A Classification Method of Normal and Overweight Females Based on Facial Features for Automated Medical Applications

Obesity and overweight have become serious public health problems worldwide. Obesity and abdominal obesity are associated with type 2 diabetes, cardiovascular diseases, and metabolic syndrome. In this paper, we first suggest a method of predicting normal and overweight females according to body mass index (BMI) based on facial features. A total of 688 subjects participated in this study. We obtained the area under the ROC curve (AUC) value of 0.861 and kappa value of 0.521 in Female: 21–40 (females aged 21–40 years) group, and AUC value of 0.76 and kappa value of 0.401 in Female: 41–60 (females aged 41–60 years) group. In two groups, we found many features showing statistical differences between normal and overweight subjects by using an independent two-sample t-test. We demonstrated that it is possible to predict BMI status using facial characteristics. Our results provide useful information for studies of obesity and facial characteristics, and may provide useful clues in the development of applications for alternative diagnosis of obesity in remote healthcare.

[1]  J. Levine,et al.  Relation between chubby cheeks and visceral fat. , 1998, The New England journal of medicine.

[2]  T. Douchi,et al.  The effect of menopause on regional and total body lean mass. , 1998, Maturitas.

[3]  Usama M. Fayyad,et al.  Multi-Interval Discretization of Continuous-Valued Attributes for Classification Learning , 1993, IJCAI.

[4]  Damien Jolley,et al.  Parental weight estimation of their child’s weight is more accurate than other weight estimation methods for determining children’s weight in an emergency department? , 2007, Emergency Medicine Journal.

[5]  M. Woodward,et al.  Body mass index and cardiovascular disease in the Asia-Pacific Region: an overview of 33 cohorts involving 310 000 participants. , 2004, International journal of epidemiology.

[6]  Young Seol Kim,et al.  Obesity, abdominal obesity, and clustering of cardiovascular risk factors in South Korea. , 2003, Asia Pacific journal of clinical nutrition.

[7]  Ian H. Witten,et al.  The WEKA data mining software: an update , 2009, SKDD.

[8]  T. R. Coe,et al.  The accuracy of visual estimation of weight and height in pre‐operative supine patients , 1999, Anaesthesia.

[9]  Toshifumi Hibi,et al.  Prediction of metabolic syndrome using artificial neural network system based on clinical data including insulin resistance index and serum adiponectin , 2011, Comput. Biol. Medicine.

[10]  D. Ala'aldeen,et al.  Mastic gum kills Helicobacter pylori. , 1998, The New England journal of medicine.

[11]  William L Hall,et al.  Errors in weight estimation in the emergency department: comparing performance by providers and patients. , 2004, The Journal of emergency medicine.

[12]  Chung-Lin Huang,et al.  Facial Expression Recognition Using Model-Based Feature Extraction and Action Parameters Classification , 1997, J. Vis. Commun. Image Represent..

[13]  R. Hauser,et al.  Predicting adult health and mortality from adolescent facial characteristics in yearbook photographs , 2009, Demography.

[14]  Anne-Maree Kelly,et al.  How accurate is weight estimation in the emergency department? , 2005, Emergency medicine Australasia : EMA.

[15]  C. Christiansen,et al.  Total and regional body-composition changes in early postmenopausal women: age-related or menopause-related? , 1994, The American journal of clinical nutrition.

[16]  Jun-Hyeong Do,et al.  Body Mass Index and Facial Cues in Sasang Typology for Young and Elderly Persons , 2011, Evidence-based complementary and alternative medicine : eCAM.

[17]  M. Woodward,et al.  The burden of cardiovascular disease associated with high body mass index in the Asia–Pacific region , 2011, Obesity reviews : an official journal of the International Association for the Study of Obesity.

[18]  M. Skrzypczak,et al.  Assessment of the body mass index and selected physiological parameters in pre- and post-menopausal women. , 2005, Homo : internationale Zeitschrift fur die vergleichende Forschung am Menschen.

[19]  Clare Lee,et al.  Further automating and refining the construction and recognition of facial composite images , 2009 .

[20]  Chris Power,et al.  Predicting cardiovascular disease risk factors in midadulthood from childhood body mass index: utility of different cutoffs for childhood body mass index. , 2011, The American journal of clinical nutrition.

[21]  J. Peters,et al.  Environmental contributions to the obesity epidemic. , 1998, Science.

[22]  Ioannis Pitas,et al.  A novel method for automatic face segmentation, facial feature extraction and tracking , 1998, Signal Process. Image Commun..

[23]  Philip Greenland,et al.  BMI and health-related quality of life in adults 65 years and older. , 2004, Obesity research.

[24]  Noureddine Doghmane,et al.  Face and Speech Based Multi-Modal Biometric Authentication , 2010 .

[25]  P. Hancock,et al.  The Influence of Holistic Interviewing on Hair Perception for the Production of Facial Composites , 2011 .

[26]  Narendra Ahuja,et al.  Detecting Faces in Images: A Survey , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[27]  H. Fonseca,et al.  Validity of BMI based on self‐reported weight and height in adolescents , 2009, Acta paediatrica.

[28]  Kuninori Shiwaku,et al.  The New BMI Criteria for Asians by the Regional Office for the Western Pacific Region of WHO are Suitable for Screening of Overweight to Prevent Metabolic Syndrome in Elder Japanese Workers , 2003, Journal of occupational health.

[29]  R. Hovorka,et al.  Risk calculation of type 2 diabetes. , 1994, Computer methods and programs in biomedicine.

[30]  C. Forsberg,et al.  Craniofacial development in obese adolescents. , 2005, European journal of orthodontics.

[31]  J. Després,et al.  Abdominal obesity and metabolic syndrome , 2006, Nature.

[32]  D. Allison,et al.  The search for human obesity genes. , 1998, Science.

[33]  Chin-Seng Chua,et al.  Facial feature detection and face recognition from 2D and 3D images , 2002, Pattern Recognit. Lett..

[34]  C. Nishida,et al.  Appropriate body-mass index for Asian populations and its implications for policy and intervention strategies , 2004, The Lancet.