Literature DB >> 30012640

Productivity burden of smoking in Australia: a life table modelling study.

Alice J Owen1, Salsabil B Maulida1,2, Ella Zomer1, Danny Liew1.   

Abstract

OBJECTIVES: This study aimed to examine the impact of smoking on productivity in Australia, in terms of years of life lost, quality-adjusted life years (QALYs) lost and the novel measure of productivity-adjusted life years (PALYs) lost.
METHODS: Life table modelling using contemporary Australian data simulated follow-up of current smokers aged 20-69 years until age 70 years. Excess mortality, health-related quality of life decrements and relative reduction in productivity attributable to smoking were sourced from published data. The gross domestic product (GDP) per equivalent full-time (EFT) worker in Australia in 2016 was used to estimate the cost of productivity loss attributable to smoking at a population level.
RESULTS: At present, approximately 2.5 million Australians (17.4%) aged between 20 and 69 years are smokers. Assuming follow-up of this population until the age of 70 years, more than 3.1 million years of life would be lost to smoking, as well as 6.0 million QALYs and 2.5 million PALYs. This equates to 4.2% of years of life, 9.4% QALYs and 6.0% PALYs lost among Australian working-age smokers. At an individual level, this is equivalent to 1.2 years of life, 2.4 QALYs and 1.0 PALY lost per smoker. Assuming (conservatively) that each PALY in Australia is equivalent to $A157 000 (GDP per EFT worker in 2016), the economic impact of lost productivity would amount to $A388 billion.
CONCLUSIONS: This study highlights the potential health and productivity gains that may be achieved from further tobacco control measures in Australia via application of PALYs, which are a novel, and readily estimable, measure of the impact of health and health risk factors on work productivity. © Author(s) (or their employer(s)) 2019. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.

Entities:  

Keywords:  economics; prevention; public policy

Mesh:

Year:  2018        PMID: 30012640      PMCID: PMC6580760          DOI: 10.1136/tobaccocontrol-2018-054263

Source DB:  PubMed          Journal:  Tob Control        ISSN: 0964-4563            Impact factor:   7.552


Introduction

The Global Burden of Disease study demonstrated that smoking continues to exert a significant mortality burden, with worldwide smoking-attributable deaths increasing by 20% since 1990.1 In Australia, following adoption of a series of tobacco control measures,2 age-standardised smoking prevalence decreased from 30.8% to 16.8% from 1980 to 2012.3 However, given population growth, this still represents a substantial number of smokers and a large burden of tobacco-related disease, with >15 000 Australians projected to succumb to premature tobacco-related death each year.4 The healthcare costs of tobacco-related morbidity and mortality (ie, the costs of treating smoking-related illnesses in those who smoke) have been well described, with around 15% of healthcare expenditure attributed to smoking in high-income countries.5 However, these direct costs represent only a proportion of the adverse economic impact of tobacco smoking. Indirect costs include second-hand smoke exposure, costs to employers arising from absenteeism and lost productivity due to smoking among their workforce, welfare benefits associated with supporting those with chronic smoking-related illness and smoking-attributable fires. Less readily quantifiable societal burdens include the social and emotional impact of smoking-related mortality and morbidity on family and loved ones. Of the indirect costs, productivity losses are substantial, but often of lower profile. In Australia in the financial year 2004/2005, it was estimated that the productivity losses associated with smoking was $A8 billion, which far outweighed the $A1.8 billion in direct healthcare costs of smoking.6 Price-based tobacco control measures (such as tobacco taxes) have been shown to be the most effective method for reducing tobacco consumption.7 However, tobacco consumption also confers economic benefits, including income generated as a result of the production and consumption of tobacco and tobacco taxes accrued by governments. These counterbalancing financial issues are often raised when governments are considering tobacco control measures. In order to provide a clearer understanding of the macro-economic impact of productivity loss due to smoking, we undertook a study that uses a novel measure developed by our group, productivity-adjusted life years (PALYs),8 to examine the productivity burden of smoking in a contemporary Australian setting.

Methods

We used life table modelling and decision analysis9 to examine the impact of smoking on years of life, quality-adjusted life years (QALYs) and PALYs lived among Australians of working age. PALYs are a construct similar to QALYs, but with years of life lived penalised for time spent with reduced work productivity (instead of reduced quality of life) as a result of ill health.8 Akin to utilities that quantify quality of life, ‘productivity indices’ represent the productivity of an individual in proportional terms, ranging from 1.0 (100% productive) to 0 (completely non-productive). Productivity indices may change, for example, with age and/or ill health. Life tables were constructed using age-specific and sex-specific rates of mortality for smoking and non-smoking adults aged 20–69 years, based on the 2016 Australian population (see online supplementary appendix 1 and table 1). The cohorts were followed until death or age 70 years. The 20–69 years age range was chosen to reflect the ages where people are commonly engaged in paid employment. Analyses were then repeated with the smoking cohort assumed to be non-smokers, and years of life, QALYs and PALYs lived were recalculated. The differences in these measures between the two cohort simulations represented the years of life, QALYs and PALYs lost to smoking.
Table 1

Modelled population

Age group (years)MalesFemales
 n*Smoking prevalence†EFT %‡ n*Smoking prevalence†EFT%‡
20–24851 8180.16254.1807 6340.17348.7
25–29885 3900.25579.7873 7150.14257.2
30–34876 8750.25579.7874 0000.14257.2
35–39785 6700.22284.3790 2620.14155.3
40–44819 9430.22284.3835 4140.14155.3
45–49774 3790.20778.0789 3100.17256.9
50–54769 3070.20778.0788 6570.17256.9
55–59714 5840.18368.2736 3590.12949.2
60–64632 8620.18352.2653 5460.12933.6
65–69570 5820.11133.6582 9770.06917.7
Total 7 681 410 6 924 240

*Australian population at 2015.

†Smoking prevalence data from the Australian National Health Survey 2014–2015.13

‡Percentage of total EFT workers from Australian workforce participation data.15

EFT, equivalent full time.

Modelled population *Australian population at 2015. †Smoking prevalence data from the Australian National Health Survey 2014–2015.13 ‡Percentage of total EFT workers from Australian workforce participation data.15 EFT, equivalent full time. Within each of the smoking and non-smoking cohorts, we created separate life tables with 1 year cycles for 20 sex-and-age subcohorts, with age being stratified into ten 5-year age bands: 20–24, 25–29, 30–34, 35–39, 40–44, 45–49, 50–54, 55–59, 60–64 and 65–69 years. The starting age in each subcohort was assumed as the mid-point of the age group (eg, 22 years for age group 20–24 years, 27 years for age group 25–29 years). For each sex-age cohort, specific mortality rates (by age, sex and smoking status) were applied, as well as smoking-related utilities derived from health-related quality of life measures10 and productivity indices calculated from previously reported rates of absenteeism and presenteeism in smoking compared with non-smoking workers.11 Analyses assuming a 10%, 25%, 50%, 75% and 90% reduction in current smoking prevalence rates were also undertaken.

Data sources

Age-specific and sex-specific mortality rates for single-year age bands were obtained from the Australian General Record of Incidence of Mortality data for 2015.12 Smoking prevalence data were drawn from the Australian National Health Survey 2014–2015.13 Probabilities of death for smokers and non-smokers were calculated from mortality risk in the wider population and population-attributable risk percentage (proportion of all deaths occurring in a population that is attributable to smoking) reported by Peto et al,14 and extrapolated above and below the age of 35 years using exponential equations for male and female smokers and non-smokers. The sex-specific and age-specific probabilities of death for smokers and non-smokers are listed in online supplementary appendix 1. For the modelling of QALYs, we derived utility decrements due to smoking from a 2010 US study examining trends in health-related quality of life (assessed using the EuroQol 5D (EQ-5D) quality of life tool) associated with smoking by Jia and Lubetkin.10 Productivity decrements due to smoking were estimated from a study by Bunn et al examining productivity loss due to smoking.11 This study found that smokers missed more days at work (absenteeism) (6.7 vs 4.4 days/year) and experienced more unproductive days (presenteeism) (3.2 vs 1.8 days/year) compared with non-smokers. As annual working days varies by age and sex, Australian workforce participation data15 (proportions in full-time and part-time work) were used to calculate sex-specific weighted-average maximum working days in a year among Australians aged 20–69 years. The age-specific and sex-specific productivity indices were then calculated by applying productivity penalties of 0.957 for non-smokers and 0.932 for smokers (calculated from Bunn et al,11 as above) to the age-specific workforce participation rates15 (see online supplementary appendix 2). Assessment of upper and lower bound estimates for PALYs were drawn from 95% CIs for smoking-related work absences reported by Weng et al, which found that current smokers were absent from work for 1.54–3.95 more days per year than non-smokers.16 For these upper and lower estimates, presenteeism data were not varied. The cost of lost productivity due to smoking was estimated by assignment of a cost for each PALY, which was derived from total Australian gross domestic product (GDP) in 2016 ($A1 474 705 million)17 divided by the estimated number of equivalent full-time (EFT) Australian workers in 2016 (n=9 411 998).15 The figure for 2016 was $A157 000.

Results

Excess mortality burden attributable to smoking

Among Australians currently aged 20–69 years who smoke and are followed up until age 70 years, the estimated number of deaths attributable to their smoking was 277261 in males and 129277 in females, equating to 61.7% and 61.8% of the predicted number of total deaths among smoking males and smoking females, respectively (table 2). The 406538 excess smoking-attributable deaths represented 23.1% of all deaths predicted to occur among the whole population aged 25–69 years, if followed to age 70 years.
Table 2

Deaths in Australian smokers and non-smokers over working life

Deaths in total pop’n status quoRemainder aliveDeaths in smokers status quoSmoking-attributable deathsAttributable risk %*PAR%†
Males (years)
 20–24136 451715 36744 41126 61859.919.5
 25–29156 353729 03772 25843 47360.227.8
 30–34152 816724 05970 93242 90560.528.1
 35–39129 128656 54254 46333 15860.925.7
 40–44130 441689 50255 38133 96261.326.0
 45–49115 149659 23046 86929 04562.025.2
 50–541 05 325663 98243 55727 43363.026.0
 55–5982 686631 89831 99120 63664.525.0
 60–6456 286576 57622 82615 33167.227.2
 65–6921 981548 6016618470071.021.4
Male total1 086 6166 594 794449 304277 26161.725.5
Females (years)
 20–2487 016720 61829 80617 83959.820.5
 25–2989 793783 92226 32715 82360.117.6
 30–3488 471785 52926 11015 79060.517.8
 35–3978 008712 25423 05814 03860.918.0
 40–4479 715755 69923 70914 51661.218.2
 45–4974 523714 78726 26116 23661.821.8
 50–5468 467720 19024 62615 51963.022.7
 55–5952 076684 28315 419999064.819.2
 60–6438 471615 07511 088748867.519.5
 65–6913 877569 1002855203971.414.7
Female total670 4176 253 823209 260129 27761.819.3
Total 1 757 033 13 656 251 658 564406 538 61.7 23.1

Deaths are n.

*Attributable risk %=((deaths in smoker population−deaths in non-smoker population)/deaths in smoker population)×100%.

†PAR%=((deaths in smoker population−deaths in non- smoker population)/deaths in total population)×100%.

PAR, population attributable risk.

If smoking prevalence in the working age population was half of what it currently is, 203 629 smoking-related deaths could be averted in the working age population if followed to age 70 years (table 6).
Table 6

Effect of proportional reductions in smoking prevalence on working lifetime national productive capacity among the Australian adult population of 2015

Smoking prevalence reduction (%)Deaths avertedQALYs gainedPALYs gainedValue of PALY gain ($A billion)
10↓40 644602 877247 51438.8
25↓101 6351 507 193618 78697.0
50↓203 2693 014 3861 237 572193.9
75↓304 9044 521 5801 856 358290.9
90↓365 8845 425 8962 227 630349.0

Data are n or value ($A of productivity gain) across a variety of hypothetical reductions in smoking prevalence (assumed to occur across all age groups and in both sexes).

PALY,  productivity-adjusted life years; QALY,  quality-adjusted life years.

Deaths in Australian smokers and non-smokers over working life Deaths are n. *Attributable risk %=((deaths in smoker population−deaths in non-smoker population)/deaths in smoker population)×100%. PAR%=((deaths in smoker population−deaths in non- smoker population)/deaths in total population)×100%. PAR, population attributable risk.

Years of life lost to smoking

The estimated years of life lived by the smoking and (hypothetically) non-smoking cohorts are summarised in table 3. Overall, it was estimated that smoking at current prevalence reduced the number of years of life lived by 2 227 326 years among males and 914 602 years in females. The total reduction in 3 141 928 years of life lived equated to a 4.2% loss among smokers, and represented a 0.9% loss among the whole population. This equated to 1.2 years of life lost per smoker.
Table 3

Years of life (YOL) lived by working age Australians

Age groupYOL lived by smoking cohort status quoTotal population YOL lived status quoYOL lost to smoking% YOL lost due to smoking status quo% YOL lost with 50% reduction in smoking
Males (years)
 20–246 145 37339 307 975265 5354.12.1
 2 5–298 950 58736 344 717425 9284.52.3
 30–347 780 77131 707 597408 9485.02.6
 35–395 237 77724 645 072300 0385.42.8
 40–444 614 21221 773 435282 1215.83.0
 45–493 324 05216 881 433214 8866.13.1
 50–542 582 92213 133 827171 2236.23.2
 55–591 537 3228 852 002101 0956.23.2
 60–64849 0514 865 88750 6825.62.9
 65–69180 3741 680 01868703.71.9
All males41 202 441199 191 9632 227 3265.12.6
Females (years)
 20–246 409 46437 795 327156 1392.41.2
 25–295 078 77236 593 269136 9142.61.3
 30–344 470 81132 294 539134 0492.91.5
 35–393 473 00425 322 584113 4813.21.6
 40–443 106 41022 683 205107 0103.31.7
 45–492 933 16517 567 640106 8473.51.8
 50–542 290 44713 741 26688 2253.71.9
 55–591 160 5349 302 58645 3503.81.9
 60–64638 1505 672 10523 5593.61.8
 65–69116 4481 728 51230282.51.3
All females29 677 206202 701 034914 6023.01.5
Total 70 879 647 401 892 998 3 141 928 4.2 2.2

Data are n or % of years of life lost at current smoking prevalence, or years of life gained (n) with a hypothetical 50% reduction in smoking prevalence across all ages and sex.

Years of life (YOL) lived by working age Australians Data are n or % of years of life lost at current smoking prevalence, or years of life gained (n) with a hypothetical 50% reduction in smoking prevalence across all ages and sex.

Quality-adjusted life years lost to smoking

The estimated QALYs lived by the smoking and (hypothetically) non-smoking cohorts are summarised in table 4. Overall, it was estimated that smoking reduced the number of QALYs by 3 849 150 among males and 2 179 623 among females, equating to 2.4 QALYs lost per male smoker and 2.3 QALYs lost per female smoker over the remainder of their working lifetime. The total reduction in 6 028 773 QALYs equated to a 9.4% loss among smokers, and a 2.1% loss among the whole population.
Table 4

The impact of smoking on QALYs

Age groupQALYs smokers status quoQALYs non-smokersQALYs lost to smokingQALYs lost per smoker% QALYs lostQALYs gained with 50% reduction in smoking prevalence
Males (years)
 20–245 151 03129 339 229520 7533.89.2260 377
 25–297 453 50124 098 836795 0943.59.6397 547
 30–346 444 32120 939 735722 9703.210.1361 485
 35–394 306 80316 868 553506 5892.910.5253 294
 40–443 755 84814 774 434459 9932.510.9229 997
 45–492 682 93911 578 168339 3572.111.2169 679
 50–542 083 2418 992 229264 0371.711.2132 018
 55–591 238 2786 211 331153 0001.211.076 500
 60–64681 7843 382 55475 8750.710.037 938
 65–69144 1191 246 20411 4810.27.45741
All males33 941 864137 431 2733 849 1502.410.21 924 575
Females (years)
 20–245 367 13527 756 781439 3013.17.6219 651
 25–294 225 51127 713 660361 1322.97.9180 566
 30–343 699 80524 341 905328 8082.68.2164 404
 35–392 853 71418 985 742262 6882.48.4131 344
 40–442 527 47216 852 454238 7642.08.6119 382
 45–492 367 11412 496 402228 7571.78.8114 378
 50–541 847 0759 757 885179 9251.38.989 963
 55–59934 6456 913 00389 2090.98.744 605
 60–64512 3754 238 67144 7960.58.022 398
 65–6993 0421 339 62562420.26.33121
All females24 427 888150 396 1272 179 6232.38.21 089 812
Total 58 369 753 287 827 400 6 028 773 2.4 9.4 3 014 386

Data are n or % of QALY lost at current smoking prevalence, or potential QALY gained (n) with a hypothetical 50% reduction in smoking prevalence across all ages and sex.

QALY, quality-adjusted life years.

The impact of smoking on QALYs Data are n or % of QALY lost at current smoking prevalence, or potential QALY gained (n) with a hypothetical 50% reduction in smoking prevalence across all ages and sex. QALY, quality-adjusted life years.

Productivity-adjusted life years lost to smoking

The estimated PALYs lived by the population are summarised in table 5. Overall, it was estimated that smoking reduced the number of PALYs by 1 711 214  among males and 702 931 among females. The total reduction in 2 475 144 PALYs equated to a 56.0% loss among smokers (with a range of 5.4%–7.1% when upper and lower absenteeism estimates were applied to the model), and a 1.3% loss among the whole population as well as 1.0 PALY lost per smoker, calculated by dividing the total PALYs lost among smokers by the number of smokers in the population at the start of the modelled period.
Table 5

The impact of smoking on PALYs in Australian adults over working life

Age groupPALYs smokers status quoPALYs non-smokersPALYs lost to smoking% PALYs lostPALYs lost per smokerPALYs gained with 50% reduction in smoking prevalence
Males (years)
 20–244 067 80022 322 890247 6045.71.8123 802
 25–295 995 49018 629 334380 9946.01.7190 497
 30–345 130 16615 999 475346 1656.31.5173 082
 35–393 365 51512 634 406239 6756.61.4119 838
 40–442 834 05910 672 183211 2176.91.2105 609
 45–491 922 0427 935 712149 4497.20.974 724
 50–541 373 4265 680 150109 2867.40.754 643
 55–59711 1793 433 95357 9927.50.428 996
 60–64324 3731 564 57426 0767.40.213 038
 65–6956 387481 68537566.20.11878
All males25 780 43799 354 3621 772 2146.41.1886 107
Females
 20–243 040 22615 221 816144 0234.51.072 012
 25–292 401 99615 231 600118 8514.71.059 426
 30–342 076 98213 205 345108 5185.00.954 259
 35–391 579 01910 145 57286 3195.20.843 160
 40–441 376 3538 855 32277 1985.30.738 599
 45–491 246 1446 346 51272 2145.50.536 107
 50–54901 0284 601 49354 8385.70.427 419
 55–59404 3812 905 41625 9286.00.312 964
 60–64199 7671 619 12413 0656.10.26533
 65–6936 453518 50519755.10.0988
All females13 262 34978 650 706702 9315.00.7351 465
Total 39 042 786 178 005 069 2 475 144 6.0 1.0 1 237 572

Data are n or % of PALYs of life lost at current smoking prevalence, or potential PALY gained (n) with a hypothetical 50% reduction in smoking prevalence across all ages and sex.

PALY, productivity-adjusted life years.

The impact of smoking on PALYs in Australian adults over working life Data are n or % of PALYs of life lost at current smoking prevalence, or potential PALY gained (n) with a hypothetical 50% reduction in smoking prevalence across all ages and sex. PALY, productivity-adjusted life years. As with years of life and QALYs, more PALYs were lost by males, because of their higher smoking prevalence, as well as by people of middle-age, because of the combination of greater smoking prevalence and proportion of people working in these age groups. In women, the highest proportional loss of PALYs occurred in those aged 45–64 years (table 5). The highest smoking prevalence among women was observed in the 45–54 years age group (table 1), suggesting that interventions to reduce smoking prevalence specifically targeted to this group could be prioritised. Among males, the highest smoking prevalence was observed in the 25–34 years age group (table 1), and the potential years of productive life gained through prevention targeting this group might also warrant focus. Assuming the cost of each PALY is $A157 000, the total cost of productivity loss attributable to smoking was estimated to be $A388 billion over the working life of the current Australian population. If a 50% reduction in current smoking prevalence could be achieved, an additional 1 237 572 PALYs, and $A194 billion in GDP, could potentially be saved (table 6), but any savings would need to be offset by the cost of the prevention programme. Even more modest reductions in smoking prevalence (10%) could confer substantial lifetime productivity gains of >$A38 billion (table 6). Effect of proportional reductions in smoking prevalence on working lifetime national productive capacity among the Australian adult population of 2015 Data are n or value ($A of productivity gain) across a variety of hypothetical reductions in smoking prevalence (assumed to occur across all age groups and in both sexes). PALY,  productivity-adjusted life years; QALY,  quality-adjusted life years.

Discussion

The findings of our study highlight the substantial impact of smoking on health and productivity in the Australian population. Among Australians currently aged 20–69 years who are followed up to age 70 years, smoking was predicted to result in an excess of over 400 000 deaths, with a loss of >3 million years of life over the productive working age of current Australian smokers, and a 6% loss of PALYs, equating to $A388 billion lost in GDP. Productivity losses accrued from a combination of premature mortality, morbidity-associated work absences (absenteeism) and reductions in productive capacity while at work (presenteeism). In our analyses, males and females who smoke were estimated to experience an almost threefold increase in the risk of death compared with people who do not smoke. This result is comparable to a study in 2015 on an Australian cohort population by Banks et al, which estimated smoking increases mortality around twofold to fourfold in current smokers.18 Our study estimated that current rates of smoking would cause >3 million years of life lost among 2.5 million Australian smokers aged 20–69 years when followed up until age 70 years. The 1997 Australian National Tobacco Campaign was estimated to have led to 190 000 people (of all ages) quitting smoking, and a gain of 323 000 years of life with follow-up until 85 years.19 Hence, each quitter gained 1.7 years of life until age 85 years. This estimate is in accord with our estimate of 1.2 years of life lost per smoker followed up for an overall shorter period of time from 20 to 69 years to 70 years. In our study, the years of life lost was lower among females, due to a lower prevalence of smoking. As expected, years of life lost to smoking was also higher among younger age groups, because of higher smoking prevalence (particularly among men) and follow-up time within the modelled period. Smoking is well known to decrease life expectancy. A study capturing 50 years of observation of male British doctors by Doll et al suggested that male smokers died on average 10 years earlier compared with non-smokers.20 A study in Chinese adults estimated smokers at age 35 years lost around 3 years of life when compared with people who never smoked,21 while in a Norwegian population it was estimated that 1.4–2.7 years of life were lost in heavy smokers aged 40–70 years.22 A recent study modelling average life expectancy in the Australian population by Mannan et al found that reducing the prevalence of smoking among Australian smokers to 10% would increase the life expectancy by 0.4–2 years for males and 0.7–2 years for females.23 Our study estimated that smoking would cause a loss of over 2.4 million PALYs among Australians currently aged 20–69 years who smoke, if followed up until age 70 years. This equated to 1.0 PALY lost per smoker. This compares with the loss of 1.4 PALYs per working age person with diabetes over a similar time horizon.8 The differences are attributable to a higher prevalence of diabetes than smoking and a greater reduction in productivity conferred by diabetes than smoking. Of course, this does not mean greater priority should be given to prevention of diabetes, which is more difficult to achieve given its multiplicity of risk factors, chief among which is genetic. The loss of productivity, measured in terms of PALYs, among the working population has economic implications. Our study is the first to examine this cost in terms of PALYs, but previous studies have estimated the cost of productivity loss due to smoking via other means. In a study on the Australian population by Collins and Lapsley, it was estimated that smoking caused a loss of $A4.9 billion due to presenteeism (0.5% of GDP) and $A779 million due to absenteeism (0.08% of GDP) in the single financial year of 2004/2005.6 In 2000, Lightwood et al reported that the total economic costs of smoking, including productivity losses, amounted to 2.1%–3.4% of GDP in Australia.24 A study in Thailand reported that the economic burden of smoking was 0.8% of country GDP, while the revenue from tobacco industry only contributed to 0.5% of the total GDP.25 The results of our study are not directly comparable to those of other studies because of the differences in evaluation time horizons, which varied from 1 to 50 years in our study (depending on the age of the smokers), and which for other studies was limited to a single year. We had also adopted a simple ‘top-down’ approach to allocating total GDP to EFT worker. Nonetheless, our conclusion is the same as that of the other studies; that smoking imposes a large economic burden on productivity. It is therefore clear that prevention of smoking is important from an economic standpoint. The high indirect costs of smoking suggest that it would be better for policy makers to consider the amount of money spent on prevention strategies as an ‘investment’ rather than as an ‘expenditure’. Our study did not address the issue of smoking cessation. Rather, it sought to provide a conceptual illustration of the productivity losses due to smoking by assuming hypothetically that it did not exist, that is, smoking was not taken up in the first place. It should be acknowledged that this is a hypothetical scenario, and in reality, smoking cessation interventions as well as interventions or policy settings dissuading smoking uptake, would be required to aim for the productivity gains modelled herein, even those projected from more modest reductions in smoking prevalence. Smoking cessation is beneficial to productivity. A recent study in Japan suggested that smoking cessation improved productivity at work, with the productivity and associated costs of former smokers being similar to those who never smoked.26 This finding is supported by the findings of Baker et al, who found no significant difference between former and never smokers in term of productivity loss in China, the US and Europe.27 A 19-year follow-up study among males in Finland by Kiiskinen et al also stated that quitting smoking could avert almost 60% of losses due to the direct and indirect costs of smoking.28 Our study is the first to examine the impact of smoking on productivity in terms of PALYs, a novel and informative measure. Our method uses readily available data to estimate the macroeconomic productivity impact of smoking in a methodologically accessible manner, which could be applied in a variety of other country settings or risk/disease burdens. Further research using PALYs provides the opportunity to compare the effects of different tobacco control measures across various age, sex and employment settings, which can inform the targeting of interventions. In addition, application of this method across countries would provide a greater understanding of the regional and global indirect costs of smoking, and the potential productivity gains from tobacco control. Quantifying burden of disease in terms of PALYs can inform resource allocation and decision making for public and workplace health strategies, and may assist in leveraging employer engagement with tobacco control programmes. PALYs are like QALYs because they ‘penalise’ time spent alive by people affected by a disease or condition, and do so in the same manner—by proportionally adjusting time according to the relative extent to which productivity (PALYs) or quality of life (QALYs) is affected by that disease or condition. QALYs have limitations that stem from their attempting to quantify the highly subjective nature of quality of life and how much people value it,29–31 but despite these limitations, they remain important measures of burden of disease that help inform healthcare planning. Furthermore, healthcare decision making does not rely on QALYs alone; many other factors need to be taken into consideration. As discussed, we feel that the impact of ill health on productivity should be among these factors, and PALYs offer a convenient method for measuring this. One advantage that PALYs have over QALYs is that the measurement and concept of productivity loss is much more objective than the the measurement and concept of quality of life. Several limitations of our study warrant mention. First, our analyses did not take into account healthcare costs devoted to managing smoking-related ill health, which were estimated to be $A318 million in the year 2004/2005 (offset for savings accrued through premature mortality).6 Furthermore, potential gains from reductions in passive smoking-related mortality and morbidity, and productivity losses associated with family members caring for those with disabling smoking-related morbidity were also excluded. On the other hand, we did not consider the economic activity associated with production and sale of tobacco products, all of which contribute to GDP, nor government revenue generated from tobacco taxes. Second, life table modelling is a simple and commonly used tool used in epidemiological and demographical studies, but has established limitations. It was assumed that age-specific mortality did not change over time (this is a well-known limitation called the ‘life table assumption’). However, as the relative impact of smoking is unlikely to change substantially, and the life table assumption was applied to both smokers and non-smokers, this would not have significantly impacted the conclusion that smoking imposes a significant burden on health and productivity. The third limitation stemmed from the assumption that there was no uptake nor cessation of smoking over time within the modelled scenarios. Furthermore, the utility values and productivity indices used in this study were potentially imprecise, as they were not stratified for type of work. The impact of smoking on productivity is likely to differ across different types of jobs, and socioeconomic status. Similarly, assessment of the quality of life differences between smokers and non-smokers (from which QALYs are calculated) can vary by instrument,32 and is also potentially confounded by socioeconomic factors such as educational attainment, household income and occupation.33 We could not account for the duration of smoking among smokers, nor any socioeconomic differences between smokers and non-smokers, and other factors that may confound the association between smoking and utilities and productivity indices. Fourth, like QALYs, PALYs are imprecise because they attempt to measure entities that are difficult to measure. Nevertheless, even with highly conservative assumptions regarding the effect of smoking on productivity among individuals, the collective impact is large. And perhaps the imperfections of PALYs will help stir debate, as QALYs initially did 40 years ago,34 which in turn will progress the science, economics, art and politics of health-related productivity. Lastly, in terms of estimating impact on GDP, the present study assumed that all individuals and jobs contributed equally to GDP, which is not the case, and we assumed throughout the simulated follow-up, GDP would be stable, rather than increase. This last assumption would have led to an underestimation of the economic impact of smoking. The findings of our study provide an important and novel assessment of the burden of smoking on the Australian population. They highlight the importance of preventing smoking, strategies for which, if effective, are very likely to be cost-effective, and possibly even cost-saving, in the long term.35 This issue is even more telling for populations within which the prevalence of smoking is very high, and those low-income and middle-income countries for whom the burden of productivity loss may be considerable, such as Indonesia, a close neighbour to Australia, for which smoking prevalence rates among men is as high as 65%.36 Future studies may also consider the type of jobs in the ‘working’ population when calculating productivity loss, as prevalence rates of smoking, and salaries/GDP per worker may differ, and smoking has been shown to be socioeconomically patterned.37

Conclusion

Smoking imposes a very significant burden on the larger economy of Australia, despite that it is a country with a relatively low prevalence of smoking. Potential productivity gains for Australia with expansion of tobacco control measures are compelling. The likely economic benefits arising from productivity gains mean that greater investment in reducing the uptake of smoking is warranted. Direct healthcare costs attributable to smoking are only a proportion of the economic burden imposed by tobacco. This study uses the novel concept of ‘productivity-adjusted life years’ (PALYs) to estimate the macroeconomic costs of smoking, and potential gains from smoking cessation. Following the current Australian smoking population to the age of 70 years, 2.4 million PALYs would be lost to smoking. Assuming that each PALY in Australia is equivalent to $A157 000 (gross domestic product per equivalent full-time worker in 2016), the economic impact of lost productivity over the working lifetime of current Australian smokers would amount to $A388 billion.
  25 in total

Review 1.  Health outcomes in economic evaluation: the QALY and utilities.

Authors:  Sarah J Whitehead; Shehzad Ali
Journal:  Br Med Bull       Date:  2010-10-29       Impact factor: 4.291

2.  Examining the association of smoking with work productivity and associated costs in Japan.

Authors:  Kiyomi Suwa; Natalia M Flores; Reiko Yoshikawa; Rei Goto; Jeffrey Vietri; Ataru Igarashi
Journal:  J Med Econ       Date:  2017-07-31       Impact factor: 2.448

Review 3.  Is the QALY blind, deaf and dumb to equity? NICE's considerations over equity.

Authors:  M O Soares
Journal:  Br Med Bull       Date:  2012-02-13       Impact factor: 4.291

Review 4.  On the Estimation of the Cost-Effectiveness Threshold: Why, What, How?

Authors:  Laura Vallejo-Torres; Borja García-Lorenzo; Iván Castilla; Cristina Valcárcel-Nazco; Lidia García-Pérez; Renata Linertová; Elena Polentinos-Castro; Pedro Serrano-Aguilar
Journal:  Value Health       Date:  2016-04-23       Impact factor: 5.725

5.  The Productivity Burden of Diabetes at a Population Level.

Authors:  Dianna J Magliano; Valencia J Martin; Alice J Owen; Ella Zomer; Danny Liew
Journal:  Diabetes Care       Date:  2018-02-28       Impact factor: 19.112

6.  Smoking and deaths between 40 and 70 years of age in women and men.

Authors:  Stein Emil Vollset; Aage Tverdal; Håkon K Gjessing
Journal:  Ann Intern Med       Date:  2006-03-21       Impact factor: 25.391

Review 7.  The Economic Impact of Smoking and of Reducing Smoking Prevalence: Review of Evidence.

Authors:  Victor U Ekpu; Abraham K Brown
Journal:  Tob Use Insights       Date:  2015-07-14

8.  Tobacco smoking and all-cause mortality in a large Australian cohort study: findings from a mature epidemic with current low smoking prevalence.

Authors:  Emily Banks; Grace Joshy; Marianne F Weber; Bette Liu; Robert Grenfell; Sam Egger; Ellie Paige; Alan D Lopez; Freddy Sitas; Valerie Beral
Journal:  BMC Med       Date:  2015-02-24       Impact factor: 8.775

9.  Benefits of quitting smoking on work productivity and activity impairment in the United States, the European Union and China.

Authors:  Christine L Baker; Natalia M Flores; Kelly H Zou; Marianna Bruno; Vannessa J Harrison
Journal:  Int J Clin Pract       Date:  2017-01       Impact factor: 2.503

10.  Improvements in life expectancy among Australians due to reductions in smoking: Results from a risk percentiles approach.

Authors:  Haider Mannan; Andrea J Curtis; Andrew Forbes; Dianna J Magliano; Judy A Lowthian; Manoj Gambhir; John J McNeil
Journal:  BMC Public Health       Date:  2016-01-26       Impact factor: 3.295

View more
  10 in total

1.  The impact of diabetes on productivity in China.

Authors:  Thomas R Hird; Ella Zomer; Alice Owen; Lei Chen; Zanfina Ademi; Dianna J Magliano; Danny Liew
Journal:  Diabetologia       Date:  2019-04-27       Impact factor: 10.122

2.  Productivity burden of hypertension in Japan.

Authors:  Eri Asakura; Zanfina Ademi; Danny Liew; Ella Zomer
Journal:  Hypertens Res       Date:  2021-08-26       Impact factor: 3.872

3.  Productivity Burden of Occupational Noise-Induced Hearing Loss in Australia: A Life Table Modelling Study.

Authors:  Si Si; Kate Lewkowski; Lin Fritschi; Jane Heyworth; Danny Liew; Ian Li
Journal:  Int J Environ Res Public Health       Date:  2020-06-29       Impact factor: 3.390

4.  Gender Differences in Labour Losses Associated with Smoking-Related Mortality.

Authors:  Juan Oliva-Moreno; Marta Trapero-Bertran; Luz María Peña-Longobardo
Journal:  Int J Environ Res Public Health       Date:  2019-09-28       Impact factor: 3.390

5.  Burden of disease and productivity impact of Streptococcus suis infection in Thailand.

Authors:  Ajaree Rayanakorn; Zanfina Ademi; Danny Liew; Learn-Han Lee
Journal:  PLoS Negl Trop Dis       Date:  2021-01-22

6.  Productivity-Adjusted Life-Years: A New Metric for Quantifying Disease Burden.

Authors:  Zanfina Ademi; Ilana N Ackerman; Ella Zomer; Danny Liew
Journal:  Pharmacoeconomics       Date:  2021-01-11       Impact factor: 4.981

7.  The Preventable Productivity Burden of Kidney Disease in Australia.

Authors:  Feby Savira; Zanfina Ademi; Bing H Wang; Andrew R Kompa; Alice J Owen; Danny Liew; Ella Zomer
Journal:  J Am Soc Nephrol       Date:  2021-03-09       Impact factor: 10.121

8.  Adjusted productivity costs of stroke by human capital and friction cost methods: a Northern Finland Birth Cohort 1966 study.

Authors:  Ina Rissanen; Leena Ala-Mursula; Iiro Nerg; Marko Korhonen
Journal:  Eur J Health Econ       Date:  2021-02-24

9.  Health and productivity burden of coronary heart disease in the working Indonesian population using life-table modelling.

Authors:  Regina E Uli; Regina P U Satyana; Ella Zomer; Dianna Magliano; Danny Liew; Zanfina Ademi
Journal:  BMJ Open       Date:  2020-09-09       Impact factor: 2.692

10.  The impact of diabetes on the productivity and economy of Bangladesh.

Authors:  Afsana Afroz; Thomas R Hird; Ella Zomer; Alice Owen; Lei Chen; Zanfina Ademi; Danny Liew; Dianna J Magliano; Baki Billah
Journal:  BMJ Glob Health       Date:  2020-06
  10 in total

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