| Literature DB >> 35214653 |
Mehrdad Kazemi1, Nicola Luigi Bragazzi1, Jude Dzevela Kong1.
Abstract
After the start of the COVID-19 pandemic and its spread across the world, countries have adopted containment measures to stop its transmission, limit fatalities, and relieve hospitals from straining and overwhelming conditions imposed by the virus. Many countries implemented social distancing and lockdown strategies that negatively impacted their economies and the psychological wellbeing of their citizens, even though they contributed to saving lives. Recently approved and available, COVID-19 vaccines can provide a really viable and sustainable option for controlling the pandemic. However, their uptake represents a global challenge due to vaccine hesitancy and logistic-organizational hurdles that have made its distribution stagnant in several developed countries despite several appeals by the media, policy- and decision-makers, and community leaders. Vaccine distribution is also a concern in developing countries, where there is a scarcity of doses. The objective of the present study was to set up a metric to assess vaccination uptake and identify national socio-economic factors influencing this indicator. We conducted a cross-country study. We first estimated the vaccination uptake rate across countries by fitting a logistic model to reported daily case numbers. Using the uptake rate, we estimated the vaccine roll-out index. Next, we used Random Forest, an "off-the-shelf" machine learning algorithm, to study the association between vaccination uptake rate and socio-economic factors. We found that the mean vaccine roll-out index is 0.016 (standard deviation 0.016), with a range between 0.0001 (Haiti) and 0.0829 (Mongolia). The top four factors associated with the vaccine roll-out index are the median per capita income, human development index, percentage of individuals who have used the internet in the last three months, and health expenditure per capita. The still-ongoing COVID-19 pandemic has shed light on the disparity in vaccine adoption across low- and high-income countries, which represents a global public health challenge. We must pave the way for universal access to vaccines and other approved treatments, regardless of demographic structures and underlying health conditions. Income disparity remains, instead, an important cause of vaccine inequity, which restricts the functioning of the global vaccine allocation framework and, thus, the ending of the pandemic. Stronger mechanisms are needed to foster countries' political willingness to promote vaccine and drug access equity in a globalized society where future pandemics and other global health crises can be anticipated.Entities:
Keywords: COVID-19; Random forest; cross-country analysis; machine learning; pandemic; vaccine roll-out
Year: 2022 PMID: 35214653 PMCID: PMC8879459 DOI: 10.3390/vaccines10020194
Source DB: PubMed Journal: Vaccines (Basel) ISSN: 2076-393X
Figure 1Dots represent cumulative given doses, and curves are fitted based on the logistic growth model. Countries are sorted alphabetically. Here, only some select countries are shown. The average of R2 across all countries is 0.99.
List of all the covariates used in this study with their explanations and sources.
| Category | Covariate | Source |
|---|---|---|
| Demographic | Youth: Population aged 20–35 years (% of the total population) | [ |
| Total Pop: Total Population | [ | |
| Population density | [ | |
| Median age | [ | |
| Aged 65 years and older | [ | |
| Rural population | [ | |
| Gender ratio | [ | |
| Average household size (number of members) | [ | |
| Disease | Mort Resp: Mortality rate from lower respiratory infections (per 100,000 people) | [ |
| Mortality rate from infectious and parasitic diseases (per 100,000 people) | [ | |
| Economic | GINI: GINI index | [ |
| Ease of doing business index 2019 (1 = most business-friendly regulation) | [ | |
| GDP per capita | [ | |
| Extreme poverty (share of the population living in extreme poverty, most recent year available since 2010) | [ | |
| Median per-capita Income | [ | |
| Unemployment, total (% of the total labor force) | [ | |
| Habitat | Population in urban agglomerations of more than 1 million (% of the total population) | [ |
| Urban population (% of the total population) | [ | |
| Health | GHS: Global Health Security detection index | [ |
| Nurses: Nurses and midwives (per 1000 people) | [ | |
| Stringency index | [ | |
| Total deaths attributed to COVID-19 per 1,000,000 people | [ | |
| Type of vaccine | [ | |
| Health expenditure per capita, PPP | [ | |
| Share of the population covered by health insurance | [ | |
| Cardiovascular disease death rate (per 100,000 people) | [ | |
| Years of health lost due to disability (YLD) | [ | |
| Education | Literacy rate (percentage of people aged 15 years and above) | [ |
| School enrollment, tertiary (% gross) | [ | |
| Technology | Individuals using the Internet (% of the population) | [ |
| Social | Social Media: Average People’s Use of Social Media To Organize Offline Action (4 = high) | [ |
| Internet Filtering: Government Internet filtering in practice (4 = low) | [ | |
| Air Transport: passengers carried per capita | [ | |
| Corruption Perceptions Index (CPI) | [ | |
| Health-Social | Life expectancy (Life expectancy at birth in 2019) | [ |
| Composite index (Economic-Social-Health-Education) | Human development index | [ |
Figure 2Vaccine Roll-out Index (VRI) versus Literacy rate (Adult literacy rate is the percentage of people aged 15 years and above who can both read and write with a clear understanding of a short simple statement about their everyday life).
Figure 3Heatmap of studied countries. They are colored based on their Vaccine Roll-out Index (VRI) value. All VRI values were multiplied by a constant to be in the range of 0 to 1. Five intervals were selected such that the number of countries in each one was the same.
Figure 4Covariates listed according to their Permutation Feature Importance. Four top features are: (i) median per capita income; (ii) human development index; (iii) the percentage of individuals who have used the internet in the last three months (latest data available) via a computer, mobile phone, personal digital assistant, games machine, digital TV, etc.; and (iv) health expenditure per capita. Additionally, the results illustrate that other covariates, particularly the type of vaccine or the Gini index, do not play a key role.