Bu Jinhui, Lei Yan, Wang Yari, Zhao Jiaqi, Huang Sen, Liang Jun, Wang Zhenfei, Xu Long, He Bo, Dong Minghui, Liu Guangpu, Niu Ru, Ma Chao, Liu Guangwang
Affiliated Xuzhou Clinical College of Xuzhou Medical University, Xuzhou, 221009 China.
School of Computer Science, China University of Mining and Technology, Xuzhou, 221116 China.
Indian J Orthop. 2024 Apr 10;58(5):587-597. doi: 10.1007/s43465-024-01134-2. eCollection 2024 May.
Lumbar disc herniation is a common degenerative lumbar disease with an increasing incidence. Percutaneous endoscopic lumbar discectomy can treat lumbar disc herniation safely and effectively with a minimally invasive procedure. However, the learning curve of this technology is steep, which means that initial learners are often not sufficiently proficient in endoscopic operations, which can easily lead to iatrogenic damage. At present, the application of computer deep learning technology to clinical diagnosis, treatment, and surgical navigation has achieved satisfactory results.
The objective of our team is to develop a multi-element identification system for the visual field of endoscopic spine surgery using deep learning algorithms and to evaluate the feasibility of this system.
We established an image database by collecting surgical videos of 48 patients diagnosed with lumbar disc herniation, which was labeled by two spinal surgeons. We selected 6000 images of the visual field of percutaneous endoscopic spine surgery (including various tissue structures and surgical instruments), divided into the training data, validation data, and test data according to 2:1:2. We developed convolutional neural network models based on instance segmentation-Solov2, CondInst, Mask R-CNN and Yolact, and set the four network model backbone as ResNet101 and ResNet50 respectively. Mean average precision (mAP) and frames per second (FPS) were used to measure the performance of each model for classification, localization and recognition in real time, and AP (average) is used to evaluate how easily an element is detected by neural networks based on computer deep learning.
Comprehensively comparing mAP and FSP of each model for bounding box test and segmentation task for the test set of images, we found that Solov2 (ResNet101) (mAP = 73.5%, FPS = 28.9), Mask R-CNN (ResNet101) (mAP = 72.8%, FPS = 28.5) models are the most stable, with higher precision and faster image processing speed. Combining the average precision of the elements in the bounding box test and segmentation tasks in each network, the AP(average) was highest for tool 3 (bbox-0.85, segm-0.89) and lowest for tool 5 (bbox-0.63, segm-0.72) in the instrumentation, whereas in the anatomical tissue elements, the fibrosus annulus (bbox-0.68, segm-0.69) and ligamentum flavum (bbox-0.65, segm-0.62) had higher AP(average),while extra-dural fat (bbox-0.42, segm-0.44) was lowest.
Our team has developed a multi-element identification system for the visual field of percutaneous endoscopic spine surgery adapted to the interlaminar and foraminal approaches, which can identify and track anatomical tissue (nerve, ligamentum flavum, nucleus pulposus, etc.) and surgical instruments (endoscopic forceps, an high-speed diamond burr, etc.), which can be used in the future as a virtual educational tool or applied to the intraoperative real-time assistance system for spinal endoscopic operation.
腰椎间盘突出症是一种常见的腰椎退行性疾病,发病率呈上升趋势。经皮内镜下腰椎间盘切除术能够通过微创手术安全有效地治疗腰椎间盘突出症。然而,这项技术的学习曲线较陡,这意味着初学者往往在内镜操作方面不够熟练,容易导致医源性损伤。目前,计算机深度学习技术在临床诊断、治疗及手术导航中的应用已取得了令人满意的成果。
我们团队的目标是利用深度学习算法开发一种用于脊柱内镜手术视野的多元素识别系统,并评估该系统的可行性。
我们通过收集48例被诊断为腰椎间盘突出症患者的手术视频建立了一个图像数据库,该数据库由两名脊柱外科医生进行标注。我们选取了6000张经皮内镜脊柱手术视野的图像(包括各种组织结构和手术器械),按照2:1:2的比例分为训练数据、验证数据和测试数据。我们基于实例分割的Solov2、CondInst、Mask R-CNN和Yolact开发了卷积神经网络模型,并分别将四个网络模型的主干设置为ResNet101和ResNet50。使用平均精度均值(mAP)和每秒帧数(FPS)实时测量每个模型在分类、定位和识别方面的性能,并用AP(平均值)评估基于计算机深度学习的神经网络检测元素的难易程度。
综合比较各模型在图像测试集的边界框测试和分割任务中的mAP和FSP,我们发现Solov2(ResNet101)(mAP = 73.5%,FPS = 28.9)、Mask R-CNN(ResNet101)(mAP = 72.8%,FPS = 28.5)模型最稳定,精度较高且图像处理速度更快。结合每个网络在边界框测试和分割任务中元素的平均精度,在器械方面,工具3的AP(平均值)最高(边界框 - 0.85,分割 - 0.89),工具5最低(边界框 - 0.63,分割 - 0.72);而在解剖组织元素中,纤维环(边界框 - 0.68,分割 - 0.69)和黄韧带(边界框 - 0.65,分割 - 0.62)的AP(平均值)较高,硬膜外脂肪(边界框 - 0.42,分割 - 0.44)最低。
我们团队开发了一种适用于椎板间和椎间孔入路的经皮内镜脊柱手术视野多元素识别系统,该系统能够识别和跟踪解剖组织(神经、黄韧带、髓核等)和手术器械(内镜钳、高速金刚石磨钻等),未来可作为虚拟教育工具使用,或应用于脊柱内镜手术的术中实时辅助系统。