论文标题
使用深度学习和超声成像对慢性伤口愈合进行非侵入性监测的初步研究
Initial Investigations Towards Non-invasive Monitoring of Chronic Wound Healing Using Deep Learning and Ultrasound Imaging
论文作者
论文摘要
包括糖尿病和动脉/静脉功能不全损伤在内的慢性伤口已成为全球医疗保健系统的重大负担。人口的变化表明,在未来几十年中,伤口护理将发挥更大的作用。目前,预测和监测对伤口护理中治疗的反应主要基于视觉检查,几乎没有有关基础组织的信息。因此,对创新方法的紧急需求迫切需要促进个人护理的个性化诊断和治疗方法。最近已经显示,超声成像可以监测伤口护理中对治疗的反应,但是这项工作需要繁重的手动图像注释。在这项研究中,我们介绍了超声图像中横截面伤口大小的深度自动分割的初步结果,并确定了对此应用的未来研究的要求和挑战。分割结果的评估强调了所提出的深度学习方法的潜力,以补充非侵入性成像,骰子得分为0.34(U-NET,FCN)和0.27(Resnet-U-net),但也强调了进一步提高鲁棒性的需求。我们得出的结论是,对非侵入性超声图像的深度学习支持分析是一个有前途的研究领域,可以自动提取横截面伤口大小和深度信息,并具有在监测治疗反应中的潜在价值。
Chronic wounds including diabetic and arterial/venous insufficiency injuries have become a major burden for healthcare systems worldwide. Demographic changes suggest that wound care will play an even bigger role in the coming decades. Predicting and monitoring response to therapy in wound care is currently largely based on visual inspection with little information on the underlying tissue. Thus, there is an urgent unmet need for innovative approaches that facilitate personalized diagnostics and treatments at the point-of-care. It has been recently shown that ultrasound imaging can monitor response to therapy in wound care, but this work required onerous manual image annotations. In this study, we present initial results of a deep learning-based automatic segmentation of cross-sectional wound size in ultrasound images and identify requirements and challenges for future research on this application. Evaluation of the segmentation results underscores the potential of the proposed deep learning approach to complement non-invasive imaging with Dice scores of 0.34 (U-Net, FCN) and 0.27 (ResNet-U-Net) but also highlights the need for improving robustness further. We conclude that deep learning-supported analysis of non-invasive ultrasound images is a promising area of research to automatically extract cross-sectional wound size and depth information with potential value in monitoring response to therapy.