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Summary

New governments are fortunate in being able to use modern techniques to help them take evidence-informed decisions about which health priorities to focus on, and how to achieve maximum health gains. In this Briefing we firstly outline how evidence identifies the condition causing the greatest health loss in the Aotearoa NZ: cardiovascular disease. And secondly how evidence informs how governments can maximise health gain and cost-savings from specific interventions that have been studied for NZ. For example, we show a combined fruit and vegetable subsidy plus a sugar tax produces estimated lifetime savings of 894,000 health-adjusted life years and health system cost-savings of $19.4 billion. Applying an equity lens would also favour this dietary intervention for advancing Māori health.

A new government has the opportunity to apply modern epidemiological techniques to optimise the selection of public health interventions. In this Briefing we use the example of interventions to prevent cardiovascular disease (CVD) – the highest ranked cause of death and disability in Aotearoa New Zealand.

Cardiovascular disease: very high health burden and very expensive

Ischemic heart disease is the highest ranked cause of death and disability combined in Aotearoa New Zealand (NZ).1 Stroke is ranked fifth. Both ischaemic heart disease and stroke are components of the broader category of cardiovascular disease, or CVD.

Each year CVD is estimated to cause nearly 12,000 premature deaths. Furthermore, many people live with poor health due to CVD. Together the premature deaths and morbidity from CVD can be captured with the measure of disability-adjusted life years (DALYs). One DALY represents the loss of the equivalent of one year of full health, and CVD costs New Zealanders 180,000 DALYs each year. As such, CVD accounts for about 15% of all ‘health loss’ in the country.1 CVD is also an important contributor to health loss for Māori and a major contributor to health inequities.2-4

CVD is also very expensive to treat, costing the health system about $3.3 billion each year. And it is not just the health system out of pocket. New Zealanders lose over $700 million each year in lost income due to CVD (that is 16% of all disease-related income loss; and far ahead of cancer-related income loss).5 Other NZ work has also highlighted the relevance of prioritising CVD.6

What we did

Firstly: Identifying high priority risk factors to guide preventive interventions

We first identified the most prominent risk factors for CVD in NZ using data from the Global Burden of Disease (GBD) Study (ie, using the “GBD Results Tool”1). A full description of the methods are in an article in a peer-reviewed journal: Wilson et al 2023.7

The most common risk factors for death and disability due to CVD were: high systolic blood pressure, dietary risk factors (such as a diet high in processed meat or low in fruits and vegetables), high LDL cholesterol, high body mass index (being overweight or obese), and then tobacco exposure. The total deaths and DALYs attributable to these risk factors are shown in the figure below (full table and additional details are available in the Appendix).

Secondly: Prioritising interventions (health gain, cost-effectiveness, equity)

Government resources are limited, and so wise governments should ensure that any interventions to prevent CVD are evidence-informed and cost-effective. Fortunately, we were able to identify 22 NZ-relevant peer-reviewed publications that had studied CVD-related control interventions (see the original publication:7). The top ranked interventions for the top five risk factors are in the table below (a full table is available in the Appendix). Also shown are the relevant health impacts for Māori vs non-Māori for each intervention. More detail can be accessed by clicking on individual cells in the table. 

* For further details see the Appendix. The terms health-adjusted life years (HALYs) and quality-adjusted life years (QALYs) used in different studies that inform this table’s contents, can be considered to be broadly equivalent.

Comment

It is clear from these results that the highest impact intervention for preventing CVD was a dietary one: a combined fruit and vegetable subsidy plus a sugar tax. This intervention was designed to be cost-neutral to the consumer, with tax-increases offset by subsidies so that the cost of a standard basket of groceries remains unchanged. Furthermore, this intervention was estimated to produce lifetime savings of 894,000 health-adjusted life years for the NZ population (referring to the remaining life of the NZ population alive in 2011, ie, modelled until all cohort members died – and not considering new births). Behind this intervention, in terms of impact size, were a salt tax (to address high blood pressure), a saturated fat tax (to lower LDL cholesterol), and a sinking lid on tobacco sales.

In health economic terms, the same fruit and vegetable subsidy plus a sugar tax intervention generated the highest cost-savings to the NZ health system at around $19 billion (NZD 2023; 3% annual discount rate). So this intervention would potentially be the preferred choice for those policy-makers concerned with maximising health gains and health cost-savings.

But governments should also be concerned with health inequities, and so need to consider the relative and absolute changes to Māori health. Here the best choice depends on the perspective taken:

  1. The sinking lid (tobacco control) intervention in the above table gave the highest relative gain for Māori vs non-Māori (of 3.23 times that of non-Māori: actually 155 QALYs per 1000 Māori population vs 48 QALYs per 1000 population for non-Māori8).
  2. The fruit and vegetable subsidy and sugar tax produced lower relative gains than the sinking lid – but would improve Māori health more in absolute terms (ie, 826,000 QALYs gained for Māori from this dietary intervention9 vs 467,000 QALYs gained from the sinking lid intervention8 [using the comparable results for the 0% discount rate from the two studies]).

This whole prioritisation exercise might seem unrealistic to those with a realpolitik perspective – given that government decision-making is often driven by ideological factors or for short-term political gain. Indeed, the only part of the NZ health system that appears to systematically attempt evidence-informed prioritisation is Pharmac. But we have seen with the last government the use of evidence10 11 to inform the progressive 2022 law to bring in tobacco retail reductions, the denicotinisation of tobacco and the smokefree generation.

With this in mind, we encourage the new government to be open to taking evidence-informed approaches to major health issues so as to maximise health gain, maximise cost savings, and improve health equity for the population it serves. But we recognise that such prioritisation exercises should ideally also consider issues of intervention acceptability/feasibility and the potential non-health co-benefits that can arise from these type of interventions (as detailed further in the Appendix).

What is new in this Briefing?

  • We take an evidence-informed approach to show how to prioritise public health interventions for an example disease: cardiovascular disease (the major cause of health loss and premature death in Aotearoa NZ).
  • We show that for this example it is possible to systematically prioritise interventions using NZ-specific data in terms of maximum health gain, maximum cost-savings and gains in equity (Māori vs non-Māori).

Policy implications

  • In the real-world, policy-makers may continue to favour new health interventions for reasons of political ideology and political expediency. But if they wish to move in an evidence-informed direction – then the data and analytic techniques can be available to support such decision-making for major causes of health loss.

Author details

Prof Nick Wilson, Department of Public Health, University of Otago, Wellington

Dr Cristina Cleghorn, Senior Research Fellow, Department of Public Health, University of Otago, Wellington

Dr Nhung NghiemSenior Research Fellow, Department of Public Health, University of Otago, Wellington

Dr John Kerr, Senior Research Fellow, Department of Public Health, University of Otago, Wellington

Prof Michael Baker, Department of Public Health, University of Otago, Wellington

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This article is part of the series Briefings to the Incoming Government, highlighting challenges and opportunities in the public health policy space.

Appendix: Additional details on CVD risk factors and examples of the non-health co-benefits of the interventions considered

Table A1: Cardiovascular (CVD) health burden in 2019 for NZ attributable to specific risk factors and ranked by number of disability-adjusted life years lost [DALYs; for all ages, both sexes; (95% uncertainty intervals), GBD data extracted using the “GBD Results Tool”; Source: Adapted from:7 and with a longer list in the figure at the end of this Appendix.

Risk factor*

CVD deaths

 

 

DALYs lost

 

 

Count

%**

 

Count

%**

High systolic blood pressure

5400

(4210 to 6470)

45.2

 

84,800 (71,400 to 97,700)

46.3

Dietary risk factors – all

3970

(3180 to 4810)

33.3

 

62,400 (51,000 to 74,900)

34.1

High LDL cholesterol

3330

(2300 to 4530)

27.9

 

51,200 (40,000 to 64,600)

28.0

High body-mass index (BMI)

1940

(1130 to 2850)

16.3

 

40,100 (25,500 to 56,300)

21.9

Tobacco (including secondhand smoke***)

1400

(1270 to 1520)

11.7

 

30,400 (28,000 to 32,900)

16.6

* Most of these risk factors are not independent of one another. Eg, the blood pressure risk factor, the high LDL cholesterol risk factor and high BMI risk factor, will each be partly mediated via “dietary risk factors”.
** This is the proportion out of the total of 11,900 deaths and 183,000 DALYs attributed to CVD in NZ in 2019 (with 79.6% of the total DALYs being attributed to named risk factors in the GBD [ie, not all risk factors are covered in the GBD]).
*** Of the tobacco group, 11% of the deaths and DALYs were attributed to secondhand smoke exposure.
Values rounded to three meaningful digits.

 

Table A2: Top five risk factors for CVD health loss ordered by decreasing size of health gain (through all diseases) and the impact of interventions studied in the NZ context (on health, costs and equity; 3% discount rate applied to HALYs/QALYs and costs)

Risk factor (from Table 1)

Highest impact health gain from an intervention identified

Highest impact cost-saving* from an intervention identified

Equity impact (Māori vs non-Māori)

Comment

Dietary risk factors

894,000 health-adjusted life years (HALYs) gained (a combined fruit and vegetable subsidy plus a sugar tax)9

US$ 11.0 billion saved (US$ 2018) (as per this same intervention)

1.55 times higher per capita health gains for Māori vs non-Māori (age-standardised). Even higher in an equity analysis#: 2.26 times.

 

Out of the 8 different interventions in this modelling study.9 The estimated health gain includes that from both preventing CVD but also non-CVD diseases.

 

High systolic blood pressure (BP)

453,000 HALYs gained (salt tax)9

US$ 5.90 billion saved (US$ 2018) (salt tax)9

 

1.80 times higher per capita health gains for Māori vs non-Māori (age-standardised). Even higher in an equity analysis#: 2.58 times.

As above.

High LDL cholesterol

436,000 HALYs gained (saturated fat tax)9

US$ 5.87 billion saved (US$ 2018) (saturated fat tax)9

 

1.70 times higher per capita health gains for Māori vs non-Māori (age-standardised). Even higher in an equity analysis#: 2.43 times.

As above.

Tobacco use

282,000 quality-adjusted health years (QALYs) gained (from a sinking lid on supply)8 ##

NZ$ 5.43 billion saved (NZ$ 2011) (~ US$ 4.07 in US$ 2018) (from a sinking lid on supply)8

3.23 times higher per capita health gains for Māori vs non-Māori (age-standardised). Even higher in an equity analysis#: 4.58 times.

This study captured CVD-related health benefits but also the benefits of preventing 14 other tobacco-related diseases. The sinking lid would involve regular reductions in the amount of tobacco supplied to the commercial market until supply ends.

High body-mass index (BMI)

250 QALYs gained (from the weight-loss counselling intervention applied to 21.6% of the eligible population12).

No cost-saving intervention identified

2.33 times greater per capita health gains for Māori vs non-Māori in the target population of obese and overweight people (age-standardised). This value increased by 27% in an equity analysis.#

We note however, that the “combined fruit and vegetable subsidy plus a sugar tax” intervention detailed above – would also deliver BMI reduction benefits (in addition to other benefits).

* That is, cost-saving from a NZ health system perspective at a 3% discount rate.
** With cost-effective being defined as up to the GDP per capita of NZ (NZ$45,000 in 2011 or ~US$31,000) as per the standard BODE3 modelling approach for NZ analyses.13
# An “equity analysis” involves the use of non-Māori all-cause mortality and morbidity in the analysis. This is so as to remove penalisation for Māori having higher background mortality and morbidity limiting the envelope of health gain relative to non-Māori.
## Since the analysis on which this tabulated data are based was performed, a further analysis suggests a higher health gain than the sinking lid intervention. That is the 594,000 HALYs gained by the combined package of denicotinisation, tobacco retail reduction and smokefree generation.14 This is primarily due to the faster phase-in process of this intervention package (relative to the slower sinking lid phase-in).

Examples of non-health benefits from CVD interventions

When considering new interventions, policy-makers should ideally consider commissioning updated literature reviews of the evidence for effectiveness and cost-effectiveness (eg, updates of studies in league tables such as this one of NZ and Australian interventions:15). They also need to consider the acceptability and feasibility of intervention implementation (eg, if mass media campaigns are needed to explain the potential benefits and costs to the public before roll-out). They should also ideally factor in the wider non-health benefits – for which we give examples below that relate to some of the CVD interventions in Table A2:

Taxes on sugar

  • New Zealanders who had lower rates of diet-related diseases would be expected to experience higher incomes (as per NZ data5).
  • The government would be expected to receive increased income tax as a result of increased worker productivity from lower rates of diet-related diseases (as per NZ data16).
  • All sugar in NZ is imported, so there could be an advantage to NZ’s balance of payments (ie, the difference between all money flowing into the country and the outflow of money to the rest of the world).
  • If the sugar tax was not designed to be cost neutral for consumers (eg, via being combined with fruit and vegetable subsidies) the tax could pay for other health investments (eg, expanding the healthy school lunch programme).

Taxes on saturated fat

  • New Zealanders who had lower rates of CVD would be expected to experience higher incomes (as per NZ data5).
  • The government would be expected to receive increased income tax as a result of increased worker productivity from lower rates of CVD (as per NZ data16).
  • If the tax was not designed to be cost-neutral for consumers (eg, via being combined with fruit and vegetable subsidies) the tax could pay for other health investments (eg, expanding the healthy school lunch programme).
  • If such taxes reduced the number of ruminant livestock in NZ, then this could help NZ meet its international obligations concerning greenhouse gases.
  • As per the point directly above, such taxes may also reduce other environmental harms from livestock agribusiness (on water quality, erosion, zoonotic diseases etc).

Sinking lid (or other similar tobacco control measures)

  • New Zealanders who had lower rates of tobacco-related diseases would be expected to experience higher incomes (as per NZ data5).
  • The government would be expected to receive increased income tax as a result of increased worker productivity from lower rates of tobacco-related diseases (as per NZ data16).
  • All tobacco in NZ is imported, so there could be an advantage to NZ’s balance of payments.
  • The litter problem would probably decrease as tobacco is a major cause of litter.
  • The occurrence of fires would probably decrease as tobacco use is a cause of fires in houses and of forests.

Funding

Background modelling work detailed in this Briefing was financially supported by the Health Research Council of NZ (Grants 10/248 and 16/443) and by the Ministry of Business Innovation and Employment (MBIE) (Grant UOOX1406).

https://www.phcc.org.nz/briefing/how-taking-evidence-informed-approach-can-be-used-prioritise-interventions-example

 
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Public Health Expert Briefing (ISSN 2816-1203)

References

  1. Institute for health Metrics and Evaluation. Global Burden of Disease (GBD) Results Tool. (Accessed 15 January 2022). http://ghdx.healthdata.org/gbd-results-tool
  2. Disney G, Teng A, Atkinson J, et al. Changing ethnic inequalities in mortality in New Zealand over 30 years: linked cohort studies with 68.9 million person-years of follow-up. Popul Health Metr 2017;15:15. https://pophealthmetrics.biomedcentral.com/articles/10.1186/s12963-017-0132-6. doi: 10.1186/s12963-017-0132-6
  3. Grey C, Jackson R, Wells S, et al. Trends in ischaemic heart disease: patterns of hospitalisation and mortality rates differ by ethnicity (ANZACS-QI 21). N Z Med J 2018;131(1478):21-31. [published Online First: 2018/07/13]
  4. Selak V, Poppe K, Grey C, et al. Ethnic differences in cardiovascular risk profiles among 475,241 adults in primary care in Aotearoa, New Zealand. N Z Med J 2020;133(1521):14-27. [published Online First: 2020/10/01]
  5. Blakely T, Sigglekow F, Irfan M, et al. Disease-related income and economic productivity loss in New Zealand: A longitudinal analysis of linked individual-level data. PLoS Med 2021;18(11):e1003848. doi: 10.1371/journal.pmed.1003848 [published Online First: 2021/12/01]
  6. Babashahi S, Hansen P, Sullivan T. Creating a priority list of non-communicable diseases to support health research funding decision-making. Health Policy 2021;125(2):221-28. doi: 10.1016/j.healthpol.2020.12.003 [published Online First: 2020/12/29]
  7. Wilson N, Cleghorn C, Nghiem N, et al. Prioritization of intervention domains to prevent cardiovascular disease: a country-level case study using global burden of disease and local data. Population Health Metrics 2023;21(1):1.
  8. van der Deen FS, Wilson N, Cleghorn CL, et al. Impact of five tobacco endgame strategies on future smoking prevalence, population health and health system costs: two modelling studies to inform the tobacco endgame. Tob Control 2018;27(3):278-86. doi: 10.1136/tobaccocontrol-2016-053585 [published Online First: 2017/06/26]
  9. Blakely T, Cleghorn C, Mizdrak A, et al. The effect of food taxes and subsidies on population health and health costs: a modelling study. Lancet Public Health 2020;5(7):e404-e13. doi: 10.1016/S2468-2667(20)30116-X
  10. Edwards R, Hoek J, Waa A. New Zealand: Ground-breaking action plan may help country achieve its Smokefree 2025 goal. Tobacco Control (Blog). 2022;(12 January). https://blogs.bmj.com/tc/2022/01/12/new-zealand-ground-breaking-action-plan-may-help-country-achieve-its-smokefree-2025-goal/.
  11. Ouakrim DA, Wilson T, Waa A, et al. Tobacco endgame intervention impacts on health gains and Māori: non-Māori health inequity: a simulation study of the Aotearoa/New Zealand Tobacco Action Plan. Tobacco Control 2023
  12. Cleghorn CL, Wilson N, Nair N, et al. Health benefits and costs of weight-loss dietary counselling by nurses in primary care: a cost-effectiveness analysis. Public Health Nutr 2020;23(1):83-93. doi: 10.1017/S1368980019002945 [published Online First: 20191014]
  13. Kvizhinadze G, Wilson N, Nair N, et al. How much might a society spend on life-saving interventions at different ages while remaining cost-effective? A case study in a country with detailed data. Popul Health Metr 2015;13:15. doi: 10.1186/s12963-015-0052-2
  14. Ait Ouakrim D, Wilson T, Waa A, et al. Tobacco endgame intervention impacts on health gains and Māori: non-Māori health inequity: a simulation study of the Aotearoa/New Zealand Tobacco Action Plan. Tobacco Control 2023
  15. Carvalho N, Sousa TV, Mizdrak A, et al. Comparing health gains, costs and cost-effectiveness of 100s of interventions in Australia and New Zealand: an online interactive league table. Popul Health Metr 2022;20(1):17. doi: 10.1186/s12963-022-00294-3 [published Online First: 20220727]
  16. Summers JA, Wilson N, Blakely T, et al. Disease-Related Loss to Government Funding: Longitudinal Analysis of Individual-Level Health and Tax Data for an Entire Country. Value in Health 2023;26(2):170-75.

 

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Public health expert commentary and analysis on the challenges facing Aotearoa New Zealand and evidence-based solutions.

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