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通过远程医疗对皮肤科溃疡进行分割和测量的 UTrack 框架。

The UTrack framework for segmenting and measuring dermatological ulcers through telemedicine.

机构信息

Institute of Mathematics and Computer Science, University of São Paulo (USP), São Carlos, Brazil.

Institute of Mathematics and Computer Science, University of São Paulo (USP), São Carlos, Brazil.

出版信息

Comput Biol Med. 2021 Jul;134:104489. doi: 10.1016/j.compbiomed.2021.104489. Epub 2021 May 13.

Abstract

Chronic dermatological ulcers cause great discomfort to patients, and while monitoring the size of wounds over time provides significant clues about the healing evolution and the clinical condition of patients, the lack of practical applications in existing studies impairs users' access to appropriate treatment and diagnosis methods. We propose the UTrack framework to help with the acquisition of photos, the segmentation and measurement of wounds, the storage of photos and symptoms, and the visualization of the evolution of ulcer healing. UTrack-App is a mobile app for the framework, which processes images taken by standard mobile device cameras without specialized equipment and stores all data locally. The user manually delineates the regions of the wound and the measurement object, and the tool uses the proposed UTrack-Seg segmentation method to segment them. UTrack-App also allows users to manually input a unit of measurement (centimeter or inch) in the image to improve the wound area estimation. Experiments show that UTrack-Seg outperforms its state-of-the-art competitors in ulcer segmentation tasks, improving F-Measure by up to 82.5% when compared to superpixel-based approaches and up to 19% when compared to Deep Learning ones. The method is unsupervised, and it semi-automatically segments real-world images with 0.9 of F-Measure, on average. The automatic measurement outperformed the manual process in three out of five different rulers. UTrack-App takes at most 30 s to perform all evaluation steps over high-resolution images, thus being well-suited to analyze ulcers using standard mobile devices.

摘要

慢性皮肤病溃疡会给患者带来极大的不适,而随着时间的推移监测伤口的大小,为了解伤口的愈合演变和患者的临床状况提供了重要线索,但现有研究中缺乏实用的应用程序,妨碍了用户获得适当的治疗和诊断方法。我们提出了 UTrack 框架来帮助获取照片、对伤口进行分割和测量、存储照片和症状以及可视化溃疡愈合的演变。UTrack-App 是该框架的移动应用程序,它可以处理标准移动设备摄像头拍摄的图像,而无需使用专门的设备,并在本地存储所有数据。用户可以手动描绘伤口和测量对象的区域,该工具使用我们提出的 UTrack-Seg 分割方法对其进行分割。UTrack-App 还允许用户在图像中手动输入测量单位(厘米或英寸),以提高对伤口面积的估计。实验表明,UTrack-Seg 在溃疡分割任务中优于其最先进的竞争对手,与基于超像素的方法相比,F-Measure 提高了 82.5%,与深度学习方法相比,提高了 19%。该方法是无监督的,它可以半自动地分割真实世界的图像,平均 F-Measure 达到 0.9。在五个不同尺子中的三个尺子中,自动测量的表现优于手动过程。UTrack-App 最多需要 30 秒即可在高分辨率图像上执行所有评估步骤,因此非常适合使用标准移动设备分析溃疡。

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