Ultrasound-guided nerve block anesthesia (UGNB) is a high-tech visual nerve block anesthesia method that can observe the target nerve and its surrounding structures, the puncture needle's advancement, and local anesthetics spread in real-time. The key in UGNB is nerve identification. With the help of deep learning methods, the automatic identification or segmentation of nerves can be realized, assisting doctors in completing nerve block anesthesia accurately and efficiently. Here, we establish a public dataset containing 320 ultrasound images of brachial plexus (BP). Three experienced doctors jointly produce the BP segmentation ground truth and label brachial plexus trunks. We design a brachial plexus segmentation system (BPSegSys) based on deep learning. BPSegSys achieves experienced-doctor-level nerve identification performance in various experiments. We evaluate BPSegSys' performance in terms of intersection-over-union (IoU), a commonly used performance measure for segmentation experiments. Considering three dataset groups in our established public dataset, the IoU of BPSegSys are 0.5238, 0.4715, and 0.5029, respectively, which exceed the IoU 0.5205, 0.4704, and 0.4979 of experienced doctors. In addition, we show that BPSegSys can help doctors identify brachial plexus trunks more accurately, with IoU improvement up to 27%, which has significant clinical application value.
翻译:UGNB是一种高科技的视觉神经神经片段,一种高科技的视觉神经片段,一种可以观测目标神经及其周围结构、刺刺针的推进和局部麻醉的麻醉方法。UGNB的关键是神经识别。在深层学习方法的帮助下,可以实现神经的自动识别或分解,帮助医生准确和有效地完成神经片段麻醉。在这里,我们建立了一个公共数据集,包含320个布拉奇阿尔·普吕普勒斯(BBP)的超声波图像。三个有经验的医生联合制作了BP分块地面真相和标签布基洛奇阿尔·布卢普勒斯中继器。我们设计了一个基于深层学习的布拉奇双向分解系统(BPSegSys ) 。BSegSys在各种实验中都取得了经验丰富的剂量级神经识别功能。我们评估了BPSegSys在精确的跨工会(IOU)方面的表现,这是用于分解实验的一种常用的性测试。考虑到我们既定的3个数据集组,我们基于0.5、ISBSBSBSMY4的0.4和0.4的明显BSU应用,这又显示了B0.5的0.5、BSU的0.5、Bex、BSU的0.4、BSU的0.4和0.4的0.4、BSBSBSB的0.4和0.4、BBSU的B的BBBB的B的明显的B。