Wang Qiang, He Bingxi, Yu Jie, Zhang Bowen, Yang Jingchao, Liu Jin, Ma Xinwei, Wei Shijing, Li Shuai, Zheng Hui, Tang Zhenchao
Department of Anesthesiology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, No. 17, Panjiayuan Nanli, Chaoyang District, Beijing, 100021, China.
Beijing Advanced Innovation Center for Big Data-Based Precision Medicine, School of Engineering Medicine, Beihang University, Beijing, China.
J Imaging Inform Med. 2025 Jun;38(3):1362-1373. doi: 10.1007/s10278-024-01267-8. Epub 2024 Sep 25.
Ultrasound-guided quadratus lumborum block (QLB) technology has become a widely used perioperative analgesia method during abdominal and pelvic surgeries. Due to the anatomical complexity and individual variability of the quadratus lumborum muscle (QLM) on ultrasound images, nerve blocks heavily rely on anesthesiologist experience. Therefore, using artificial intelligence (AI) to identify different tissue regions in ultrasound images is crucial. In our study, we retrospectively collected 112 patients (3162 images) and developed a deep learning model named Q-VUM, which is a U-shaped network based on the Visual Geometry Group 16 (VGG16) network. Q-VUM precisely segments various tissues, including the QLM, the external oblique muscle, the internal oblique muscle, the transversus abdominis muscle (collectively referred to as the EIT), and the bones. Furthermore, we evaluated Q-VUM. Our model demonstrated robust performance, achieving mean intersection over union (mIoU), mean pixel accuracy, dice coefficient, and accuracy values of 0.734, 0.829, 0.841, and 0.944, respectively. The IoU, recall, precision, and dice coefficient achieved for the QLM were 0.711, 0.813, 0.850, and 0.831, respectively. Additionally, the Q-VUM predictions showed that 85% of the pixels in the blocked area fell within the actual blocked area. Finally, our model exhibited stronger segmentation performance than did the common deep learning segmentation networks (0.734 vs. 0.720 and 0.720, respectively). In summary, we proposed a model named Q-VUM that can accurately identify the anatomical structure of the quadratus lumborum in real time. This model aids anesthesiologists in precisely locating the nerve block site, thereby reducing potential complications and enhancing the effectiveness of nerve block procedures.
超声引导下腰方肌阻滞(QLB)技术已成为腹部和盆腔手术中广泛应用的围手术期镇痛方法。由于超声图像上腰方肌(QLM)的解剖结构复杂且个体差异较大,神经阻滞严重依赖麻醉医生的经验。因此,利用人工智能(AI)识别超声图像中的不同组织区域至关重要。在我们的研究中,我们回顾性收集了112例患者(3162幅图像),并开发了一种名为Q-VUM的深度学习模型,这是一种基于视觉几何组16(VGG16)网络的U型网络。Q-VUM能够精确分割各种组织,包括腰方肌、腹外斜肌、腹内斜肌、腹横肌(统称为EIT)和骨骼。此外,我们对Q-VUM进行了评估。我们的模型表现出强大的性能,平均交并比(mIoU)、平均像素准确率、骰子系数和准确率分别达到0.734、0.829、0.841和0.944。腰方肌的交并比、召回率、精确率和骰子系数分别为0.711、0.813、0.850和0.831。此外,Q-VUM预测显示,阻滞区域内85%的像素落在实际阻滞区域内。最后,我们的模型表现出比常见的深度学习分割网络更强的分割性能(分别为0.734对0.720和0.720)。总之,我们提出了一种名为Q-VUM的模型,它可以实时准确识别腰方肌的解剖结构。该模型有助于麻醉医生精确确定神经阻滞部位,从而减少潜在并发症并提高神经阻滞操作的有效性。