Assessing Capacity and Performance of Health Systems Using Principal Component Analysis: Results from Cross Sectional Survey in Kakamega County, Western Kenya
Abstract
Background: Strong health systems are fundamental if countries are to improve health outcomes and accelerate
the attainment of the Sustainable Development Goal (SDGs) number 3 ‘Ensure healthy lives and promote wellbeing for all at all ages.’ Despite the strong consensus on need to strengthen health systems, many health systems
lack the capacity to measure or understand their own weakness and constraints which effectively leaves policy
makers without ideas of what they should actually strengthen.
Methods: Principal Component Analysis (PCA) was used to factor weights which were used to assess individual
contribution of indicators to the health system performance. PCA is a type of a multivariable linear regression of
all indicators in one model. PCA index was classify variables from heighted to the lowest indicator and further
used to rank the indicator. Indicators of individual health system building block were weighted independently to
measure the amount of contribution to the respective health system building block. The weights were then
aggregated to produce individual health system building block indices which were the independent variables in
the multivariable linear regression model. Coefficients of the regression was used to assess marginal effects and
p-value<0.05 were considered statistics significant result
Results: Service delivery (p<0.0001), health financing (p<0.0001), health workforce (p=0.005) and medical
supplies and commodities (p<0.0001) had significant effect on service provision. Health governance was not a
significant factor influencing service provision.
Conclusions: Among the health system building blocks that significantly influenced service provision were
service delivery, health workforce, and health financing and medical supplies. This is the first study to the best of
the knowledge of the researcher to apply principal component analysis, to analyze health system performance in a
devolved system Kakamega. The method provides opportunity for future application in health systems analysis
even in absence of comparative data
URI
: https://www.researchgate.net/publication/331407108http://r-library.mmust.ac.ke/123456789/1267
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