A machine learning approach to evaluate the state of hypertension care coverage: From 2016 STEPs survey in Iran
Hamed Tavolinejad,
Shahin Roshani,
Negar Rezaei,
Erfan Ghasemi,
Moein Yoosefi,
Nazila Rezaei,
Azin Ghamari,
Sarvenaz Shahin,
Sina Azadnajafabad,
Mohammad-Reza Malekpour,
Mohammad-Mahdi Rashidi and
Farshad Farzadfar
PLOS ONE, 2022, vol. 17, issue 9, 1-14
Abstract:
Background: The increasing burden of hypertension in low- to middle-income countries necessitates the assessment of care coverage to monitor progress and guide future policies. This study uses an ensemble learning approach to evaluate hypertension care coverage in a nationally representative Iranian survey. Methods: The data source was the cross-sectional 2016 Iranian STEPwise approach to risk factor surveillance (STEPs). Hypertension was based on blood pressure ≥140/90 mmHg, reported use of anti-hypertensive medications, or a previous hypertension diagnosis. The four steps of care were screening (irrespective of blood pressure value), diagnosis, treatment, and control. The proportion of patients reaching each step was calculated, and a random forest model was used to identify features associated with progression to each step. After model optimization, the six most important variables at each step were considered to demonstrate population-based marginal effects. Results: The total number of participants was 30541 (52.3% female, median age: 42 years). Overall, 9420 (30.8%) had hypertension, among which 89.7% had screening, 62.3% received diagnosis, 49.3% were treated, and 7.9% achieved control. The random forest model indicated that younger age, male sex, lower wealth, and being unmarried/divorced were consistently associated with a lower probability of receiving care in different levels. Dyslipidemia was associated with reaching diagnosis and treatment steps; however, patients with other cardiovascular comorbidities were not likely to receive more intensive blood pressure management. Conclusion: Hypertension care was mostly missing the treatment and control stages. The random forest model identified features associated with receiving care, indicating opportunities to improve effective coverage.
Date: 2022
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pone00:0273560
DOI: 10.1371/journal.pone.0273560
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