Department of Emergency Medicine, National Taiwan University Hospital, Taipei, Taiwan; Department of Emergency Medicine, College of Medicine, National Taiwan University, Taipei, Taiwan.
Department of Computer Science and Engineering, National Chi Nan University, Nantou, Taiwan.
Ultrasound Med Biol. 2023 Mar;49(3):723-733. doi: 10.1016/j.ultrasmedbio.2022.10.001. Epub 2022 Dec 9.
The goal of this study was to assess the feasibility of three models for detecting hydronephrosis through ultrasound images using state-of-the-art deep learning algorithms. The diagnosis of hydronephrosis is challenging because of varying and non-specific presentations. With the characteristics of ready accessibility, no radiation exposure and repeated assessments, point-of-care ultrasound becomes a complementary diagnostic tool for hydronephrosis; however, inter-observer variability still exists after time-consuming training. Artificial intelligence has the potential to overcome the human limitations. A total of 3462 ultrasound frames for 97 patients with hydronephrosis confirmed by the expert nephrologists were included. One thousand six hundred twenty-eight ultrasound frames were also extracted from the 265 controls who had normal renal ultrasonography. We built three deep learning models based on U-Net, Res-UNet and UNet++ and compared their performance. We applied pre-processing techniques including wiping the background to lessen interference by YOLOv4 and standardizing image sizes. Also, post-processing techniques such as adding filter for filtering the small effusion areas were used. The Res-UNet algorithm had the best performance with an accuracy of 94.6% for moderate/severe hydronephrosis with substantial recall rate, specificity, precision, F1 measure and intersection over union. The Res-UNet algorithm has the best performance in detection of moderate/severe hydronephrosis. It would decrease variability among sonographers and improve efficiency under clinical conditions.
本研究旨在评估三种使用最新深度学习算法通过超声图像检测肾积水的模型的可行性。肾积水的诊断具有挑战性,因为其表现具有多变性和非特异性。由于具有易于获取、无辐射暴露和可重复评估的特点,即时超声成为肾积水的一种补充诊断工具;然而,经过耗时的培训后,仍然存在观察者间的变异性。人工智能有潜力克服人类的局限性。本研究共纳入了 97 名经专家肾病学家确诊为肾积水的患者的 3462 个超声帧,以及 265 名肾脏超声正常的对照组的 1628 个超声帧。我们基于 U-Net、Res-UNet 和 UNet++ 构建了三个深度学习模型,并比较了它们的性能。我们应用了预处理技术,包括擦拭背景以减少 YOLOv4 的干扰和标准化图像大小。此外,还使用了后处理技术,如添加滤波器以过滤小的渗出区域。Res-UNet 算法在检测中重度肾积水方面表现最佳,其准确性为 94.6%,具有较高的召回率、特异性、精度、F1 度量和交并比。Res-UNet 算法在检测中重度肾积水方面表现最佳。它可以减少超声医师之间的变异性,并提高临床条件下的效率。