Statistical Hand Shape Modeling from Clinical CT Scans Using Deep Learning and Implicit Skinning
Gokce Guven, Hasan Fehmi Ates, Deniz Karasahin, Kaan Erdogan

TL;DR
This paper introduces an AI-driven pipeline for accurate hand shape segmentation and statistical modeling from CT scans, aiding medical and ergonomic applications.
Contribution
It presents a novel reconstruction pipeline combining deep learning, implicit skinning, and non-rigid registration for detailed hand shape analysis.
Findings
Pix2Pix achieved Dice coefficient of 0.9856
Statistical models align with U.S. Army Anthropometric Survey data
Pipeline enables detailed biomechanical and ergonomic analysis
Abstract
Accurate segmentation and statistical shape modeling of hand anatomy have significant implications for medical diagnostics, ergonomics, and biomechanics. This study proposes an AI-assisted reconstruction pipeline for segmenting and analyzing hand anatomy from 1,271 elbow-to-hand (e2h-CT) computed tomography scans. A Pix2Pix-based conditional generative adversarial network is first employed to remove plaster cast and background artifacts from CT volumes. The cleaned scans are then processed in 3D Slicer to extract skin and bone masks, which are converted into closed-surface mesh models. Segmented bone meshes are used to construct skeletal representations, enabling implicit skinning to align all hand models into a standardized anatomical configuration. Subsequently, non-rigid registration is performed on the hand skin surfaces using the Geodesic Based Coherent Point Drift++ (GBCPD++)…
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