| Literature DB >> 27495151 |
Stefan K Lhachimi1,2,3,4, Wilma J Nusselder5, Henriette A Smit6,7, Paolo Baili8, Kathleen Bennett9, Esteve Fernández10,11, Margarete C Kulik5,7, Tim Lobstein12, Joceline Pomerleau13, Hendriek C Boshuizen14,15, Johan P Mackenbach5.
Abstract
BACKGROUND: Influencing the life-style risk-factors alcohol, body mass index (BMI), and smoking is an European Union (EU) wide objective of public health policy. The population-level health effects of these risk-factors depend on population specific characteristics and are difficult to quantify without dynamic population health models.Entities:
Keywords: Alcohol; BMI; Health impact assessment; Life-style related risk-factors; Modeling; Smoking
Mesh:
Substances:
Year: 2016 PMID: 27495151 PMCID: PMC4975898 DOI: 10.1186/s12889-016-3299-z
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Example of counterfactual construction
| For 50 year old males, for example, the UK (United Kingdom) has the highest proportion of individuals in the undesirable alcohol consumption categories among the eleven countries (some 31 % consume more than 40 g/day). Hence, the observed alcohol consumption prevalence for this particular age/sex group is used for constructing the worst practice counterfactual scenario for the age- and sex group of 50 year old males. For 33 year old females, for example, Denmark has the highest proportion of citizens with a desirable BMI (some 80 % have a BMI < 25). Hence, the observed BMI prevalence for this age/sex group is used for the corresponding age/sex group in the best practice counterfactual. Often one or two countries provide most observations for a given risk factor/sex combination. For example, for the best practice BMI prevalence for females all values above age 30 are taken from Denmark as those have the highest proportion of females with a BMI < 25. In the case of alcohol, for example, the worst practice counterfactual for males is identical to the observed prevalence of the UK. |
Comparison of best practice risk-factor exposure and reference scenario across all countriesa. Difference in disease cases by disease and by persons with at least one disease in projection year ten and cumulative number of deaths postponed as calculated by the difference in individuals alive between the scenarios by sex and risk-factor
| Males | Females | |||||
|---|---|---|---|---|---|---|
| Alcohol | BMI | Smoking | Alcohol | BMI | Smoking | |
| Breast cancer | n/a | n/a | n/a | −44,650 | −46,250 | 18,100 |
| Colorectal cancer | −40,050 | −20,200 | 10,250 | −8,150 | −8,750 | 6,050 |
| COPD | 2,700 | 2,400 | −154,600 | 3,900 | 3,850 | −291,550 |
| Diabetes | −232,600 | −481,800 | 46,750 | 82,900 | −924,550 | 34,150 |
| Esophageal cancer | −8,350 | 50 | −4,650 | −1,550 | 50 | −3,350 |
| IHD | −89,400 | −244,900 | −189,600 | 113,500 | −304,550 | −147,750 |
| Lung cancer | 500 | 16,900 | −52,450 | 350 | 8,800 | −34,750 |
| Oral cancer | −49,000 | 12,150 | −32,900 | −10,300 | 5,200 | −8,650 |
| Stroke | −126,950 | −86,750 | −148,750 | 103,900 | −147,500 | −124,000 |
| At least one of the above diseases | −399,800 | −595,650 | −342,800 | 157,650 | −1,075,200 | −349,300 |
| Deaths postponedb | 93,750 | 57,500 | 332,950 | 134,050 | 129,750 | 274,200 |
aWithout data for Poland for to allow comparison
bCalculated as the difference in population size between the respective scenario if migration is zero and number of birth constant
Comparison of worst practice risk-factor exposure and reference scenario across all countriesa. Difference in disease cases by disease and by persons with at least one disease in projection year ten and cumulative number of lives lost as calculated by the difference in individuals alive between the scenarios by sex and risk-factor
| Males | Females | |||||
|---|---|---|---|---|---|---|
| Alcohol | BMI | Smoking | Alcohol | BMI | Smoking | |
| Breast cancer | n/a | n/a | n/a | 83,450 | 27,250 | −47,750 |
| Colorectal cancer | 42,150 | 19,450 | −19,500 | 18,650 | 3,300 | −15,650 |
| COPD | −2,200 | −2,850 | 250,600 | −1,500 | −3,400 | 824,450 |
| Diabetes | 92,100 | 619,850 | −98,100 | 14,600 | 724,800 | −103,550 |
| Esophageal cancer | 8,500 | −100 | 9,900 | 1,200 | −50 | 9,800 |
| IHD | 65,000 | 183,750 | 215,100 | 3,800 | 176,450 | 540,600 |
| Lung cancer | −300 | −13,750 | 111,800 | −50 | −6,100 | 119,450 |
| Oral cancer | 60,950 | −12,700 | 85,350 | 15,300 | −4,050 | 357,50 |
| Stroke | 99,600 | 79,450 | 307,800 | 117,000 | 103,750 | 443,950 |
| At least one of the above diseases | 274,000 | 681,850 | 537,500 | 188,300 | 771,000 | 1,190,300 |
| Lives lostb | 110,250 | 68,500 | 609,400 | 69,550 | 138,950 | 710,550 |
aWithout data for Poland to allow comparison
bCalculated as the difference in population size between the respective scenario if migration is zero and number of birth
Fig. 1Life expectancy*. a Potential gains in life expectancy. b Potential losses in life expectancy. Potential gains in life expectancy (Panel a) and potential losses in life expectancy (Panel b) as measured by the differences in period life expectancy after ten years for each country and all eleven countries (EU-11) combined by risk-factor and sex compared with the reference scenario. *No smoking data for Poland
Fig. 2Morbidity-free life years*. a Potential gains in morbidity-free life years. b Potential losses in morbidity-free life years. Potential gains in morbidity-free life years (Panel a) and potential losses in morbidity-free life years (Panel b) as measured by the differences in disease-free life years after ten years for each country and all eleven countries (EU-11) combined by risk-factor and sex compared with the reference scenario. *No smoking data for Poland