exposure to risk factors in our analysis and estimated statin-related risk reduction from medium-term cardiovascular outcomes trials. Accounting for cumulative exposure would require access to a longitudinal dataset that regularly tracked participants’ risk factors. Such a dataset does not currently exist for the general Scottish population. Combining information on patients’ lifetime CVD risk and current cholesterol levels may allow clinicians to better target treatment at younger patients with a high capacity-to-gain from early statin initiation.48,49

In a validation exercise, the Scottish CVD Policy Model simulated individuals from the placebo and treatment arms of the West of Scotland Coronary Prevention Study (eFigures 1-2). The model was well-matched to CVD event rates in most comparisons. However, rates of CHD were lower in the simulated placebo arm compared to trial data. If the model systematically underestimates CVD event rates in the untreated CVD-free population, intensive lipid-lowering strategies will be more cost-effective than simulated. Event rates in the model were recalibrated to replicate contemporary Scottish life tables, which should ensure a better fit with contemporary CVD event rates than observed in the validation exercise.19

As with all decision modelling studies, uncertainty in model parameters propagates into uncertainty in modelled outcomes. While the efficacy and side effects of statins have been studied extensively, more research could be conducted to assess statin pill-taking disutility and establish optimal treatment monitoring procedures. Pill-taking disutility is a loosely defined and under-researched phenomenon, with most available evidence coming from small sample studies and online surveys of select populations.50,51 The results of our sensitivity analyses suggest that benefits of statins do not outweigh the costs for patients that are highly averse to regularly pill-taking. The necessary frequency of patient monitoring also likely varies substantially between patients. Our results show that reducing monitoring costs greatly increases the cost-effectiveness of statin therapy.

Conclusion

The advent of generic pricing has rendered preventive statin therapy cost-effective for many adults in Scotland. Eligibility for statin therapy should be expanded to ensure more individuals who could benefit from statins are treated. More importantly, novel mechanisms for statin prioritization may further improve population health. Absolute risk reduction synthesizes information on a patient’s absolute CVD risk with their relative risk reduction from statin therapy; it is a cost-effective approach to statin prioritization and may be more appealing to clinicians than recommendations based solely on 10-year risk thresholds.

Supplementary Material

Supplemental Publication Material

Clinical Perspective.

What is new?

  • The advent of generic pricing has rendered preventive statin therapy cost-effective for many adults.

  • Absolute risk reduction-guided statin therapy, which is based on 10-year cardiovascular disease risk and non-high-density lipoprotein cholesterol levels, is cost-effective and would improve population health.

  • Age-stratified risk thresholds were more expensive and less effective than alternative approaches to statin prioritization.

What are the clinical implications?

  • Guideline committees should expand statin eligibility and consider new ways to allocate statins based on absolute risk reduction rather than 10-year risk thresholds.

  • The optimal prevalence of statin eligibility is sensitive to patient preference for daily pill-taking.

Funding/Support

CKL is supported by the Medical Research Council, Swindon (MR/K501335/1) and the National Institute for Disability, Independent Living, and Rehabilitation Research (610-5441030-60057402). NS is supported by the British Heart Foundation Research Excellence Award (RE/18/6/34217).

Non-Standard Abbreviations and Acronyms

CVD

Cardiovascular Disease

NICE

National Institute for Health and Care Excellence

SIGN

Scottish Intercollegiate Guidelines Network

SBP

Systolic Blood Pressure

TC

Total Cholesterol

HDL-C

High-Density Lipoprotein Cholesterol

SIMD

Scottish Index of Multiple Deprivation

ARR

Absolute Risk Reduction

RRR

Relative Risk Reduction

LDL-C

Low-Density Lipoprotein Cholesterol

QALY

Quality-Adjusted Life Year

CHD

Coronary Heart Disease

CBVD

Cerebrovascular Disease

SHHEC

Scottish Heart Health Extended Cohort

SMR

Scottish Morbidity Records

SHS

Scottish Health Survey

NMB

Net Monetary Benefit

ICER

Incremental Cost-Effectiveness Ratio

Footnotes

Conflict of Interest Disclosures: Naveed Sattar discloses the following relationships: Personal fees from Afimmune, Amgen, AstraZeneca, Boehringer Ingelheim, Eli Lilly, Hanmi Pharmaceuticals, Merck Sharp and Dohme, Novartis, Novo Nordisk, Pfizer and Sanofi, and grant funding paid to his University from AstraZeneca, Boehringer Ingelheim and Roche Diagnostics. No other disclosures were reported.

Role of the Funder/Sponsor: The sponsors had no role in the design and conduct of the study; collection, management, analysis, and interpretation of the data; preparation, review, or approval of the manuscript; and decision to submit the manuscript for publication.

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