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Review
. 2013:2013:684782.
doi: 10.1155/2013/684782. Epub 2013 Jun 19.

Improving prediction algorithms for cardiometabolic risk in children and adolescents

Affiliations
Review

Improving prediction algorithms for cardiometabolic risk in children and adolescents

Ulla Sovio et al. J Obes. 2013.

Abstract

Clustering of abnormal metabolic traits, the Metabolic Syndrome (MetS), has been associated with an increased cardiovascular disease (CVD) risk. Several algorithms including the MetS and other risk factors exist for adults to predict the risk of CVD. We discuss the use of MetS scores and algorithms in an attempt to predict later cardiometabolic risk in children and adolescents and offer suggestions for developing clinically useful algorithms in this population. There is little consensus in how to define the MetS or to predict future CVD risk using the MetS and other risk factors in children and adolescents. The MetS scores and prediction algorithms we identified had usually not been tested against a clinical outcome, such as CVD, and they had not been validated in other populations. This makes comparisons of algorithms impossible. We suggest a simple two-step approach for predicting the risk of adult cardiometabolic disease in overweight children. It may have advantages in terms of cost-effectiveness since it uses simple measurements in the first step and more complex, costly measurements in the second step. It also takes advantage of the continuous distributions of the metabolic features. We suggest piloting and validating any new algorithms.

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References

    1. Guh DP, Zhang W, Bansback N, Amarsi Z, Birmingham CL, Anis AH. The incidence of co-morbidities related to obesity and overweight: a systematic review and meta-analysis. BMC Public Health. 2009;9(article 88) - PMC - PubMed
    1. Jackson-Leach R, Lobstein T. Estimated burden of paediatric obesity and co-morbidities in Europe—part 1: the increase in the prevalence of child obesity in Europe is itself increasing. International Journal of Pediatric Obesity. 2006;1(1):26–32. - PubMed
    1. Lobstein T, Jackson-Leach R. Estimated burden of paediatric obesity and co-morbidities in Europe—part 2: numbers of children with indicators of obesity-related disease. International Journal of Pediatric Obesity. 2006;1(1):33–41. - PubMed
    1. Park MH, Falconer C, Viner RM, Kinra S. The impact of childhood obesity on morbidity and mortality in adulthood: a systematic review. Obesity Reviews. 2012;13(11):985–1000. - PubMed
    1. Schwarz PE, Li J, Lindstrom J, Tuomilehto J. Tools for predicting the risk of type 2 diabetes in daily practice. Hormone and Metabolic Research. 2009;41(2):86–97. - PubMed

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