| Literature DB >> 21406100 |
Ryan M Ahern1, Rafael Lozano, Mohsen Naghavi, Kyle Foreman, Emmanuela Gakidou, Christopher Jl Murray.
Abstract
BACKGROUND: High-quality, cause-specific mortality data are critical for effective health policy. Yet vague cause of death codes, such as heart failure, are highly prevalent in global mortality data. We propose an empirical method correcting mortality data for the use of heart failure as an underlying cause of death.Entities:
Year: 2011 PMID: 21406100 PMCID: PMC3064613 DOI: 10.1186/1478-7954-9-8
Source DB: PubMed Journal: Popul Health Metr ISSN: 1478-7954
Heart failure target list, by group
| Target Group 1 | Aortic Aneurysm |
|---|---|
| I71 | Aortic aneurysm and dissection |
| J43 | Emphysema |
| J44 | Other chronic obstructive pulmonary disease |
| I42 | Cardiomyopathy |
| D50 | Iron deficiency anemia |
| D55 | Anemia due to enzyme disorders |
| D56 | Thalassemia |
| D57 | Sickle-cell disorders |
| D58 | Other hereditary hemolytic anemias |
| D59 | Acquired hemolytic anemia |
| Q20 | Congenital malformations of cardiac chambers and connections |
| Q21 | Congenital malformations of cardiac septa |
| Q22 | Congenital malformations of pulmonary and tricuspid valves |
| Q23 | Congenital malformations of aortic and mitral valves |
| Q24 | Other congenital malformations of heart |
| Q25 | Congenital malformations of great arteries |
| I11 | Hypertensive heart disease |
| I12 | Hypertensive renal disease |
| I13 | Hypertensive heart and renal disease |
| I21 | Acute MI |
| I22 | Subsequent MI |
| I23 | Certain current complications following acute MI |
| I24 | Other acute ischemic heart diseases |
| I25 | Chronic ischemic heart disease |
| J60 | Coalworker's pneumoconiosis |
| J61 | Pneumoconiosis due to asbestos or other mineral fibers |
| J62 | Pneumoconiosis due to dust containing silica |
| J63 | Pneumoconiosis due to other inorganic dusts |
| J64 | Unspecified pneumoconiosis |
| J65 | Pneumoconiosis associated with tuberculosis |
| I34 | Non-rheumatic mitral valve disorders |
| I35 | Non-rheumatic aortic valve disorders |
| I36 | Non-rheumatic tricuspid valve disorders |
| I37 | Pulmonary valve disorders |
| I33 | Acute and subacute endocarditis |
| I40 | Acute myocarditis |
| I31.1 | Chronic constrictive pericarditis |
| I05 | Rheumatic mitral valve diseases |
| I06 | Rheumatic aortic valve diseases |
| I07 | Rheumatic tricuspid valve diseases |
| I08 | Multiple valve diseases |
| E00 | Congenital iodine-deficiency syndrome |
| E01 | Iodine-deficiency-related thyroid disorders and allied conditions |
| E02 | Subclinical iodine-deficiency hypothyroidism |
| E03 | Other hypothyroidism |
| E04 | Other nontoxic goiter |
| E05 | Thyrotoxicosis [hyperthyroidism] |
| E06 | Thyroiditis |
| E07 | Other disorders of thyroid |
Global Burden of Disease 2005 Regions, by development status
| Developed | Developing |
|---|---|
| Asia Pacific, High Income | Asia, Central |
| Australasia | Asia, East |
| Europe, Central | Asia, South |
| Europe, Western | Asia, Southeast |
| North America, High Income | Caribbean |
| Europe, Eastern | |
| Latin America, Andean | |
| Latin America, Central | |
| Latin America, Southern | |
| Latin America, Tropical | |
| North Africa / Middle East | |
| Oceania | |
| Sub-Saharan Africa, Central | |
| Sub-Saharan Africa, East | |
| Sub-Saharan Africa, Southern | |
| Sub-Saharan Africa, West | |
**A detailed list of GBD region country lists can be found in the GBD 2005 Operations Manual http://www.globalburden.org/gbdops.html
Steps in redistribution of heart failure (HF)
| Details of step | Assumptions of step | |
|---|---|---|
| Step 1 | define pathophysiologically plausible target list at ICD level (these targets will ultimately receive redistributed HF deaths) | that only pathophysiologically plausible deaths are miscoded as HF |
| Step 2 | group ICD-level causes into target groups of related causes1 | |
| Step 3 | choose representative mortality dataset (can be multinational or national depending on the population being examined) | that deaths coded to heart failure targets were correctly assigned |
| Step 4 | use regression (%TG = α + β[%HF] + ε) to define redistribution proportions for each cause, by age-sex-development group2 | that deaths miscoded as heart failure are miscoded at rates disproportionate to the relative prevalence of the underlying causes of heart failure |
| Step 5 | redistribute deaths from HF to each target group by age-sex-development group within target mortality dataset | |
| Step 6 | redistribute deaths from target group level to ICD cause level using proportionate redistribution3 within target mortality dataset | |
| Step 7 | use revised mortality dataset to calculate desired outcome measure [age-adjusted death rates, rank causes of death, etc.] | that there is no need to correct primary mortality dataset for completeness4 |
1table 1 shows the groups defined in this paper
2details of regression found in methods section and in additional file 2
3in proportionate redistribution, redistributions proportions are defined by the relative prevalence of the cause within the target group
4see discussion for an explanation of this assumption
Heart failure-attributed deaths by age, sex, development group, in thousands [percent of all heart failure deaths]
| Ages 0-14 | Ages 15-49 | Ages > 50 | ||
|---|---|---|---|---|
| Males | 1.2 [< 0.1] | 34.6 [0.8] | 981.5 [22.6] | |
| Females | 1 [< 0.1] | 13.7 [0.3] | 1602.8 [36.9] | |
| Males | 24.6 [0.6] | 129.1 [3.0] | 704.8 [16.2] | |
| Females | 20.8 [0.5] | 74.5 [1.7] | 758.1 [17.4] | |
Figure 1Redistribution proportions by target group, females. This series of pie charts displays the target groups, or underlying causes, for females by age and country development group that heart failure-attributed deaths are redistributed to and the proportion that each target group receives, as predicted by the regression model.
Figure 2Redistribution proportions by target group, males. This series of pie charts displays the target groups, or underlying causes, for males by age and country development group that heart failure-attributed deaths are redistributed to and the proportion that each target group receives, as predicted by the regression model.
Figure 3Age-adjusted death rates (per 100,000) in 2005 for ischemic heart disease before and after heart failure redistribution, by country. This graph shows the increase in age-adjusted death rates for ischemic heart disease for males and females in a series of 10 countries after redistribution of heart failure using the redistribution proportions predicted by the regression model, described in the preceding pie charts.
Figure 4Percent increase in age-adjusted death rate in 2005 in developing countries by cause, females. This graph depicts the increase in age-adjusted death rates for several cardiac and noncardiac underlying causes of heart failure after the redistribution of heart failure-attributed deaths, using the redistribution proportions predicted by the regression model, for females in developing countries.
Rank changes, by cause (bolded if cause breaks into top 15), 2005
| Ischemic heart disease rank | Hypertensive heart disease rank | COPD rank | ||
|---|---|---|---|---|
| Japan | Males | 3 --> 1 | 46 --> 46 | 12 --> 12 |
| Females | 2 --> 1 | 38 --> 38 | 32 --> 16 | |
| France | Males | 2 --> 1 | 46 --> 46 | 12 --> 12 |
| Females | 2 --> 1 | 28 --> 28 | 25 --> 16 | |
| Argentina | Males | 1 --> 1 | 7 --> 6 | |
| Females | 3 --> 1 | |||
| South Africa | Males | 5 --> 4 | 7 --> 7 | |
| Females | 9 --> 5 | 11 --> 10 | 13 --> 12 | |
***Ranks of GBD-level causes by age-adjusted death rate in the pre- and post-heart failure redistribution datasets