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Automatic Segmentation and Identification of Spinous Processes on Sagittal X-Rays Based on Random Forest Classification and Dedicated Contextual Features

机译:基于随机森林分类和专用上下文特征的矢状X射线棘突自动分割和识别

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X-ray based quantitative analysis of spine parameters is required in routine diagnosis or treatment planning. Existing tools commonly require manual intervention. Attempts towards automation of the whole procedure have mainly focused on vertebral bodies, whereas other regions such as the posterior arch also bear considerable amount of useful information. In this study, we combine a specific design of contextual visual features with a multi-class Random Forest classifier to perform pixel-wise segmentation and identification of all cervical spine spinous processes, on sagittal radiographs. Segmentations were evaluated on 62 radiographs, comparing to manual tracing. Correct identification was obtained for all subjects, and segmentation returned mean ± SD values of: Dice coefficient=88 ± 8%; Hausdorff distance =2.1 ± 1.4 mm and; mean surface distance =0.6 ± 0.4 mm. The derived geometric parameters can be used to reduce the amount of manual intervention needed for spine modeling or to measure clinical indices.
机译:在常规诊断或治疗计划中,需要基于X射线的脊柱参数定量分析。现有工具通常需要手动干预。整个过程自动化的尝试主要集中在椎体上,而其他区域(例如后牙弓)也具有大量有用的信息。在这项研究中,我们将上下文视觉特征的特定设计与多类随机森林分类器结合在一起,以在矢状X线片上执行所有颈椎棘突的像素级分割和识别。与手动追踪相比,在62张X射线照片上评估了分割。对所有受试者均获得正确的识别,并且分割返回平均值±SD值:骰子系数= 88±8%; Hausdorff距离= 2.1±1.4毫米;平均表面距离= 0.6±0.4毫米。导出的几何参数可用于减少脊柱建模所需的人工干预或测量临床指标。

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