Abstract

Dysplasia is a recognized risk factor for osteoarthritis (OA) of the hip, early diagnosis of dysplasia is important to provide opportunities for surgical interventions aimed at reducing the risk of hip OA. We have developed a pipeline for semi-automated classification of dysplasia using 3D surface models obtained from volumetric CT scans of patients' hips and a minimal set of four clinically annotated landmarks on the acetabular rim (the most proximal, distal, anterior and posterior aspects), combining the framework of the Gaussian process latent variable model with diffeomorphism to create a statistical shape model (SSM), which we termed the Gaussian process diffeomorphic SSM (GPDSSM). We used 192 CT scans, 100 for model training and 92 for testing. The GPDSSM effectively distinguishes dysplastic samples from controls while also highlighting regions of the underlying surface that show dysplastic variations. As well as improving classification accuracy compared to angle-based methods (AUC 96.2% vs 91.2%), the GPDSSM can save time for clinicians by removing the need to manually measure angles and interpreting 2D scans for possible markers of dysplasia.

Original languageEnglish
Article number015009
JournalMedical Engineering & Physics
Volume147
Issue number1
DOIs
Publication statusPublished - 9 Jan 2026

Funding

Engineering and Physical Sciences Research Council (UK).

FundersFunder number
EPSRCEP/W005565/1

    Keywords

    • classification
    • dysplasia
    • statistical shape modelling

    ASJC Scopus subject areas

    • Biophysics
    • Biomedical Engineering

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