Katakis Sofoklis, Barotsis Nikolaos, Kakotaritis Alexandros, Tsiganos Panagiotis, Economou George, Panagiotopoulos Elias, Panayiotakis George
Electronics Laboratory, Department of Physics, University of Patras, 26504 Patras, Greece.
Department of Medical Physics, School of Medicine, University of Patras, 26504 Patras, Greece.
Diagnostics (Basel). 2023 Jan 6;13(2):217. doi: 10.3390/diagnostics13020217.
Automatically measuring a muscle’s cross-sectional area is an important application in clinical practice that has been studied extensively in recent years for its ability to assess muscle architecture. Additionally, an adequately segmented cross-sectional area can be used to estimate the echogenicity of the muscle, another valuable parameter correlated with muscle quality. This study assesses state-of-the-art convolutional neural networks and vision transformers for automating this task in a new, large, and diverse database. This database consists of 2005 transverse ultrasound images from four informative muscles for neuromuscular disorders, recorded from 210 subjects of different ages, pathological conditions, and sexes. Regarding the reported results, all of the evaluated deep learning models have achieved near-to-human-level performance. In particular, the manual vs. the automatic measurements of the cross-sectional area exhibit an average discrepancy of less than 38.15 mm2, a significant result demonstrating the feasibility of automating this task. Moreover, the difference in muscle echogenicity estimated from these two readings is only 0.88, another indicator of the proposed method’s success. Furthermore, Bland−Altman analysis of the measurements exhibits no systematic errors since most differences fall between the 95% limits of agreements and the two readings have a 0.97 Pearson’s correlation coefficient (p < 0.001, validation set) with ICC (2, 1) surpassing 0.97, showing the reliability of this approach. Finally, as a supplementary analysis, the texture of the muscle’s visible cross-sectional area was examined using deep learning to investigate whether a classification between healthy subjects and patients with pathological conditions solely from the muscle texture is possible. Our preliminary results indicate that such a task is feasible, but further and more extensive studies are required for more conclusive results.
自动测量肌肉的横截面积是临床实践中的一项重要应用,近年来因其评估肌肉结构的能力而受到广泛研究。此外,充分分割的横截面积可用于估计肌肉的回声性,这是另一个与肌肉质量相关的重要参数。本研究在一个新的、大型且多样的数据库中评估了用于自动化此任务的先进卷积神经网络和视觉Transformer。该数据库包含来自210名不同年龄、病理状况和性别的受试者的2005张用于神经肌肉疾病的四块信息性肌肉的横向超声图像。关于报告的结果,所有评估的深度学习模型都达到了接近人类水平的性能。特别是,横截面积的手动测量与自动测量之间的平均差异小于38.15平方毫米,这一显著结果证明了自动化此任务的可行性。此外,从这两次测量估计的肌肉回声性差异仅为0.88,这是所提出方法成功的另一个指标。此外,测量的Bland - Altman分析未显示出系统误差,因为大多数差异落在95%一致性界限之间,且两次测量的Pearson相关系数为0.97(验证集,p < 0.001),组内相关系数(ICC,2,1)超过0.97,表明了该方法的可靠性。最后,作为补充分析,使用深度学习检查了肌肉可见横截面积的纹理,以研究仅根据肌肉纹理对健康受试者和病理状况患者进行分类是否可行。我们的初步结果表明这样的任务是可行的,但需要进一步更广泛的研究以获得更确凿的结果。