Modeling the shape and composition of the human body using dual energy X-ray absorptiometry images.
John A ShepherdBennett K NgBo FanAnn V SchwartzPeggy CawthonSteven R CummingsStephen KritchevskyMichael NevittAdam SantanastoTimothy F CootesPublished in: PloS one (2017)
There is growing evidence that body shape and regional body composition are strong indicators of metabolic health. The purpose of this study was to develop statistical models that accurately describe holistic body shape, thickness, and leanness. We hypothesized that there are unique body shape features that are predictive of mortality beyond standard clinical measures. We developed algorithms to process whole-body dual-energy X-ray absorptiometry (DXA) scans into body thickness and leanness images. We performed statistical appearance modeling (SAM) and principal component analysis (PCA) to efficiently encode the variance of body shape, leanness, and thickness across sample of 400 older Americans from the Health ABC study. The sample included 200 cases and 200 controls based on 6-year mortality status, matched on sex, race and BMI. The final model contained 52 points outlining the torso, upper arms, thighs, and bony landmarks. Correlation analyses were performed on the PCA parameters to identify body shape features that vary across groups and with metabolic risk. Stepwise logistic regression was performed to identify sex and race, and predict mortality risk as a function of body shape parameters. These parameters are novel body composition features that uniquely identify body phenotypes of different groups and predict mortality risk. Three parameters from a SAM of body leanness and thickness accurately identified sex (training AUC = 0.99) and six accurately identified race (training AUC = 0.91) in the sample dataset. Three parameters from a SAM of only body thickness predicted mortality (training AUC = 0.66, validation AUC = 0.62). Further study is warranted to identify specific shape/composition features that predict other health outcomes.
Keyphrases
- body composition
- dual energy
- computed tomography
- optical coherence tomography
- bone mineral density
- healthcare
- public health
- cardiovascular events
- cardiovascular disease
- body mass index
- risk factors
- machine learning
- coronary artery disease
- social media
- mass spectrometry
- climate change
- postmenopausal women
- weight gain