Zhu Xueli, Zhang Shengmin, Hao Huaying, Zhao Yitian
Central Laboratory, Department of Ultrasound, Ningbo First Hospital, Ningbo, China.
Cixi Institute of Biomedical Engineering, Ningbo Institute of Materials Technology and Engineering, Chinese Academy of Sciences, Ningbo, China.
Front Cardiovasc Med. 2023 Mar 2;10:1153053. doi: 10.3389/fcvm.2023.1153053. eCollection 2023.
Left atrial appendage (LAA) is a leading cause of atrial fibrillation and thrombosis in cardiovascular disease. Clinicians can rely on LAA occlusion (LAAO) to effectively prevent and treat ischaemic strokes attributed to the LAA. The correct selection of the LAAO is one of the most critical stages in the successful surgical process, which relies on the quantification of the anatomical structure of the LAA for successful intervention in LAAO. In this paper, we propose an adversarial-based latent space alignment framework for LAA segmentation in transesophageal echocardiography (TEE) images by introducing prior knowledge from the label. The proposed method consists of an LAA segmentation network, a label reconstruction network, and a latent space alignment loss. To be specific, we first employ ConvNeXt as the backbone of the segmentation and reconstruction network to enhance the feature extraction capability of the encoder. The label reconstruction network then encodes the prior shape features from the LAA labels to the latent space. The latent space alignment loss consists of the adversarial-based alignment and the contrast learning losses. It can motivate the segmentation network to learn the prior shape features of the labels, thus improving the accuracy of LAA edge segmentation. The proposed method was evaluated on a TEE dataset including 1,783 images and the experimental results showed that the proposed method outperformed other state-of-the-art LAA segmentation methods with Dice coefficient, AUC, ACC, G-mean, and Kappa of 0.831, 0.917, 0.989, 0.911, and 0.825, respectively.
左心耳(LAA)是心血管疾病中房颤和血栓形成的主要原因。临床医生可以依靠左心耳封堵术(LAAO)来有效预防和治疗由左心耳引起的缺血性中风。正确选择左心耳封堵术是成功手术过程中最关键的阶段之一,这依赖于对左心耳解剖结构进行量化,以便成功实施左心耳封堵术。在本文中,我们通过引入来自标签的先验知识,提出了一种基于对抗的潜在空间对齐框架,用于经食管超声心动图(TEE)图像中的左心耳分割。所提出的方法由一个左心耳分割网络、一个标签重建网络和一个潜在空间对齐损失组成。具体而言,我们首先采用ConvNeXt作为分割和重建网络的主干,以增强编码器的特征提取能力。然后,标签重建网络将来自左心耳标签的先验形状特征编码到潜在空间中。潜在空间对齐损失由基于对抗的对齐损失和对比学习损失组成。它可以促使分割网络学习标签的先验形状特征,从而提高左心耳边缘分割的准确性。我们在一个包含1783幅图像的TEE数据集上对所提出的方法进行了评估,实验结果表明,所提出的方法在Dice系数、AUC、ACC、G-均值和Kappa分别为0.831、0.917、0.989、0.911和0.825的情况下,优于其他现有的左心耳分割方法。