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Volume 27, Issue 10, Pages 1430-1439 (December 2009)


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Measurement of bone cyst fluid volume using k-means clustering

Pierre-Louis DocquieraCorresponding Author Informationemail address, Laurent Paula, Renaud Mentenb, Olivier Cartiauxc, Bernard Francqd, Xavier Bansea

Received 4 December 2008; received in revised form 14 March 2009; accepted 10 May 2009. published online 25 June 2009.

Abstract 

We designed a semiautomatic segmentation method to easily measure the volume of a bone cyst (simple or aneurysmal) from magnetic resonance imaging (MRI). This method only considers the fluid part of the cyst, even when there are several fluid intensities (fluid-fluid levels) or the cyst is multi-loculated. The nonhomogeneity phenomenon inherent in MRI was handled by a k-means clustering algorithm that classified all of the voxels corresponding to the cyst fluid as the same voxel intensity. Level-set segmentation was expanded into the whole cyst volume and the resulting segmented volume provided the measured cyst volume. The semiautomatic method was compared with the usual manual method (manual contour tracing) in terms of its ability to measure a known volume of water (gold standard) as well as the volume of 29 bone cysts. Both methods were equivalent with regards to the gold standard, but the semiautomatic method was more accurate. In terms of the experimental measurements, the semiautomatic method was more repeatable and reproducible, and less time-consuming and fastidious than the manual method. Our semiautomatic method uses only freeware and can be used routinely whenever measurement of a bone cyst volume is needed.

a Department of Orthopaedic Surgery, Research Laboratory, Saint-Luc University Hospital, 10, Avenue Hippocrate, 1200 Brussels, Belgium

b Department of Pediatric Radiology, Saint-Luc University Hospital, 10, Avenue Hippocrate, 1200 Belgique, Belgium

c Centre for Research in Mechatronics, Catholic University of Louvain, Place du Levant, 2, 1348 Louvain-la-Neuve, Belgium

d Institute of Statistics, Catholic University of Louvain, 20, Voie du Roman-Pays, 1348 Louvain-la-Neuve, Belgium

Corresponding Author InformationCorresponding author.

PII: S0730-725X(09)00128-3

doi:10.1016/j.mri.2009.05.017


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