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新型图像分析软件可用于丽丝胺绿结膜染色分析。

New Freeware for Image Analysis of Lissamine Green Conjunctival Staining.

机构信息

Corneal Graft Biology, Engineering and Imaging Laboratory, Health Innovation Campus, Faculty of Medicine, Jean Monnet University, Saint-Etienne, France.

Hubert Curien Laboratory (UMR 5516 CNRS), Jean Monnet University, Saint-Etienne, France.

出版信息

Cornea. 2021 Mar 1;40(3):351-357. doi: 10.1097/ICO.0000000000002617.

Abstract

PURPOSE

Lissamine green (LG) is often used in addition to fluorescein to assess the severity of conjunctival damage in dry eye syndrome, which is graded manually. Our purpose was to describe an algorithm designed for image analysis of LG conjunctival staining.

METHODS

Twenty pictures of patients suffering from dry eye with visible LG conjunctival staining were selected. The images were taken by 2 different digital slit lamps with a white light source and a red filter transmitting over the wavelengths absorbed by LG. Conjunctival staining appeared in black on a red background. The red channel was extracted from the original image. Stained areas were then detected using a Laplacian of Gaussian filter and applying a threshold whose value was determined manually on a subset of images. The same algorithm parameters remained constant thereafter. LG-stained areas were also drawn manually by 2 experts as a reference.

RESULTS

The delineation obtained by the algorithm closely matched the actual contours of the punctate dots. In 19 cases of 20 (95%), the algorithm found the same Oxford grade as the experts, even for confluent staining that was detected as a multitude of dots by the algorithm but not by the experts, resulting in a high overestimation of the total number of dots (without mismatching the Oxford grade estimated by the experts). The results were similar for the 2 slit-lamp imaging systems.

CONCLUSIONS

This efficient new image-analysis algorithm yields results consistent with subjective grading and may offer advantages of automation and scalability in clinical trials.

摘要

目的

丽丝胺绿(LG)常与荧光素联合用于评估干眼症患者的结膜损伤严重程度,其分级为手动评估。本研究旨在描述一种用于分析 LG 结膜染色图像的算法。

方法

选择 20 例可见 LG 结膜染色的干眼症患者的图像。图像由 2 台具有白光和红色滤光片的不同数字裂隙灯拍摄,红色滤光片可透过 LG 吸收的波长。LG 染色在红色背景下呈现黑色。从原始图像中提取红色通道。使用拉普拉斯高斯滤波器检测染色区域,并应用手动确定的阈值,该阈值在部分图像上确定。此后,相同的算法参数保持不变。LG 染色区域也由 2 位专家手动绘制作为参考。

结果

算法得出的轮廓与实际点状染色的轮廓非常吻合。在 20 例中的 19 例(95%)中,算法得出的牛津分级与专家相同,即使对于融合性染色,算法也能检测到大量点状染色,而专家则无法检测到,从而导致点状染色总数的高估(不与专家评估的牛津分级相匹配)。两种裂隙灯成像系统的结果相似。

结论

这种高效的新图像分析算法与主观分级结果一致,并且在临床试验中可能具有自动化和可扩展性的优势。

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