Department of Neurosurgery, University of Colorado School of Medicine, 12800 E. 19th Ave., Mail Stop 8307, Aurora, CO, 80045, USA.
Department of Physiology and Biophysics, University of Colorado School of Medicine, 12800 E. 19th Ave., Mail Stop 8307, Aurora, CO, 80045, USA.
Sci Rep. 2022 Oct 27;12(1):18120. doi: 10.1038/s41598-022-21860-7.
The expanding application of deep brain stimulation (DBS) therapy both drives and is informed by our growing understanding of disease pathophysiology and innovations in neurosurgical care. Neurophysiological targeting, a mainstay for identifying optimal, motor responsive targets, has remained largely unchanged for decades. Utilizing deep learning-based computer vision and related computational methods, we developed an effective and simple intraoperative approach to objectively correlate neural signals with movements, automating and standardizing the otherwise manual and subjective process of identifying ideal DBS electrode placements. Kinematics are extracted from video recordings of intraoperative motor testing using a trained deep neural network and compared to multi-unit activity recorded from the subthalamic nucleus. Neuro-motor correlations were quantified using dynamic time warping with the strength of a given comparison measured by comparing against a null distribution composed of related neuro-motor correlations. This objective measure was then compared to clinical determinations as recorded in surgical case notes. In seven DBS cases for treatment of Parkinson's disease, 100 distinct motor testing epochs were extracted for which clear clinical determinations were made. Neuro-motor correlations derived by our automated system compared favorably with expert clinical decision making in post-hoc comparisons, although follow-up studies are necessary to determine if improved correlation detection leads to improved outcomes. By improving the classification of neuro-motor relationships, the automated system we have developed will enable clinicians to maximize the therapeutic impact of DBS while also providing avenues for improving continued care of treated patients.
深部脑刺激 (DBS) 疗法的应用不断扩大,这既推动了我们对疾病病理生理学的理解的发展,也为神经外科护理的创新提供了信息。神经生理学靶点一直是识别最佳运动反应靶点的主要方法,但几十年来基本没有变化。我们利用基于深度学习的计算机视觉和相关计算方法,开发了一种有效的、简单的术中方法,将神经信号与运动客观相关联,使识别理想的 DBS 电极位置的手动和主观过程自动化和标准化。使用经过训练的深度神经网络从术中运动测试的视频记录中提取运动学,并将其与从丘脑底核记录的多单位活动进行比较。使用动态时间规整来量化神经运动相关性,通过与由相关神经运动相关性组成的空分布进行比较来衡量给定比较的强度。然后,将此客观测量值与手术病例记录中记录的临床确定值进行比较。在 7 例治疗帕金森病的 DBS 病例中,提取了 100 个明确的运动测试时段,对此进行了明确的临床确定。在事后比较中,我们的自动系统得出的神经运动相关性与专家临床决策相比表现良好,尽管需要进一步的研究来确定改进的相关性检测是否会带来更好的结果。通过改善神经运动关系的分类,我们开发的自动系统将使临床医生能够最大程度地发挥 DBS 的治疗效果,同时为改善治疗患者的持续护理提供途径。