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A hierarchical method based on active shape models and directed Hough transform for segmentation of noisy biomedical images; application in segmentation of pelvic X-ray images

机译:基于主动形状模型和定向霍夫变换的分层方法,用于噪声生物医学图像的分割;在骨盆X线图像分割中的应用

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BackgroundTraumatic pelvic injuries are often associated with severe, life-threatening hemorrhage, and immediate medical treatment is therefore vital. However, patient prognosis depends heavily on the type, location and severity of the bone fracture, and the complexity of the pelvic structure presents diagnostic challenges. Automated fracture detection from initial patient X-ray images can assist physicians in rapid diagnosis and treatment, and a first and crucial step of such a method is to segment key bone structures within the pelvis; these structures can then be analyzed for specific fracture characteristics. Active Shape Model has been applied for this task in other bone structures but requires manual initialization by the user. This paper describes a algorithm for automatic initialization and segmentation of key pelvic structures - the iliac crests, pelvic ring, left and right pubis and femurs - using a hierarchical approach that combines directed Hough transform and Active Shape Models.ResultsPerformance of the automated algorithm is compared with results obtained via manual initialization. An error measures is calculated based on the shapes detected with each method and the gold standard shapes. ANOVA results on these error measures show that the automated algorithm performs at least as well as the manual method. Visual inspection by two radiologists and one trauma surgeon also indicates generally accurate performance.ConclusionThe hierarchical algorithm described in this paper automatically detects and segments key structures from pelvic X-rays. Unlike various other x-ray segmentation methods, it does not require manual initialization or input. Moreover, it handles the inconsistencies between x-ray images in a clinical environment and performs successfully in the presence of fracture. This method and the segmentation results provide a valuable base for future work in fracture detection.
机译:背景技术骨盆外伤常伴有严重的危及生命的出血,因此立即就医至关重要。但是,患者的预后在很大程度上取决于骨折的类型,位置和严重程度,而骨盆结构的复杂性给诊断带来了挑战。从最初的患者X射线图像中自动检测骨折可以帮助医生快速诊断和治疗,这种方法的第一步也是至关重要的一步是分割骨盆内的关键骨结构。然后可以分析这些结构的特定断裂特性。活动形状模型已在其他骨骼结构中用于此任务,但需要用户手动初始化。本文介绍了一种结合有方向的霍夫变换和活动形状模型的分层方法,对关键骨盆结构-c,骨盆环,左右耻骨和股骨进行自动初始化和分割的算法。结果比较了自动算法的性能通过手动初始化获得的结果。根据每种方法检测到的形状和金标准形状计算误差度量。这些错误度量的方差分析结果表明,自动算法的性能至少与手动方法相同。两名放射科医生和一名外科医生的目视检查也显示出大致准确的性能。结论本文描述的分层算法可自动检测并分割骨盆X射线的关键结构。与其他各种X射线分割方法不同,它不需要手动初始化或输入。此外,它可以处理临床环境中X射线图像之间的不一致,并在存在骨折的情况下成功地执行操作。该方法和分割结果为今后的裂缝检测工作提供了有价值的基础。

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