Prediction of dyslipidemia using gene mutations, family history of diseases and anthropometric indicators in children and adolescents: The CASPIAN-III study

(2018) Prediction of dyslipidemia using gene mutations, family history of diseases and anthropometric indicators in children and adolescents: The CASPIAN-III study. Comput Struct Biotechnol J. pp. 121-130. ISSN 2001-0370 (Print) 2001-0370 (Linking)

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Abstract

Dyslipidemia, the disorder of lipoprotein metabolism resulting in high lipid profile, is an important modifiable risk factor for coronary heart diseases. It is associated with more than four million worldwide deaths per year. Half of the children with dyslipidemia have hyperlipidemia during adulthood, and its prediction and screening are thus critical. We designed a new dyslipidemia diagnosis system. The sample size of 725 subjects (age 14.66+/-2.61 years; 48 male; dyslipidemia prevalence of 42) was selected by multistage random cluster sampling in Iran. Single nucleotide polymorphisms (rs1801177, rs708272, rs320, rs328, rs2066718, rs2230808, rs5880, rs5128, rs2893157, rs662799, and Apolipoprotein-E2/E3/E4), and anthropometric, life-style attributes, and family history of diseases were analyzed. A framework for classifying mixed-type data in imbalanced datasets was proposed. It included internal feature mapping and selection, re-sampling, optimized group method of data handling using convex and stochastic optimizations, a new cost function for imbalanced data and an internal validation. Its performance was assessed using hold-out and 4-foldcross-validation. Four other classifiers namely as supported vector machines, decision tree, and multilayer perceptron neural network and multiple logistic regression were also used. The average sensitivity, specificity, precision and accuracy of the proposed system were 93, 94, 94 and 92, respectively in cross validation. It significantly outperformed the other classifiers and also showed excellent agreement and high correlation with the gold standard. A non-invasive economical version of the algorithm was also implemented suitable for low- and middle-income countries. It is thus a promising new tool for the prediction of dyslipidemia.

Item Type: Article
Keywords: Computer-assisted diagnosis Deep learning Dyslipidemia Genomics Health promotion Machine learning
Divisions: Cardiovascular Research Institute > Applied Physiology Research Center
Faculty of Health > Department of Epidemiology and Biostatistics
Research Institute for Primordial Prevention of Non-communicable Disease > Child Growth and Development Research Center
Page Range: pp. 121-130
Journal or Publication Title: Comput Struct Biotechnol J
Journal Index: Pubmed
Volume: 16
Identification Number: https://doi.org/10.1016/j.csbj.2018.02.009
ISSN: 2001-0370 (Print) 2001-0370 (Linking)
Depositing User: Zahra Otroj
URI: http://eprints.mui.ac.ir/id/eprint/7809

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