Farshad Farzadfar’s research while affiliated with Tehran University of Medical Sciences and other places
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Claims data covers a large population and can be utilized for various epidemiological and economic purposes. However, the diagnosis of prescriptions is not determined in the claims data of many countries. This study aimed to develop a decision rule algorithm using prescriptions to detect patients with hypertension in claims data.
In this retrospective study, all Iran Health Insurance Organization (IHIO)-insured patients from 24 provinces between 2012 and 2016 were analyzed. A list of available antihypertensive drugs was generated and a literature review and an exploratory analysis were performed for identifying additional usages. An algorithm with 13 decision rules, using variables including prescribed medications, age, sex, and physician specialty, was developed and validated.
Among all the patients in the IHIO database, a total of 4,590,486 received at least one antihypertensive medication, with a total of 79,975,134 prescriptions issued. The algorithm detected that 76.89% of patients had hypertension. Among 20.43% of all prescriptions the algorithm detected as issued for hypertension, mainly were prescribed by general practitioners (55.78%) and hypertension specialists (30.42%). The validity assessment of the algorithm showed a sensitivity of 100.00%, specificity of 48.91%, positive predictive value of 69.68%, negative predictive value of 100.00%, and accuracy of 76.50%.
The algorithm demonstrated good performance in detecting patients with hypertension using claims data. Considering the large-scale and passively aggregated nature of claims data compared to other surveillance surveys, applying the developed algorithm could assist policymakers, insurers, and researchers in formulating strategies to enhance the quality of personalized care.
Background Diabetes can be detected at the primary health-care level, and effective treatments lower the risk of
complications. There are insufficient data on the coverage of treatment for diabetes and how it has changed. We
estimated trends from 1990 to 2022 in diabetes prevalence and treatment for 200 countries and territories.
Methods We used data from 1108 population-representative studies with 141 million participants aged 18 years and
older with measurements of fasting glucose and glycated haemoglobin (HbA1c), and information on diabetes
treatment. We defined diabetes as having a fasting plasma glucose (FPG) of 7·0 mmol/L or higher, having an HbA1c
of 6·5% or higher, or taking medication for diabetes. We defined diabetes treatment as the proportion of people with
diabetes who were taking medication for diabetes. We analysed the data in a Bayesian hierarchical meta-regression
model to estimate diabetes prevalence and treatment.
Findings In 2022, an estimated 828 million (95% credible interval [CrI] 757–908) adults (those aged 18 years and older)
had diabetes, an increase of 630 million (554–713) from 1990. From 1990 to 2022, the age-standardised prevalence of
diabetes increased in 131 countries for women and in 155 countries for men with a posterior probability of more than
0·80. The largest increases were in low-income and middle-income countries in southeast Asia (eg, Malaysia), south Asia
(eg, Pakistan), the Middle East and north Africa (eg, Egypt), and Latin America and the Caribbean (eg, Jamaica,
Trinidad and Tobago, and Costa Rica). Age-standardised prevalence neither increased nor decreased with a posterior
probability of more than 0·80 in some countries in western and central Europe, sub-Saharan Africa, east Asia and
the Pacific, Canada, and some Pacific island nations where prevalence was already high in 1990; it decreased with a
posterior probability of more than 0·80 in women in Japan, Spain, and France, and in men in Nauru. The lowest
prevalence in the world in 2022 was in western Europe and east Africa for both sexes, and in Japan and Canada for
women, and the highest prevalence in the world in 2022 was in countries in Polynesia and Micronesia, some countries
in the Caribbean and the Middle East and north Africa, as well as Pakistan and Malaysia. In 2022, 445 million (95% CrI
401–496) adults aged 30 years or older with diabetes did not receive treatment (59% of adults aged 30 years or older with
diabetes), 3·5 times the number in 1990. From 1990 to 2022, diabetes treatment coverage increased in 118 countries for
women and 98 countries for men with a posterior probability of more than 0·80. The largest improvement in treatment
coverage was in some countries from central and western Europe and Latin America (Mexico, Colombia, Chile, and
Costa Rica), Canada, South Korea, Russia, Seychelles, and Jordan. There was no increase in treatment coverage in most
countries in sub-Saharan Africa; the Caribbean; Pacific island nations; and south, southeast, and central Asia. In 2022,
age-standardised treatment coverage was lowest in countries in sub-Saharan Africa and south Asia, and treatment
coverage was less than 10% in some African countries. Treatment coverage was 55% or higher in South Korea, many
high-income western countries, and some countries in central and eastern Europe (eg, Poland, Czechia, and Russia),
Latin America (eg, Costa Rica, Chile, and Mexico), and the Middle East and north Africa (eg, Jordan, Qatar, and Kuwait).
Interpretation In most countries, especially in low-income and middle-income countries, diabetes treatment has not
increased at all or has not increased sufficiently in comparison with the rise in prevalence. The burden of diabetes and
untreated diabetes is increasingly borne by low-income and middle-income countries. The expansion of health
insurance and primary health care should be accompanied with diabetes programmes that realign and resource
health services to enhance the early detection and effective treatment of diabetes.
Objectives: In this study, the trends and current situation of the injury burden as well as attributable burden to injury risk factors at global, regional, and national levels based on the Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) 2019 are presented.
Study design: To assess the attributable burden of injury risk factors, the data of interest on data sources were retrieved from the Global Health Data Exchange (GHDx) and analyzed.
Methods: Cause-specific death from injuries was estimated using the Cause of Death Ensemble model in the GBD 2019. The burden attributable to each injury risk factor was incorporated in the population attributable fraction to estimate the total attributable deaths and disability-adjusted life years. The Socio-demographic Index (SDI) was used to evaluate countries' developmental status.
Results: Globally, there were 713.9 million (95% uncertainty interval [UI]: 663.8 to 766.9) injuries incidence and 4.3 million (UI: 3.9 to 4.6) deaths caused by injuries in 2019. There was an inverse relationship between age-standardized disability-adjusted life year rate and SDI quintiles in 2019. Overall, low bone mineral density was the leading risk factor of injury deaths in 2019, with a contribution of 10.5% (UI: 9.0 to 11.6) of total injuries and age-standardized deaths, followed by occupational risks (7.0% [UI: 6.3-7.9]) and alcohol use (6.8% [UI: 5.2 to 8.5]).
Conclusion: Various risks were responsible for the imposed burden of injuries. This study highlighted the small but persistent share of injuries in the global burden of diseases and injuries to provide beneficial data to produce proper policies to reach an effective global injury prevention plan.
Background
Adiposity can be measured using BMI (which is based on weight and height) as well as indices of abdominal adiposity. We examined the association between BMI and waist-to-height ratio (WHtR) within and across populations of different world regions and quantified how well these two metrics discriminate between people with and without hypertension.
Methods
We used data from studies carried out from 1990 to 2023 on BMI, WHtR and hypertension in people aged 20–64 years in representative samples of the general population in eight world regions. We graphically compared the regional distributions of BMI and WHtR, and calculated Pearson’s correlation coefficients between BMI and WHtR within each region. We used mixed-effects linear regression to estimate the extent to which WHtR varies across regions at the same BMI. We graphically examined the prevalence of hypertension and the distribution of people who have hypertension both in relation to BMI and WHtR, and we assessed how closely BMI and WHtR discriminate between participants with and without hypertension using C-statistic and net reclassification improvement (NRI).
Findings
The correlation between BMI and WHtR ranged from 0·76 to 0·89 within different regions. After adjusting for age and BMI, mean WHtR was highest in south Asia for both sexes, followed by Latin America and the Caribbean and the region of central Asia, Middle East and north Africa. Mean WHtR was lowest in central and eastern Europe for both sexes, in the high-income western region for women, and in Oceania for men. Conversely, to achieve an equivalent WHtR, the BMI of the population of south Asia would need to be, on average, 2·79 kg/m² (95% CI 2·31–3·28) lower for women and 1·28 kg/m² (1·02–1·54) lower for men than in the high-income western region. In every region, hypertension prevalence increased with both BMI and WHtR. Models with either of these two adiposity metrics had virtually identical C-statistics and NRIs for every region and sex, with C-statistics ranging from 0·72 to 0·81 and NRIs ranging from 0·34 to 0·57 in different region and sex combinations. When both BMI and WHtR were used, performance improved only slightly compared with using either adiposity measure alone.
Interpretation
BMI can distinguish young and middle-aged adults with higher versus lower amounts of abdominal adiposity with moderate-to-high accuracy, and both BMI and WHtR distinguish people with or without hypertension. However, at the same BMI level, people in south Asia, Latin America and the Caribbean, and the region of central Asia, Middle East and north Africa, have higher WHtR than in the other regions.
Funding
UK Medical Research Council and UK Research and Innovation (Innovate UK).
Background Disorders affecting the nervous system are diverse and include neurodevelopmental disorders, late-life neurodegeneration, and newly emergent conditions, such as cognitive impairment following COVID-19. Previous publications from the Global Burden of Disease, Injuries, and Risk Factor Study estimated the burden of 15 neurological conditions in 2015 and 2016, but these analyses did not include neurodevelopmental disorders, as defined by the International Classification of Diseases (ICD)-11, or a subset of cases of congenital, neonatal, and infectious conditions that cause neurological damage. Here, we estimate nervous system health loss caused by 37 unique conditions and their associated risk factors globally, regionally, and nationally from 1990 to 2021.
Background:
Testing for the risk factors of cardiovascular disease, which include hypertension, diabetes, and hypercholesterolaemia, is important for timely and effective risk management. Yet few studies have quantified and analysed testing of cardiovascular risk factors in low-income and middle-income countries (LMICs) with respect to sociodemographic inequalities. We aimed to address this knowledge gap.
Methods:
In this cross-sectional analysis, we pooled individual-level data for non-pregnant adults aged 18 years or older from nationally representative surveys done between Jan 1, 2010, and Dec 31, 2019 in LMICs that included a question about whether respondents had ever had their blood pressure, glucose, or cholesterol measured. We analysed diagnostic testing performance by quantifying the overall proportion of people who had ever been tested for these cardiovascular risk factors and the proportion of individuals who met the diagnostic testing criteria in the WHO package of essential noncommunicable disease interventions for primary care (PEN) guidelines (ie, a BMI >30 kg/m2 or a BMI >25 kg/m2 among people aged 40 years or older). We disaggregated and compared diagnostic testing performance by sex, wealth quintile, and education using two-sided t tests and multivariable logistic regression models.
Findings:
Our sample included data for 994 185 people from 57 surveys. 19·1% (95% CI 18·5-19·8) of the 943 259 people in the hypertension sample met the WHO PEN criteria for diagnostic testing, of whom 78·6% (77·8-79·2) were tested. 23·8% (23·4-24·3) of the 225 707 people in the diabetes sample met the WHO PEN criteria for diagnostic testing, of whom 44·9% (43·7-46·2) were tested. Finally, 27·4% (26·3-28·6) of the 250 573 people in the hypercholesterolaemia sample met the WHO PEN criteria for diagnostic testing, of whom 39·7% (37·1-2·4) were tested. Women were more likely than men to be tested for hypertension and diabetes, and people in higher wealth quintiles compared with those in the lowest wealth quintile were more likely to be tested for all three risk factors, as were people with at least secondary education compared with those with less than primary education.
Interpretation:
Our study shows opportunities for health systems in LMICs to improve the targeting of diagnostic testing for cardiovascular risk factors and adherence to diagnostic testing guidelines. Risk-factor-based testing recommendations rather than sociodemographic characteristics should determine which individuals are tested.
Funding:
Harvard McLennan Family Fund, the Alexander von Humboldt Foundation, and the National Heart, Lung, and Blood Institute of the US National Institutes of Health.
... I t was estimated that 828 million adults aged 18 and older were affected with diabetes mellitus (DM) in 2022 [1], with about 98 % of DM is diabetes mellitus type 2 (T2DM) [2]. T2DM presents a profound global health concern, particularly in lowincome and middle-income nations, where suboptimal glycemic control is a prevailing issue [3]. ...
... Trauma is a major cause of death and disability worldwide. The 2019 Global Burden of Disease study found that around 8% of all deaths and nearly one in 10 of all lost disability-adjusted life years (DALYs) was associated with traumatic injuries [1]. Moreover, it has been estimated that around 90% of deaths from trauma occur in low-and middle-income countries (LMICs) [2], and that two million lives could be saved annually if LMICs achieved the same outcomes as high-income countries (HICs) [3]. ...
... Of the various modifiable risk factors enumerated in the literature, tobacco use and high Body Mass Index (BMI) are the most important and have been studied extensively. [1] Though the global burden attributable to tobacco has decreased between 2000 and 2021, it still remains a significant challenge. Smoking alone contributed to a loss of around 156·5 (130·9 to 181·8) million DALY globally, and chewing tobacco was attributed to 1·6 (1·3 to 1·9) million DALY loss. ...
... 12 13 Until now, we are not aware of studies of the carbon footprint of clinical trials for neurological disorders, which were the leading cause of disability-adjusted life years in 2021. 14 The carbon emissions of clinical trials for neurological disorders are likely to be significant because the disease burden provokes clinical trial activity, and they use a wide range of drugs, devices and outcome measures including brain imaging. [15][16][17] Therefore, we set out to apply the Low Carbon Clinical Trials Group's carbon footprinting guidance to a sample of clinical trials focused on neurological disorders. ...
... Sample restricted to respondents who reported any screening experience. Share of respondent displayed as mean estimate with 95% confidence interval among individuals meeting screening criteria, and among individuals with diabetes and hypertension respectively [28][29][30]. Second, the reported blood pressure measurements may have occurred in the context of diagnosing other health conditions, e.g., kidney disease, preeclampsia, or sepsis, and as such may not reflect dedicated hypertension screening. This is supported by literature showing that high rates of blood pressure measurements do not translate into similarly high hypertension diagnosis rates [30]. ...
... This trend highlights the importance of identifying and managing prediabetes, an intermediary metabolic state associated with elevated risk for cardiovascular events and all-cause mortality (Mando et al., 2021). Because CVDs and type 2 diabetes share common modifiable behavioral risk factors, such as diet, exercise, smoking, and alcohol use (Lawal et al., 2020), even earlier interventions and preventive measures are crucial for reducing the overall disease burden of these interlinked diseases (Ong et al., 2023). ...
... Moreover, disparities in air pollution exposure related to varying socio-economic statuses and geographic regions can profoundly affect the onset and progression of MASLD and CKD [34][35][36]. Countries in North Africa and the Middle East exhibit some of the highest death rates worldwide attributable to air pollution exposure [37]. These findings have significant implications for policymakers regarding the implementation of genetic screening programs and early identification systems aimed at facilitating personalized healthcare strategies. ...
... As per the Global Burden of Diseases 2019, chronic respiratory diseases (CRDs) were ranked as the third largest cause of mortality, accounting for 4.0 million deaths (95% uncertainty interval 3.6-4.3) and a global prevalence of 454.6 million cases (Momtazmanesh et al., 2023). ...
... Chronic respiratory diseases are associated with significant morbidity, mortality, and healthcare utilization, leading to a substantial burden on healthcare systems [1]. ...
... Respiratory diseases represent a major global health burden, with millions of people affected by conditions such as acute upper respiratory infections (1)(2)(3)(4)(5). Respiratory diseases contribute significantly to morbidity and mortality, and their prevalence is influenced by factors such as air pollution, climate, age, and ethnic disparities (6)(7)(8). ...