Schollemann Franziska, Kunczik Janosch, Dohmeier Henriette, Pereira Carina Barbosa, Follmann Andreas, Czaplik Michael
Department of Anesthesiology, Faculty of Medicine, Rheinisch-Westfälische Technische Hochschule Aachen University, 52062 Aachen, Germany.
J Clin Med. 2021 Dec 29;11(1):169. doi: 10.3390/jcm11010169.
The number of people suffering from chronic wounds is increasing due to demographic changes and the global epidemics of obesity and diabetes. Innovative imaging techniques within the field of chronic wound diagnostics are required to improve wound care by predicting and detecting wound infections to accelerate the application of treatments. For this reason, the infection probability index (IPI) is introduced as a novel infection marker based on thermal wound imaging. To improve usability, the IPI was implemented to automate scoring. Visual and thermal image pairs of 60 wounds were acquired to test the implemented algorithms on clinical data. The proposed process consists of (1) determining various parameters of the IPI based on medical hypotheses, (2) acquiring data, (3) extracting camera distortions using camera calibration, and (4) preprocessing and (5) automating segmentation of the wound to calculate (6) the IPI. Wound segmentation is reviewed by user input, whereas the segmented area can be refined manually. Furthermore, in addition to proof of concept, IPIs' correlation with C-reactive protein (CRP) levels as a clinical infection marker was evaluated. Based on average CRP levels, the patients were clustered into two groups, on the basis of the separation value of an averaged CRP level of 100. We calculated the IPIs of the 60 wound images based on automated wound segmentation. Average runtime was less than a minute. In the group with lower average CRP, a correlation between IPI and CRP was evident.
由于人口结构变化以及肥胖和糖尿病在全球范围内的流行,慢性伤口患者的数量正在增加。慢性伤口诊断领域需要创新的成像技术,通过预测和检测伤口感染来加速治疗的应用,从而改善伤口护理。因此,引入了感染概率指数(IPI)作为基于热伤口成像的新型感染标志物。为了提高可用性,实施了IPI以实现自动评分。采集了60个伤口的视觉和热图像对,以在临床数据上测试所实施的算法。所提出的过程包括:(1)基于医学假设确定IPI的各种参数;(2)获取数据;(3)使用相机校准提取相机畸变;(4)预处理;(5)自动分割伤口以计算(6)IPI。通过用户输入对伤口分割进行审查,而分割区域可以手动细化。此外,除了概念验证之外,还评估了IPI与作为临床感染标志物的C反应蛋白(CRP)水平的相关性。根据平均CRP水平,将患者分为两组,以平均CRP水平100的分离值为基础。我们基于自动伤口分割计算了60个伤口图像的IPI。平均运行时间不到一分钟。在平均CRP较低的组中,IPI与CRP之间存在明显的相关性。