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Automatic modelling of human musculoskeletal ligaments - Framework overview and model quality evaluation

Hamze, Noura; Nocker, Lukas; Rauch, Nikolaus; Walzthöni, Markus; Carrillo, Fabio; Fürnstahl, Philipp; Harders, Matthias (2022). Automatic modelling of human musculoskeletal ligaments - Framework overview and model quality evaluation. Technology and Health Care, 30(1):65-78.

Abstract

BACKGROUND

Accurate segmentation of connective soft tissues in medical images is very challenging, hampering the generation of geometric models for bio-mechanical computations. Alternatively, one could predict ligament insertion sites and then approximate the shapes, based on anatomical knowledge and morphological studies.

OBJECTIVE

In this work, we describe an integrated framework for automatic modelling of human musculoskeletal ligaments.

METHOD

We combine statistical shape modelling with geometric algorithms to automatically identify insertion sites, based on which geometric surface/volume meshes are created. As clinical use case, the framework has been applied to generate models of the forearm interosseous membrane. Ligament insertion sites in the statistical model were defined according to anatomical predictions following a published approach.

RESULTS

For evaluation we compared the generated sites, as well as the ligament shapes, to data obtained from a cadaveric study, involving five forearms with 15 ligaments. Our framework permitted the creation of models approximating ligaments' shapes with good fidelity. However, we found that the statistical model trained with the state-of-the-art prediction of the insertion sites was not always reliable. Average mean square errors as well as Hausdorff distances of the meshes could increase by an order of magnitude, as compared to employing known insertion locations of the cadaveric study. Using those, an average mean square error of 0.59 mm and an average Hausdorff distance of less than 7 mm resulted, for all ligaments.

CONCLUSIONS

The presented approach for automatic generation of ligament shapes from insertion points appears to be feasible but the detection of the insertion sites with a SSM is too inaccurate, thus making a patient-specific approach necessary.

Additional indexing

Item Type:Journal Article, refereed, original work
Communities & Collections:04 Faculty of Medicine > Balgrist University Hospital, Swiss Spinal Cord Injury Center
Dewey Decimal Classification:610 Medicine & health
Scopus Subject Areas:Life Sciences > Biophysics
Physical Sciences > Bioengineering
Physical Sciences > Information Systems
Physical Sciences > Biomaterials
Physical Sciences > Biomedical Engineering
Health Sciences > Health Informatics
Language:English
Date:19 May 2022
Deposited On:21 Jan 2022 08:39
Last Modified:26 Mar 2025 02:35
Publisher:I O S Press
ISSN:0928-7329
OA Status:Closed
Publisher DOI:https://doi.org/10.3233/THC-202550
PubMed ID:34057108
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