IEEE Trans Biomed Eng. 2023 Oct;70(10):2886-2894. doi: 10.1109/TBME.2023.3267600. Epub 2023 Sep 27.
An accurate and timely diagnosis of burn severity is critical to ensure a positive outcome. Laser Doppler imaging (LDI) has become a very useful tool for this task. It measures the perfusion of the burn and estimates its potential healing time. LDIs generate a 6-color palette image, with each color representing a healing time. This technique has very high costs associated. In resource-limited areas, such as low- and middle-income countries or remote locations like space, where access to specialized burn care is inadequate, more affordable and portable tools are required. This study proposes a novel image-to-image translation approach to estimate burn healing times, using a digital image to approximate the LDI.
This approach consists of a U-net architecture with a VGG-based encoder and applies the concept of ordinal classification. Paired digital and LDI images of burns were collected. The performance was evaluated with 10-fold cross-validation, mean absolute error (MAE), and color distribution differences between the ground truth and the estimated LDI.
Results showed a satisfactory performance in terms of low MAE ( 0.2370 ±0.0086). However, the unbalanced distribution of colors in the data affects this performance.
This novel and unique approach serves as a basis for developing more accessible support tools in the burn care environment in resource-limited areas.
准确、及时地诊断烧伤程度对于确保良好的治疗效果至关重要。激光多普勒成像(LDI)已成为完成此项任务的一种非常有用的工具。它可以测量烧伤的灌注情况,并预估其潜在的愈合时间。LDI 生成一个 6 色调色板图像,其中每种颜色代表一个愈合时间。然而,该技术的相关成本非常高。在资源有限的地区,如中低收入国家或空间等偏远地区,由于缺乏专业的烧伤护理,因此需要更经济实惠且便携的工具。本研究提出了一种新的图像到图像翻译方法,旨在使用数字图像来估算烧伤的愈合时间,该方法基于 U-Net 架构和 VGG 编码器,并应用了有序分类的概念。收集了配对的烧伤数字图像和 LDI 图像。使用 10 倍交叉验证、平均绝对误差(MAE)和真实 LDI 与估计 LDI 之间的颜色分布差异来评估性能。结果表明,该方法在低 MAE(0.2370 ±0.0086)方面表现出了令人满意的性能。然而,数据中颜色的不平衡分布会影响这一性能。这项新颖独特的方法为在资源有限地区的烧伤护理环境中开发更易于获取的支持工具奠定了基础。