Association between country preparedness indicators and quality clinical care for cardiovascular disease risk factors in 44 lower- and middle-income countries: A multicountry analysis of survey data


Journal article


Justine I. Davies, Sumithra Krishnamurthy Reddiar, Lisa R. Hirschhorn, Cara Ebert, Maja-Emilia Marcus, Jacqueline A. Seiglie, Zhaxybay Zhumadilov, Adil Supiyev, Lela Sturua, Bahendeka K. Silver, Abla M. Sibai, Sarah Quesnel-Crooks, Bolormaa Norov, Joseph K. Mwangi, Omar Mwalim Omar, Roy Wong-McClure, Mary T. Mayige, Joao S. Martins, Nuno Lunet, Demetre Labadarios, Khem B. Karki, Gibson B. Kagaruki, Jutta M. A. Jorgensen, Nahla C. Hwalla, Dismand Houinato, Corine Houehanou, David Guwatudde, Mongal S. Gurung, Pascal Bovet, Brice W. Bicaba, Krishna K. Aryal, Mohamed Msaidié, Glennis Andall-Brereton, Garry Brian, Andrew Stokes, Sebastian Vollmer, Till Bärnighausen, Rifat Atun, Pascal Geldsetzer, Jennifer Manne-Goehler, Lindsay M. Jaacks
PLOS Medicine, vol. 17, 2020 Nov, pp. e1003268

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APA   Click to copy
Davies, J. I., Reddiar, S. K., Hirschhorn, L. R., Ebert, C., Marcus, M.-E., Seiglie, J. A., … Jaacks, L. M. (2020). Association between country preparedness indicators and quality clinical care for cardiovascular disease risk factors in 44 lower- and middle-income countries: A multicountry analysis of survey data. PLOS Medicine, 17, e1003268.


Chicago/Turabian   Click to copy
Davies, Justine I., Sumithra Krishnamurthy Reddiar, Lisa R. Hirschhorn, Cara Ebert, Maja-Emilia Marcus, Jacqueline A. Seiglie, Zhaxybay Zhumadilov, et al. “Association between Country Preparedness Indicators and Quality Clinical Care for Cardiovascular Disease Risk Factors in 44 Lower- and Middle-Income Countries: A Multicountry Analysis of Survey Data.” PLOS Medicine 17 (November 2020): e1003268.


MLA   Click to copy
Davies, Justine I., et al. “Association between Country Preparedness Indicators and Quality Clinical Care for Cardiovascular Disease Risk Factors in 44 Lower- and Middle-Income Countries: A Multicountry Analysis of Survey Data.” PLOS Medicine, vol. 17, Nov. 2020, p. e1003268.


BibTeX   Click to copy

@article{davies2020a,
  title = {Association between country preparedness indicators and quality clinical care for cardiovascular disease risk factors in 44 lower- and middle-income countries: A multicountry analysis of survey data},
  year = {2020},
  month = nov,
  journal = {PLOS Medicine},
  pages = {e1003268},
  volume = {17},
  author = {Davies, Justine I. and Reddiar, Sumithra Krishnamurthy and Hirschhorn, Lisa R. and Ebert, Cara and Marcus, Maja-Emilia and Seiglie, Jacqueline A. and Zhumadilov, Zhaxybay and Supiyev, Adil and Sturua, Lela and Silver, Bahendeka K. and Sibai, Abla M. and Quesnel-Crooks, Sarah and Norov, Bolormaa and Mwangi, Joseph K. and Omar, Omar Mwalim and Wong-McClure, Roy and Mayige, Mary T. and Martins, Joao S. and Lunet, Nuno and Labadarios, Demetre and Karki, Khem B. and Kagaruki, Gibson B. and Jorgensen, Jutta M. A. and Hwalla, Nahla C. and Houinato, Dismand and Houehanou, Corine and Guwatudde, David and Gurung, Mongal S. and Bovet, Pascal and Bicaba, Brice W. and Aryal, Krishna K. and Msaidié, Mohamed and Andall-Brereton, Glennis and Brian, Garry and Stokes, Andrew and Vollmer, Sebastian and Bärnighausen, Till and Atun, Rifat and Geldsetzer, Pascal and Manne-Goehler, Jennifer and Jaacks, Lindsay M.},
  month_numeric = {11}
}

Abstract

Background
Cardiovascular diseases are leading causes of death, globally, and health systems that deliver quality clinical care are needed to manage an increasing number of people with risk factors for these diseases. Indicators of preparedness of countries to manage cardiovascular disease risk factors (CVDRFs) are regularly collected by ministries of health and global health agencies. We aimed to assess whether these indicators are associated with patient receipt of quality clinical care.

Methods and findings
We did a secondary analysis of cross-sectional, nationally representative, individual-patient data from 187,552 people with hypertension (mean age 48.1 years, 53.5% female) living in 43 low- and middle-income countries (LMICs) and 40,795 people with diabetes (mean age 52.2 years, 57.7% female) living in 28 LMICs on progress through cascades of care (condition diagnosed, treated, or controlled) for diabetes or hypertension, to indicate outcomes of provision of quality clinical care.Data were extracted from national-level World Health Organization (WHO) Stepwise Approach to Surveillance (STEPS), or other similar household surveys, conducted between July 2005 and November 2016. We used mixed-effects logistic regression to estimate associations between each quality clinical care outcome and indicators of country development (gross domestic product [GDP] per capita or Human Development Index [HDI]); national capacity for the prevention and control of noncommunicable diseases (‘NCD readiness indicators’ from surveys done by WHO); health system finance (domestic government expenditure on health [as percentage of GDP], private, and out-of-pocket expenditure on health [both as percentage of current]); and health service readiness (number of physicians, nurses, or hospital beds per 1,000 people) and performance (neonatal mortality rate). All models were adjusted for individual-level predictors including age, sex, and education. In an exploratory analysis, we tested whether national-level data on facility preparedness for diabetes were positively associated with outcomes. Associations were inconsistent between indicators and quality clinical care outcomes. For hypertension, GDP and HDI were both positively associated with each outcome. Of the 33 relationships tested between NCD readiness indicators and outcomes, only two showed a significant positive association: presence of guidelines with being diagnosed (odds ratio [OR], 1.86 [95% CI 1.08–3.21], p = 0.03) and availability of funding with being controlled (OR, 2.26 [95% CI 1.09–4.69], p = 0.03). Hospital beds (OR, 1.14 [95% CI 1.02–1.27], p = 0.02), nurses/midwives (OR, 1.24 [95% CI 1.06–1.44], p = 0.006), and physicians (OR, 1.21 [95% CI 1.11–1.32], p < 0.001) per 1,000 people were positively associated with being diagnosed and, similarly, with being treated; and the number of physicians was additionally associated with being controlled (OR, 1.12 [95% CI 1.01–1.23], p = 0.03). For diabetes, no positive associations were seen between NCD readiness indicators and outcomes. There was no association between country development, health service finance, or health service performance and readiness indicators and any outcome, apart from GDP (OR, 1.70 [95% CI 1.12–2.59], p = 0.01), HDI (OR, 1.21 [95% CI 1.01–1.44], p = 0.04), and number of physicians per 1,000 people (OR, 1.28 [95% CI 1.09–1.51], p = 0.003), which were associated with being diagnosed. Six countries had data on cascades of care and nationwide-level data on facility preparedness. Of the 27 associations tested between facility preparedness indicators and outcomes, the only association that was significant was having metformin available, which was positively associated with treatment (OR, 1.35 [95% CI 1.01–1.81], p = 0.04). The main limitation was use of blood pressure measurement on a single occasion to diagnose hypertension and a single blood glucose measurement to diagnose diabetes.
Conclusion
In this study, we observed that indicators of country preparedness to deal with CVDRFs are poor proxies for quality clinical care received by patients for hypertension and diabetes. The major implication is that assessments of countries’ preparedness to manage CVDRFs should not rely on proxies; rather, it should involve direct assessment of quality clinical care.

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