Department of Systems Design Engineering, University of Waterloo, Waterloo, ON N2L 3G1, Canada.
Digital Technologies Research Centre, National Research Council Canada, Toronto, ON M5T 3J1, Canada.
Sensors (Basel). 2024 Mar 4;24(5):1664. doi: 10.3390/s24051664.
While no longer a public health emergency of international concern, COVID-19 remains an established and ongoing global health threat. As the global population continues to face significant negative impacts of the pandemic, there has been an increased usage of point-of-care ultrasound (POCUS) imaging as a low-cost, portable, and effective modality of choice in the COVID-19 clinical workflow. A major barrier to the widespread adoption of POCUS in the COVID-19 clinical workflow is the scarcity of expert clinicians who can interpret POCUS examinations, leading to considerable interest in artificial intelligence-driven clinical decision support systems to tackle this challenge. A major challenge to building deep neural networks for COVID-19 screening using POCUS is the heterogeneity in the types of probes used to capture ultrasound images (e.g., convex vs. linear probes), which can lead to very different visual appearances. In this study, we propose an analytic framework for COVID-19 assessment able to consume ultrasound images captured by linear and convex probes. We analyze the impact of leveraging extended linear-convex ultrasound augmentation learning on producing enhanced deep neural networks for COVID-19 assessment, where we conduct data augmentation on convex probe data alongside linear probe data that have been transformed to better resemble convex probe data. The proposed explainable framework, called COVID-Net L2C-ULTRA, employs an efficient deep columnar anti-aliased convolutional neural network designed via a machine-driven design exploration strategy. Our experimental results confirm that the proposed extended linear-convex ultrasound augmentation learning significantly increases performance, with a gain of 3.9% in test accuracy and 3.2% in AUC, 10.9% in recall, and 4.4% in precision. The proposed method also demonstrates a much more effective utilization of linear probe images through a 5.1% performance improvement in recall when such images are added to the training dataset, while all other methods show a decrease in recall when trained on the combined linear-convex dataset. We further verify the validity of the model by assessing what the network considers to be the critical regions of an image with our contribution clinician.
虽然不再是国际关注的突发公共卫生事件,但 COVID-19 仍然是一个既定的、持续存在的全球健康威胁。随着全球人口继续面临大流行的重大负面影响,床边超声(POCUS)成像作为 COVID-19 临床工作流程中的一种低成本、便携式且有效的选择方式,其使用量有所增加。在 COVID-19 临床工作流程中广泛采用 POCUS 的主要障碍是能够解释 POCUS 检查的专家临床医生的稀缺,这导致人们对人工智能驱动的临床决策支持系统产生了相当大的兴趣,以应对这一挑战。使用 POCUS 对 COVID-19 进行筛查的深层神经网络构建面临的主要挑战是用于捕获超声图像的探头类型(例如凸探头与线阵探头)的异质性,这可能导致非常不同的视觉外观。在这项研究中,我们提出了一种能够处理线阵和凸阵探头采集的超声图像的 COVID-19 评估分析框架。我们分析了利用扩展的线阵-凸阵超声增强学习来产生增强的 COVID-19 评估深度学习网络的影响,其中我们对线阵探头数据进行数据增强,同时对经过转换以更好地模拟凸阵探头数据的线阵探头数据进行数据增强。所提出的可解释框架称为 COVID-Net L2C-ULTRA,它采用了一种通过机器驱动的设计探索策略设计的高效深列抗混叠卷积神经网络。我们的实验结果证实,所提出的扩展的线阵-凸阵超声增强学习显著提高了性能,在测试准确率上提高了 3.9%,AUC 上提高了 3.2%,召回率提高了 10.9%,精度提高了 4.4%。当将线性探头图像添加到训练数据集中时,所提出的方法还通过在召回率上提高 5.1%,从而更有效地利用了线性探头图像,而所有其他方法在基于组合的线阵-凸阵数据集进行训练时,召回率都会下降。我们还通过评估网络认为图像的关键区域来验证模型的有效性,我们的贡献者是临床医生。