Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network

The purpose of this study is to analyses the relationship between fat mass and inflammation marker, interleukin-6, clinical and metabolic data in 71 human immunodeficiency virus (HIV)-positive male patients using bivariate linear regression analyses and artificial neural network. The data used consi...

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Main Authors: Shamsuddin, Nurul Farhah, Mohktar, Mas Sahidayana, Rajasuriar, Reena, Zaman, Wan Safwani Wan Kamarul, Ibrahim, Fatimah, Kamarulzaman, Adeeba
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Published: Univ Estadual Mmaringa, Pro-Reitoria Pesquisa Pos-Graduacao 2022
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Online Access:http://eprints.um.edu.my/40487/
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spelling my.um.eprints.404872024-11-09T04:30:09Z http://eprints.um.edu.my/40487/ Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network Shamsuddin, Nurul Farhah Mohktar, Mas Sahidayana Rajasuriar, Reena Zaman, Wan Safwani Wan Kamarul Ibrahim, Fatimah Kamarulzaman, Adeeba R Medicine (General) RS Pharmacy and materia medica T Technology (General) The purpose of this study is to analyses the relationship between fat mass and inflammation marker, interleukin-6, clinical and metabolic data in 71 human immunodeficiency virus (HIV)-positive male patients using bivariate linear regression analyses and artificial neural network. The data used consisted of measurements collected from HIV male subjects aged 26 to 69 years, with body mass index (BMI) values between 15.47 and 36.98 kg m-2 and the fat mass values between 1.00 kg and 16.70 kg. The bivariate linear regression analyses showed that weight, waist-hip ratio, BMI, triglycerides, high-density lipoprotein and HIV viral load value were significant risk factors associated with the body fat mass in male HIV patients. Furthermore, an in-depth non-linear analysis has been performed using artificial neural network (ANN) to predict fat mass by using the significant predictors as input. ANN model with four hidden neurons obtained the highest mean predictive accuracy percentage of 85.26%. The finding of this study is able to help with the evaluation of the fat mass in the male HIV patients that consequently reflects the patients metabolic-related irregularity and immune response. It is also believed that the outcome from the analysis can help future HIV-related study on the prediction of body fat mass in male HIV patients especially in settings where dual energy X-ray absorptiometry assessments, the standard measurement method for fat mass are not available or affordable. Univ Estadual Mmaringa, Pro-Reitoria Pesquisa Pos-Graduacao 2022-01 Article PeerReviewed Shamsuddin, Nurul Farhah and Mohktar, Mas Sahidayana and Rajasuriar, Reena and Zaman, Wan Safwani Wan Kamarul and Ibrahim, Fatimah and Kamarulzaman, Adeeba (2022) Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network. Acta Scientiarum-Technology, 44. ISSN 1806-2563, DOI https://doi.org/10.4025/ACTASCITECHNOL.V44I1.57634 <https://doi.org/10.4025/ACTASCITECHNOL.V44I1.57634>. 10.4025/ACTASCITECHNOL.V44I1.57634
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic R Medicine (General)
RS Pharmacy and materia medica
T Technology (General)
spellingShingle R Medicine (General)
RS Pharmacy and materia medica
T Technology (General)
Shamsuddin, Nurul Farhah
Mohktar, Mas Sahidayana
Rajasuriar, Reena
Zaman, Wan Safwani Wan Kamarul
Ibrahim, Fatimah
Kamarulzaman, Adeeba
Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network
description The purpose of this study is to analyses the relationship between fat mass and inflammation marker, interleukin-6, clinical and metabolic data in 71 human immunodeficiency virus (HIV)-positive male patients using bivariate linear regression analyses and artificial neural network. The data used consisted of measurements collected from HIV male subjects aged 26 to 69 years, with body mass index (BMI) values between 15.47 and 36.98 kg m-2 and the fat mass values between 1.00 kg and 16.70 kg. The bivariate linear regression analyses showed that weight, waist-hip ratio, BMI, triglycerides, high-density lipoprotein and HIV viral load value were significant risk factors associated with the body fat mass in male HIV patients. Furthermore, an in-depth non-linear analysis has been performed using artificial neural network (ANN) to predict fat mass by using the significant predictors as input. ANN model with four hidden neurons obtained the highest mean predictive accuracy percentage of 85.26%. The finding of this study is able to help with the evaluation of the fat mass in the male HIV patients that consequently reflects the patients metabolic-related irregularity and immune response. It is also believed that the outcome from the analysis can help future HIV-related study on the prediction of body fat mass in male HIV patients especially in settings where dual energy X-ray absorptiometry assessments, the standard measurement method for fat mass are not available or affordable.
format Article
author Shamsuddin, Nurul Farhah
Mohktar, Mas Sahidayana
Rajasuriar, Reena
Zaman, Wan Safwani Wan Kamarul
Ibrahim, Fatimah
Kamarulzaman, Adeeba
author_facet Shamsuddin, Nurul Farhah
Mohktar, Mas Sahidayana
Rajasuriar, Reena
Zaman, Wan Safwani Wan Kamarul
Ibrahim, Fatimah
Kamarulzaman, Adeeba
author_sort Shamsuddin, Nurul Farhah
title Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network
title_short Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network
title_full Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network
title_fullStr Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network
title_full_unstemmed Analysis of fat mass value, clinical and metabolic data and interleukin-6 in HIV-positive males using regression analyses and artificial neural network
title_sort analysis of fat mass value, clinical and metabolic data and interleukin-6 in hiv-positive males using regression analyses and artificial neural network
publisher Univ Estadual Mmaringa, Pro-Reitoria Pesquisa Pos-Graduacao
publishDate 2022
url http://eprints.um.edu.my/40487/
_version_ 1816130410070933504
score 13.214268