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Disability-adjusted life years lost per 100,000 inhabitants in 2004:[1]
  No data
  Fewer than 9,250
  9,250–16,000
  16,000–22,750
  22,750–29,500
  29,500–36,250
  36,250–43,000
  43,000–49,750
  49,750–56,500
  56,500–63,250
  63,250–70,000
  70,000–80,000
  More than 80,000

Disability-adjusted life years (DALYs) are a measure of overall disease burden, expressed as the number of years lost due to ill-health, disability, or early death. It was developed in the 1990s as a way of comparing the overall health and life expectancy of different countries.

DALYs have become more common in the field of public health and health impact assessment (HIA). They include not only the potential years of life lost due to premature death but also equivalent years of 'healthy' life lost by virtue of being in states of poor health or disability. In so doing, mortality and morbidity are combined into a single, common metric.[2]

Calculation

See formula for calculation of DALYs in text, figure emphasizes that DALYs are cumulative and may result from temporary disability at different points in lifespan in addition to permanent disability

Disability-adjusted life years are a societal measure of the disease or disability burden in populations. DALYs are calculated by combining measures of life expectancy as well as the adjusted quality of life during a burdensome disease or disability for a population. DALYs are related to the quality-adjusted life year (QALY) measure; however, QALYs only measure the benefit with and without medical intervention and therefore do not measure the total burden. Also, QALYs tend to be an individual measure and not a societal measure.

Traditionally, health liabilities were expressed using one measure, the years of life lost (YLL) due to dying early. A medical condition that did not result in dying younger than expected was not counted. The burden of living with a disease or disability is measured by the years lost due to disability (YLD) component, sometimes also known as years lost due to disease or years lived with disability/disease.[2]

DALYs are calculated by taking the sum of these two components:[3]

DALY = YLL + YLD

The DALY relies on an acceptance that the most appropriate measure of the effects of chronic illness is time, both time lost due to premature death and time spent disabled by disease. One DALY, therefore, is equal to one year of healthy life lost.

How much a medical condition affects a person is called the disability weight (DW). This is determined by disease or disability and does not vary with age. Tables have been created of thousands of diseases and disabilities, ranging from Alzheimer's disease to loss of finger, with the disability weight meant to indicate the level of disability that results from the specific condition.

Examples of disability weight
Condition DW 2004[4] DW 2010[5]
Alzheimer's and other dementias 0.666 0.666
Blindness 0.594 0.195
Schizophrenia 0.528 0.576
AIDS, not on ART 0.505 0.547
Burns 20%–60% of body 0.441 0.438
Fractured femur 0.372 0.308
Moderate depression episode 0.350 0.406
Amputation of foot 0.300 0.021–0.1674
Deafness 0.229 0.167–0.281
Infertility 0.180 0.026–0.056
Amputation of finger 0.102 0.030
Lower back pain 0.061 0.0322–0.0374

Examples of the disability weight are shown on the right. Some of these are "short term", and the long-term weights may be different.

The most noticeable change between the 2004 and 2010 figures for disability weights above are for blindness as it was considered the weights are a measure of health rather than well-being (or welfare) and a blind person is not considered to be ill. "In the GBD terminology, the term disability is used broadly to refer to departures from optimal health in any of the important domains of health."[6]

At the population level, the disease burden as measured by DALYs is calculated by adding YLL to YLD. YLL uses the life expectancy at the time of death.[7] YLD is determined by the number of years disabled weighted by level of disability caused by a disability or disease using the formula:

YLD = I × DW × L

In this formula, I = number of incident cases in the population, DW = disability weight of specific condition, and L = average duration of the case until remission or death (years). There is also a prevalence (as opposed to incidence) based calculation for YLD. Number of years lost due to premature death is calculated by

YLL = N × L

where N = number of deaths due to condition, L = standard life expectancy at age of death.[2] Life expectancies are not the same at different ages. For example, in the Paleolithic era, life expectancy at birth was 33 years, but life expectancy at the age of 15 was an additional 39 years (total 54).[8]

Historically Japanese life expectancy statistics have been used as the standard for measuring premature death, as the Japanese have the longest life expectancies.[9] Other approaches have since emerged, include using national life tables for YLL calculations, or using the reference life table derived by the GBD study.[10][11]

Age weighting

Some studies use DALYs calculated to place greater value on a year lived as a young adult. This formula produces average values around age 10 and age 55, a peak around age 25, and lowest values among very young children and very old people.[12]

The World Health Organization (WHO) used age weighting and time discounting at 3 percent in DALYs prior to 2010 but discontinued using them starting in 2010.[13]

There are two components to this differential accounting of time: age-weighting and time-discounting. Age-weighting is based on the theory of human capital. Commonly, years lived as a young adult are valued more highly than years spent as a young child or older adult, as these are years of peak productivity. Age-weighting receives considerable criticism for valuing young adults at the expense of children and the old. Some criticize, while others rationalize, this as reflecting society's interest in productivity and receiving a return on its investment in raising children. This age-weighting system means that somebody disabled at 30 years of age, for ten years, would be measured as having a higher loss of DALYs (a greater burden of disease), than somebody disabled by the same disease or injury at the age of 70 for ten years.

This age-weighting function is by no means a universal methodology in HALY studies, but is common when using DALYs. Cost-effectiveness studies using QALYs, for example, do not discount time at different ages differently.[14] This age-weighting function applies only to the calculation of DALYs lost due to disability. Years lost to premature death are determined from the age at death and life expectancy.

The Global Burden of Disease Study (GBD) 2001–2002 counted disability adjusted life years equally for all ages, but the GBD 1990 and GBD 2004 studies used the formula[15]

[16] where is the age at which the year is lived and is the value assigned to it relative to an average value of 1.

In these studies, future years were also discounted at a 3% rate to account for future health care losses. Time discounting, which is separate from the age-weighting function, describes preferences in time as used in economic models.[17]

The effects of the interplay between life expectancy and years lost, discounting, and social weighting are complex, depending on the severity and duration of illness. For example, the parameters used in the GBD 1990 study generally give greater weight to deaths at any year prior to age 39 than afterward, with the death of a newborn weighted at 33 DALYs and the death of someone aged 5–20 weighted at approximately 36 DALYs.[18]

As a result of numerous discussions, by 2010 the World Health Organization had abandoned the ideas of age weighting and time discounting.[13] They had also substituted the idea of prevalence for incidence (when a condition started) because this is what surveys measure.

Economic applications

The methodology is not an economic measure. It measures how much healthy life is lost. It does not assign a monetary value to any person or condition, and it does not measure how much productive work or money is lost as a result of death and disease. However, HALYs, including DALYs and QALYs, are especially useful in guiding the allocation of health resources as they provide a common numerator, allowing for the expression of utility in terms of dollar/DALY, or dollar/QALY.[14] For example, in Gambia, provision of the pneumococcal conjugate vaccine costs $670 per DALY saved.[19] Another example being Stroke, for which the total economic consequences are estimated to amount to $2 trillion.[20] These numbers can be compared to other treatments for other diseases, to determine whether investing resources in preventing or treating a different disease would be more efficient in terms of overall health.

Examples

Schizophrenia has a 0.53 weighting and a broken femur a 0.37 weighting in the latest WHO weightings.[4]

Australia

Cancer (25.1/1,000), cardiovascular (23.8/1,000), mental problems (17.6/1,000), neurological (15.7/1,000), chronic respiratory (9.4/1,000) and diabetes (7.2/1,000) are the main causes of good years of expected life lost to disease or premature death.[21] Despite this, Australia has one of the longest life expectancies in the world.

Africa

These illustrate the problematic diseases and outbreaks occurring in 2013 in Zimbabwe, shown to have the greatest impact on health disability were typhoid, anthrax, malaria, common diarrhea, and dysentery.[22]

PTSD rates

Posttraumatic stress disorder (PTSD) DALY estimates from 2004 for the world's 25 most populous countries give Asian/Pacific countries and the United States as the places where PTSD impact is most concentrated (as shown here).

Noise-induced hearing loss

The disability-adjusted life years attributable to hearing impairment for noise-exposed U.S. workers across all industries was calculated to be 2.53 healthy years lost annually per 1,000 noise-exposed workers. Workers in the mining and construction sectors lost 3.45 and 3.09 healthy years per 1,000 workers, respectively. Overall, 66% of the sample worked in the manufacturing sector and represented 70% of healthy years lost by all workers.[23]

History and usage

Originally developed by Harvard University for the World Bank in 1990, the World Health Organization subsequently adopted the method in 1996 as part of the Ad hoc Committee on Health Research "Investing in Health Research & Development" report. The DALY was first conceptualized by Christopher J. L. Murray and Lopez in work carried out with the World Health Organization and the World Bank known as the Global Burden of Disease Study, which was undertaken in 1990.[24] It is now a key measure employed by the United Nations World Health Organization in such publications as its Global Burden of Disease.[25]

The DALY was also used in the 1993 World Development Report.[26]: x 

Criticism

Both DALYs and QALYs are forms of HALYs, health-adjusted life years.

Some critics have alleged that DALYs are essentially an economic measure of human productive capacity for the affected individual.[27][irrelevant citation] In response, defenders of DALYs have argued that while DALYs have an age-weighting function that has been rationalized based on the economic productivity of persons at that age, health-related quality of life measures are used to determine the disability weights, which range from 0 to 1 (no disability to 100% disabled) for all disease. These defenders emphasize that disability weights are based not on a person's ability to work, but rather on the effects of the disability on the person's life in general. Hence, mental illness is one of the leading diseases as measured by global burden of disease studies, with depression accounting for 51.84 million DALYs. Perinatal conditions, which affect infants with a very low age-weight function, are the leading cause of lost DALYs at 90.48 million. Measles is fifteenth at 23.11 million.[14][28][29]

See also

References

  1. ^ "Disease and injury country estimates". World Health Organization. Archived from the original on 2009-11-11. Retrieved Nov 11, 2009.
  2. ^ a b c "Metrics: Disability-Adjusted Life Year (DALY)". WHO. Archived from the original on Feb 20, 2020. Retrieved 2020-01-02.
  3. ^ Havelaar, Arie (August 2007). "Methodological choices for calculating the disease burden and cost-of-illness of foodborne zoonoses in European countries" (PDF). Med-Vet-Net. Archived from the original (PDF) on 21 January 2009. Retrieved 2008-04-05.
  4. ^ a b "Global burden of disease 2004 update: disability weights for diseases and conditions" (PDF). Archived (PDF) from the original on 2016-11-30. Retrieved 2016-07-25.
  5. ^ WHO 2013.
  6. ^ WHO 2013, p. 15.
  7. ^ Martinez, Ramon; Soliz, Patricia; Caixeta, Roberta; Ordunez, Pedro (9 January 2019). "Reflection on modern methods: years of life lost due to premature mortality—a versatile and comprehensive measure for monitoring non-communicable disease mortality". International Journal of Epidemiology. 48 (4): 1367–1376. doi:10.1093/ije/dyy254. PMC 6693813. PMID 30629192.
  8. ^ Kaplan, Hillard; Hill, Kim; Lancaster, Jane; Hurtado, A. Magdalena (2000). "A theory of human life history evolution: Diet, intelligence, and longevity". Evolutionary Anthropology: Issues, News, and Reviews. 9 (4): 156–185. doi:10.1002/1520-6505(2000)9:4<156::AID-EVAN5>3.0.CO;2-7. S2CID 2363289.
  9. ^ Menken M, Munsat TL, Toole JF (March 2000). "The global burden of disease study: implications for neurology". Arch. Neurol. 57 (3): 418–20. CiteSeerX 10.1.1.660.4176. doi:10.1001/archneur.57.3.418. PMID 10714674.
  10. ^ Devleesschauwer B, McDonald SA, Speybroeck N, Wyper GM (2020). "Valuing the years of life lost due to COVID-19: the differences and pitfalls". International Journal of Public Health. 65 (6): 719–720. doi:10.1007/s00038-020-01430-2. PMC 7370635. PMID 32691080.
  11. ^ Wyper GM, Devleesschauwer B, Mathers CD, McDonald SA, Speybroeck N (2022). "Years of life lost methods must remain fully equitable and accountable". European Journal of Epidemiology. 37 (2): 215–216. doi:10.1007/s10654-022-00846-9. PMC 8894819. PMID 35244840.
  12. ^ Murray, Christopher J (1994). "Quantifying the burden of disease: the technical basis for disability-adjusted life years". Bulletin of the World Health Organization. 72 (3): 429–45. PMC 2486718. PMID 8062401.
  13. ^ a b "WHO methods and data sources for global burden of disease estimates 2000–2011" (PDF). World Health Organization. 2013. Archived (PDF) from the original on 2016-09-09. Retrieved Jul 27, 2016.
  14. ^ a b c Gold, MR; Stevenson, D; Fryback, DG (2002). "HALYS and QALYS and DALYS, oh my: similarities and differences in summary measures of population health". Annual Review of Public Health. 23: 115–34. doi:10.1146/annurev.publhealth.23.100901.140513. PMID 11910057.
  15. ^ "WHO | Disability weights, discounting and age weighting of DALYs". WHO. Archived from the original on September 26, 2013. Retrieved 2020-01-02.
  16. ^ Prüss-Üstün, A.; Mathers, C.; Corvalán, C.; Woodward, A. (2003). "3 The Global Burden of Disease concept". Introduction and methods: Assessing the environmental burden of disease at national and local levels. Vol. 1. World Health Organization. ISBN 978-9241546201. Archived from the original (PDF) on 2014-02-01.
  17. ^ Kramer, Alexander; Hossain, Mobarak; Kraas, Frauke (2011). Health in megacities and urban areas. Heidelberg: Physica-Verlag. ISBN 978-3-7908-2732-3.
  18. ^ Mathers CD, Ezzati M, Lopez AD (2007). "Measuring the burden of neglected tropical diseases: the global burden of disease framework". PLOS Negl Trop Dis. 1 (2): e114. doi:10.1371/journal.pntd.0000114. PMC 2100367. PMID 18060077. Open access icon
  19. ^ Kim, SY; Lee, G; Goldie, SJ (Sep 3, 2010). "Economic evaluation of pneumococcal conjugate vaccination in The Gambia". BMC Infectious Diseases. 10: 260. doi:10.1186/1471-2334-10-260. PMC 2944347. PMID 20815900. Open access icon
  20. ^ Gerstl, JVE; Blitz, S; Qu, QR (Jul 27, 2023). "Global, Regional, and National Economic Consequences of Stroke". Stroke. 54 (9): 2380–2389. doi:10.1161/STROKEAHA.123.043131. PMC 7614992. PMID 37497672. Open access icon
  21. ^ Chant, Kerry (November 2008). "The Health of the People of New South Wales (summary report)" (PDF). Chief Health Officer, Government of New South Wales. Archived from the original (PDF) on 2009-01-21. Retrieved 2009-01-17. {{cite journal}}: Cite journal requires |journal= (help)
  22. ^ Zimbabwe, Ministry of Health and Child Welfare (December 2013). "Zimbabwe Weekly Epidemiological Bulletin" (PDF). World Health Organization, Government of Zimbabwe. Archived (PDF) from the original on 2014-02-28. Retrieved 2014-02-24. {{cite journal}}: Cite journal requires |journal= (help)
  23. ^ Masterson, EA; Bushnell, PT; Themann, CL; Morata, TC (2016). "Hearing Impairment Among Noise-Exposed Workers — United States, 2003–2012". MMWR Morb Mortal Wkly Rep. 65 (15): 389–394. doi:10.15585/mmwr.mm6515a2. PMID 27101435.
  24. ^ Murray, C. J.; Lopez, A. D.; Jamison, D. T. (1994). "The global burden of disease in 1990: summary results, sensitivity analysis and future directions". Bulletin of the World Health Organization. 72 (3): 495–509. ISSN 0042-9686. PMC 2486716. PMID 8062404.
  25. ^ "Global Health Estimates". World Health Organization. Archived from the original on 2015-08-31.
  26. ^ World Bank (1993). World Development Report 1993: Investing in Health. Oxford University Press. doi:10.1596/0-1952-0890-0. ISBN 978-0-19-520890-0. Archived from the original on 2016-11-27.
  27. ^ Thacker SB, Stroup DF, Carande-Kulis V, Marks JS, Roy K, Gerberding JL (2006). "Measuring the public's health". Public Health Rep. 121 (1): 14–22. doi:10.1177/003335490612100107. PMC 1497799. PMID 16416694.
  28. ^ Kramer, Alexander, Md. Mobarak Hossain Khan, Frauke Kraas (2011). Health in megacities and urban areas. Heidelberg: Physica-Verlag. ISBN 978-3-7908-2732-3.{{cite book}}: CS1 maint: multiple names: authors list (link)
  29. ^ Murray CJ (1994). "Quantifying the burden of disease: the technical basis for disability-adjusted life years". Bull World Health Organ. 72 (3): 429–445. PMC 2486718. PMID 8062401.