Detecting Body Mass Index from a Facial Photograph in Lifestyle Intervention

This study aimed to identify whether a research participant’s body-mass index (BMI) can be correctly identified from their facial image (photograph) in order to improve data capturing in dissemination and implementation research. Facial BMI (fBMI) was measured using an algorithm formulated...

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Main Authors: Makenzie L. Barr, Guodong Guo, Sarah E. Colby, Melissa D. Olfert
Format: Article
Language:English
Published: MDPI AG 2018-08-01
Series:Technologies
Subjects:
Online Access:http://www.mdpi.com/2227-7080/6/3/83
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spelling doaj-d435af0ce7b1467c91dfe31998b52f822020-11-24T21:23:04ZengMDPI AGTechnologies2227-70802018-08-01638310.3390/technologies6030083technologies6030083Detecting Body Mass Index from a Facial Photograph in Lifestyle InterventionMakenzie L. Barr0Guodong Guo1Sarah E. Colby2Melissa D. Olfert3Davis College of Agriculture, Natural Resources and Design, Division of Animal Nutrition and Science, Human Nutrition and Foods, West Virginia University, Morgantown, WV 26506, USABenjamin M. Statler College of Engineering and Mineral Resources, West Virginia University, Morgantown, WV 26506, USADepartment of Nutrition, The University of Tennessee, Knoxville, TN 37996-1920, USADavis College of Agriculture, Natural Resources and Design, Division of Animal Nutrition and Science, Human Nutrition and Foods, West Virginia University, Morgantown, WV 26506, USAThis study aimed to identify whether a research participant’s body-mass index (BMI) can be correctly identified from their facial image (photograph) in order to improve data capturing in dissemination and implementation research. Facial BMI (fBMI) was measured using an algorithm formulated to identify points on each enrolled participant’s face from a photograph. Once facial landmarks were detected, distances and ratios between them were computed to characterize facial fatness. A regression function was then used to represent the relationship between facial measures and BMI values to then calculate fBMI from each photo image. Simultaneously, BMI was physically measured (mBMI) by trained researchers, calculated as weight in kilograms divided by height in meters squared (adult BMI). Correlation analysis of fBMI to mBMI (n = 1210) showed significant correlation between fBMI and BMIs in normal and overweight categories (p < 0.0001). Further analysis indicated fBMI to be less accurate in underweight and obese participants. Matched pair data for each individual indicated that fBMI identified participant BMI an average of 0.4212 less than mBMI (p < 0.0007). Contingency table analysis found 109 participants in the ‘obese’ category of mBMI were positioned into a lower category for fBMI. Facial imagery is a viable measure for dissemination of human research; however, further testing to sensitize fBMI measures for underweight and obese individuals are necessary.http://www.mdpi.com/2227-7080/6/3/83Body Mass Index (BMI)facial imageBMI predictionyoung adults
collection DOAJ
language English
format Article
sources DOAJ
author Makenzie L. Barr
Guodong Guo
Sarah E. Colby
Melissa D. Olfert
spellingShingle Makenzie L. Barr
Guodong Guo
Sarah E. Colby
Melissa D. Olfert
Detecting Body Mass Index from a Facial Photograph in Lifestyle Intervention
Technologies
Body Mass Index (BMI)
facial image
BMI prediction
young adults
author_facet Makenzie L. Barr
Guodong Guo
Sarah E. Colby
Melissa D. Olfert
author_sort Makenzie L. Barr
title Detecting Body Mass Index from a Facial Photograph in Lifestyle Intervention
title_short Detecting Body Mass Index from a Facial Photograph in Lifestyle Intervention
title_full Detecting Body Mass Index from a Facial Photograph in Lifestyle Intervention
title_fullStr Detecting Body Mass Index from a Facial Photograph in Lifestyle Intervention
title_full_unstemmed Detecting Body Mass Index from a Facial Photograph in Lifestyle Intervention
title_sort detecting body mass index from a facial photograph in lifestyle intervention
publisher MDPI AG
series Technologies
issn 2227-7080
publishDate 2018-08-01
description This study aimed to identify whether a research participant’s body-mass index (BMI) can be correctly identified from their facial image (photograph) in order to improve data capturing in dissemination and implementation research. Facial BMI (fBMI) was measured using an algorithm formulated to identify points on each enrolled participant’s face from a photograph. Once facial landmarks were detected, distances and ratios between them were computed to characterize facial fatness. A regression function was then used to represent the relationship between facial measures and BMI values to then calculate fBMI from each photo image. Simultaneously, BMI was physically measured (mBMI) by trained researchers, calculated as weight in kilograms divided by height in meters squared (adult BMI). Correlation analysis of fBMI to mBMI (n = 1210) showed significant correlation between fBMI and BMIs in normal and overweight categories (p < 0.0001). Further analysis indicated fBMI to be less accurate in underweight and obese participants. Matched pair data for each individual indicated that fBMI identified participant BMI an average of 0.4212 less than mBMI (p < 0.0007). Contingency table analysis found 109 participants in the ‘obese’ category of mBMI were positioned into a lower category for fBMI. Facial imagery is a viable measure for dissemination of human research; however, further testing to sensitize fBMI measures for underweight and obese individuals are necessary.
topic Body Mass Index (BMI)
facial image
BMI prediction
young adults
url http://www.mdpi.com/2227-7080/6/3/83
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AT guodongguo detectingbodymassindexfromafacialphotographinlifestyleintervention
AT sarahecolby detectingbodymassindexfromafacialphotographinlifestyleintervention
AT melissadolfert detectingbodymassindexfromafacialphotographinlifestyleintervention
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