Aplicação de redes neurais para estimava da gordura corporal de adolescente utilizando variáveis clínicas.
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Data
2021-09-24
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Universidade Federal do Maranhão
Resumo
The prevalence of overweight in adolescence is a worldwide public health problem, as it is
associated with several metabolic disorders, such as cardiovascular diseases and diabetes. Such
problems if not evaluated and treated early can lead to negative outcomes such as premature
death, so the importance of analyzing the body fat of this population. Thus, the objective of
this study is to develop an artificial neural network (ANN) to predict the percentage of body fat
(%GC) of adolescents. In this network are used, as input parameters, weight, height, age, gender,
heart rate, waist circumference, hip circumference, arm circumference. For training and testing
of ANN, we used 5-fold cross-validation in a set of data from 772 adolescents of both sexes, aged
between 10 and 19 years. For data labeling, we used the (%GC) obtained by bioimpedance (BIA).
The prediction given by our RNA was compared with the prediction of other anthropometric
methods commonly used in the evaluation of nutritional status. When comparing the value
obtained by the net, in the test phase, with the value of BIA a correlation R= 0.87 was obtained.
Our method showed significantly better results than the usual anthropometric indicators such
as Body Mass Index (BMI), Waist-Height Relationship (WHtR), as can be evaluated by the
area over the ROC curve (AUROC):0.83 (RNA), 0.62 (BMI) and 0.56 (WHtR). Our proposal
also obtained 85.3% accuracy, 73.2% specificity, the sensitivity of 93%, and a 59.09% rate of
true positives. These results are much better than the BMI and CER methods that present low
sensitivity (27.6% and 11.2%). The specificity of our method showed a high rate of true negatives
(26.28%). Thus, it is concluded that the RNA model obtained a better performance to predict
excess body fat in adolescents compared to the usual anthropometric indicators, presenting itself
as a low cost alternative for the tracking of obesity in adolescents.
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Palavras-chave
Obesidade;, Rede Neural Arificial;, Adolescente;, Sensibilidade e Especificidade, Obesity;, Artificial Neural Network;, Adolescence;, Sensitivity and Specificity
Citação
ARAÚJO, Claudyane da Silva. Aplicação de redes neurais para estimava da gordura corporal de adolescente utilizando variáveis clínicas.. 2021. 77 f. Dissertação( Programa de Pós-Graduação em Engenharia de Eletricidade/CCET) - Universidade Federal do Maranhão, São Luís, 2021.