Department of Surgery, Division of Neurosurgery, University of Montreal, Montreal, QC, Canada.
Int J Comput Assist Radiol Surg. 2023 Aug;18(8):1469-1478. doi: 10.1007/s11548-022-02824-8. Epub 2023 Jan 4.
There is no objective way to measure the amount of manipulation and retraction of neural tissue by the surgeon. Our goal is to develop metrics quantifying dynamic retraction and manipulation by instruments during neurosurgery.
We trained a convolutional neural network (CNN) to analyze microscopic footage of neurosurgical procedures and thereby generate metrics evaluating the surgeon's dynamic retraction of brain tissue and, using an object tracking process, evaluate the surgeon's manipulation of the instruments themselves. U-Net image segmentation is used to output bounding polygons around cerebral parenchyma of interest, as well as the vascular structures and cranial nerves. A channel and spatial reliability tracker framework is used in conjunction with our CNN to track desired surgical instruments.
Our network achieved a state-of-the-art intersection over union ([Formula: see text]) for biological tissue segmentation. Multivariate statistical analysis was used to evaluate dynamic retraction, tissue handling, and instrument manipulation.
Our model enables to evaluate dynamic retraction of soft tissue and manipulation of instruments during a surgical procedure, while accounting for movement of the operative microscope. This model can potentially provide the surgeon with objective feedback about the movement of instruments and its effect on brain tissue.
目前尚无客观方法来衡量外科医生对神经组织的操作和牵拉程度。我们的目标是开发量化神经外科手术中器械动态牵拉和操作的指标。
我们训练了一个卷积神经网络(CNN)来分析神经外科手术的微观视频片段,从而生成评估外科医生对脑组织动态牵拉的指标,并使用物体跟踪过程评估外科医生对器械本身的操作。U-Net 图像分割用于输出感兴趣的脑实质、血管结构和颅神经的边界多边形。我们的 CNN 结合使用通道和空间可靠性跟踪框架来跟踪所需的手术器械。
我们的网络在生物组织分割方面达到了最先进的交并比([Formula: see text])。多元统计分析用于评估动态牵拉、组织处理和器械操作。
我们的模型能够评估手术过程中软组织的动态牵拉和器械的操作,同时考虑到手术显微镜的运动。该模型可以为外科医生提供有关器械运动及其对脑组织影响的客观反馈。