Abstract
Objective
There are large inequities in the lung cancer burden for the Indigenous Māori population of New Zealand. We model the potential lifetime health gains, equity impacts and cost-effectiveness of a national low-dose CT (LDCT) screening programme for lung cancer in smokers aged 55–74 years with a 30 pack-year history, and for formers smokers who have quit within the last 15 years.
Design
A Markov macrosimulation model estimated: health benefits (health-adjusted life-years (HALYs)), costs and cost-effectiveness of biennial LDCT screening. Input parameters came from literature and NZ-linked health datasets.
Setting
New Zealand.
Participants
Population aged 55–74 years in 2011.
Interventions
Biennial LDCT screening for lung cancer compared with usual care.
Outcome measures
Incremental cost-effectiveness ratios were calculated using the average difference in costs and HALYs between the screened and the unscreened populations. Equity analyses included substituting non-Māori values for Māori values of background morbidity, mortality and stage-specific survival. Changes in inequities in lung cancer survival and ‘health-adjusted life expectancy’ (HALE) were measured.
Results
LDCT screening in NZ is likely to be cost-effective for the total population: NZ$34 400 per HALY gained (95% uncertainty interval NZ$27 500 to NZ$42 900) and for Māori separately (using a threshold of gross domestic product per capita NZ$45 000). Health gains per capita for Māori females were twice that for non-Māori females and 25% greater for Māori males compared with non-Māori males. LDCT screening will narrow absolute inequities in HALE and lung cancer mortality for Māori, but will slightly increase relative inequities in mortality from lung cancer (compared with non-Māori) due to differential stage-specific survival.
Conclusion
A national biennial LDCT lung cancer screening programme in New Zealand is likely to be cost-effective, will improve total population health and reduce health inequities for Māori. Attention must be paid to addressing ethnic inequities in stage-specific lung cancer survival.
Keywords: epidemiology, health economics, preventive medicine, health policy
Strengths and limitations of this study.
This new analysis of lung cancer screening updates a previously published model to incorporate parameters and assumptions drawn from the NELSON low-dose CT (LDCT) screening trial.
There is specific consideration of the impact of lung cancer screening on equity in health outcomes.
The model allows for the future unrelated health costs of those whose lifespan is extended by the screening.
Until a pilot of LDCT screening is conducted in New Zealand, estimates of some parameters will be subject to some uncertainty.
Introduction
Lung cancer causes 18.3% of cancer deaths in New Zealand (NZ)—more than any other tumour type—with stark inequities in lung cancer incidence and mortality between Māori (the Indigenous population) and non-Māori.1 In 2016 the Māori age-standardised new registration rate for lung cancer was more than triple the rate in non-Māori (77.8 vs 22.4 per 100 000, respectively).2 The mortality rate from lung cancer is also more than three times higher in Māori than non-Māori.1 Lung cancer survival in NZ is poorer than that of several other countries.3 4
International evidence from a number of large randomised controlled trials (RCTs) shows that low-dose CT (LDCT) screening for lung cancer reduces lung cancer mortality5–9 and can also be cost-effective if stringent risk-based eligibility criteria are employed.10–14 As the evidence base for LDCT lung cancer screening evolves with improvements to the screening protocols, the likely impacts and cost-effectiveness of such a programme in the NZ context have changed. The most recent evidence of efficacy comes from the Nederlands–Leuvens Longkanker Screenings Onderzoek (NELSON RCT) which found that LDCT screening for lung cancer decreased lung cancer mortality by 24% in high-risk men and 33% in high-risk women over a 10-year period.8 In comparison, the earlier National Lung Screening Trial (NLST) study found an overall 20% reduction in lung cancer mortality,5 although a more recent analysis with longer follow-up found only an 11% reduction.9 The higher effectiveness observed in the NELSON trial has been attributed to improvements in nodule management through monitoring of nodule volumes and volume doubling times. This improved the specificity of LDCT screening and reduced the costs and harms from diagnostic tests, with a small increase in the number of CT scans required.15 Given the higher proportion of distant disease at diagnosis in NZ compared with these large RCT cohorts, there is potential for lung cancer LDCT screening to have an even greater impact on lung cancer mortality than that measured in these large RCTs.16
Existing analyses of LDCT lung screening cost-effectiveness in the NZ setting17 18 do not take into account developments in the evidence base (in particular new evidence from the NELSON trial and new analyses of stage at diagnosis and stage-specific survival) and do not explicitly model the impacts of an LDCT lung screening programme on health equity (for Māori). Given the NZ Government’s obligations under the Treaty of Waitangi19 and the Ministry of Health’s stated commitment to health equity, such information is critical in assessing the appropriateness of LDCT lung cancer screening in the NZ setting.
A screening programme that can reduce the burden of lung cancer for those at risk due to high smoking exposure offers great potential to address the huge burden of lung cancer for Māori in NZ. Although progress has been made in tobacco control in NZ, driven by a suite of tobacco control strategies over the last 30 years,20 35% of Māori adults continue to smoke compared with 16% of non-Māori adults. The health burden from tobacco use falls more heavily on Māori who suffer higher incidence and mortality from the majority of tobacco-related diseases21 22 including lung cancer.
With health equity for Māori as our primary concern, the objectives of this study were (1) to estimate health gains and cost-effectiveness of an LDCT screening programme for lung cancer in Māori smokers aged 55–74 years with a 30 pack-year smoking history (Māori and non-Māori) and (2) to measure the impact of LDCT screening on absolute inequalities in lung cancer mortality and health-adjusted life expectancy (HALE) for Māori compared with non-Māori.
Materials and methods
This study used an existing LDCT lung cancer screening Markov model developed by the University of Otago Burden of Disease Epidemiology, Equity and Cost-Effectiveness Programme (BODE³) that was funded by the Health Research Council and Ministry of Business, Innovation and Employment.23 The lung cancer Markov model feeds cancer-specific mortality to a life table to calculate health-adjusted life-years (HALYs) and costs over a lifetime time horizon. We have updated the original BODE³ model to account for developments in lung cancer screening pathways, to include the most recent RCT evidence and lung cancer epidemiology, while reviewing and revising key model assumptions (described in online supplemental data A, methods).
bmjopen-2020-037145supp001.pdf (326.7KB, pdf)
The updated model (now referred to as ‘the model’) was used to estimate the lifetime health gains in HALYs, costs and cost-effectiveness of a national LDCT lung screening programme based on biennial CTs of current smokers aged 55–74 years with a 30 pack-year smoking history, and of former smokers who have quit within the last 15 years. The same population was modelled twice: without LDCT screening and with LDCT screening for lung cancer. The differences between the two determined benefits and costs.
Included in the model were all individuals aged 55 years and over in 2011 (with the smoking history described above), with each 5-year age group in 2011 modelled separately until death or age 110 years (figure 1). From the first round our cohort was diverse, covering the range of eligible age groups with a mix of eligible smoking histories. We assumed this population to be screen-naive. A cycle length of 1 year was used in the modelling. The model was implemented in Microsoft Excel, using the Ersatz add-in for uncertainty analysis (Microsoft, www.Epigear.com).
Figure 1.
Model states.
As much as possible we captured sociodemographic heterogeneity by sex, age and ethnic group (Māori and non-Māori) for lung cancer incidence, stage at diagnosis and mortality. Background mortality, morbidity, and unrelated and disease-specific health system costs were included by sex and age only. Unrelated health system costs were included, that is, average expected costs to the health system by sex and age, generating cost off-sets, for years of life saved. A health system perspective was used, with a 3% discount rate on both costs and benefits. We assumed a cost-effectiveness threshold value based on annual gross domestic product (GDP) per capita of NZ$45 000 per HALY.24
Identification of the modelled population
The modelled population included those with a 30 pack-year history of smoking who either currently smoke or have quit in the last 15 years. The eligible population was estimated from NZ census data on current, former and never smokers and smoking cessation rates applied to population estimates.25 There was no inflow into the model for those reaching the 30 pack-year criterion after the original cohort was identified. A smoking cessation rate (based on 2013 estimates)25 was applied to the modelled population to estimate the proportion of the original cohort becoming ineligible as a result of being more than 15 years post-quitting (model outflow). After quitting, ex-smokers’ risk of lung cancer was projected to reduce steadily over time, with no increased risk (over never smokers) at 15 years. In the model, lung cancer cases remaining in the prevalent pool after 6 years were assumed to have achieved statistical cure. Population morbidity and mortality estimates were scaled up for the screen eligible cohort. Morbidity was increased by 25% and mortality was scaled up to account for smoking history, and additionally for smoking intensity. The full methods for this adjustment are available elsewhere.17
Model inputs
Model parameters were determined by a combination of literature reviews, parameters used in previous models published in peer-reviewed literature, and analyses of NZ-linked health datasets. Intervention parameters were primarily and preferentially sourced from the NELSON trial.15 26 27 For each parameter, we determined a point estimate and distribution for use in probabilistic uncertainty analysis (table 1).
Table 1.
Input parameters for modelling LDCT lung cancer screening in the New Zealand (NZ) setting
| Variable | Base case (range) | Distribution | Source in this model | Change with respect to BODE3 model | |
| Performance of CT as a screening test | |||||
| LDCT sensitivity | 84.6% (80%–89%) | Beta (183, 33) | NELSON15 | Updated from NLST to NELSON evidence | |
| LDCT specificity | 98.6% (98.4%–98.7) | Beta (23238, 330) | NELSON15 26 | Updated from NLST to NELSON evidence | |
| Proportion of population screened per round | 70% (60%–79%) | Beta (56, 24) | Based on breast screening target coverage for NZ45 | Changed to provide equal coverage for Māori and non-Māori | |
| Proportion never screened | 20% (11%–31%) | Beta (12, 48) | Bowel screening pilot (Litmus)46 | Changed to provide equal coverage for Māori and non-Māori | |
| Performance of diagnostic tests | |||||
| Diagnostic test adherence | 87.5% (82%–92%) | Beta (120, 12.7) | NELSON27 | Updated from NLST to NELSON evidence | |
| Major complication rate from diagnostic test | 6% (1.1%–15%) | Beta (2.4, 37.8) | 47 48 | Changed to include rate of pneumothorax from needle biopsy | |
| Incidental findings rate | 7.5% (5.2%–10.2%) | Beta (32, 394) | NELSON8 | No change | |
| Overdiagnosis rate in screening arm | 8.9% | – | NELSON8 | Updated to NELSON evidence | |
| Disease/state morbidity | |||||
| DW for first 5 months lung cancer diagnosis and treatment | 0.469 | Nil | Based on GBD DWs with disaggregation by clinical phase29 49 | No change | |
| DW for 1 month assumed terminal | 0.548 | Nil | 29 49 | No change | |
| DW for 5 months assumed preterminal lung cancer | 0.539 | Nil | 29 49 | No change | |
| DW per annum after diagnosis and treatment (ie, remission) | 0.315 | Nil | 29 49 | No change | |
| DW for complication from diagnostic test | 0.0158 | Nil | 29 49 | No change (based on moderate respiratory disease for 30-day duration) | |
| Incidence, stage at diagnosis, mortality and survival rates | |||||
| Lung cancer stage at diagnosis (%) | Local Regional Distant |
13 23.3 63.7 |
Nil | MLCR (online supplemental appendix A, online supplemental file)16 | Changed from stage distribution imputed from NZ Cancer Registry to the more complete stage distribution of MLCR |
| Stage distribution with LDCT lung screening (%) |
Local Regional Distant |
66.3 21.6 12.1 |
Nil | NELSON27 | Updated from the proportionate shift observed in NLST to a final distribution that matches NELSON |
| Lung cancer relative survival | Varied by sex, age, ethnicity and stage | Nil | From analyses of linked cancer mortality data by stage and operationalised as log-normal survival probabilities (online supplemental appendix A, online supplemental file). | Changed to stage-specific Pohar Perme net survival estimates derived from analysis of NZCR data where SEER extent of disease was available or calculated from TNM values | |
| Background (ie, non-lung) mortality with 1.75 %/2.25% annual decrease for non-Māori/Māori | Varied by sex, ethnicity and age | Nil | From projected life tables by sex, age and ethnicity50 | No change | |
| Background or expected morbidity | Varied by sex, ethnicity and age | Nil | Prevalent YLDs from NZ BDS49 | No change | |
| Cessation rate | Varied by sex, ethnicity and age | Nil | ‘Pessimistic scenario’ projections from analyses of 2006–2013 census data25 | ‘Best estimate’ projections from census data25 | |
| Lead time (years) | 0.5 | Nil | 51 | No change | |
| Direct costs (all in NZ$) | |||||
| Cost per person invited | 30 (19–43) | Gamma (25, 1.2) | 52 | ||
| Cost per LDCT scan | 400 (362–440) | Gamma (400, 1) | Average of three quotes | Quotes obtained for this project, middle quote used as base case | |
| Percentage increase in CT costs to account for new nodule monitoring protocol (%) | 2 (1.1–3.1) | Beta (15, 737) | NELSON RCT15 | 2% additional scans for nodules | |
| Cost per diagnostic test | 1837 (1214–2622) | Gamma (25, 73) | 52 | No change | |
| Cost of incidental findings | 500 (324–714) | Gamma (25, 20) | 17(online supplemental appendix A, online supplemental file). | No change | |
| Cost of major complications | 2835 (1820–4148) | Gamma (25, 113) | Based on purchasing power parity adjusted53 cost of a pneumothorax54 | No change | |
| Health system costs | |||||
| Base cost by sex and age of any citizen, with excess costs* of lung cancer (first year of diagnosis, last 6 months of life if dying of lung cancer and in-between) | Applied as multiplier to the costs | Normal (1, 0.1) (correlated 1.0 across all sex, age and ethnic groups) | See Ref. 32 for methods and data | No change | |
*Excess to ‘average’ NZ.
BODE3, Burden of Disease Epidemiology, Equity and Cost-Effectiveness Programme; DW, disability weight; GBD, Global Burden of Disease; LDCT, low-dose CT; MLCR, Midland Lung Cancer Registry; NZCR, New Zealand Cancer Registry; RCT, randomised controlled trial; SEER, Surveillance, Epidemiology and End Results programme of the National Cancer Institute; TNM, tumour, node, metastasis cancer staging; YLD, year lost due to disability.
Several key parameters in the original BODE3 model were updated (table 1) by incorporating findings from the recent NELSON RCT, where a more detailed nodule management protocol (using nodule volumes and volume doubling time) improved the specificity of screening in identifying lung cancer, reduced the number of diagnostic tests required and resulted in a small (2%) increase in the number of CT scans.15 Other parameter updates include stage at diagnosis, stage-specific survival, CT scan costs, diagnostic test adherence and overdiagnosis (described in online supplemental methods).
We set screening coverage in the base case to be equal for Māori and non-Māori, thereby setting an expectation for equal treatment by ethnicity. A well-designed programme that prioritises Māori engagement and outcomes can achieve high screening coverage for Māori without any additional costs.28 A scenario analysis of increased costs to address inequities in screening coverage due to a poorly designed programme was also undertaken by doubling invitation costs for the entire screening cohort.
Lead time bias was accounted for by delaying excess mortality for screen-detected cancers by 6 months, with sensitivity analyses of varying lengths of lead time. Overdiagnosis was included by removing 8.9% of screen-detected local stage cancers in the LDCT arm.8
Our primary analyses included background (ie, non-lung cancer) mortality rates and expected background morbidity in the main life table. Morbidity was estimated by sex, ethnic group and age, using the total years of life lived with disabilities (YLDs) from an NZ Burden of Disease Study,29 30 divided by the population count in the same group. Health gain could only occur in the envelope of ‘good health’ that reduced with increasing age and was less for Māori. For example, a Māori woman aged 60–64 years has an expected YLD of 0.88, meaning a year of life gained in this population group has a maximum utility value of 0.712.
Within the model we used invitation costs from the NZ colorectal cancer screening pilot study31 and applied them evenly across population groups. This spread the cost of any activities to increase screening coverage in specific groups (such as Māori) equally across the entire population—so as not to penalise under screened populations for the limitations of the current health system. Excess costs (ie, excess to that expected for an ‘average’ NZ citizen of the same sex and age32 and cost offsets (health system costs averted as a result of screening) varied for being in the first year of lung cancer diagnosis, remission or last 6 months of life if dying of lung cancer.
Analyses
Our base case analysis assumes equal intervention coverage, equal sensitivity and specificity of LDCT in detecting lung cancer, and equal per capita intervention and health system costs for Māori and non-Māori, with ethnic specific-estimates of the eligible population, lung cancer incidence, stage at diagnosis, lung cancer net survival, and background morbidity and mortality. The model was run as a Monte Carlo simulation with 2000 iterations, each drawing randomly from the range around each input parameter to produce a modelled best estimate with a 95% uncertainly interval (UI). The primary model outputs include health gains (HALYs total and per capita), baseline and intervention costs, incremental cost-effectiveness ratio (ICER) and equity analyses as described below. To allow the direct comparison of Māori and non-Māori health gains, the per capita health gains are age standardised to the 2001 Māori age standard.33 Tornado plots were constructed to examine the impact of uncertainty in each input parameter on uncertainty in the output ICER, by rerunning the model with the 2.5th and 97.5th percentile values of the input parameters (online supplemental figures 1–3).
We measured relative and absolute inequalities in lung cancer mortality and HALE before and after the intervention for the 55–59-year-old model cohort (as this group would receive the full screening experience over their lifetime). We also calculated the absolute difference in lives saved and healthy days gained for Māori compared with non-Māori by subtracting the baseline difference in mortality and HALE from the intervention mortality and HALE difference. The absolute change in inequality in HALE was then converted to healthy days (by multiplying by 365). These were calculated for the 55–59 year screen-eligible cohort and were also weighted up to measure these gains over the total population in this age group by multiplying by the proportion eligible for screening out of the total population and dividing by the total population in the age group in 2011.
A number of sensitivity analyses were also run including equity-focused analyses where: (1) we replaced Māori data with non-Māori values for baseline mortality and morbidity to address the issues that (A) lower life expectancy of Indigenous populations results in less opportunity for life-years gained with screening and (B) that lower life expectancy is, in part, a result of lung cancer inequities and (2) we assessed the impact of improvements in treatment for Māori following the implementation of a screening programme, given evidence of greater delays to treatment for Māori in the current health system compared with non-Māori leading to poorer survival.34–36 For this last scenario, for Māori who are screened, we replaced Māori age-specific excess mortality from lung cancer with the non-Māori rate. This scenario ignores any improvements to non-Māori survival and likely overestimates the improvements for Māori by ignoring the influence of comorbidities on treatment and survival.
Other sensitivity analyses examined variations in key input parameters of the costs of the CT scan, complication rate, overdiagnosis, lead time, invitation costs (to account for increased costs of increasing Māori screening coverage), screening cost weight to account for additional CT scans associated with the nodule management protocol37 and discount rate.
Results
The modelled CT lung cancer screening intervention for smokers aged 55–74 years resulted in health benefits for all population groups and was cost-effective for all modelled groups (using an ICER threshold of NZ$45 000 per HALY). The ICERs ranged from NZ$24 700 per HALY (95% UI NZ$19 900 to NZ$30 400) for Māori females up to NZ$39 100 per HALY for non-Māori males (95% UI NZ$31 400 to NZ$48 900). The size of the health gains from the intervention was greater for Māori compared with non-Māori and for women compared with men (table 2). Māori health gains (HALYs per capita) were approximately two times greater for Māori females compared with non-Māori females (0.112 HALYs/capita, 95% UI 0.080 to 0.151 and 0.063, 95% UI 0.045 to 0.083, respectively), and 25% greater for Māori males compared with non-Māori males (0.068, 95% UI 0.048 to 0.092 cf 0.051, 95% UI 0.037 to 0.069) with overlap in the UIs (table 2).
Table 2.
Lifetime costs, HALYs and ICERs (95% uncertainty intervals) for biennial CT screening of smokers aged 55–74 years with a 30 pack-year smoking history, by ethnic group and gender, among the 2011 population
| Total | Māori | Non-Māori | |
| All 55+ year olds | |||
| Cost of intervention (NZ$; millions) | 68 (58 to 80) | 9.3 (7.9 to 10.8) | 59 (50 to 69) |
| Net cost (NZ$; millions) | 105 (87 to 126) | 18 (14 to 22) | 88 (73 to 104) |
| Total HALYs gained | 3230 (2320 to 4310) | 670 (480 to 900) | 2550 (1770 to 3300) |
| ICER | NZ$34 400 (NZ$27 500 to NZ$42 900) | NZ$27 400 (NZ$22 000 to NZ$33 700) | NZ$36 300 (NZ$28 800 to NZ$45 300) |
| Males | |||
| Net cost (NZ$; millions) | 49 (41 to 58) | 6.8 (5.5 to 8.2) | 42 (35 to 50) |
| Total HALYs gained | 1310 (939 to 1760) | 206 (147 to 278) | 1100 (793 to 1490) |
| HALYs gained per capita | 0.051 (0.037 to 0.069) | 0.068 (0.049 to 0.092) | 0.049 (0.035 to 0.066) |
| HALYs gained per capita (age standardised)* | 0.054 (0.039 to 0.072) | 0.068 (0.049 to 0.092) | 0.051 (0.037 to 0.069) |
| ICER | NZ$38 200 (NZ$30 400 to $47 700) | NZ$33 300 (NZ$26 700 to NZ$41 000) | NZ$39 100 (NZ$31 400 to NZ$48 900) |
| Females | |||
| Net cost (NZ$; millions) | 56 (46 to 67) | 10 (8 to 13) | 45 (37 to 54) |
| Total HALYs gained | 1800 (1300 to 2410) | 450 (320 to 600) | 1360 (978 to 1810) |
| HALYs gained per capita | 0.067 (0.048 to 0.089) | 0.111 (0.079 to 0.149) | 0.059 (0.042 to 0.078) |
| HALYs gained per capita (age standardised)* | 0.070 (0.051 to 0.094) | 0.112 (0.080 to 0.151) | 0.063 (0.045 to 0.083) |
| ICER | NZ$31 700 (NZ$25 300 to NZ$39 500) | NZ$24 700 (NZ$19 900 to NZ$30 400) | NZ$34 000 (NZ$27 100 to NZ$42 500) |
Discount rate 3%.
*Age standardised to the 2001 Māori population standard.
HALY, health-adjusted life-year; ICER, incremental cost-effectiveness ratio.
The modelled LDCT screening intervention is highly likely to be cost-effective for all sex and ethnic groups, given a willingness to pay threshold based on GDP per capita (eg, NZ$45 000 per HALY) (figure 2). LDCT screening is likely to be relatively more cost-effective for Māori than for non-Māori, for females than for males, and for those in the older eligible age group (70–74 years) compared with the younger eligible age groups (55–59 years) (figure 2) LDCT screening remained cost-effective for the total population in all but one of the sensitivity analyses on key parameters (table 3).
Figure 2.

Cost-effectiveness acceptability curve for low-dose CT screening for lung cancer, by age group, gender (male (M), female (F)) and ethnicity.
Table 3.
Scenario analyses for the total eligible population and equity scenarios for Māori (95% uncertainty intervals)
| Scenarios | Cost of intervention (NZ$; millions) | Net cost (NZ$; millions) | Total HALYs gained | ICER |
| Default | 68 (58 to 80) | 105 (87 to 126) | 3120 (2240 to 4170) | NZ$34 400 (NZ$27 500 to NZ$42 900) |
| Discounting 0% | 78 (65 to 90) | 131 (106 to 158) | 4780 (3390 to 6490) | NZ$27 900 (NZ$22 400 to NZ$34 800) |
| Discounting 6% | 60 (50 to 71) | 88 (73 to 104) | 2120 (1530 to 2840) | NZ$42 400 (NZ$34 000 to NZ$52 800) |
| 100% screening coverage | 95 (86 to 104) | 155 (135 to 177) | 4480 (3290 to 5840) | NZ$35 200 (NZ$28 500 to NZ$43 800) |
| Screening cost 200% | 123 (106-139) | 160 (136 to 186) | 3130 (2210 to 4190) | NZ$52 200 (NZ$41 700 to NZ$66 000) |
| Diagnostic cost 200% | 71 (60 to 82) | 109 (90 to 129) | 3130 (2240 to 4100) | NZ$35 400 (NZ$28 300 to NZ$44 600) |
| Screening cost weight 1.692 | 104 (87 to 120) | 142 (118 to 167) | 3140 (2210 to 4220) | NZ$46 116 (NZ$36 277 to NZ$58 270) |
| Lead time double | 68 (57 to 79) | 106 (87 to 126) | 3141 (2217 to 4174) | NZ$34 400 (NZ$27 478 to NZ$43 198) |
| Invitation costs 150% (to account for costs of equal coverage) | 71 (60 to 82) | 108 (89 to 128) | 3110 (2190 to 4160) | NZ$35 500 (NZ$28 400 to NZ$44 400) |
| No smoking cessation in eligible cohort (cohort remains eligible over lifetime)* | 86 (72 to 100) | 136 (111 to 161) | 4300 (3100 to 5700) | NZ$32 100 (NZ$25 800 to NZ$39 800) |
| Complication rate 15% | 68 (57 to 79) | 107 (88 to 127) | 3150 (2280 to 4200) | NZ$34 500 (NZ$27 700 to NZ$43 000) |
| Overdiagnosis 11% | 68 (57 to 79) | 106 (87 to 126) | 3100 (2210 to 4110) | NZ$34 700 (NZ$27 800 to NZ$42 900) |
| Equity scenarios (Māori results) | ||||
| Default model | 9.3 (7.7 to 10.8) | 18 (14 to 22) | 660 (470 to 880) | NZ$27 400 (NZ$22 100 to NZ$33 700) |
| 1. Māori lung cancer stage-specific survival replaced with non-Māori values (for Māori who are screened) | 9.3 (7.7 to 10.8) | 21 (16 to 27) | 890 (630 to 1190) 36% increase |
NZ$24 200 (NZ$19 500 to NZ$29 600) |
| 2. Māori background mortality replaced with non-Māori values | 9.8 (8.3 to 11.4) | 19.7 (15.8 to 24.2) | 820 (590 to 1100) 25% increase |
NZ$24 400 (NZ$19 800 to NZ$30 000) |
| 3. Māori background morbidity replaced with non-Māori values | 9.3 (7.9 to 10.8) | 17.8 (14.3 to 21.8) | 740 (530 to 990) 13.5% increase |
NZ$24 200 (NZ$19 900 to NZ$29 200) |
| 4. Scenarios 2 and 3 | 9.9 (8.3 to 11.4) | 19.8 (15.6 to 24.3) | 930 (670 to 1220) 42% increase |
NZ$21 400 (NZ$17 800 to NZ$25 800) |
*Costs associated with background morbidity and mortality were adjusted to reflect the altered age structure of the eligible cohort.
HALY, health-adjusted life-year; ICER, incremental cost-effectiveness ratio.
Substituting non-Māori background mortality for Māori background mortality provided a 25% increase in Māori HALY gains compared with the default model (820 cf 660 HALYs; table 3). Using values of non-Māori background morbidity had a smaller gain in HALYs for Māori, with a 14% increase in total HALYs relative to the default model. The combination of setting non-Māori levels of background morbidity and mortality for Māori in the model resulted in a 42% additional total HALYs for Māori over default. Improving stage-specific survival for Māori to the level of non-Māori resulted in a 36% increase in Māori total HALYs. In all these scenarios, there was little change to the costs and therefore changes to the ICERs were primarily driven by changes in the health gains.
Impacts on inequalities in lung cancer survival and absolute inequalities in HALE
For the 55–59-year-old cohort, Māori had higher baseline lung cancer mortality than non-Māori. Mortality rates per 1000 eligible population reduced for both Māori and non-Māori with LDCT lung screening, and there was a reduction in the rate difference between baseline and intervention, indicating a reduction in absolute mortality inequities with screening (table 4). For Māori males, the reduction in absolute inequity in lung cancer mortality resulted in an additional 1.4 (95% UI 1.2 to 1.7) lives saved per 1000 eligible population for Māori males over the reduction in mortality for non-Māori males. Weighted to spread this gain over the total population aged 55–59 years, this reduced to an additional 0.5 (95% UI 0.4 to 0.6) lives saved per 1000 population for Māori males. The gain in lives saved were even greater for Māori females, with an additional 5.6 (95% UI 4.4 to 6.9) lives saved per 1000 eligible population, and 1.1 (95% UI 0.8 to 1.4) lives saved per 1000 total population over the mortality gains for non-Māori females. In contrast, the relative inequity in mortality for the eligible population increased slightly, with overlapping UIs (table 4). Using a scenario of equal stage-specific survival, there were bigger gains in health equity as measured by changes to lung cancer mortality and in lives saved for Māori over non-Māori (online supplemental table S1).
Table 4.
Lung cancer mortality rates and HALEs in the 55–59 year eligible and total populations, rate or HALE differences (RD/QD) and rate or HALE ratios (RR/QR), for Māori (M) compared with non-Māori (NM) at baseline and with CT lung screening, by sex
| Male | Female | |||||||
| Lung cancer mortality in the screening eligible population, per 1000 aged 55–59 years | Non-Māori | Māori | M:NM RD | M:NM RR | Non-Māori | Māori | M:NM RD | M:NM RR |
| Baseline | 86.7 (72.9 to 100.5) | 235.8 (196.4 to 278.7) | 149.0 (122.8 to 179) | 2.72 (2.60 to 2.90) | 112.1 (95.1 to 129.3) | 296.9 (248 to 347.8) | 184.8 (153.2 to 218.6) to | 2.65 (2.57 to 2.73) |
| Intervention | 79.1 (66.6 to 91.6) | 226.7 (188.1 to 267.7) | 147.6 (121.3 to 177.3) | 2.87 (2.70 to 3.00) | 103.9 (88.1 to 119.7) | 283.1 (235.7 to 330.6) | 179.3 (148 to 212) | 2.72 (2.64 to 2.81) |
| Lives saved Māori over non-Māori as a result of CT lung screening (per 1000 aged 55–59 years) | 1.4 (1.2 to 1.7) | 5.6 (4.4 to 6.9) | ||||||
| Lives saved Māori over non-Māori as a result of CT lung screening weighted to the total population (per 1000 aged 55–59 years) | 0.5 (0.4 to 0.6) | 1.1 (0.8 to 1.4) | ||||||
| HALE per eligible individual aged 55–59 years | Non-Māori | Māori | M:NM QD | M:NM QR | Non-Māori | Māori | M:NM QD | M:NM QR |
| Baseline | 12.6 (11.6 to 13.6) | 9.4 (8.3 to 10.5) | −3.2 (−3.4 to −3.1) | 0.74 (0.70 to 0.80) | 13.5 (12.4 to 14.6) | 10.5 (9.3 to 11.7) | −3 (−3.1 to −2.9) | 0.78 (0.75 to 0.80) |
| Intervention | 12.6 (11.6 to 13.6) | 9.4 (8.3 to 10.5) | −3.2 (−3.3 to −3.1) | 0.75 (0.70 to 0.80) | 13.6 (12.5 to 14.6) | 10.6 (9.4 to 11.8) | −2.9 (−3 to −2.8) | 0.78 (0.76 to 0.81) |
| Healthy days gained by Māori over non-Māori as a result of CT lung screening (per individual eligible population aged 55–59 years) | 7.6 (5.4 to 10.5) | 19.6 (13.8 to 26.7) | ||||||
| Healthy days gained Māori over non-Māori as a result of CT lung screening weighted to the total population (per individual aged 55–59 years) | 1.7 (1.2 to 2.2) | 3.6 (2.6 to 4.9) | ||||||
No discounting.
HALE, health-adjusted life expectancy; QD, HALE difference; QR, HALE ratio; RD, Rate difference.
For HALE, Māori baseline and intervention HALE were lower than non-Māori HALE, and both Māori and non-Māori HALE improved with screening (table 4). Absolute and relative inequities in HALE between Māori and non-Māori reduced slightly with CT lung screening. With LDCT screening, Māori females gained 20 healthy days over the gains of non-Māori females, and for Māori males there was a gain of 8 healthy days over non-Māori males. The scenario using equal stage-specific survival demonstrated greater gains in health equity for Māori over non-Māori (online supplemental table S1). For HALE in the eligible population, Māori females under this scenario gained 60 healthy days over non-Māori females and/or Māori males healthy days gained over non-Māori increased to 30 healthy days under this scenario (online supplemental table S1).
Discussion
LDCT screening for lung cancer is likely to be cost-effective in the NZ setting and will likely contribute positively to reducing population level inequities in lung cancer for Māori. In the model, Māori achieve greater per capita health gains compared with non-Māori due to higher rates of tobacco use, and higher incidence and mortality of Māori from lung cancer. These greater health gains for Māori translate into more favourable cost-effectiveness for this population compared with the total population.
Previous international estimates of the cost-effectiveness of LDCT lung cancer screening have been mixed.10 13 17 38–40 Similar to other studies, we found varying health gains and cost-effectiveness by demographic grouping, with females, older eligible participants and Māori likely to achieve greater gains in health and be relatively more cost-effective than males, the youngest eligible modelled cohort, and non-Māori, respectively.17 41 The BODE3 2018 cost-effectiveness analysis17 concluded that lung cancer screening was unlikely to be cost-effective in NZ, and this conclusion impacted policy discussions regarding lung cancer screening in NZ.17 A recent correction to this paper now finds CT lung cancer screening is cost-effective for Māori.18 This differs from our finding that LDCT screening is likely to be cost-effective for all eligible groups in NZ. The major drivers of the improved estimates of cost-effectiveness in our model compared with the BODE3 model are our updates to stage shift, improved sensitivity and specificity reported in the NELSON RCT, and lower CT costs.
Our equity-focused scenarios demonstrated the important impact of existing inequities in health and healthcare for Māori on modelled health gains from LDCT screening for lung cancer. Removing the penalty of having lower life expectancy and a higher burden of comorbid conditions for Māori resulted in a large increase in per capita HALY gains (increased by 42%) and also a reduction in the ICER for Māori, further improving the cost-effectiveness profile. An improvement in HALYs per capita (36% increase over default level) and cost-effectiveness for Māori was also seen from the scenario of equal stage-specific survival, where Māori who engaged with screening achieved the same levels of stage-specific survival as non-Māori. This scenario assumes that inequities in access to and quality of care for lung cancer for Māori will disappear with a structured and monitored screening programme, thereby equalising stage-specific survival. This scenario ignores the contribution of other factors to stage-specific survival inequities, such as comorbidities, any ethnic differences in the proportion of the distribution of small cell lung cancers that have worse prognosis and assumes that improvements in access and care for Māori will mitigate both the existing inequities and any improvements to non-Māori that may also arise from increased standardisation of care.
A strength of our approach to modelling was the primacy of health equity for Māori in all of our modelling decisions. In addition to building several equity-specific model outputs (such as changes to mortality and HALE inequities), we gave priority to updating model parameters that were likely to have an important impact on health equity (regardless of whether this impact was positive or negative). In this paper, we included new estimates of Surveillance, Epidemiology and End Results programme of the National Cancer Institute extent of disease at diagnosis drawn from a registry which has provided almost complete extent of disease at diagnosis. Importantly, this analysis showed that there are no measurable differences in extent of disease at diagnosis for Māori compared with non-Māori which is consistent with the published analysis of stage at diagnosis from that source.16
We also included new estimates of stage-specific survival that show a large inequity for localised lung cancer in Māori compared with non-Māori. This is an important finding in the context of LDCT lung cancer screening which primarily aims to increase the proportion of localised cancers. Because stage at diagnosis does not differ for Māori and non-Māori, worse stage-specific survival for localised lung cancer results in an increase in relative mortality inequities for Māori (compared with non-Māori) in the screen eligible population. Should LDCT lung cancer screening be implemented in NZ, it will be critical to address this differential stage-specific survival for Māori by addressing access to and quality of healthcare for those diagnosed with lung cancer alongside the appropriate management of comorbid conditions.
In our model, we set the expectation that a new screening programme would achieve equal coverage for Māori and non-Māori, thereby not extending existing inequities in screening service access. There are examples of health service providers in NZ that have achieved equal or greater screening coverage for Māori, demonstrating that, with good design and engagement with Māori, equal coverage is achievable.28 42 Our scenario analysis of increased invitation costs to improve Māori screening coverage remained cost-effective. In the model we account for outflow, where a proportion of the population will reach 15 years post cessation after initially being eligible. However, we do not account for any inflow into the model, where those initially ineligible subsequently acquire a 30 pack-year smoking history. As a result, our estimates of health gains and cost-effectiveness may be conservative. We used the NLST eligibility criteria for a higher risk eligible population, for consistency with previous NZ-based analyses. Using our model, the wider eligibility criteria of NELSON gives greater total HALYs gains, but similar ICERs due to the balancing impacts of the lower risk of lung cancer (lower per capita HALY gains) in a younger cohort (greater per capita HALY gains).
From an equity perspective, an important limitation of our LDCT screening model was the sole focus on lung cancer, to produce a conservative estimate of the possible health gains, the impacts on inequities for Māori and the cost-effectiveness. There is evidence that LDCT scans undertaken in such a high-risk population (30 pack-year smoking history) may offer potential co-benefits for the diagnosis and management of other health conditions, such as coronary artery calcification43 and chronic obstructive pulmonary disease, which are important conditions for the total population and have a greater burden on Māori. In addition, we did not include any changes to smoking behaviours that might occur as a result of LDCT screening, despite evidence that there can be an effect on cessation rates for those who engage in screening and that this impacts positively on cost-effectiveness models.40 44
We expect that this work will lead to further discussions regarding lung cancer screening in NZ. Furthermore, the methods we have used to ensure this cost-effectiveness analysis explicitly considered equity can be used in modelling for other conditions.
Conclusions
A national LDCT screening programme for lung cancer in NZ is likely to be cost-effective and will improve total population health. A well-planned and monitored programme can make an important contribution to reducing inequities in the burden of lung cancer for the Māori population. For these reasons, we highly recommend consideration of an LDCT screening programme in NZ.
Supplementary Material
Acknowledgments
We thank University of Otago, BODE³ for providing a copy of their original CT screening model. We also acknowledge the collaboration of Ross Lawrenson and his team at Waikato University who provided access to the Midland Lung Cancer Register for the purpose of determining baseline stage distribution in unscreened lung cancer among Māori and non-Māori.
Footnotes
Twitter: @tiekemanu
Contributors: All authors contributed to the conception or design of the work and the interpretation of data, give final approval for publication and agree to be accountable for all aspects of the work. MM, GK and PS undertook data analysis and modelling. MM drafted the manuscript. GK, PS, KB and SC revised the manuscript.
Funding: This work was supported by the Waitematā and Auckland District Health Boards.
Competing interests: GK and MM report personal fees from Waitematā District Health Board during the conduct of the study. GK was also a coauthor on the prior CT lung publication (Jaine et al, 2018) and received grants from the NZ Health Research Council outside the submitted work.
Patient consent for publication: Not required.
Provenance and peer review: Not commissioned; externally peer reviewed.
Data availability statement: Some data may be obtained from a third party and are not publicly available. Some data for this study were sourced from the Ministry of Health, New Zealand, and are available from them by request.
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Supplementary Materials
bmjopen-2020-037145supp001.pdf (326.7KB, pdf)

