| Literature DB >> 32892793 |
Najmul Haider1, Alexei Yavlinsky2, Yu-Mei Chang1, Mohammad Nayeem Hasan3, Camilla Benfield1, Abdinasir Yusuf Osman1, Md Jamal Uddin3, Osman Dar4, Francine Ntoumi5,6, Alimuddin Zumla7,8, Richard Kock1.
Abstract
Global Health Security Index (GHSI) and Joint External Evaluation (JEE) are two well-known health security and related capability indices. We hypothesised that countries with higher GHSI or JEE scores would have detected their first COVID-19 case earlier, and would experience lower mortality outcome compared to countries with lower scores. We evaluated the effectiveness of GHSI and JEE in predicting countries' COVID-19 detection response times and mortality outcome (deaths/million). We used two different outcomes for the evaluation: (i) detection response time, the duration of time to the first confirmed case detection (from 31st December 2019 to 20th February 2020 when every country's first case was linked to travel from China) and (ii) mortality outcome (deaths/million) until 11th March and 1st July 2020, respectively. We interpreted the detection response time alongside previously published relative risk of the importation of COVID-19 cases from China. We performed multiple linear regression and negative binomial regression analysis to evaluate how these indices predicted the actual outcome. The two indices, GHSI and JEE were strongly correlated (r = 0.82), indicating a good agreement between them. However, both GHSI (r = 0.31) and JEE (r = 0.37) had a poor correlation with countries' COVID-19-related mortality outcome. Higher risk of importation of COVID-19 from China for a given country was negatively correlated with the time taken to detect the first case in that country (adjusted R2 = 0.63-0.66), while the GHSI and JEE had minimal predictive value. In the negative binomial regression model, countries' mortality outcome was strongly predicted by the percentage of the population aged 65 and above (incidence rate ratio (IRR): 1.10 (95% confidence interval (CI): 1.01-1.21) while overall GHSI score (IRR: 1.01 (95% CI: 0.98-1.01)) and JEE (IRR: 0.99 (95% CI: 0.96-1.02)) were not significant predictors. GHSI and JEE had lower predictive value for detection response time and mortality outcome due to COVID-19. We suggest introduction of a population healthiness parameter, to address demographic and comorbidity vulnerabilities, and reappraisal of the ranking system and methods used to obtain the index based on experience gained from this pandemic.Entities:
Keywords: COVID-19; GHS index; JEE; pandemic preparedness; risk analysis; surveillance system
Mesh:
Year: 2020 PMID: 32892793 PMCID: PMC7506172 DOI: 10.1017/S0950268820002046
Source DB: PubMed Journal: Epidemiol Infect ISSN: 0950-2688 Impact factor: 2.451
Fig. 1.The Global Health Security Index (GHSI) overall score vs. the countries' mortality outcome due to COVID-19 (deaths/million) (left) and the JEE (ReadyScore) vs. countries' mortality rate due to COVID-19 (right). The countries with highest score in GHSI and JEE also had higher mortality rate due to COVID-19 (US, United States; UK, United Kingdom; NL, Netherlands; AU, Australia; CA, Canada; TH, Thailand; SE, Sweden; DK, Denmark; KR, South Korea; FI, Finland; SI, Slovenia; CH, Switzerland; DE, Germany; ES, Spain; FR, France; NO, Norway; LV, Latvia; MY, Malaysia; BE, Belgium; PT, Portugal; SG, Singapore; JP, Japan; AE, United Arab Emirates; AM, Armenia; NZ, New Zealand; OM, Oman; BH, Bahrain; SA, Saudi Arabia; KG, Kyrgystan; LT, Lithuania; KW, Kuwait).
Fig. 2.Kaplan–Meier curves for the time to first case detection from 31st December 2019 until 20th February 2020 stratified by (left) the risk of COVID-19 importation quartiles, (right) Global Health Security Indext (GHSI) categories (score: >66.6 as ‘most prepared (MsP)’, 33.4–66.6 as ‘more prepared (MrP)’ and 0–33.3 as ‘least prepared (LeP)’).
The linear regression and negative binomial regression models for COVID-19-related outcome and other explanatory variables including the GHSI
| Duration | Pre-pandemic | Date of pandemic declaration | Post-pandemic declaration date | |||
|---|---|---|---|---|---|---|
| Dates, until | 20 February 2020 | 11 March 2020 | 1 July 2020 | |||
| Outcome variables | Duration of first case detection | Deaths per million | Deaths per million | |||
| Model | Multiple linear regression | Multiple linear regression | Negative binomial regression | |||
| Coefficients | Coefficients | IRR (95% CI) | ||||
| Risk index | −2.97 | <0.01 | NA | |||
| GHSI | −0.10 | 0.07 | 0.03 | 0.40 | 1.01 (1.02–1.09) | 0.891 |
| Total cases/million | NA | 0.04 | <0.01 | 1.01 (1.01–1.02) | <0.001 | |
| The percentage of the population aged 65 and above | NA | 0.13 | 0.06 | 1.10 (1.03–1.16) | <0.001 | |
| WGIs | NA | −2.83 | <0.01 | 1.12 (0.84–1.52) | 0.023 | |
| GDP | NA | 0.0001 | 0.31 | 0.99 (0.99–1.00) | 0.585 | |
| Population density | NA | 0.002 | 0.20 | 0.99 (0.98–0.99) | <0.01 | |
| Adjusted | Adjusted | AIC: 1412 | ||||
For the period until 20 February 2020, multiple linear regression was performed, and the risk of importation of COVID-19 from China had higher predictive value than GHSI. For mortality outcome (deaths/million) until 1 July 2020, a negative binomial regression analysis was performed. The percentage of the population aged 65 and above were strongly associated with mortality rate. The incidence rate ratio (IRR) of 1.10 of the variable ‘the percentage of the population aged 65 and above’ indicates that an increase of 1% of population above 65 years of age increases the risk of death rate by 10%.
The linear regression and negative binomial regression models for COVID-19-related outcome and other explanatory variables including JEE's ReadyScore [12, 13]
| Duration | Pre-pandemic | Date of pandemic declaration | Post-pandemic declaration date | |||
|---|---|---|---|---|---|---|
| Dates, until | 20 February 2020 | 11 March 2020 | 1 July 2020 | |||
| Outcome variables | Duration of first case detection | Deaths per million | Deaths per million | |||
| Model | Multiple linear regression | Multiple linear regression | Negative binomial regression | |||
| Coefficients | Coefficients | IRR (95% CI) | ||||
| Risk index | −2.93 | <0.01 | NA | |||
| JEE (ReadyScore) | −0.06 | 0.02 | −0.01 | 0.18 | 0.99 (0.98–0.99) | 0.419 |
| Total cases/million | 0.04 | <0.01 | 1. 01 (1.001–1.01) | <0.001 | ||
| The percentage of the population aged 65 and above | NA | 0.14 | 0.05 | 1.10 (1.01–1.21) | 0.027 | |
| WGIs | NA | −2.62 | <0.01 | 1.28 (0.82–1.96) | 0.224 | |
| GDP (per capita) | NA | 0.0001 | 0.21 | 0.99 (0.99–1.01) | 0.971 | |
| Population density | NA | 0.003 | 0.15 | 0.99 (0.98–0.99) | <0.001 | |
| Adjusted | Adjusted | AIC: 619 | ||||
For the period until 20 February 2020, multiple linear regression was performed and the risk of importation of COVID-19 from China had higher predictive value than JEE. For deaths per million until 1st July 2020, a negative binomial regression analysis was performed. The percentage of the population aged 65 and above were strongly associated with mortality outcome. The incidence rate ratio (IRR) of 1.10 of the variable ‘the percentage of the population aged 65 and above’ indicates that an increase of 1% population above 65 years of age increases the risk of death rate by 10%.