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首页> 外文期刊>AJNR. American journal of neuroradiology >Automated optimization of subcortical cerebral MR imaging-atlas coregistration for improved postoperative electrode localization in deep brain stimulation.
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Automated optimization of subcortical cerebral MR imaging-atlas coregistration for improved postoperative electrode localization in deep brain stimulation.

机译:自动优化皮层下大脑MR成像-图谱共聚焦,以改善深部脑刺激中的术后电极定位。

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BACKGROUND AND PURPOSE: The efficacy of deep brain stimulation in treating movement disorders depends critically on electrode localization, which is conventionally described by using coordinates relative to the midcommissural point. This approach requires manual measurement and lacks spatial normalization of anatomic variances. Normalization is based on intersubject spatial alignment (coregistration) of corresponding brain structures by using different geometric transformations. Here, we have devised and evaluated a scheme for automated subcortical optimization of coregistration (ASOC), which maximizes patient-to-atlas normalization accuracy of postoperative structural MR imaging into the standard Montreal Neurologic Institute (MNI) space for the basal ganglia. MATERIALS AND METHODS: Postoperative T2-weighted MR imaging data from 39 patients with Parkinson disease and 32 patients with dystonia were globally normalized, representing the standard registration (control). The global transformations were regionally refined by 2 successive linear registration stages (RSs) (ASOC-1 and 2), focusing progressively on the basal ganglia with 2 anatomically selective brain masks, which specify the reference volume (weighted cost function). Accuracy of the RSs was quantified by spatial dispersion of 16 anatomic landmarks and their root-mean-square errors (RMSEs) with respect to predefined MNI-based reference points. The effects of CSF volume, age, and sex on RMSEs were calculated. RESULTS: Mean RMSEs differed significantly (P < .001) between the global control (4.2 +/- 2.0 mm), ASOC-1 (1.92 +/- 1.02 mm), and ASOC-2 (1.29 +/- 0.78 mm). CONCLUSIONS: The present method improves the registration accuracy of postoperative structural MR imaging data into MNI space within the basal ganglia, allowing automated normalization with increased precision at stereotactic targets, and enables lead-contact localization in MNI coordinates for quantitative group analysis.
机译:背景与目的:深部脑刺激治疗运动障碍的功效主要取决于电极定位,这通常是通过使用相对于连合点的坐标来描述的。这种方法需要手动测量,并且缺乏解剖变异的空间归一化。归一化是通过使用不同的几何变换,基于相应大脑结构的对象间空间对齐(核心定位)进行的。在这里,我们设计并评估了一种自动皮层下融合优化(ASOC)的方案,该方案可将术后结构MR成像到基底神经节的标准蒙特利尔神经学研究所(MNI)空间中的患者对图集的归一化准确性最大化。材料与方法:39例帕金森病患者和32例肌张力障碍患者术后T2加权MR影像数据已全面标准化,代表标准注册(对照)。全局转换通过2个连续的线性配准阶段(RSs)(ASOC-1和2)在区域上进行细化,并逐步集中在具有2个解剖学选择性脑罩的基底神经节上,这些脑罩指定了参考体积(加权成本函数)。相对于预定义的基于MNI的参考点,RS的准确性通过16个解剖标志的空间分布及其根均方差(RMSE)进行了量化。计算了脑脊液体积,年龄和性别对RMSE的影响。结果:总体对照(4.2 +/- 2.0 mm),ASOC-1(1.92 +/- 1.02 mm)和ASOC-2(1.29 +/- 0.78 mm)之间的均方根均方差显着不同(P <.001)。结论:本方法提高了术后结构MR成像数据到基底神经节内MNI空间的配准准确性,允许以立体定位目标进行高精度的自动归一化,并能够在MNI坐标中进行铅接触定位以进行定量组分析。

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