3D Shape-Based Body Composition Inference Model Using a Bayesian Network

被引:7
|
作者
Lu, Yao [1 ]
Hahn, James K. [1 ]
Zhang, Xiaoke [2 ]
机构
[1] George Washington Univ, Dept Comp Sci, Washington, DC 20052 USA
[2] George Washington Univ, Dept Stat, Washington, DC 20052 USA
基金
美国国家科学基金会; 美国国家卫生研究院;
关键词
Fats; Shape; Three-dimensional displays; Bayes methods; Magnetic resonance imaging; Mathematical model; Solid modeling; Body composition inference; Bayesian network; image data mining; supervised learning; medical imaging; CORONARY-HEART-DISEASE; VISCERAL ADIPOSITY; RISK-FACTORS; FAT; OBESITY; ASSOCIATION; CHILDREN; MASS; MEN;
D O I
10.1109/JBHI.2019.2903190
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Body composition can be assessed in many different ways. High-end medical equipment, such as Dual-energy X-ray Absorptiometry (DXA), Computed Tomography (CT), and Magnetic Resonance Imaging (MRI) offers high-fidelity pixel/voxel-level assessment, but is prohibitive in cost. In the case of DXA and CT, the approach exposes users to ionizing radiation. Whole-body air displacement plethysmography (BOD POD) can accurately estimate body density, but the assessment is limited to the whole-body fat percentage. Optical three-dimensional (3D) scan and reconstruction techniques, such as using depth cameras, have brought new opportunities for improving body composition assessment by intelligently analyzing body shape features. In this paper, we present a novel supervised inference model to predict pixel-level body composition and percentage of body fat using 3D geometry features and body density. First, we use body density to model a fat distribution base prediction. Then, we use a Bayesian network to infer the probability of the base prediction bias with 3D geometry features. Finally, we correct the bias using non-parametric regression. We use DXA assessment as the ground truth in model training and validation. We compare our method, in terms of pixel-level body composition assessment, with the current state-of-the-art prediction models. Our method outperforms those prediction models by 52.69 on average. We also compare our method, in terms of whole-body fat percentage assessment, with the medical-level equipment-BOD POD. Our method outperforms the BOD POD by 23.28.
引用
收藏
页码:205 / 213
页数:9
相关论文
共 50 条
  • [21] 3D shape-based face recognition using automatically registered facial surfaces
    Irfanoglu, MO
    Gökberk, B
    Akarun, L
    PROCEEDINGS OF THE 17TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION, VOL 4, 2004, : 183 - 186
  • [22] Shape-based Object Recognition in Videos Using 3D Synthetic Object Models
    Toshev, Alexander
    Makadia, Ameesh
    Daniilidis, Kostas
    CVPR: 2009 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, VOLS 1-4, 2009, : 288 - +
  • [23] Diffusion-on-Manifold Aggregation of Local Features for Shape-based 3D Model Retrieval
    Furuya, Takahiko
    Ohbuchi, Ryutarou
    ICMR'15: PROCEEDINGS OF THE 2015 ACM INTERNATIONAL CONFERENCE ON MULTIMEDIA RETRIEVAL, 2015, : 171 - 178
  • [24] SimRank similarity preserving projection for shape-based 3D model auto-annotation
    Tatsuma, Atsushi
    Aono, Masaki
    IEEJ TRANSACTIONS ON ELECTRICAL AND ELECTRONIC ENGINEERING, 2018, 13 (02) : 341 - 342
  • [25] Shape-Based Searches for 3D Models of Engineering Components: A Comparison
    D. V. Kondusov
    V. B. Kondusova
    Russian Engineering Research, 2024, 44 (12) : 1767 - 1770
  • [26] Shape-based Recognition of 3D Point Clouds in Urban Environments
    Golovinskiy, Aleksey
    Kim, Vladimir G.
    Funkhouser, Thomas
    2009 IEEE 12TH INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV), 2009, : 2154 - 2161
  • [27] 3D Body shape for regional and appendicular body composition estimation
    Zheng, Yijiang
    Long, Zhuoxin
    Zhang, Xiaoke
    Hahn, James K.
    MEDICAL IMAGING 2023, 2023, 12464
  • [28] Shape-based 3D vascular tree extraction for perforator flaps
    Wen, Q
    Gao, J
    Medical Imaging 2005: Image Processing, Pt 1-3, 2005, 5747 : 1855 - 1863
  • [29] 3D shape retrieval based on Laplace operator and joint Bayesian model
    Wang Zihao
    Lin Hongwei
    VISUAL INFORMATICS, 2020, 4 (03) : 69 - 76
  • [30] Shape-based interpolation for 3D vessel construction of perforator flaps
    Gao, J
    Wen, Q
    PROCEEDINGS OF THE FOURTH IASTED INTERNATIONAL CONFERENCE ON VISUALIZATION, IMAGING, AND IMAGE PROCESSING, 2004, : 955 - 959