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A vulnerability index for COVID-19: spatial analysis at the subnational level in Kenya

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A vulnerability index for COVID-19: spatial analysis at the subnational level in Kenya. / Macharia, Peter M; Joseph, Noel K; Okiro, Emelda A.
In: BMJ Global Health, Vol. 5, No. 8, e003014, 24.08.2020.

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Macharia PM, Joseph NK, Okiro EA. A vulnerability index for COVID-19: spatial analysis at the subnational level in Kenya. BMJ Global Health. 2020 Aug 24;5(8):e003014. doi: 10.1136/bmjgh-2020-003014

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Macharia, Peter M ; Joseph, Noel K ; Okiro, Emelda A. / A vulnerability index for COVID-19: spatial analysis at the subnational level in Kenya. In: BMJ Global Health. 2020 ; Vol. 5, No. 8.

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@article{d62f3267ec644813b7f6e4c174b48cc0,
title = "A vulnerability index for COVID-19:: spatial analysis at the subnational level in Kenya",
abstract = "BACKGROUND: Response to the coronavirus disease 2019 (COVID-19) pandemic calls for precision public health reflecting our improved understanding of who is the most vulnerable and their geographical location. We created three vulnerability indices to identify areas and people who require greater support while elucidating health inequities to inform emergency response in Kenya.METHODS: Geospatial indicators were assembled to create three vulnerability indices; Social VulnerabilityIndex (SVI), Epidemiological Vulnerability Index (EVI) and a composite of the two, that is, Social Epidemiological Vulnerability Index (SEVI) resolved at 295 subcounties in Kenya. SVI included 19 indicators that affect the spread of disease; socioeconomic deprivation, access to services and population dynamics, whereas EVI comprised 5 indicators describing comorbidities associated with COVID-19 severe disease progression. The indicators were scaled to a common measurement scale, spatially overlaid via arithmetic mean and equally weighted. The indices were classified into seven classes, 1-2 denoted low vulnerability and 6-7, high vulnerability. The population within vulnerabilities classes was quantified.RESULTS: The spatial variation of each index was heterogeneous across Kenya. Forty-nine northwestern and partly eastern subcounties (6.9 million people) were highly vulnerable, whereas 58 subcounties (9.7 million people) in western and central Kenya were the least vulnerable for SVI. For EVI, 48 subcounties (7.2 million people) in central and the adjacent areas and 81 subcounties (13.2 million people) in northern Kenya were the most and least vulnerable, respectively. Overall (SEVI), 46 subcounties (7.0 million people) around central and southeastern were more vulnerable, whereas 81 subcounties (14.4 million people) were least vulnerable.CONCLUSION: The vulnerability indices created are tools relevant to the county, national government and stakeholders for prioritisation and improved planning. The heterogeneous nature of the vulnerability indices underpins the need for targeted and prioritised actions based on the needs across the subcounties.",
keywords = "Betacoronavirus, COVID-19, Comorbidity, Coronavirus Infections/epidemiology, Humans, Kenya/epidemiology, Pandemics/prevention & control, Pneumonia, Viral/epidemiology, Public Health, SARS-CoV-2, Socioeconomic Factors, Spatial Analysis, Vulnerable Populations/ethnology",
author = "Macharia, {Peter M} and Joseph, {Noel K} and Okiro, {Emelda A}",
year = "2020",
month = aug,
day = "24",
doi = "10.1136/bmjgh-2020-003014",
language = "English",
volume = "5",
journal = "BMJ Global Health",
issn = "2059-7908",
publisher = "BMJ Publishing Group",
number = "8",

}

RIS

TY - JOUR

T1 - A vulnerability index for COVID-19:

T2 - spatial analysis at the subnational level in Kenya

AU - Macharia, Peter M

AU - Joseph, Noel K

AU - Okiro, Emelda A

PY - 2020/8/24

Y1 - 2020/8/24

N2 - BACKGROUND: Response to the coronavirus disease 2019 (COVID-19) pandemic calls for precision public health reflecting our improved understanding of who is the most vulnerable and their geographical location. We created three vulnerability indices to identify areas and people who require greater support while elucidating health inequities to inform emergency response in Kenya.METHODS: Geospatial indicators were assembled to create three vulnerability indices; Social VulnerabilityIndex (SVI), Epidemiological Vulnerability Index (EVI) and a composite of the two, that is, Social Epidemiological Vulnerability Index (SEVI) resolved at 295 subcounties in Kenya. SVI included 19 indicators that affect the spread of disease; socioeconomic deprivation, access to services and population dynamics, whereas EVI comprised 5 indicators describing comorbidities associated with COVID-19 severe disease progression. The indicators were scaled to a common measurement scale, spatially overlaid via arithmetic mean and equally weighted. The indices were classified into seven classes, 1-2 denoted low vulnerability and 6-7, high vulnerability. The population within vulnerabilities classes was quantified.RESULTS: The spatial variation of each index was heterogeneous across Kenya. Forty-nine northwestern and partly eastern subcounties (6.9 million people) were highly vulnerable, whereas 58 subcounties (9.7 million people) in western and central Kenya were the least vulnerable for SVI. For EVI, 48 subcounties (7.2 million people) in central and the adjacent areas and 81 subcounties (13.2 million people) in northern Kenya were the most and least vulnerable, respectively. Overall (SEVI), 46 subcounties (7.0 million people) around central and southeastern were more vulnerable, whereas 81 subcounties (14.4 million people) were least vulnerable.CONCLUSION: The vulnerability indices created are tools relevant to the county, national government and stakeholders for prioritisation and improved planning. The heterogeneous nature of the vulnerability indices underpins the need for targeted and prioritised actions based on the needs across the subcounties.

AB - BACKGROUND: Response to the coronavirus disease 2019 (COVID-19) pandemic calls for precision public health reflecting our improved understanding of who is the most vulnerable and their geographical location. We created three vulnerability indices to identify areas and people who require greater support while elucidating health inequities to inform emergency response in Kenya.METHODS: Geospatial indicators were assembled to create three vulnerability indices; Social VulnerabilityIndex (SVI), Epidemiological Vulnerability Index (EVI) and a composite of the two, that is, Social Epidemiological Vulnerability Index (SEVI) resolved at 295 subcounties in Kenya. SVI included 19 indicators that affect the spread of disease; socioeconomic deprivation, access to services and population dynamics, whereas EVI comprised 5 indicators describing comorbidities associated with COVID-19 severe disease progression. The indicators were scaled to a common measurement scale, spatially overlaid via arithmetic mean and equally weighted. The indices were classified into seven classes, 1-2 denoted low vulnerability and 6-7, high vulnerability. The population within vulnerabilities classes was quantified.RESULTS: The spatial variation of each index was heterogeneous across Kenya. Forty-nine northwestern and partly eastern subcounties (6.9 million people) were highly vulnerable, whereas 58 subcounties (9.7 million people) in western and central Kenya were the least vulnerable for SVI. For EVI, 48 subcounties (7.2 million people) in central and the adjacent areas and 81 subcounties (13.2 million people) in northern Kenya were the most and least vulnerable, respectively. Overall (SEVI), 46 subcounties (7.0 million people) around central and southeastern were more vulnerable, whereas 81 subcounties (14.4 million people) were least vulnerable.CONCLUSION: The vulnerability indices created are tools relevant to the county, national government and stakeholders for prioritisation and improved planning. The heterogeneous nature of the vulnerability indices underpins the need for targeted and prioritised actions based on the needs across the subcounties.

KW - Betacoronavirus

KW - COVID-19

KW - Comorbidity

KW - Coronavirus Infections/epidemiology

KW - Humans

KW - Kenya/epidemiology

KW - Pandemics/prevention & control

KW - Pneumonia, Viral/epidemiology

KW - Public Health

KW - SARS-CoV-2

KW - Socioeconomic Factors

KW - Spatial Analysis

KW - Vulnerable Populations/ethnology

U2 - 10.1136/bmjgh-2020-003014

DO - 10.1136/bmjgh-2020-003014

M3 - Journal article

C2 - 32839197

VL - 5

JO - BMJ Global Health

JF - BMJ Global Health

SN - 2059-7908

IS - 8

M1 - e003014

ER -