Koprowski Robert, Tian Lei, Olczyk Paweł
Department of Biomedical Computer Systems, Faculty of Computer Science and Materials Science, Institute of Computer Science, University of Silesia, ul. Będzińska 39, 41-200, Sosnowiec, Poland.
Beijing Institute of Ophthalmology, Beijing Tongren Eye Center, Beijing Tongren Hospital, Capital Medical University, Beijing, 100730, China.
Biomed Eng Online. 2017 Jun 24;16(1):82. doi: 10.1186/s12938-017-0373-4.
Meibomian gland dysfunction (MGD) is one of the most common diseases observed in clinics and is the leading cause of evaporative dry eye. Today, diagnostics of MGD is not fully automatic yet and is based on a qualitative assessment made by an ophthalmologist. Therefore, an automatic analysis method was developed to assess MGD quantiatively.
The analysis made use of 228 images of 57 patients recorded by OCULUS Keratograph 5 M with a resolution of 1024 × 1360 pixels concern 30 eyes of healthy individuals (14 women and 16 men) and 27 eyes of sick patients (10 women and 17 men). The diagnosis of dry eye was made according to the consensus of DED in China (2013).
The presented method of analysis is a new, developed method enabling an automatic, reproducible and quantitative assessment of Meibomian glands. The analysis relates to employing the methods of analysis and image processing. The analysis was conducted in the Matlab environment Version 7.11.0.584, R2010b, Java VM Version: Java 1.6.0_17-b04 with Sun Microsystems Inc. with toolboxes: Statistical, Signal Processing and Image Processing.
The presented, new method of analysis of Meibomian glands is fully automatic, does not require operator's intervention, allows obtaining reproducible results and enables a quantitative assessment of Meibomian glands. Compared to the other known methods, particularly with the method described in literature it allows obtaining better sensitivity (98%) and specificity (100%) results by 2%.
睑板腺功能障碍(MGD)是临床上最常见的疾病之一,也是蒸发型干眼的主要原因。目前,MGD的诊断尚未完全自动化,而是基于眼科医生的定性评估。因此,开发了一种自动分析方法来定量评估MGD。
分析使用了OCULUS Keratograph 5 M记录的57例患者的228张图像,分辨率为1024×1360像素,涉及30名健康个体的眼睛(14名女性和16名男性)和27名患病患者的眼睛(10名女性和17名男性)。干眼的诊断根据2013年中国干眼诊断专家共识进行。
所提出的分析方法是一种新开发的方法,能够对睑板腺进行自动、可重复和定量的评估。该分析涉及采用分析方法和图像处理方法。分析在Matlab环境版本7.11.0.584、R2010b中进行,Java虚拟机版本:Java 1.6.0_17-b04,由Sun Microsystems Inc.提供,带有统计、信号处理和图像处理工具箱。
所提出的睑板腺分析新方法完全自动化,无需操作员干预,可获得可重复的结果,并能够对睑板腺进行定量评估。与其他已知方法相比,特别是与文献中描述的方法相比,它能获得更好的灵敏度(98%)和特异性(100%)结果,提高了2%。