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Comparison of piece‐wise linear linear and nonlinear atlas‐to‐patient warping techniques: Analysis of the labeling of subcortical nuclei for functional neurosurgical applications

机译:分段线性线性和非线性图集-患者翘曲技术的比较:功能神经外科应用中皮层下核的标记分析

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摘要

Digital atlases are commonly used in pre‐operative planning in functional neurosurgical procedures performed to minimize the symptoms of Parkinson's disease. These atlases can be customized to fit an individual patient's anatomy through atlas‐to‐patient warping procedures. Once fitted to pre‐operative magnetic resonance imaging (MRI) data, the customized atlas can be used to plan and navigate surgical procedures. Linear, piece‐wise linear and nonlinear registration methods have been used to customize different digital atlases with varying accuracies. Our goal was to evaluate eight different registration methods for atlas‐to‐patient customization of a new digital atlas of the basal ganglia and thalamus to demonstrate the value of nonlinear registration for automated atlas‐based subcortical target identification in functional neurosurgery. In this work, we evaluate the accuracy of two automated linear techniques, two piece‐wise linear techniques (requiring the identification of manually placed anatomical landmarks), and four different automated nonlinear atlas‐to‐patient warping techniques (where two of the four nonlinear techniques are variants of the ANIMAL algorithm). Since a gold standard of the subcortical anatomy is not available, manual segmentations of the striatum, globus pallidus, and thalamus are used to derive a silver standard for evaluation. Four different metrics, including the kappa statistic, the mean distance between the surfaces, the maximum distance between surfaces, and the total structure volume are used to compare the warping techniques. The results show that nonlinear techniques perform statistically better than linear and piece‐wise linear techniques. In addition, the results demonstrate statistically significant differences between the nonlinear techniques, with the ANIMAL algorithm yielding better results. Hum Brain Mapp, 2009. © 2009 Wiley‐Liss, Inc.
机译:数字地图集通常在功能性神经外科手术的术前计划中使用,以尽量减少帕金森氏病的症状。这些图集可通过图集到患者的变形程序进行定制,以适合每个患者的解剖结构。一旦适合术前磁共振成像(MRI)数据,定制的地图集可用于计划和导航手术程序。线性,分段线性和非线性配准方法已用于定制具有不同精度的不同数字地图集。我们的目标是评估八种不同的配准方法,以对患者的基础神经节和丘脑新数字地图集进行图谱到患者定制,以证明非线性配准在功能性神经外科中基于自动图集的皮质下皮层靶标识别中的价值。在这项工作中,我们评估了两种自动化线性技术,两种分段线性技术(需要识别手动放置的解剖界标)和四种不同的自动化非线性Atlas-to-warp扭曲技术(其中四种非线性中的两种)的准确性技术是ANIMAL算法的变体)。由于尚无皮质下解剖结构的金标准,因此可使用纹状体,苍白球和丘脑的手动分割来获得用于评估的银标准。包括kappa统计量,表面之间的平均距离,表面之间的最大距离以及总结构体积在内的四个不同度量用于比较翘曲技术。结果表明,非线性技术在统计上优于线性和分段线性技术。此外,结果证明了非线性技术之间的统计显着差异,其中ANIMAL算法产生了更好的结果。嗡嗡的脑图,2009年。©2009 Wiley-Liss,Inc.

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