Title of article
Quantitative vertebral morphometry using neighbor-conditional shape models
Author/Authors
Marleen de Bruijne، نويسنده , , Michael T. Lund، نويسنده , , L?szl? B. Tank?، نويسنده , , Paola C. Pettersen، نويسنده , , Mads Nielsen، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
10
From page
503
To page
512
Abstract
A novel method for vertebral fracture quantification from X-ray images is presented. Using pairwise conditional shape models trained on a set of healthy spines, the most likely normal vertebra shapes are estimated conditional on the shapes of all other vertebrae in the image. The difference between the true shape and the reconstructed normal shape is subsequently used as a measure of abnormality. In contrast with the current (semi-)quantitative grading strategies this method takes the full shape into account, it develops a patient-specific reference by combining population-based information on biological variation in vertebral shape and vertebra interrelations, and it provides a continuous measure of deformity.
The method is demonstrated on 282 lateral spine radiographs with in total 93 fractures. Vertebral fracture detection is shown to be in good agreement with semi-quantitative scoring by experienced radiologists and is superior to the performance of shape models alone.
Keywords
Shape regression , Vertebral fracture , osteoporosis , Conditional shape model , shape analysis
Journal title
Medical Image Analysis
Serial Year
2007
Journal title
Medical Image Analysis
Record number
449998
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