Clinical Science Department, Science of Health Division, University of Monterrey, Monterrey, Mexico.
Boston Eye Diagnostics, Inc., Boston, MA, USA.
Transl Vis Sci Technol. 2023 Apr 3;12(4):2. doi: 10.1167/tvst.12.4.2.
To design and validate a high-sensitivity semiautomated algorithm, based on adaptive contrast image, able to identify and quantify tear meniscus height (TMH) from optical coherence tomography (OCT) images by using digital image processing (DIP) techniques.
OCT images of the lacrimal meniscus of healthy patients and with dry eye are analyzed by our algorithm, which is composed of two stages: (1) the region of interest and (2) TMH detection and measurement. The algorithm performs an adaptive contrast sequence based on morphologic operations and derivative image intensities. Trueness, repeatability, and reproducibility for TMH measurements are computed and the algorithm performance is statistically compared against the corresponding negative obtained manually by using a commercial software.
The algorithm showed excellent repeatability supported by an intraclass correlation coefficient equal to 0.993, a within-subject standard deviation equal to 9.88, and a coefficient of variation equal to 2.96%, and for the reproducibility test, the results did not show a significant difference as the mean value was 244.4 ± 114.9 µm for an expert observer versus 242.4 ± 111.2 µm for the inexperienced observer (P = 0.999). The method strongly suggests the algorithm can predict measurements that are manually performed with commercial software.
The presented algorithm possess high potential to identify and measure TMH from OCT images in a reproducible and repeatable way with minimal dependency on user.
The presented work shows a methodology on how, by using DIP, it is possible to process OCT images to calculate TMH and aid ophthalmologists in the diagnosis of dry eye disease.
设计并验证一种基于自适应对比图像的高灵敏度半自动算法,该算法能够使用数字图像处理 (DIP) 技术从光学相干断层扫描 (OCT) 图像中识别和量化泪膜半月板高度 (TMH)。
使用我们的算法分析健康患者和干眼症患者的泪膜半月板 OCT 图像,该算法由两个阶段组成:(1)感兴趣区域和(2)TMH 检测和测量。该算法执行基于形态操作和导数图像强度的自适应对比序列。计算 TMH 测量的准确性、重复性和可再现性,并使用商业软件手动进行相应的负比较,对算法性能进行统计学比较。
该算法显示出优异的重复性,内类相关系数为 0.993,个体内标准差为 9.88,变异系数为 2.96%,对于可再现性测试,结果没有显示出显著差异,因为专家观察者的平均值为 244.4±114.9μm,而经验不足观察者的平均值为 242.4±111.2μm(P=0.999)。该方法强烈表明,该算法可以预测使用商业软件手动进行的测量。
所提出的算法具有从 OCT 图像中以可重复和可重复的方式识别和测量 TMH 的高潜力,并且对用户的依赖性最小。
马丽君 审校:武志芳