MR-based quantitative measurement of human soft tissue internal strains for pressure ulcer prevention
Alessio Trebbi (TIMC-BIOM\'ECA), Ekaterina Mukhina (TIMC-BIOM\'ECA),, Pierre-Yves Rohan (IBHGC), Nathana\"el Connesson (TIMC-BIOM\'ECA), Mathieu, Bailet, Antoine Perrier (TIMC-BIOM\'ECA), Yohan Payan (TIMC-BIOM\'ECA)

TL;DR
This paper introduces an in vivo MRI-based method to measure internal soft tissue strains, aiding pressure ulcer prevention by improving FE model validation and understanding tissue deformation.
Contribution
It presents a novel 3D non-rigid registration technique to compute internal tissue strains from MRI images, advancing in vivo analysis for pressure ulcer risk assessment.
Findings
Method provides accurate strain maps in soft tissues.
Reproducibility confirmed across different cases.
Potential to improve FE model validation and tissue property estimation.
Abstract
Pressure ulcers are a severe disease affecting patients that are bedridden or in a wheelchair bound for long periods of time. These wounds can develop in the deep layers of the skin of specific parts of the body, mostly on heels or sacrum, making them hard to detect in their early stages. Strain levels have been identified as a direct danger indicator for triggering pressure ulcers. Prevention could be possible with the implementation of subject-specific Finite Element (FE) models. However, generation and validation of such FE models is a complex task, and the current implemented techniques offer only a partial solution of the entire problem considering only external displacements and pressures, or cadaveric samples. In this paper, we propose an in vivo solution based on the 3D non-rigid registration between two Magnetic Resonance (MR) images, one in an unloaded configuration and the…
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