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Automatic Detection and Segmentation of Kidneys in 3D CT Images Using Random Forests

机译:使用随机森林自动检测和分割3D CT图像中的肾脏

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Kidney segmentation in 3D CT images allows extracting useful information for nephrologists. For practical use in clinical routine, such an algorithm should be fast, automatic and robust to contrast-agent enhancement and fields of view. By combining and refining state-of-the-art techniques (random forests and template deformation), we demonstrate the possibility of building an algorithm that meets these requirements. Kidneys are localized with random forests following a coarse-to-fine strategy. Their initial positions detected with global contextual information are refined with a cascade of local regression forests. A classification forest is then used to obtain a probabilistic segmentation of both kidneys. The final segmentation is performed with an implicit template deformation algorithm driven by these kidney probability maps. Our method has been validated on a highly heterogeneous database of 233 CT scans from 89 patients. 80 % of the kidneys were accurately detected and segmented (Dice coefficient > 0.90) in a few seconds per volume.
机译:通过3D CT图像中的肾脏分割,可以为肾脏病医生提取有用的信息。为了在临床常规中实际使用,这种算法对于造影剂增强和视野应该是快速,自动和健壮的。通过组合和完善最新技术(随机森林和模板变形),我们证明了构建满足这些要求的算法的可能性。遵循从粗到精的策略,肾脏被随机森林所局限。通过全局上下文信息检测到的初始位置可通过级联的局部回归林进行细化。然后使用分类林来获得两个肾脏的概率分割。使用这些肾脏概率图驱动的隐式模板变形算法执行最终分割。我们的方法已在来自89位患者的233次CT扫描的高度异构数据库中得到验证。在每体积几秒钟内,准确地检测出80%的肾脏并将其分割(骰子系数> 0.90)。

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