Research Data Leeds Repository

Items where Author is "Day, Gavin A."

Up a level
Export as [feed] Atom [feed] RSS 1.0 [feed] RSS 2.0
Group by: Item Type | No Grouping
Jump to: Dataset
Number of items: 6.

Dataset

Day, Gavin A. and Jones, Alison and Mengoni, Marlène and Wilcox, Ruth (2023) Dataset for the Independent Experimental Calibration and Validation of Finite Element Models of Osteochondral Grafts in Tibiofemoral Joints. University of Leeds. [Dataset] https://doi.org/10.5518/1387

Cooper, Robert J. and Day, Gavin A. and Wijayathunga, Vithanage N. and Yao, Jiacheng and Mengoni, Marlène and Wilcox, Ruth and Jones, Alison (2023) Three subject-specific human tibiofemoral joint finite element models: complete three-dimensional imaging (CT & MR), experimental validation and modelling dataset. University of Leeds. [Dataset] https://doi.org/10.5518/981

Day, Gavin A. and Cooper, Robert J. and Jones, Alison and Mengoni, Marlène and Wilcox, Ruth (2022) Stability of Osteochondral Grafts within Porcine Femoral Condyles - experimental, imaging and computational data for preclinical assessment. University of Leeds. [Dataset] https://doi.org/10.5518/1209

Day, Gavin A. and Jones, Alison and Wilcox, Ruth (2021) Dataset asssociated with 'Using Statistical Shape and Appearance Modelling to characterise the 3D shape and material properties of human lumbar vertebrae: A proof of concept study. University of Leeds. [Dataset] https://doi.org/10.5518/874

Cooper, Robert J. and Liu, Aiqin and Day, Gavin A. and Wijayathunga, Vithanage N. and Jennings, Louise and Wilcox, Ruth and Jones, Alison (2020) Dataset associated with ‘Development of robust finite element models of porcine tibiofemoral joints loaded under varied flexion angles and tibial freedoms’. University of Leeds. [Dataset] https://doi.org/10.5518/783

Day, Gavin A. and Jones, Alison and Wilcox, Ruth (2019) Dataset associated with ‘Optimising Computational Methods of Modelling Vertebroplasty in Experimentally Augmented Human Lumbar Vertebrae’. University of Leeds. [Dataset] https://doi.org/10.5518/738

Research Data Leeds Repository is powered by EPrints
Copyright © University of Leeds