The establishment of static digital humans and the integration with spinal models
Fujiao Ju, Yuxuan Wang, Shuo Wang, Chengyin Wang, Yinbo Chen, Jianfeng, Li, Mingjie Dong, Bin Fang, Qianyu Zhuang

TL;DR
This paper develops a method to create accurate static digital human models with integrated spines, validated against real patient data, to support dynamic modeling for scoliosis diagnosis.
Contribution
It introduces a novel approach to construct personalized static digital human models with integrated spine structures from multi-view images and CT data.
Findings
Model error within 1 degree of actual Cobb angles
Validated on six AIS patients with high accuracy
Provides a foundation for dynamic digital human modeling
Abstract
Adolescent idiopathic scoliosis (AIS), a prevalent spinal deformity, significantly affects individuals' health and quality of life. Conventional imaging techniques, such as X - rays, computed tomography (CT), and magnetic resonance imaging (MRI), offer static views of the spine. However, they are restricted in capturing the dynamic changes of the spine and its interactions with overall body motion. Therefore, developing new techniques to address these limitations has become extremely important. Dynamic digital human modeling represents a major breakthrough in digital medicine. It enables a three - dimensional (3D) view of the spine as it changes during daily activities, assisting clinicians in detecting deformities that might be missed in static imaging. Although dynamic modeling holds great potential, constructing an accurate static digital human model is a crucial initial step for…
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Taxonomy
TopicsScoliosis diagnosis and treatment · Human Motion and Animation · Medical Imaging and Analysis
MethodsALIGN · Focus
