Tumor infiltration of the recurrent laryngeal nerve (RLN) is a contraindication for robotic thyroidectomy and can be difficult to detect via standard laryngoscopy. Ultrasound (US) is a viable alternative for RLN detection due to its safety and ability to provide real-time feedback. However, the tininess of the RLN, with a diameter typically less than 3mm, poses significant challenges to the accurate localization of the RLN. In this work, we propose a knowledge-driven framework for RLN localization, mimicking the standard approach surgeons take to identify the RLN according to its surrounding organs. We construct a prior anatomical model based on the inherent relative spatial relationships between organs. Through Bayesian shape alignment (BSA), we obtain the candidate coordinates of the center of a region of interest (ROI) that encloses the RLN. The ROI allows a decreased field of view for determining the refined centroid of the RLN using a dual-path identification network, based on multi-scale semantic information. Experimental results indicate that the proposed method achieves superior hit rates and substantially smaller distance errors compared with state-of-the-art methods.
翻译:神经中枢神经(RLN)的经常性肿瘤渗透是机器人甲状腺切除神经(RLN)的对照,很难通过标准的长喉镜检测出来。超声波(US)由于其安全和能够提供实时反馈,是RLN检测的可行替代方法。然而,RLN的直径一般小于3毫米,其微小对RLN的准确定位构成重大挑战。在这项工作中,我们提议了RLN本地化知识驱动框架,模仿标准外科医生根据周围器官识别RLN。我们根据各器官之间固有的相对空间关系,建立了一个先前的解剖模型。我们通过BA(BSA)获得了连接RLN的利益区域中心(ROI)的候选坐标。ROI允许使用多尺度的静脉识别网络,在确定精细的RLN的中子时使用双向识别网络进行观察,减少视野。我们根据不同器官的周围的器官进行模拟结果显示,我们根据各器官之间的内在相对空间关系,在前方位构造上绘制了一种远距方法,从而大大打击了较高的距离率。