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Classification of Osteoporotic Vertebral Fractures Using Shape and Appearance Modelling

机译:形状和外观建模骨质疏松椎体骨折分类

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Osteoporotic vertebral fractures (VFs) are under-diagnosed, creating an opportunity for computer-aided, opportunistic fracture identification in clinical images. VF diagnosis and grading in clinical practice involves comparisons of vertebral body heights. However, machine vision systems can provide a high-resolution segmentation of the vertebrae and fully characterise their shape and appearance, potentially allowing improved diagnostic accuracy. We compare approaches based on vertebral heights to shape/appearance modelling combined with k-nearest neighbours and random forest (RF) classifiers, on both dual-energy X-ray absorptiometry images and computed tomography image volumes. We demonstrate that the combination of RF classifiers and appearance modelling, which is novel in this application, results in a significant (up to 60% reduction in false positive rate at 80% sensitivity) improvement in diagnostic accuracy.
机译:骨质疏松症椎骨骨折(VFS)被诊断出来,为临床图像中的计算机辅助,机会骨折鉴定产生了机会。临床实践中的VF诊断和分级涉及椎体高度的比较。然而,机器视觉系统可以提供椎骨的高分辨率分割,并且完全表征其形状和外观,可能允许改善的诊断精度。我们在双能X射线吸收图像和计算机断层摄影图像体积上,基于椎体高度与椎体高度的椎体高度和随机森林(RF)分类器相结合。我们证明RF分类器和外观建模的组合在本申请中是新颖的,导致诊断准确性提高了显着的(在80%的灵敏度下降低了误阳性率降低60%)。

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