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Determining Position and Fine Shape Detail in Radiological Anatomy

机译:在放射解剖学中确定位置和精细形状的细节

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In this paper a method is proposed that identifies bone positions and fine structure of bone contours in radiographs by combining active shape models (ASM) and active contours (snakes) resulting in high accuracy and stability. After a coarse estimate of the bone position has been determined by neural nets, an approximation of the contour is obtained by an active shape model. The accuracy of the landmarks and the contour in between is enhanced by applying an iterative active contour algorithm to a set of gray value profiles extracted orthogonally to the interpolation obtained by the ASM. The neural nets obtain knowledge about visual appearance as well as anatomical configuration during a training phase. The active shape model is trained with a set of training shapes, whereas the snake detects the contour with fewer constraints and decreases the influence of a priori knowledge in a controlled manner. This is of particular importance for the assessment of pathological changes of bones like erosive destructions caused by rheumatoid arthritis.
机译:本文提出了一种方法,该方法通过结合活动形状模型(ASM)和活动轮廓(蛇形)在放射线照片中识别骨骼位置和骨骼轮廓的精细结构,从而获得较高的准确性和稳定性。在通过神经网络确定骨骼位置的粗略估计之后,通过活动形状模型获得轮廓的近似值。通过将迭代活动轮廓算法应用于与ASM获得的插值正交提取的一组灰度值轮廓,可以提高界标和轮廓之间的精度。神经网络在训练阶段获得有关视觉外观和解剖结构的知识。用一组训练形状训练主动形状模型,而蛇则以较少的约束来检测轮廓,并以可控的方式减少先验知识的影响。这对于评估类风湿性关节炎引起的骨骼病理变化(例如侵蚀破坏)尤其重要。

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