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An overview of reliable and representative DVCmeasurements for musculoskeletal tissues

An overview of reliable and representative DVCmeasurements for musculoskeletal tissues

Tozzi, Gianluca and Dall'Ara, Enrico (2025) An overview of reliable and representative DVCmeasurements for musculoskeletal tissues. Journal of Microscopy, 300 (1). pp. 3-17. ISSN 0022-2720 (Print), 1365-2818 (Online) (doi:10.1111/jmi.70008)

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Abstract

Musculoskeletal tissues present complex hierarchical structures and mechanical heterogeneity across multiple length scales, making them difficult to characterise accurately. Digital volume correlation (DVC) is a non-destructive imaging technique that enables quantification of internal 3D strain fields under realistic loading conditions, offering a unique tool to investigate the biomechanics of bio-logical tissues and biomaterials. This review highlights recent advancements inDVC, focusing on its applications across scales ranging from organ- to tissue-level mechanics in both mineralised and soft tissues. Instead of a traditional systematic review, we identify key technical challenges including the treatment of tissue interfaces, border effects, and the quantification of uncertainty in DVC outputs.Strategies for improving measurement accuracy and reliability are discussed. We also report on the increasing use of DVC in in vivo applications, its coupling with computational modelling to inform and validate biomechanical simulations, and its recent integration with data-driven methods such as deep learning to directly predict displacement and strain fields. Additionally, we examine its application in tissue engineering and implant–tissue interface assessment. By addressing such areas, we outline current limitations and emerging opportunities for future research. These include advancing precision, enabling clinical translation, and leveraging machine learning to create more robust, automated, and predictiveDVC workflows for musculoskeletal health and tissue engineering.

Item Type: Article
Uncontrolled Keywords: biomaterials, digital volume correlation, in situ mechanics, musculoskeletal tissues
Subjects: Q Science > Q Science (General)
R Medicine > R Medicine (General)
T Technology > T Technology (General)
Faculty / School / Research Centre / Research Group: Faculty of Engineering & Science
Faculty of Engineering & Science > School of Engineering (ENG)
Last Modified: 18 Nov 2025 11:25
URI: https://gala.gre.ac.uk/id/eprint/51672

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