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Smooth Extrapolation of Unknown Anatomy via Statistical Shape Models

机译:通过统计形状模型对未知解剖结构进行平滑外推

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Several methods to perform extrapolation of unknown anatomy were evaluated. The primary application is to enhance surgical procedures that may use partial medical images or medical images of incomplete anatomy. Le Fort-based, face-jaw-teeth transplant is one such procedure. From CT data of 36 skulls and 21 mandibles separate Statistical Shape Models of the anatomical surfaces were created. Using the Statistical Shape Models, incomplete surfaces were projected to obtain complete surface estimates. The surface estimates exhibit non-zero error in regions where the true surface is known; it is desirable to keep the true surface and seamlessly merge the estimated unknown surface. Existing extrapolation techniques produce non-smooth transitions from the true surface to the estimated surface, resulting in additional error and a less aesthetically pleasing result. The three extrapolation techniques evaluated were: copying and pasting of the surface estimate (non-smooth baseline), a feathering between the patient surface and surface estimate, and an estimate generated via a Thin Plate Spline trained from displacements between the surface estimate and corresponding vertices of the known patient surface. Feathering and Thin Plate Spline approaches both yielded smooth transitions. However, feathering corrupted known vertex values. Leave-one-out analyses were conducted, with 5% to 50% of known anatomy removed from the left-out patient and estimated via the proposed approaches. The Thin Plate Spline approach yielded smaller errors than the other two approaches, with an average vertex error improvement of 1.46 mm and 1.38 mm for the skull and mandible respectively, over the baseline approach.
机译:评价了执行未知解剖结构外推的几种方法。主要应用是增强可使用部分医学图像或解剖结构不完整的医学图像的外科手术程序。基于勒福特的面部下颌牙齿移植就是其中一种。根据36个头骨和21个下颌骨的CT数据,分别创建了解剖表面的统计形状模型。使用统计形状模型,对不完整的表面进行投影以获得完整的表面估计。在已知真实表面的区域中,表面估计显示出非零误差;希望保留真实表面并无缝地合并估计的未知表面。现有的外推技术会导致从真实表面到估计表面的非平滑过渡,从而导致额外的误差并在美学上不太令人满意。评估的三种外推技术为:复制和粘贴表面估计值(非平滑基线),患者表面和表面估计值之间的羽化以及通过薄板样条生成的估计值,该样条是根据表面估计值和相应顶点之间的位移训练的的已知患者表面。羽化和薄板样条曲线方法均可产生平滑过渡。但是,羽化会破坏已知的顶点值。进行留一法分析,从遗留病人中取出5%至50%的已知解剖结构,并通过提议的方法进行估算。薄板样条线方法产生的误差比其他两种方法小,与基线方法相比,颅骨和下颌骨的平均顶点误差分别提高了1.46毫米和1.38毫米。

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