迈向子宫内导航辅助:用于胎儿镜分割和姿态估计的多任务神经网络

M. Ahmad, M. Ourak, Tom Kamiel Magda Vercauteren, J. Deprest, E. V. Poorten
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引用次数: 0

摘要

胎儿镜激光凝血(FLC)是治疗双胎输血综合征(TTTS)最普遍的治疗方法。在这种微创技术中,一个刚性或柔性的胎儿镜通过一个小切口插入子宫腔。该程序包括测量胎盘表面,识别吻合血管和凝血。本文提出了一种多任务神经网络模型,用于从胎儿镜图像中分割血管,并估计胎盘表面的相对方向和距离,以辅助外科医生。这项工作还提出了一种使用虚拟现实(VR)生成用于训练和测试的数据集的方法。一个硅基胎盘幻影以一个29 × 29厘米的平面形式创建,具有真实的血管系统。这个幻影的扫描图像被人工分割为地面真实。将胎盘的彩色图像和分割后的地面真实图像都放置在VR模拟器中。虚拟摄像机通过预定义的摄像机运动来移动,然后在不需要手动分割的情况下呈现胎儿镜胎盘图像及其相应的分割地面真相。该网络在分割任务上的骰子系数为0.8,在回归任务上的准确率为87%。该网络识别血管的能力也通过柔性胎儿镜尖端芯片摄像头的实际图像进行了评估。
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Towards in-utero Navigational Assistance: A Multi Task Neural Network for Segmentation and Pose Estimation in Fetoscopy
Fetoscopic laser coagulation (FLC) is the most prevalent therapy for treating twin-to-twin transfusion syndrome (TTTS). A rigid or flexible fetoscope is inserted into the uterine cavity through a small incision in this minimally invasive technique. The procedure consists of surveying the placental surface, identifying anastomosing vessels, and coagulation. This paper presents a multi-task neural network model to segment the vasculature from the fetoscopic images and estimate the relative orientation and distance of the placental surface to assist the surgeons. This work also presents a method to use virtual reality (VR) to generate datasets for training and testing. A silicon-based placenta phantom was created in a planar form of 29 × 29 cm with realistic vasculature. A scanned image of this phantom was manually segmented as the ground truth. Both the color image of the placenta and segmented ground truth were placed in the VR simulator. The virtual camera is moved by pre-defined camera motions, which then renders fetoscopic placenta images and their corresponding segmented ground truth without the need for manual segmentation. The network achieved a dice coefficient of 0.8 on the segmentation task and 87% accuracy on the regression task. The network's capacity to identify vessels was also evaluated using actual images from a flexible fetoscope's chip-on-tip camera.
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