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Global, regional, and national comparative risk assessment of 84 behavioural, environmental and occupational, and metabolic risks or clusters of risks for 195 countries and territories, 1990–2017: a systematic analysis for the Global Burden of Disease Study 2017

Jeffrey D StanawayInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAshkan AfshinInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAEmmanuela GakidouInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAStephen S LimInstitute for Health Metrics and Evalution, Seattle, WA 98121, USADegu AbateInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAKalkidan Hassen AbateInstitute for Health Metrics and Evalution, Seattle, WA 98121, USACristiana AbbafatiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USANooshin AbbasiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAHedayat AbbastabarInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAFoad Abd-AllahInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAJemal AbdelaInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAhmed AbdelalimInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAIbrahim AbdollahpourInstitute for Health Metrics and Evalution, Seattle, WA 98121, USARizwan Suliankatchi AbdulkaderInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMolla AbebeInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAbebe ZegeyeInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASemaw Ferede AberaOlifan Zewdie AbilHaftom Niguse AbrahaAklilu Roba AbrhamLaith J. Abu‐RaddadInstitute for Health Metrics and Evalution, Seattle, WA 98121, USANiveen ME Abu-RmeilehInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAManfred AccrombessiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USADilaram AcharyaInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAPawan AcharyaInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAbdu A. AdamuInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAkilew Awoke AdaneInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAOladimeji AdebayoInstitute for Health Metrics and Evalution, Seattle, WA 98121, USARufus Adesoji AdedoyinInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAVictor AdekanmbiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAZanfina AdemiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAOlatunji AdetokunbohInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMina G AdibInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAmha AdmasieInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAJosé Carmelo AdsuarInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAKossivi Agbélénko AfanviInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMohsen AfaridehInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAGina AgarwalInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAnju AggarwalInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASargis A. AghayanInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAnurag AgrawalInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASutapa AgrawalInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAlireza AhmadiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMehdi AhmadiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAHamid AhmadiehInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMuktar Beshir AhmedInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAmani Nidhal AichourInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAIbtihel AichourInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMiloud Taki Eddine AichourInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMohammad Esmaeil AkbariInstitute for Health Metrics and Evalution, Seattle, WA 98121, USATomi AkinyemijuInstitute for Health Metrics and Evalution, Seattle, WA 98121, USANadia AkseerInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAZiyad Al‐AlyInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAyman Al‐EyadhyInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAHesham M. Al‐MekhlafiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAFares AlahdabInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAKhurshid AlamInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASamiah AlamInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAShazia AlamInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAlaa AlashiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASeyed Moayed AlavianKefyalew Addis AleneInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAKomal AliInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASyed Mustafa AliInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMehran AlijanzadehInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAReza Alizadeh‐NavaeiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASyed Mohamed AljunidAla’a AlkerwiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAFrançois AllaInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAUbai AlsharifInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAKhalid A AltirkawiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USANelson Alvis‐GuzmánInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAzmeraw T. AmareInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAWalid AmmarInstitute for Health Metrics and Evalution, Seattle, WA 98121, USANahla AnberInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAJason A AndersonInstitute for Health Metrics and Evalution, Seattle, WA 98121, USACătălina Liliana AndreiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASofia AndroudiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMegbaru Debalkie AnimutInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMina AnjomshoaInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMustafa Geleto AnshaInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAJosep M. AntóInstitute for Health Metrics and Evalution, Seattle, WA 98121, USACarl Abelardo T. AntonioInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAPalwasha AnwariInstitute for Health Metrics and Evalution, Seattle, WA 98121, USALambert AppiahInstitute for Health Metrics and Evalution, Seattle, WA 98121, USASeth Christopher Yaw AppiahInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAJalal ArablooInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAOlatunde AremuInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAJohan ÄrnlövInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAl ArtamanInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAKrishna Kumar AryalInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAHamid AsayeshInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAZerihun AtaroInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAMarcel AusloosInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAEuripide AvokpahoInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAshish AwasthiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USABeatriz Paulina Ayala QuintanillaInstitute for Health Metrics and Evalution, Seattle, WA 98121, USARakesh AyerInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAAyuk Betrand TambeInstitute for Health Metrics and Evalution, Seattle, WA 98121, USAPeter AzzopardiInstitute for Health Metrics and Evalution, Seattle, WA 98121, USA
2018en
ABI

Аннотация

BACKGROUND: The Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) 2017 comparative risk assessment (CRA) is a comprehensive approach to risk factor quantification that offers a useful tool for synthesising evidence on risks and risk-outcome associations. With each annual GBD study, we update the GBD CRA to incorporate improved methods, new risks and risk-outcome pairs, and new data on risk exposure levels and risk-outcome associations. METHODS: We used the CRA framework developed for previous iterations of GBD to estimate levels and trends in exposure, attributable deaths, and attributable disability-adjusted life-years (DALYs), by age group, sex, year, and location for 84 behavioural, environmental and occupational, and metabolic risks or groups of risks from 1990 to 2017. This study included 476 risk-outcome pairs that met the GBD study criteria for convincing or probable evidence of causation. We extracted relative risk and exposure estimates from 46 749 randomised controlled trials, cohort studies, household surveys, census data, satellite data, and other sources. We used statistical models to pool data, adjust for bias, and incorporate covariates. Using the counterfactual scenario of theoretical minimum risk exposure level (TMREL), we estimated the portion of deaths and DALYs that could be attributed to a given risk. We explored the relationship between development and risk exposure by modelling the relationship between the Socio-demographic Index (SDI) and risk-weighted exposure prevalence and estimated expected levels of exposure and risk-attributable burden by SDI. Finally, we explored temporal changes in risk-attributable DALYs by decomposing those changes into six main component drivers of change as follows: (1) population growth; (2) changes in population age structures; (3) changes in exposure to environmental and occupational risks; (4) changes in exposure to behavioural risks; (5) changes in exposure to metabolic risks; and (6) changes due to all other factors, approximated as the risk-deleted death and DALY rates, where the risk-deleted rate is the rate that would be observed had we reduced the exposure levels to the TMREL for all risk factors included in GBD 2017. FINDINGS: In 2017, 34·1 million (95% uncertainty interval [UI] 33·3-35·0) deaths and 1·21 billion (1·14-1·28) DALYs were attributable to GBD risk factors. Globally, 61·0% (59·6-62·4) of deaths and 48·3% (46·3-50·2) of DALYs were attributed to the GBD 2017 risk factors. When ranked by risk-attributable DALYs, high systolic blood pressure (SBP) was the leading risk factor, accounting for 10·4 million (9·39-11·5) deaths and 218 million (198-237) DALYs, followed by smoking (7·10 million [6·83-7·37] deaths and 182 million [173-193] DALYs), high fasting plasma glucose (6·53 million [5·23-8·23] deaths and 171 million [144-201] DALYs), high body-mass index (BMI; 4·72 million [2·99-6·70] deaths and 148 million [98·6-202] DALYs), and short gestation for birthweight (1·43 million [1·36-1·51] deaths and 139 million [131-147] DALYs). In total, risk-attributable DALYs declined by 4·9% (3·3-6·5) between 2007 and 2017. In the absence of demographic changes (ie, population growth and ageing), changes in risk exposure and risk-deleted DALYs would have led to a 23·5% decline in DALYs during that period. Conversely, in the absence of changes in risk exposure and risk-deleted DALYs, demographic changes would have led to an 18·6% increase in DALYs during that period. The ratios of observed risk exposure levels to exposure levels expected based on SDI (O/E ratios) increased globally for unsafe drinking water and household air pollution between 1990 and 2017. This result suggests that development is occurring more rapidly than are changes in the underlying risk structure in a population. Conversely, nearly universal declines in O/E ratios for smoking and alcohol use indicate that, for a given SDI, exposure to these risks is declining. In 2017, the leading Level 4 risk factor for age-standardised DALY rates was high SBP in four super-regions: central Europe, eastern Europe, and central Asia; north Africa and Middle East; south Asia; and southeast Asia, east Asia, and Oceania. The leading risk factor in the high-income super-region was smoking, in Latin America and Caribbean was high BMI, and in sub-Saharan Africa was unsafe sex. O/E ratios for unsafe sex in sub-Saharan Africa were notably high, and those for alcohol use in north Africa and the Middle East were notably low. INTERPRETATION: By quantifying levels and trends in exposures to risk factors and the resulting disease burden, this assessment offers insight into where past policy and programme efforts might have been successful and highlights current priorities for public health action. Decreases in behavioural, environmental, and occupational risks have largely offset the effects of population growth and ageing, in relation to trends in absolute burden. Conversely, the combination of increasing metabolic risks and population ageing will probably continue to drive the increasing trends in non-communicable diseases at the global level, which presents both a public health challenge and opportunity. We see considerable spatiotemporal heterogeneity in levels of risk exposure and risk-attributable burden. Although levels of development underlie some of this heterogeneity, O/E ratios show risks for which countries are overperforming or underperforming relative to their level of development. As such, these ratios provide a benchmarking tool to help to focus local decision making. Our findings reinforce the importance of both risk exposure monitoring and epidemiological research to assess causal connections between risks and health outcomes, and they highlight the usefulness of the GBD study in synthesising data to draw comprehensive and robust conclusions that help to inform good policy and strategic health planning. FUNDING: Bill & Melinda Gates Foundation.

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