Department of Radiology, Center for Magnetic Resonance Research, University of Minnesota, Minneapolis, Minnesota, USA.
Department of Neurology, University of Minnesota, Minneapolis, Minnesota, USA.
Hum Brain Mapp. 2021 Jun 15;42(9):2862-2879. doi: 10.1002/hbm.25409. Epub 2021 Mar 18.
Deep brain stimulation (DBS) surgery has been shown to dramatically improve the quality of life for patients with various motor dysfunctions, such as those afflicted with Parkinson's disease (PD), dystonia, and essential tremor (ET), by relieving motor symptoms associated with such pathologies. The success of DBS procedures is directly related to the proper placement of the electrodes, which requires the ability to accurately detect and identify relevant target structures within the subcortical basal ganglia region. In particular, accurate and reliable segmentation of the globus pallidus (GP) interna is of great interest for DBS surgery for PD and dystonia. In this study, we present a deep-learning based neural network, which we term GP-net, for the automatic segmentation of both the external and internal segments of the globus pallidus. High resolution 7 Tesla images from 101 subjects were used in this study; GP-net is trained on a cohort of 58 subjects, containing patients with movement disorders as well as healthy control subjects. GP-net performs 3D inference in a patient-specific manner, alleviating the need for atlas-based segmentation. GP-net was extensively validated, both quantitatively and qualitatively over 43 test subjects including patients with movement disorders and healthy control and is shown to consistently produce improved segmentation results compared with state-of-the-art atlas-based segmentations. We also demonstrate a postoperative lead location assessment with respect to a segmented globus pallidus obtained by GP-net.
深部脑刺激 (DBS) 手术已被证明可以通过缓解与这些病变相关的运动症状,极大地改善各种运动功能障碍患者的生活质量,例如帕金森病 (PD)、肌张力障碍和特发性震颤 (ET) 患者。DBS 手术的成功与电极的正确放置直接相关,这需要能够准确检测和识别皮质下基底神经节区域内的相关目标结构。特别是,PD 和肌张力障碍的 DBS 手术中,准确可靠地分割苍白球 (GP) 内部具有重要意义。在这项研究中,我们提出了一种基于深度学习的神经网络,称为 GP-net,用于自动分割苍白球的外部和内部段。这项研究使用了 101 名受试者的高分辨率 7T 图像;GP-net 在包含运动障碍患者和健康对照受试者的 58 名受试者队列上进行训练。GP-net 以患者特异性的方式进行 3D 推断,减轻了基于图谱的分割的需求。对 43 名包括运动障碍患者和健康对照在内的测试对象进行了广泛的定量和定性验证,结果表明 GP-net 与最先进的基于图谱的分割方法相比,始终能够产生更好的分割结果。我们还展示了基于 GP-net 获得的分割苍白球的术后导联位置评估。