| Literature DB >> 32785046 |
Chinonso N Ogojiaku1, J C Allen2, Rexford Anson-Dwamena3, Kierra S Barnett4, Olorunfemi Adetona1, Wansoo Im5, Darryl B Hood1.
Abstract
The Health Opportunity Index (HOI) is a multivariate tool that can be more efficiently used to identify and understand the interplay of complex social determinants of health (SDH) at the census tract level that influences the ability to achieve optimal health. The derivation of the HOI utilizes the data-reduction technique of principal component analysis to determine the impact of SDH on optimal health at lower census geographies. In the midst of persistent health disparities and the present COVID-19 pandemic, we demonstrate the potential utility of using 13-input variables to derive a composite metric of health (HOI) score as a means to assist in the identification of the most vulnerable communities during the current pandemic. Using GIS mapping technology, health opportunity indices were layered by counties in Ohio to highlight differences by census tract. Collectively we demonstrate that our HOI framework, principal component analysis and convergence analysis methodology coalesce to provide results supporting the utility of this framework in the three largest counties in Ohio: Franklin (Columbus), Cuyahoga (Cleveland), and Hamilton (Cincinnati). The results in this study identified census tracts that were also synonymous with communities that were at risk for disparate COVID-19 related health outcomes. In this regard, convergence analyses facilitated identification of census tracts where different disparate health outcomes co-exist at the worst levels. Our results suggest that effective use of the HOI composite score and subcomponent scores to identify specific SDH can guide mitigation/intervention practices, thus creating the potential for better targeting of mitigation and intervention strategies for vulnerable communities, such as during the current pandemic.Entities:
Keywords: GIS; Ohio; disease convergence; health disparities; health equity; health opportunity index; principal component analysis; public health exposome; social determinants of health; thematic mapping
Mesh:
Year: 2020 PMID: 32785046 PMCID: PMC7459470 DOI: 10.3390/ijerph17165767
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Health Opportunity Index Scaled into Quintiles against life expectancy to show the relationship. The relationship is monotonic indicating that persons living in “Very High Opportunity Areas” on average is expected to live over four more years compared to the persons in “Very Low Opportunity Areas”.
Figure 2Health Opportunity Index Scaled into Quintiles against infant mortality to show the relationship. Data shows that the infant mortality rate in “Very High Opportunity Areas” on average is 47.3% lower than the rate in “Very Low Opportunity Areas”.
Explanation of the Total Variance in Derivation of Health Opportunity Index. The first component, PC1 explained 35.878% of the total variance while the cumulative variance of the four retained components summed to 72.857% based on the eigenvalue (1 or more).
| Component | Initial Eigenvalues | Extraction Sums of Squared Loadings | Rotation Sums of Squared Loadings | ||||||
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| Total | % of Variance | Cumulative % | Total | % of Variance | Cumulative % | Total | % of Variance | Cumulative % | |
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| Component 5 | 0.763 | 5.871 | 78.729 | ||||||
| Component 6 | 0.621 | 4.776 | 83.505 | ||||||
| Component 7 | 0.555 | 4.271 | 87.776 | ||||||
| Component 8 | 0.398 | 3.061 | 90.837 | ||||||
| Component 9 | 0.389 | 2.990 | 93.827 | ||||||
| Component 10 | 0.255 | 1.964 | 95.790 | ||||||
| Component 11 | 0.215 | 1.652 | 97.442 | ||||||
| Component 12 | 0.181 | 1.390 | 98.832 | ||||||
| Component 13 | 0.152 | 1.168 | 100.000 | ||||||
1. Extraction Method: Principal Component Analysis. 2. The table above shows the total variance explained and based on the eigenvalue (1 or more), four components were retained.
Health Opportunity Index score card. See text for details. The score card displays the composite, profile and index score from the HOI the scores range from 0 to 1. The closer the number is to 0, the more responsible the score is for driving low health opportunity.
| Health Opportunity Index Score Card | Census Tract FIPS Code: 39035118602 | |||||
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| Composite Index | Environmental Profile | Consumer Profile | Economic Profile | Population Mobility Profile | ||
| 0.041 | 0.74 | 0.095 | 0.141 | 0.892 | ||
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| 0.862 | 0.35 | 0.341 | 0.914 | |||
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| 1 | 0.593 | 0.063 | 0.055 | |||
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| 0.718 | 0.176 | 0.352 | |||
| 70.1 |
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| 0.891 | ||||||
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| 0.851 | ||||||
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| 0.664 | ||||||
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Figure 3HOI Composite Score map from Cuyahoga County. The thematic map displays census tracts in Cuyahoga County in northeast Ohio. The census tracts are color coordinated based on what quintile their HOI composite score falls in. The lower HOI Composite scores fall in the first quintile while the higher HOI scores fall in the fifth quintile.
Figure 4HOI Composite score map from Franklin County. The thematic map displays census tracts in Franklin County in central Ohio. The census tracts are color coordinated based on what quintile their HOI composite score falls in. The lower HOI Composite scores fall in the first quintile while the higher HOI scores fall in the fifth quintile.
Figure 5HOI Composite Score map from Hamilton County. The map displays census tracts in Hamilton County in southwest Ohio. The census tracts are color coordinated based on what quintile their HOI composite score falls in. The lower HOI Composite scores fall in the first quintile while the higher HOI scores fall in the fifth quintile.
Figure 6Disease Convergence as determined by HOI Composite score in Hamilton County. The census tracts outlined in black indicate the disease convergent census tracts. The indicated census tracts are areas where multiple diseases are occurring at high levels, simultaneously.