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Towards Machine Learning Prediction of Deep Brain Stimulation (DBS) Intra-operative Efficacy Maps

机译:迈向深部脑刺激(DBS)术中功效图的机器学习预测

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摘要

Deep brain stimulation (DBS) has the potential to improve the quality of life of people with a variety of neurological diseases. A key challenge in DBS is in the placement of a stimulation electrode in the anatomical location that maximizes efficacy and minimizes side effects. Pre-operative localization of the optimal stimulation zone can reduce surgical times and morbidity. Current methods of producing efficacy probability maps follow an anatomical guidance on magnetic resonance imaging (MRI) to identify the areas with the highest efficacy in a population. In this work, we propose to revisit this problem as a classification problem, where each voxel in the MRI is a sample informed by the surrounding anatomy. We use a patch-based convolutional neural network to classify a stimulation coordinate as having a positive reduction in symptoms during surgery. We use a cohort of 187 patients with a total of 2,869 stimulation coordinates, upon which 3D patches were extracted and associated with an efficacy score. We compare our results with a registration-based method of surgical planning. We show an improvement in the classification of intraoperative stimulation coordinates as a positive response in reduction of symptoms with AUC of 0.670 compared to a baseline registration-based approach, which achieves an AUC of 0.627 (p < 0.01). Although additional validation is needed, the proposed classification framework and deep learning method appear well-suited for improving pre-surgical planning and personalize treatment strategies.
机译:深度脑刺激(DBS)可以改善患有多种神经系统疾病的人们的生活质量。 DBS中的关键挑战在于将刺激电极放置在解剖位置上,以最大程度地提高功效并最小化副作用。最佳刺激区的术前定位可以减少手术时间和发病率。当前的产生功效概率图的方法遵循磁共振成像(MRI)的解剖学指导,以识别人群中功效最高的区域。在这项工作中,我们建议将这个问题重新归类为分类问题,其中MRI中的每个体素都是周围解剖结构所告知的样本。我们使用基于补丁的卷积神经网络将刺激坐标分类为手术期间症状的正减轻。我们使用了187名患者,共2869个刺激坐标,提取了3D斑块并与功效评分相关联。我们将结果与基于注册的手术计划方法进行比较。我们显示,与基于基线注册的方法相比,术中刺激坐标的分类改善为阳性反应,减少的症状为AUC为0.670(AUC为0.627(p <0.01))。尽管需要进行额外的验证,但建议的分类框架和深度学习方法似乎非常适合于改进术前计划和个性化治疗策略。

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