Mäder Ulf, Quiskamp Niko, Wildenhain Sören, Schmidts Thomas, Mayser Peter, Runkel Frank, Fiebich Martin
Institute of Medical Physics and Radiation Protection, Technische Hochschule Mittelhessen - University of Applied Sciences, 35390 Giessen, Germany.
Helmut Hund GmbH, Artur Herzog Straße 2, 35580 Wetzlar, Germany.
Comput Math Methods Med. 2015;2015:851014. doi: 10.1155/2015/851014. Epub 2015 Nov 16.
The incidence of superficial fungal infections is assumed to be 20 to 25% of the global human population. Fluorescence microscopy of extracted skin samples is frequently used for a swift assessment of infections. To support the dermatologist, an image-analysis scheme has been developed that evaluates digital microscopic images to detect fungal hyphae. The aim of the study was to increase diagnostic quality and to shorten the time-to-diagnosis. The analysis, consisting of preprocessing, segmentation, parameterization, and classification of identified structures, was performed on digital microscopic images. A test dataset of hyphae and false-positive objects was created to evaluate the algorithm. Additionally, the performance for real clinical images was investigated using 415 images. The results show that the sensitivity for hyphae is 94% and 89% for singular and clustered hyphae, respectively. The mean exclusion rate is 91% for the false-positive objects. The sensitivity for clinical images was 83% and the specificity was 79%. Although the performance is lower for the clinical images than for the test dataset, a reliable and fast diagnosis can be achieved since it is not crucial to detect every hypha to conclude that a sample consisting of several images is infected. The proposed analysis therefore enables a high diagnostic quality and a fast sample assessment to be achieved.
据推测,浅表真菌感染的发病率占全球人口的20%至25%。提取的皮肤样本的荧光显微镜检查常用于快速评估感染情况。为了辅助皮肤科医生,已开发出一种图像分析方案,该方案可对数字显微镜图像进行评估以检测真菌菌丝。本研究的目的是提高诊断质量并缩短诊断时间。分析过程包括对数字显微镜图像进行预处理、分割、参数化以及对识别出的结构进行分类。创建了一个包含菌丝和假阳性物体的测试数据集来评估该算法。此外,还使用415张图像对真实临床图像的性能进行了研究。结果表明,对于菌丝的敏感度,单个菌丝为94%,成簇菌丝为89%。假阳性物体的平均排除率为91%。临床图像的敏感度为83%,特异性为79%。尽管临床图像的性能低于测试数据集,但由于对于由多张图像组成的样本而言,并不需要检测出每一根菌丝就能判定其受到感染,因此仍可实现可靠且快速的诊断。所以,所提出的分析方法能够实现较高的诊断质量和快速的样本评估。