Introduction The current COVID-19 pandemic is a global threat. This elicits questions on the level of preparedness and capacity of health systems to respond to emergencies relative to other parts of the world. Methods This cross-sectional study uses publicly available core health data for 53 African countries to determine risk factors for cumulative COVID-19 deaths and cases per million in all countries in the continent. Descriptive statistics were determined for the indicators, and a negative binomial regression was used for modelling the risk factors. Results In sub-Saharan Africa, an increase in the number of nursing and midwifery personnel decreased the risk of COVID-19 deaths (p=0.0178), while a unit increase in universal healthcare (UHC) index of service coverage and prevalence of insufficient physical activity among adults increased the risk of COVID-19 deaths (p=0.0432 and p=0.0127). An increase in the proportion of infants initiating breast feeding reduced the number of cases per million (p<0.0001), while an increase in higher healthy life expectancy at birth increased the number of cases per million (p=0.0340). Conclusion Despite its limited resources, Africa's preparedness and response to the COVID-19 pandemic can be improved by identifying and addressing specific gaps in the funding of health services delivery. These gaps impact negatively on service delivery in Africa, which requires more nursing personnel and increased UHC coverage to mitigate the effects of COVID-19.
This is a cross-sectional study of the most recent 2020 data for African countries extracted from the WHO Global Health Observatory Repository.7 Before extraction, the research team reviewed available indicators in the 2018 Global Reference List of 100 Core Health Indicators (plus health-related Sustainable Development Goals (SDGs))8 and listed different indicators by thematic areas. These indicators directly or indirectly describe the potential ability of a country’s health system to respond to the health needs of the population and may further determine the extent available services can be expanded to accommodate emergencies. Data on confirmed cases of coronavirus and deaths were obtained from the Worldometer Coronavirus Live Update.9 Bacille Calmette-Guérin (BCG) immunisation coverage among 1 year olds (%): BCG immunisation coverage among 1 year olds (%).10 Nursing and midwifery personnel (per 10 000 population): it is the density of nurses and midwifery personnel per 10 000 people.10 UHC index of service coverage: coverage of essential health services such as reproductive, maternal, newborn and child health among others.10 Prevalence of insufficient physical activity among adults aged 18+ years: insufficient physical activity was defined as adults not meeting the WHO recommendations on physical activity for health, that is, at least 150 min of moderate intensity or 75 min of vigorous intensity physical activity per week, or any equivalent combination of the two.11 Early initiation of breast feeding (%): initiation of breast feeding within the first hour of birth and exclusively breast fed for the first 6 months of life.12 Healthy life expectancy at birth (years): this is a life expectancy estimate that applies disability weights to health states to compute the equivalent number of years of good health that a new born can expect.13 Life expectancy at birth: this reflects the overall mortality level of a population. It summarises the mortality pattern that prevails across all age groups—children and adolescents, adults and the elderly.14 Prevalence of overweight among adults: adults with a body mass index ≥30. Current health expenditure (CHE) as a percentage of gross domestic product (GDP): this indicates the level of resources channelled to health relative to other uses.10 Data for 32 indicators (or variables) from 12 thematic areas were extracted from the 2018 Global Reference List of 100 Core Health Indicators (table 1). The 12 thematic areas are mortality by age and sex, mortality by cause, morbidity, nutrition, environmental risk factors, non-communicable diseases, immunisation, essential health services, utilisation and access, health workforce, health information and health financing. Summary of thematic areas of health indicators *Data not available. SDG, Sustainable Development Goals; TB, tuberculosis. Data were extracted in.xls format for each variable and imported into STATA V.15.0 software. For each variable, the most recent data for all countries included in the study were retained with the corresponding year and country name in.dta format. The different variables were merged using the country name as the unique identifier to obtain the final data set used for the analysis. The countries were further categorised into their assigned WHO region and World Bank income group except Somalia that had missing data. All data on health indicators were continuous and were analysed descriptively using median, IQR and minimum and maximum values. Of the 53 countries included in the analyses, there were varying proportions of <10% missing data. To address this, we assumed a missing at random mechanism and applied a multiple imputation technique with 10 imputations and summarised the results across all the datasets.15 The fit of the multiple imputation was evaluated using variance information measures including relative efficiency. The process of selection of variables for analysis was as follows. First, the team reviewed all the core publicly available health indicators. Then the plausibility of the explanatory power of these variables in the context of this study was subjected to various statistical approaches. These include the use of univariate and multivariate regression selection procedures. This approach enabled the identification of the final variables. Due to its flexibility in allowing for overdispersion, risk factors for cumulative COVID-19 deaths and cases per million were fitted using the negative binomial regression. Both univariate and multivariate regression models were fitted. In the multivariate model, a full model including all the variables was fitted and the final model determined using the backward selection procedure. Regression models were fitted for SSA followed by a sensitivity analyses including all the countries in the continent. Model fit was assessed using the ratio of the deviance, scaled deviance, Pearson χ2 and scaled Pearson χ2 divided by the df. Additionally, we also assessed model fit using the cumulative sum of residual plots with 10 000 replications. Deaths and cases per million were those reported in the Worldometer as of 29 May 2020. All statistical analyses were conducted using SAS Enterprise Guide V.7.15. This study used publicly available health indicators and aggregated COVID-19 cases and deaths. No patients were involved.