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Predicting Anthropometric Body Composition Variables Using 3D Optical Imaging and Machine Learning

8 June 2025
Gyaneshwar Agrahari
Kiran Bist
Monika Pandey
Jacob Kapita
Zachary James
Jackson Knox
Steven Heymsfield
Sophia Ramirez
Peter Wolenski
Nadejda Drenska
ArXiv (abs)PDFHTML
Main:18 Pages
13 Figures
Bibliography:1 Pages
15 Tables
Appendix:7 Pages
Abstract

Accurate prediction of anthropometric body composition variables, such as Appendicular Lean Mass (ALM), Body Fat Percentage (BFP), and Bone Mineral Density (BMD), is essential for early diagnosis of several chronic diseases. Currently, researchers rely on Dual-Energy X-ray Absorptiometry (DXA) scans to measure these metrics; however, DXA scans are costly and time-consuming. This work proposes an alternative to DXA scans by applying statistical and machine learning models on biomarkers (height, volume, left calf circumference, etc) obtained from 3D optical images. The dataset consists of 847 patients and was sourced from Pennington Biomedical Research Center. Extracting patients' data in healthcare faces many technical challenges and legal restrictions. However, most supervised machine learning algorithms are inherently data-intensive, requiring a large amount of training data. To overcome these limitations, we implemented a semi-supervised model, the ppp-Laplacian regression model. This paper is the first to demonstrate the application of a ppp-Laplacian model for regression. Our ppp-Laplacian model yielded errors of ∼13%\sim13\%∼13% for ALM, ∼10%\sim10\%∼10% for BMD, and ∼20%\sim20\%∼20% for BFP when the training data accounted for 10 percent of all data. Among the supervised algorithms we implemented, Support Vector Regression (SVR) performed the best for ALM and BMD, yielding errors of ∼8%\sim 8\%∼8% for both, while Least Squares SVR performed the best for BFP with ∼11%\sim 11\%∼11% error when trained on 80 percent of the data. Our findings position the ppp-Laplacian model as a promising tool for healthcare applications, particularly in a data-constrained environment.

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@article{agrahari2025_2506.14815,
  title={ Predicting Anthropometric Body Composition Variables Using 3D Optical Imaging and Machine Learning },
  author={ Gyaneshwar Agrahari and Kiran Bist and Monika Pandey and Jacob Kapita and Zachary James and Jackson Knox and Steven Heymsfield and Sophia Ramirez and Peter Wolenski and Nadejda Drenska },
  journal={arXiv preprint arXiv:2506.14815},
  year={ 2025 }
}
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