| Literature DB >> 24736206 |
Renata Micha1, Shahab Khatibzadeh, Peilin Shi, Saman Fahimi, Stephen Lim, Kathryn G Andrews, Rebecca E Engell, John Powles, Majid Ezzati, Dariush Mozaffarian.
Abstract
OBJECTIVES: To quantify global consumption of key dietary fats and oils by country, age, and sex in 1990 and 2010.Entities:
Mesh:
Substances:
Year: 2014 PMID: 24736206 PMCID: PMC3987052 DOI: 10.1136/bmj.g2272
Source DB: PubMed Journal: BMJ ISSN: 0959-8138

Fig 1 Flow diagram of systematic search for nationally representative surveys of food and nutrient intake
Data availability and covariates used for imputation of global intakes of key dietary fats and oils
| Dietary risk factor | Regions covered* | Years covered | No of surveys | No of countries (% of global adult population) | No of surveys with individual level data (No with age- and sex-specific estimates) | No of household level surveys | Covariates for imputation, each year 1990-2010† |
|---|---|---|---|---|---|---|---|
| Saturated fats | AE, APH, AS, ASE, AUS, CAR, EURC, EURE, EURW, LAC, LAT, NA, NAM, OC, SSS | 1980-2008 | 75 | 47 (70) | 75 (71) | 0 | Survey-specific: representativeness (nationally representative |
| Omega 6 polyunsaturated fats | AE, APH, ASE, AUS, CAR, EURC, EURE, EURW, LAC, LAT, NA, NAM, SSS | 1986-2008 | 51 | 32 (47) | 51 (51) | 0 | Survey-specific: metric (optimal |
| Trans fats | APH, AS, CAR, EURW, LAC, LAT, NA, NAM, SSS | 1980-2009 | 56 | 23 (19) | 46 (20) | 10 | Country-specific: hydrogenated oil net ratio (ratio of hydrogenated oil to total oil crops export), total oil/fats per capita (log transformed total oils/fats per capita [from retail/food service database], in tonnes), total packaged foods per capita (log transformed total packaged foods per capita [from retail/food service database], in tonnes). |
| Dietary cholesterol | AE, APH, AS, ASE, AUS, CAR, EURC, EURE, EURW, LAC, LAS, LAT, NA, NAM, OC, SSS | 1980-2008 | 70 | 45 (53) | 70 (65) | 0 | Survey-specific: representativeness (nationally representative |
| Seafood omega 3 fats | AE, APH, AS, ASE, AUS, CAR, EURC, EURE, EURW, LAC, LAT, NA, NAM, SSE, SSS, SSW | 1980-2008 | 109 | 57 (59) | 55 (47) | 54 | Survey-specific: metric (optimal |
| Plant omega 3 fats | AE, APH, CAR, EURC, EURW, LAC, LAT, NA, NAM, SSS | 1990-2007 | 28 | 21 (44) | 28 (28) | 0 | Survey-specific: representativeness (nationally representative |
FAO=United Nations Food and Agriculture Organization. FFQ=food frequency questionnaire
*Based on 21 Global Burden of Diseases, Injuries, and Risk Factors (GBD) study regions including APH=Asia Pacific, High Income; AC=Asia, Central; AE=Asia, East, AS=Asia, South; ASE=Asia, South East; AUS=Australasia; CAR=Caribbean, EURC=Europe, Central; EURE=Europe, Eastern; EURW=Europe, Western; LAA=Latin America, Andean; LAC=Latin America, Central; LAS=Latin America, Southern; LAT=Latin America, Tropical; NAM=North Africa/Middle East; NA=North America, High Income; OC=Oceania; SSC=Sub-Saharan Africa, Central; SSE=Sub-Saharan Africa, East; SSS=Sub-Saharan Africa, Southern; SSW=Sub-Saharan Africa, West.
†Year and country-specific covariates were based on the FAO annual Food Balance Sheets.16 A space-time smoothing procedure was used to generate a full time series of consumption estimates. Income and education were used as covariates in the space-time model to improve predictions in instances of missing data. For education, the age standardised mean number of years of education for ages ≥25 by sex as a continuous variable was used.36 For income, the estimated and normalised lag-distributed income based on the international dollar as a continuous variable was used.35 For countries that had split or merged during the time series (1990-2010), we split/merged these countries into constituent countries using a growth rate method to generate as close to a full time series as possible for all countries. The FAO covariates were used in the percentage natural logarithm form (that is, the % of total energy that is comprised of a particular food). For trans fats, the hydrogenated oil net ratio corresponded to the net amount of hydrogenated oils available for consumption in each country-year. Using the FAO data, the numerator for this ratio (that is, hydrogenated oil exports) was calculated based on exported hydrogenated oil (in kcal per capita) and exported oil crops (in kcal per capita) through space-time with lag-distributed income as a covariate. The denominator (that is, total oil crops, in kcal per capita) was calculated by adding import values to production values minus the export values, and then application of space-time model provided us the complete time series covariate. Afterward, the complete time series ratio covariate was applied to the amount of oil crops (in kcal per capita) in each country. Additional country-level time-varying (year-specific) FAO covariates used were the four factors derived from principal component analysis of 17 standardised FAO nutrients or food groups: factor 1 included red meats, animal fats, and pig meats; factor 2 included omega 3 polyunsaturated fats, omega 6 polyunsaturated fats, whole grains, nuts, and vegetables; factor 3 included fruits, legumes, and nuts; and factor 4 included sugars, stimulants, and saturated fats. For model fits see eFig 7 in data supplements.
Optimal consumption levels of key dietary fats and oils and relevant data sources*
| Dietary fats† | Related disease outcomes | Observed consumption levels associated with lowest disease risk in human studies‡¶ | Observed national mean consumption levels (top or bottom 3 countries)§ | Dietary guidelines¶ | Mean (SD) optimal consumption** |
|---|---|---|---|---|---|
| Polyunsaturated fats replacing saturated fats | Decreased CHD | Polyunsaturated fats: | Top 3 countries, polyunsaturated fats: | <10%E for saturated fats, replacing them with monounsaturated and polyunsaturated fats | 12 (1.2)%E†† |
| Seafood omega 3 fatty acids | Decreased CHD | 250 mg/day10 | Top 3 countries: | 250 mg/day | 250 (25) mg/day |
| Trans fats | Increased CHD | 0%E38 | Bottom 3 countries: | As low as possible | 0.5 (0.05)%E |
CHD=coronary heart disease. %E=percentage of total energy intake. SD=standard deviation
*For each dietary factor, the optimal consumption level was identified based both on observed levels at which lowest disease risk occurs and observed mean consumption levels in at least two or three countries around the world. We also considered whether such identified levels were consistent with major dietary guidelines.7 39
†Dietary fats for which we identified probable or convincing evidence for aetiologic effects on chronic diseases including coronary heart disease, stroke, type 2 diabetes, or cancers.19 Based on available evidence, we identified evidence for aetiologic effects on coronary heart disease of polyunsaturated fatty acids as a replacement for saturated fats; seafood omega 3 fats; and trans fats.8 10 12 38 We did not identify convincing or probable evidence for aetiological effects of these fats on stroke, diabetes, or cancers; or of total fat, monounsaturated fat, plant omega 3 fats, or dietary cholesterol (evaluated mainly through egg consumption) on coronary heart disease, stroke, type 2 diabetes, or cancers.8 21 24-31
‡Observed median consumption levels in population subgroups (top or bottom quartile or quintile) associated with lowest disease risk in meta-analyses of prospective cohort studies or randomised controlled trials.
§Observed mean national consumption levels in the top (for protective factors) or bottom (for harmful factors) three countries as identified in our global data sources. Values are adjusted for total energy and standardised to 2000 kcal/day.34
¶Recommended intake levels for a 2,000 kcal/d diet based on the US Department of Agriculture and United Nations Food and Agriculture Organization guidelines.4 5 7 39
**Because not all individuals within a population can have the same exposure level, the plausible distribution (standard deviation) of optimal consumption was calculated from the average standard deviation for all metabolic risk factors in the Global Burden of Diseases study (10% of the mean).
††Optimal consumption was based on increasing polyunsaturated fat to 12% energy as a replacement for saturated fat, based on the evidence that this specific nutrient replacement reduces risk.8 12
Characteristics of adult global consumption of key dietary fats and oils in 2010
| Characteristics of global consumption | Saturated fats (%E) | Omega 6 polyunsaturated fats (%E) | Trans fats (%E) | Dietary cholesterol (mg/day) | Seafood omega 3 fats (mg/day) | Plant omega 3 fats (mg/day) |
|---|---|---|---|---|---|---|
| Global mean consumption (95% UI) | 9.4 (9.2 to 9.5) | 5.9 (5.7 to 6.1) | 1.4 (1.36 to 1.44) | 228 (222 to 234) | 163 (154 to 172) | 1371 (1299 to 1465) |
| Range across 21 global regions (overall variation) | 4.3 to 23.5 (5.5-fold) | 2.5 to 8.5 (3.4-fold) | 0.6 to 2.9 (4.8-fold) | 139 to 328 (2.4-fold) | 13 to 710 (55-fold) | 302 to 3205 (10.6-fold) |
| Regions with highest levels (mean consumption) | Oceania (23.5), South East Asia (17.7), Central Europe (14.4), Australasia (13.6), Eastern Europe (13.0%) | East Asia (8.5), Eastern (8.0) and Central (7.9) Europe, Tropical Latin America (6.9), Central Asia (6.5), High-Income North America (6.5) | High-Income North America (2.9), Central (2.4), Tropical (1.8) and Andean Latin America (1.7), North Africa/Middle East (2.4) | Eastern Europe (328), High-Income Asia Pacific (326), Central Europe (326), High-Income North America (294), Tropical Latin America (291) | Southeast Asia (710), High-Income Asia Pacific (701), Western Europe (351), Oceania (315), Australasia (300) | East Asia (3205), Tropical (1742) and Southern (1288) Latin America, High-Income North America (1584), Caribbean (1331) |
| Regions with lowest levels (mean consumption) | South Asia (4.3), Andean Latin America (7.0), Caribbean (7.4), East Asia (7.4), Central Latin America (7.8) | Oceania (2.5), Southeast Asia (3.2), East (3.9), West (4.2), and Central (4.7) Sub-Saharan Africa, High-Income Asia Pacific (4.4) | Caribbean (0.6), East (0.8), Central (0.8), and West (0.9) Sub-Saharan Africa, Central (0.9) and Southeast (0.9) Asia, Oceania (1.0) | South Asia (139), Central (196), East (202), and West (205) Sub-Saharan Africa, Oceania (215) | Southern (13) and East (52) Sub-Saharan Africa, South (30), East (37), and Central (40) Asia | Southeast Asia (302), East Sub-Saharan Africa (394), Oceania (399), South Asia (514), Central Latin America (552) |
| Regions with greater statistical uncertainty | Oceania*, Eastern Europe*, Central† and West† Sub-Saharan Africa, Andean† and Southern† Latin America | South Asia†, Eastern Europe†, Southern† and Andean† Latin America, Oceania†, Central† and West† Sub-Saharan Africa, Caribbean† | Oceania†‡, East†‡, Central†‡ and Southern†‡ Sub-Saharan Africa | South Asia‡, Eastern Europe*, Oceania*, Central† and West† Sub-Saharan Africa, Andean Latin America† | Latin America†, Oceania† | South Asia†, Australasia†, Southern† Latin America, Oceania†, Eastern Europe† |
| Range across 187 countries (overall variation) | 2.3 to 27.5 (12.2-fold) | 1.2 to 12.5 (10.5-fold) | 0.2 to 6.5 (28.1-fold) | 97 to 440 (4.5-fold) | 5 to 3886 (840-fold) | 2 to 5542 (2731-fold) |
| Countries with highest levels (mean consumption) | Samoa (27.5), Kiribati (27.0), similar palm oil producing island nations (22.8 to 25.7), Sri Lanka (21.9), Romania (21.4), Malaysia (20.3) | Bulgaria (12.5), other Central European nations (8.9 to 9.9), Lebanon (9.9), Kazakhstan (8.9), Belarus (8.5) | Egypt (6.5), Pakistan (5.8), Canada (4.0), Mexico (3.6), Bahrain (3.2) | Romania (439), Algeria (402), Latvia (367), Belarus (352), Lithuania (348mg/day), Denmark (348), Paraguay (347), Japan (347), Hungary (337) | Maldives (3886), Barbados (1986), Seychelles (1291), Iceland (1229), Denmark (1225), Malaysia (988), Thailand (824), Japan (718), South Korea (708) | Jamaica (5542), China (3266), UK (2414), Tunisia (2215), Angola (2195), Canada (2085), Brazil (1747), Paraguay (1575), US (1527), Uruguay (1384), Argentina (1304) |
| Countries with lowest levels (mean consumption) | Bangladesh (2.3), Nepal (2.7), Bolivia (3.2), Bhutan (3.2), Pakistan (3.8) | Kiribati (1.2), Samoa (1.5), Vanuatu (1.5), Maldives (1.6), Sri Lanka (1.6), Solomon Islands (1.7) | Barbados (0.2), Haiti (0.4), other island nations in the Caribbean (0.5 to0.6), Ethiopia (0.6), Eritrea (0.6), other East Sub-Saharan African nations (0.6 to 0.7) | Bangladesh (97), Nepal (116), other South Asian nations (121 to 157), Rwanda (155), Burundi (163), Tajikistan (169), Ghana (169) | Zimbabwe (5), Lebanon (8), Occupied Palestinian Territory (8), Botswana (10), Guinea-Bissau (10) | Israel (2), Solomon Islands (102), Sri Lanka (106), Comoros (126), Saint Lucia (129), Philippines (131) |
| Western Europe mean consumption (95% UI) | 12.6 (12.3 to 13.9) | 5.2 (4.9 to 5.5) | 1.1 (1.1 to 1.2) | 290 (279 to 302) | 351 (314 to 393) | 1120 (1006 to 1270) |
| Western Europe range with country examples | 8.2 in Luxemburg and 9.0 in Malta to 14.7 in Belgium and 14.8 in Austria | 2.7 in Denmark and 2.9 in Iceland to 6.4 in Spain and 8.0 in Israel | 0.8 in Finland, Italy, and Malta to 1.6 in Switzerland and 2.3 in the Netherlands | 215 in Greece and 222 in Luxemburg to 333 in Austria and 348 in Denmark | 97 in Ireland and 180 in Netherlands to 1225 in Denmark and 1229 in Iceland | 2 in Israel and 300 in Denmark to 2014 in Finland and 2414 in the UK |
| US mean consumption (95% UI) | 11.8 (11.5 to 12.2) | 6.7 (6.5 to 7.0) | 2.8 (2.5 to 3.1) | 296 (284 to 306) | 141 (128 to 157) | 1527 (1456 to 1599) |
| No of countries achieving optimal mean intakes, corresponding adult population (% of global total) | <10%E§: 75 countries, 2.73bn people (61.8%) | ≥12%E§; 1 country, 6.1m people (0.1%) | ≤0.5%E: 12 countries, 24.43m people (0.6%) | <300 mg/day¶: 155 countries, 3.9bn people (87.6%) | ≥250 mg/day: 45 countries, 837.2m people (18.9%) | ≥0.5%E, or ≥1100 mg for a 2000 kcal/day diet**: 52 countries, 1.94bn people (43.9%) |
| No of countries not achieving optimal mean intakes, corresponding adult population (% of global total) | ≥10%E: 112 countries, 1.69bn people (38.2%) | <12%E: 186 countries, 4.42bn people (99.9%) | >0.5%E: 175 countries, 4.42bn people (99.4%) | ≥300 mg/day: 32 countries, 547.9m people (12.4%) | <250 mg/day: 142 countries, 3.58bn people (81.1%) | <0.5%E, or <1100 mg for a 2000 kcal/day diet: 135 countries, 2.48bn people (56.1%) |
UI=uncertainty interval. %E=percentage of total energy intake. bn=billion. m=million.
*Due to higher within-country statistical uncertainty in the raw data.
†Due to limited country-specific raw data on consumption levels.
‡Due to greater variation in consumption levels between countries in the region.
§Based on optimal consumption levels for polyunsaturated fats as a replacement for saturated fats.
¶We did not identify sufficient evidence to set a specific optimal intake level for preventing chronic diseases. The value here is based on recommended consumption levels in the 2010 Dietary Guidelines for Americans.7
**We did not identify sufficient evidence to set a specific optimal intake level for preventing chronic diseases. The value here is based on World Health Organization guidelines for adequate intakes.6

Fig 2 Global and regional mean consumption levels of dietary saturated fat and omega 6 polyunsaturated fat in 2010 for adults aged ≥20 years. See eTable 3 of data supplement for numerical mean estimates and uncertainty intervals

Fig 3 Global and regional mean consumption levels of dietary trans fat and cholesterol in 2010 for adults ≥20 years of age. See eTable 3 of data supplement for numerical mean estimates and uncertainty intervals

Fig 4 Global and regional mean consumption levels of dietary seafood omega 3 fat and plant omega 3 fat in 2010 for adults ≥20 years of age. See eTable 3 of data supplement for numerical mean estimates and uncertainty intervals

Fig 5 Global and regional mean consumption levels in 1990 and 2010 of dietary saturated fat, omega 6 polyunsaturated fat, trans fat, cholesterol, seafood omega 3 fat, and plant omega 3 fat for adults ≥20 years of age in relation to their uncertainty. See eTables 3 and 4 of data supplement for numerical mean estimates and uncertainty intervals