Department of Neurology, University Medical Center of the Johannes Gutenberg University Mainz, Mainz, Germany.
Department of Neurology, University Hospital Würzburg, Würzburg, Germany.
Mov Disord. 2019 Oct;34(10):1537-1546. doi: 10.1002/mds.27808. Epub 2019 Aug 21.
Deep brain stimulation (DBS) is an effective evidence-based therapy for dystonia. However, no unequivocal predictors of therapy responses exist. We investigated whether patients optimally responding to DBS present distinct brain network organization and structural patterns.
From a German multicenter cohort of 82 dystonia patients with segmental and generalized dystonia who received DBS implantation in the globus pallidus internus, we classified patients based on the clinical response 3 years after DBS. Patients were assigned to the superior-outcome group or moderate-outcome group, depending on whether they had above or below 70% motor improvement, respectively. Fifty-one patients met MRI-quality and treatment response requirements (mean age, 51.3 ± 13.2 years; 25 female) and were included in further analysis. From preoperative MRI we assessed cortical thickness and structural covariance, which were then fed into network analysis using graph theory. We designed a support vector machine to classify subjects for the clinical response based on individual gray-matter fingerprints.
The moderate-outcome group showed cortical atrophy mainly in the sensorimotor and visuomotor areas and disturbed network topology in these regions. The structural integrity of the cortical mantle explained about 45% of the DBS stimulation amplitude for optimal response in individual subjects. Classification analyses achieved up to 88% of accuracy using individual gray-matter atrophy patterns to predict DBS outcomes.
The analysis of cortical integrity, informed by group-level network properties, could be developed into independent predictors to identify dystonia patients who benefit from DBS. © 2019 The Authors. Movement Disorders published by Wiley Periodicals, Inc. on behalf of International Parkinson and Movement Disorder Society.
深部脑刺激(DBS)是一种有效的、基于证据的治疗肌张力障碍的方法。然而,目前还没有明确的治疗反应预测指标。我们研究了是否对 DBS 反应最佳的患者具有不同的大脑网络组织和结构模式。
我们从德国一个多中心的 82 例节段性和全身性肌张力障碍患者的队列中,根据 DBS 植入后 3 年的临床反应对患者进行分类。根据患者的运动改善是否超过 70%,将患者分为优效组或中效组。51 例患者符合 MRI 质量和治疗反应要求(平均年龄 51.3±13.2 岁,25 例女性),并纳入进一步分析。我们从术前 MRI 评估皮质厚度和结构协方差,然后使用图论进行网络分析。我们设计了一个支持向量机,根据个体灰质指纹对临床反应进行分类。
中效组主要表现为感觉运动区和视运动区的皮质萎缩以及这些区域的网络拓扑紊乱。皮质外壳的结构完整性解释了个体患者中最佳反应 DBS 刺激幅度的约 45%。使用个体灰质萎缩模式进行分类分析,预测 DBS 结果的准确率高达 88%。
基于群组水平网络特性的皮质完整性分析可以开发为独立的预测指标,以识别受益于 DBS 的肌张力障碍患者。