Literature DB >> 23453267

Prediction of body mass index status from voice signals based on machine learning for automated medical applications.

Bum Ju Lee1, Keun Ho Kim, Boncho Ku, Jun-Su Jang, Jong Yeol Kim.   

Abstract

OBJECTIVES: The body mass index (BMI) provides essential medical information related to body weight for the treatment and prognosis prediction of diseases such as cardiovascular disease, diabetes, and stroke. We propose a method for the prediction of normal, overweight, and obese classes based only on the combination of voice features that are associated with BMI status, independently of weight and height measurements.
MATERIALS AND METHODS: A total of 1568 subjects were divided into 4 groups according to age and gender differences. We performed statistical analyses by analysis of variance (ANOVA) and Scheffe test to find significant features in each group. We predicted BMI status (normal, overweight, and obese) by a logistic regression algorithm and two ensemble classification algorithms (bagging and random forests) based on statistically significant features.
RESULTS: In the Female-2030 group (females aged 20-40 years), classification experiments using an imbalanced (original) data set gave area under the receiver operating characteristic curve (AUC) values of 0.569-0.731 by logistic regression, whereas experiments using a balanced data set gave AUC values of 0.893-0.994 by random forests. AUC values in Female-4050 (females aged 41-60 years), Male-2030 (males aged 20-40 years), and Male-4050 (males aged 41-60 years) groups by logistic regression in imbalanced data were 0.585-0.654, 0.581-0.614, and 0.557-0.653, respectively. AUC values in Female-4050, Male-2030, and Male-4050 groups in balanced data were 0.629-0.893 by bagging, 0.707-0.916 by random forests, and 0.695-0.854 by bagging, respectively. In each group, we found discriminatory features showing statistical differences among normal, overweight, and obese classes. The results showed that the classification models built by logistic regression in imbalanced data were better than those built by the other two algorithms, and significant features differed according to age and gender groups.
CONCLUSION: Our results could support the development of BMI diagnosis tools for real-time monitoring; such tools are considered helpful in improving automated BMI status diagnosis in remote healthcare or telemedicine and are expected to have applications in forensic and medical science.
Copyright © 2013 Elsevier B.V. All rights reserved.

Entities:  

Mesh:

Year:  2013        PMID: 23453267     DOI: 10.1016/j.artmed.2013.02.001

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  4 in total

Review 1.  A review of machine learning in obesity.

Authors:  K W DeGregory; P Kuiper; T DeSilvio; J D Pleuss; R Miller; J W Roginski; C B Fisher; D Harness; S Viswanath; S B Heymsfield; I Dungan; D M Thomas
Journal:  Obes Rev       Date:  2018-02-09       Impact factor: 9.213

Review 2.  The empirical evidence for the telemedicine intervention in diabetes management.

Authors:  Rashid L Bashshur; Gary W Shannon; Brian R Smith; Maria A Woodward
Journal:  Telemed J E Health       Date:  2015-03-25       Impact factor: 3.536

3.  Using Blood Indexes to Predict Overweight Statuses: An Extreme Learning Machine-Based Approach.

Authors:  Huiling Chen; Bo Yang; Dayou Liu; Wenbin Liu; Yanlong Liu; Xiuhua Zhang; Lufeng Hu
Journal:  PLoS One       Date:  2015-11-23       Impact factor: 3.240

4.  The Prediction of Body Mass Index from Negative Affectivity through Machine Learning: A Confirmatory Study.

Authors:  Giovanni Delnevo; Giacomo Mancini; Marco Roccetti; Paola Salomoni; Elena Trombini; Federica Andrei
Journal:  Sensors (Basel)       Date:  2021-03-29       Impact factor: 3.576

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.