IEEE J Biomed Health Inform. 2021 Oct;25(10):3865-3873. doi: 10.1109/JBHI.2021.3085019. Epub 2021 Oct 5.
Health professionals extensively use Two-Dimensional (2D) Ultrasound (US) videos and images to visualize and measure internal organs for various purposes including evaluation of muscle architectural changes. US images can be used to measure abdominal muscles dimensions for the diagnosis and creation of customized treatment plans for patients with Low Back Pain (LBP), however, they are difficult to interpret. Due to high variability, skilled professionals with specialized training are required to take measurements to avoid low intra-observer reliability. This variability stems from the challenging nature of accurately finding the correct spatial location of measurement endpoints in abdominal US images. In this paper, we use a Deep Learning (DL) approach to automate the measurement of the abdominal muscle thickness in 2D US images. By treating the problem as a localization task, we develop a modified Fully Convolutional Network (FCN) architecture to generate blobs of coordinate locations of measurement endpoints, similar to what a human operator does. We demonstrate that using the TrA400 US image dataset, our network achieves a Mean Absolute Error (MAE) of 0.3125 on the test set, which almost matches the performance of skilled ultrasound technicians. Our approach can facilitate next steps for automating the process of measurements in 2D US images, while reducing inter-observer as well as intra-observer variability for more effective clinical outcomes.
健康专业人员广泛使用二维(2D)超声(US)视频和图像来可视化和测量内部器官,用于各种目的,包括评估肌肉结构变化。US 图像可用于测量腹部肌肉的尺寸,以诊断和为腰痛(LBP)患者制定定制的治疗计划,然而,它们很难解释。由于高度的可变性,需要经过专门培训的熟练专业人员进行测量,以避免观察者内可靠性低。这种可变性源于在腹部 US 图像中准确找到测量终点的正确空间位置的挑战性。在本文中,我们使用深度学习(DL)方法来自动测量 2D US 图像中的腹部肌肉厚度。通过将问题视为定位任务,我们开发了一种修改后的全卷积网络(FCN)架构,以生成测量端点的坐标位置的blob,类似于人类操作人员的操作。我们证明,使用 TrA400 US 图像数据集,我们的网络在测试集上的平均绝对误差(MAE)为 0.3125,几乎与熟练的超声技术员的性能相匹配。我们的方法可以促进在 2D US 图像中自动测量过程的下一步发展,同时减少观察者间和观察者内的变异性,以获得更有效的临床结果。