使用无监督嵌入的基于实时图像的神经外科指导和路线图生成

Gary Sarwin, A. Carretta, V. Staartjes, M. Zoli, D. Mazzatenta, L. Regli, C. Serra, E. Konukoglu
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摘要

先进的微创神经外科导航主要依靠磁共振成像(MRI)引导。然而,在大多数情况下,MRI指导仅提供术前信息。一旦手术开始,由于手术引起的解剖改变,这种指导的价值在一定程度上减弱。直接来自手术设备(如内窥镜)的实时图像反馈指导可以补充基于MRI的导航,或者在MRI指导不可行的情况下作为替代方案。基于这一动机,我们提出了一种利用大量带注释的神经外科视频数据集进行实时图像指导的方法。首先,我们报告了一种基于深度学习的目标检测方法YOLO在神经外科图像中检测解剖结构的性能。其次,我们提出了一种使用无监督嵌入生成神经外科路线图的方法,而无需假设患者之间的精确解剖匹配,存在广泛的解剖图谱,或者需要同时定位和绘图。生成的路线图编码了训练集中手术中常见的解剖路径。在推理中,路线图可以用来绘制外科医生当前的位置,使用路径上的实时图像反馈来提供指导,能够预测哪些结构应该向前或向后出现,就像地图应用程序一样。即使嵌入不受位置信息的监督,我们也表明它与大脑内部和手术路径上的位置相关。我们对166例经蝶窦腺瘤切除术的数据集进行了训练和评估。
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Live image-based neurosurgical guidance and roadmap generation using unsupervised embedding
Advanced minimally invasive neurosurgery navigation relies mainly on Magnetic Resonance Imaging (MRI) guidance. MRI guidance, however, only provides pre-operative information in the majority of the cases. Once the surgery begins, the value of this guidance diminishes to some extent because of the anatomical changes due to surgery. Guidance with live image feedback coming directly from the surgical device, e.g., endoscope, can complement MRI-based navigation or be an alternative if MRI guidance is not feasible. With this motivation, we present a method for live image-only guidance leveraging a large data set of annotated neurosurgical videos.First, we report the performance of a deep learning-based object detection method, YOLO, on detecting anatomical structures in neurosurgical images. Second, we present a method for generating neurosurgical roadmaps using unsupervised embedding without assuming exact anatomical matches between patients, presence of an extensive anatomical atlas, or the need for simultaneous localization and mapping. A generated roadmap encodes the common anatomical paths taken in surgeries in the training set. At inference, the roadmap can be used to map a surgeon's current location using live image feedback on the path to provide guidance by being able to predict which structures should appear going forward or backward, much like a mapping application. Even though the embedding is not supervised by position information, we show that it is correlated to the location inside the brain and on the surgical path. We trained and evaluated the proposed method with a data set of 166 transsphenoidal adenomectomy procedures.
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