Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques

This paper presents a new non-invasive approach to predict the status of high total cholesterol (TC) level in blood using bioimpedance and the artificial neural network (ANN) techniques. The input parameters for the ANN model are acquired from a non-invasive bioelectrical impedance analysis (BIA) me...

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Main Authors: Mohktar, M.S., Ibrahim, F., Ismail, N.A.
Format: Article
Published: 2013
Subjects:
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author Mohktar, M.S.
Ibrahim, F.
Ismail, N.A.
author_facet Mohktar, M.S.
Ibrahim, F.
Ismail, N.A.
author_sort Mohktar, M.S.
collection UM
description This paper presents a new non-invasive approach to predict the status of high total cholesterol (TC) level in blood using bioimpedance and the artificial neural network (ANN) techniques. The input parameters for the ANN model are acquired from a non-invasive bioelectrical impedance analysis (BIA) measurement technique. The measurement data were obtained from 260 volunteered participants. A total of 190 subject's data were used for the ANN training purpose and the remaining 70 subject's data were used for model testing. Six parameters from the BIA parameters were found to be significant predictors for TC level in blood using logistic regression analysis. The six input predictors for the ANN modeling are age, body mass index (BMI), body capacitance, basal metabolic rate, extracellular mass and lean body mass. Four ANN techniques such as the gradient descent with momentum, the resilient, the scaled conjugate gradient and the Levenberg-Marquardt were used and compared for predicting the high TC level in the blood. The finding showed that the resilient method was the best model with prediction accuracy, sensitivity, specificity and area under the curve value obtained from the test data were 82.9, 85.4, 79.3 and 0.83, respectively. © 2013 National Taiwan University.
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spelling um.eprints-93182017-11-01T06:00:06Z http://eprints.um.edu.my/9318/ Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques Mohktar, M.S. Ibrahim, F. Ismail, N.A. T Technology (General) TA Engineering (General). Civil engineering (General) This paper presents a new non-invasive approach to predict the status of high total cholesterol (TC) level in blood using bioimpedance and the artificial neural network (ANN) techniques. The input parameters for the ANN model are acquired from a non-invasive bioelectrical impedance analysis (BIA) measurement technique. The measurement data were obtained from 260 volunteered participants. A total of 190 subject's data were used for the ANN training purpose and the remaining 70 subject's data were used for model testing. Six parameters from the BIA parameters were found to be significant predictors for TC level in blood using logistic regression analysis. The six input predictors for the ANN modeling are age, body mass index (BMI), body capacitance, basal metabolic rate, extracellular mass and lean body mass. Four ANN techniques such as the gradient descent with momentum, the resilient, the scaled conjugate gradient and the Levenberg-Marquardt were used and compared for predicting the high TC level in the blood. The finding showed that the resilient method was the best model with prediction accuracy, sensitivity, specificity and area under the curve value obtained from the test data were 82.9, 85.4, 79.3 and 0.83, respectively. © 2013 National Taiwan University. 2013 Article PeerReviewed Mohktar, M.S. and Ibrahim, F. and Ismail, N.A. (2013) Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques. Biomedical Engineering - Applications, Basis and Communications, 25 (06). p. 1350046. ISSN 1793-7132, DOI https://doi.org/10.4015/s1016237213500464 <https://doi.org/10.4015/s1016237213500464>. http://www.scopus.com/inward/record.url?eid=2-s2.0-84890276768&partnerID=40&md5=d130d545eb70a10022749dcf150c6e65 10.4015/s1016237213500464
spellingShingle T Technology (General)
TA Engineering (General). Civil engineering (General)
Mohktar, M.S.
Ibrahim, F.
Ismail, N.A.
Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques
title Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques
title_full Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques
title_fullStr Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques
title_full_unstemmed Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques
title_short Non-invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques
title_sort non invasive approach to predict the cholesterol level in blood using bioimpedance and neural network techniques
topic T Technology (General)
TA Engineering (General). Civil engineering (General)
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