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Three-dimensional Reconstruction of Peripheral Nerve Internal Fascicular Groups

机译:周围神经内束群的三维重建

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Peripheral nerves are important pathways for receiving afferent sensory impulses and sending out efferent motor instructions, as carried out by sensory nerve fibers and motor nerve fibers. It has remained a great challenge to functionally reconnect nerve internal fiber bundles (or fascicles) in nerve repair. One possible solution may be to establish a 3D nerve fascicle visualization system. This study described the key technology of 3D peripheral nerve fascicle reconstruction. Firstly, fixed nerve segments were embedded with position lines, cryostat-sectioned continuously, stained and imaged histologically. Position line cross-sections were identified using a trained support vector machine method, and the coordinates of their central pixels were obtained. Then, nerve section images were registered using the bilinear method, and edges of fascicles were extracted using an improved gradient vector flow snake method. Subsequently, fascicle types were identified automatically using the multi-directional gradient and second-order gradient method. Finally, a 3D virtual model of internal fascicles was obtained after section images were processed. This technique was successfully applied for 3D reconstruction for the median nerve of the hand-wrist and cubital fossa regions and the gastrocnemius nerve. This nerve internal fascicle 3D reconstruction technology would be helpful for aiding peripheral nerve repair and virtual surgery.
机译:周围神经是接收传入感觉冲动和发出传出运动指令的重要途径,如感觉神经纤维和运动神经纤维所执行的。在神经修复中,功能上重新连接神经内部纤维束(或束)仍然是一项巨大的挑战。一种可能的解决方案可能是建立3D神经束可视化系统。这项研究描述了3D周围神经束重建的关键技术。首先,将固定的神经节段嵌入位置线,连续进行低温恒温切片,染色并进行组织学成像。使用训练的支持向量机方法确定位置线的横截面,并获得其中心像素的坐标。然后,使用双线性方法配准神经切片图像,并使用改进的梯度矢量流蛇法提取束的边缘。随后,使用多方向梯度和二阶梯度方法自动识别束类型。最后,在处理截面图像后,获得了内部束的3D虚拟模型。该技术已成功应用于手腕和肘窝区域的正中神经和腓肠神经的3D重建。这种神经内束3D重建技术将有助于辅助周围神经修复和虚拟手术。

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