AN AUTOMATED METHOD TO ESTIMATE FEMORAL SHAPE AND MINERAL MASS

Danilo P. Pau, Daniele Masala, Xinfeng Bao, Alberto Gnemmi, Rachel C. Entwistle, and Dan Dragomir-Daescu

Keywords

Image based meshing, deformable models, femur shape QCT, mineralmass, finite element analysis, osteoporosis

Abstract

Medical assessment of bone health often uses quantitative computed tomography (QCT) scans and requires a reliable segmentation of bone geometry from surrounding tissues for a quick determination of bone mineral mass. Because of its shape and position in the body, the femur is one of the most challenging bones to investigate. In the current study, we developed a new automated way to accurately evaluate both the shape and the mineral mass of cadaveric femur. The results were achieved through a series of steps including the segmentation of bone tissue from sets of QCT images, the estimation of the bone’s outer surface, the calculation of the volume enclosed, and finally the evaluation of bone mineral mass in a user-defined region. We compared our algorithms outputs to results obtained by expert manual segmentation and those obtained using other published methods.

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