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Lifestyle and socioeconomic determinants of diabetes: Evidence from country-level data
The objectives of the study is to investigate the global socioeconomic risk factors associated with diabetes prevalence using evidence from available country-level data. A cross-sectional study based on (2010 & 2019) countrywide Health Nutrition and Population Statistics data. People ages 20-79...
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description | The objectives of the study is to investigate the global socioeconomic risk factors associated with diabetes prevalence using evidence from available country-level data. A cross-sectional study based on (2010 & 2019) countrywide Health Nutrition and Population Statistics data. People ages 20-79 who have diabetes. One hundred and thirty-two countries or territories in the world. In 2010, a 1% increase in per capita income and total tobacco consumption is associated with a 0.92% (95% CI 0.64% to 1.19%) and 0.02% (95% CI 0.006% to 0.047%) increase in diabetes prevalence respectively; and a 1% increase in alcohol consumption is associated with a -0.85% (95% CI -1.17% to -0.53%) decrease in diabetes prevalence. Statistically significant socioeconomic and lifestyle indices positively associated with diabetes prevalence included gross national income; overweight prevalence (BMI>25 kg/m.sup.2 ); and tobacco consumption. Statistically significant inverse associations with global diabetes prevalence included total population size; unemployment and alcohol consumption. The 2019 data was removed due to sparsity of data. Statistically significant global lifestyle and socioeconomic determinants of diabetes prevalence include alcohol consumption; tobacco consumption; overweight prevalence; per capita income; total population and unemployment rates. Determinants of diabetes include modifiable risk factors which are consistent at both the micro and macro level and include tobacco consumption and overweight prevalence. Factors which are non-modifiable and warrant further investigation include total population and unemployment rates, which were inversely associated with diabetes prevalence and are a product of other underlying factors. Other determinants such as alcohol consumption was also inversely associated with diabetes prevalence, but has been observed to have both negative and positive associations with diabetes at the micro-level. These associations were dependent upon the amount of alcohol consumed. Global cut-off point of alcohol consumption is critical to establish global policies to reduce diabetes prevalence. Overall, the use of cross-sectional based study for country level aggregate data is a critical tool that should be considered when making global joint strategies or policies against diabetes in both data analysis and decision making. |
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A cross-sectional study based on (2010 & 2019) countrywide Health Nutrition and Population Statistics data. People ages 20-79 who have diabetes. One hundred and thirty-two countries or territories in the world. In 2010, a 1% increase in per capita income and total tobacco consumption is associated with a 0.92% (95% CI 0.64% to 1.19%) and 0.02% (95% CI 0.006% to 0.047%) increase in diabetes prevalence respectively; and a 1% increase in alcohol consumption is associated with a -0.85% (95% CI -1.17% to -0.53%) decrease in diabetes prevalence. Statistically significant socioeconomic and lifestyle indices positively associated with diabetes prevalence included gross national income; overweight prevalence (BMI>25 kg/m.sup.2 ); and tobacco consumption. Statistically significant inverse associations with global diabetes prevalence included total population size; unemployment and alcohol consumption. The 2019 data was removed due to sparsity of data. Statistically significant global lifestyle and socioeconomic determinants of diabetes prevalence include alcohol consumption; tobacco consumption; overweight prevalence; per capita income; total population and unemployment rates. Determinants of diabetes include modifiable risk factors which are consistent at both the micro and macro level and include tobacco consumption and overweight prevalence. Factors which are non-modifiable and warrant further investigation include total population and unemployment rates, which were inversely associated with diabetes prevalence and are a product of other underlying factors. Other determinants such as alcohol consumption was also inversely associated with diabetes prevalence, but has been observed to have both negative and positive associations with diabetes at the micro-level. These associations were dependent upon the amount of alcohol consumed. Global cut-off point of alcohol consumption is critical to establish global policies to reduce diabetes prevalence. Overall, the use of cross-sectional based study for country level aggregate data is a critical tool that should be considered when making global joint strategies or policies against diabetes in both data analysis and decision making.</description><identifier>ISSN: 1932-6203</identifier><identifier>EISSN: 1932-6203</identifier><identifier>DOI: 10.1371/journal.pone.0270476</identifier><identifier>PMID: 35901054</identifier><language>eng</language><publisher>San Francisco: Public Library of Science</publisher><subject>Alcohol ; Alcohol use ; Alcohols ; Biology and Life Sciences ; Body mass index ; Body weight ; Complications and side effects ; Coronaviruses ; COVID-19 ; Data analysis ; Decision analysis ; Decision making ; Development and progression ; Diabetes ; Diabetes mellitus ; Disease prevention ; Economic conditions ; Health risks ; Income ; Industrialized nations ; Lifestyles ; Medicine and Health Sciences ; Nutrition ; Obesity ; Overweight ; Per capita ; Policies ; Population ; Population (statistical) ; Population number ; Population statistics ; Public health ; Risk analysis ; Risk factors ; Socioeconomic factors ; Socioeconomics ; Statistical analysis ; Statistics ; Tobacco ; Tobacco habit ; Unemployment</subject><ispartof>PloS one, 2022-07, Vol.17 (7), p.e0270476-e0270476</ispartof><rights>COPYRIGHT 2022 Public Library of Science</rights><rights>2022 Richards et al. This is an open access article distributed under the terms of the Creative Commons Attribution License: http://creativecommons.org/licenses/by/4.0/ (the “License”), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. 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A cross-sectional study based on (2010 & 2019) countrywide Health Nutrition and Population Statistics data. People ages 20-79 who have diabetes. One hundred and thirty-two countries or territories in the world. In 2010, a 1% increase in per capita income and total tobacco consumption is associated with a 0.92% (95% CI 0.64% to 1.19%) and 0.02% (95% CI 0.006% to 0.047%) increase in diabetes prevalence respectively; and a 1% increase in alcohol consumption is associated with a -0.85% (95% CI -1.17% to -0.53%) decrease in diabetes prevalence. Statistically significant socioeconomic and lifestyle indices positively associated with diabetes prevalence included gross national income; overweight prevalence (BMI>25 kg/m.sup.2 ); and tobacco consumption. Statistically significant inverse associations with global diabetes prevalence included total population size; unemployment and alcohol consumption. The 2019 data was removed due to sparsity of data. Statistically significant global lifestyle and socioeconomic determinants of diabetes prevalence include alcohol consumption; tobacco consumption; overweight prevalence; per capita income; total population and unemployment rates. Determinants of diabetes include modifiable risk factors which are consistent at both the micro and macro level and include tobacco consumption and overweight prevalence. Factors which are non-modifiable and warrant further investigation include total population and unemployment rates, which were inversely associated with diabetes prevalence and are a product of other underlying factors. Other determinants such as alcohol consumption was also inversely associated with diabetes prevalence, but has been observed to have both negative and positive associations with diabetes at the micro-level. These associations were dependent upon the amount of alcohol consumed. Global cut-off point of alcohol consumption is critical to establish global policies to reduce diabetes prevalence. 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investigate the global socioeconomic risk factors associated with diabetes prevalence using evidence from available country-level data. A cross-sectional study based on (2010 & 2019) countrywide Health Nutrition and Population Statistics data. People ages 20-79 who have diabetes. One hundred and thirty-two countries or territories in the world. In 2010, a 1% increase in per capita income and total tobacco consumption is associated with a 0.92% (95% CI 0.64% to 1.19%) and 0.02% (95% CI 0.006% to 0.047%) increase in diabetes prevalence respectively; and a 1% increase in alcohol consumption is associated with a -0.85% (95% CI -1.17% to -0.53%) decrease in diabetes prevalence. Statistically significant socioeconomic and lifestyle indices positively associated with diabetes prevalence included gross national income; overweight prevalence (BMI>25 kg/m.sup.2 ); and tobacco consumption. Statistically significant inverse associations with global diabetes prevalence included total population size; unemployment and alcohol consumption. The 2019 data was removed due to sparsity of data. Statistically significant global lifestyle and socioeconomic determinants of diabetes prevalence include alcohol consumption; tobacco consumption; overweight prevalence; per capita income; total population and unemployment rates. Determinants of diabetes include modifiable risk factors which are consistent at both the micro and macro level and include tobacco consumption and overweight prevalence. Factors which are non-modifiable and warrant further investigation include total population and unemployment rates, which were inversely associated with diabetes prevalence and are a product of other underlying factors. Other determinants such as alcohol consumption was also inversely associated with diabetes prevalence, but has been observed to have both negative and positive associations with diabetes at the micro-level. These associations were dependent upon the amount of alcohol consumed. Global cut-off point of alcohol consumption is critical to establish global policies to reduce diabetes prevalence. Overall, the use of cross-sectional based study for country level aggregate data is a critical tool that should be considered when making global joint strategies or policies against diabetes in both data analysis and decision making.</abstract><cop>San Francisco</cop><pub>Public Library of Science</pub><pmid>35901054</pmid><doi>10.1371/journal.pone.0270476</doi><tpages>e0270476</tpages><orcidid>https://orcid.org/0000-0002-1993-1310</orcidid><oa>free_for_read</oa></addata></record> |
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subjects | Alcohol Alcohol use Alcohols Biology and Life Sciences Body mass index Body weight Complications and side effects Coronaviruses COVID-19 Data analysis Decision analysis Decision making Development and progression Diabetes Diabetes mellitus Disease prevention Economic conditions Health risks Income Industrialized nations Lifestyles Medicine and Health Sciences Nutrition Obesity Overweight Per capita Policies Population Population (statistical) Population number Population statistics Public health Risk analysis Risk factors Socioeconomic factors Socioeconomics Statistical analysis Statistics Tobacco Tobacco habit Unemployment |
title | Lifestyle and socioeconomic determinants of diabetes: Evidence from country-level data |
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