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Pediatric Health-Related Quality of Life: A Structural Equation Modeling Approach

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2014

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Public Library of Science
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Villalonga-Olives, Ester, Ichiro Kawachi, Josué Almansa, Claudia Witte, Benjamin Lange, Christiane Kiese-Himmel, and Nicole von Steinbüchel. 2014. “Pediatric Health-Related Quality of Life: A Structural Equation Modeling Approach.” PLoS ONE 9 (11): e113166. doi:10.1371/journal.pone.0113166. http://dx.doi.org/10.1371/journal.pone.0113166.

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Abstract

Objectives: One of the most referenced theoretical frameworks to measure Health Related Quality of Life (HRQoL) is the Wilson and Cleary framework. With some adaptions this framework has been validated in the adult population, but has not been tested in pediatric populations. Our goal was to empirically investigate it in children. Methods: The contributory factors to Health Related Quality of Life that we included were symptom status (presence of chronic disease or hospitalizations), functional status (developmental status), developmental aspects of the individual (social-emotional) behavior, and characteristics of the social environment (socioeconomic status and area of education). Structural equation modeling was used to assess the measurement structure of the model in 214 German children (3–5 years old) participating in a follow-up study that investigates pediatric health outcomes. Results: Model fit was χ2 = 5.5; df = 6; p = 0.48; SRMR = 0.01. The variance explained of Health Related Quality of Life was 15%. Health Related Quality of Life was affected by the area education (i.e. where kindergartens were located) and development status. Developmental status was affected by the area of education, socioeconomic status and individual behavior. Symptoms did not affect the model. Conclusions: The goodness of fit and the overall variance explained were good. However, the results between children' and adults' tests differed and denote a conceptual gap between adult and children measures. Indeed, there is a lot of variety in pediatric Health Related Quality of Life measures, which represents a lack of a common definition of pediatric Health Related Quality of Life. We recommend that researchers invest time in the development of pediatric Health Related Quality of Life theory and theory based evaluations.

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Medicine and Health Sciences, Epidemiology, Pediatrics, Public and Occupational Health

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