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Wavelet Appearance Pyramids for Landmark Detection and Pathology Classification: Application to Lumbar Spinal Stenosis

机译:小波外观金字塔的标志性检测和病理学分类:在腰椎管狭窄症中的应用。

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Appearance representation and feature extraction of anatomy or anatomical features is a key step for segmentation and classification tasks. We focus on an advanced appearance model in which an object is decomposed into pyramidal complementary channels, and each channel is represented by a part-based model. We apply it to landmark detection and pathology classification on the problem of lumbar spinal stenosis. The performance is evaluated on 200 routine clinical data with varied pathologies. Experimental results show an improvement on both tasks in comparison with other appearance models. We achieve a robust landmark detection performance with average point to boundary distances lower than 2 pixels, and image-level anatomical classification with accuracies around 85%.
机译:解剖或解剖特征的外观表示和特征提取是分割和分类任务的关键步骤。我们专注于高级外观模型,在该模型中,对象被分解为金字塔形互补通道,并且每个通道都由基于零件的模型表示。我们将其应用于腰椎管狭窄症的标志性检测和病理学分类。根据具有不同病理学的200例常规临床数据对性能进行评估。实验结果表明,与其他外观模型相比,这两项任务都有改进。我们实现了强大的界标检测性能,平均点到边界的距离小于2个像素,并且图像级解剖分类的准确度约为85%。

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