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Voxel classification of periprosthetic tissues in clinical computed tomography of loosened hip prostheses

机译:髋关节假体松动的临床计算机体层摄影术中假体周围组织的体素分类

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We present an automated algorithm which classifies periprosthetic tissues in CT scans of patients with loosened hip prostheses. To our knowledge this is the first application of CT voxel classification to periprosthetic tissues of the hip. We use several image features including multi-scale image intensity, multi-scale image gradient and distance metrics. Seven classifier types were trained using five manually segmented clinical CT datasets, and their classification performance compared to manual segmentations using a leave-one-out scheme. Using this technique we are able to correctly segment the majority of each of the six tissue categories, in spite of low bone densities, metal-induced CT imaging artefacts and inter-patient and inter-scan variation. Our automated classifier forms a pragmatic first step towards eventual automatic tissue segmentation.
机译:我们提出了一种自动算法,可以对髋关节假体松动患者的CT扫描中的假体周围组织进行分类。据我们所知,这是CT体素分类在髋关节假体周围组织中的首次应用。我们使用多种图像功能,包括多尺度图像强度,多尺度图像梯度和距离度量。使用五个手动分割的临床CT数据集训练了七种分类器类型,与使用留一法的手动分割相比,它们的分类性能更高。使用这种技术,尽管骨密度低,金属诱导的CT成像伪像以及患者间和扫描间变化,我们仍能够正确地分割六个组织类别中的大多数。我们的自动分类器为最终实现自动组织分割迈出了务实的第一步。

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