Department of Ophthalmology, Shimane University Faculty of Medicine (Matsuo, Kozuki, Inomata, Tanito), Izumo, Japan; NIDEK CO., LTD., Gamagori, Japan (Kumagai, Shiba, Hamaguchi).
Transl Vis Sci Technol. 2022 Apr 1;11(4):22. doi: 10.1167/tvst.11.4.22.
The purpose of this study was to investigate the utility of automated focal plane merging with the collection of gonio-photographs with different depths of field (DOF) using an established focus-stacking algorithm.
A cross-sectional study was conducted at Shimane University Hospital, Izumo, Japan. Sixteen eyes from 16 subjects from the glaucoma clinic were included in this study. Image processing was performed for the images of 16 eyes from 16 angle sector following the successful gonio-photography. The 256 sets of focus-stacked and best-focused images were prepared in random order and were compared for the DOF and informativeness to diagnose angle pathology by masked observers in each set as the subjective assessments. Moreover, the energy of the Laplacian (average |ΔI|), which is an indicator of image sharpness between the photographs with and without the focus-stacking processing was also analyzed with the Laplacian filter as the objective assessment.
The automated image processing was successfully performed in all stacks of images. The significant deepening of DOF and improvement of informativeness achieved in 255 (99.6%) and 216 (84.4%) images (P < 0.0001 for both, sign test) and the energy of the Laplacian also significantly increased in 243 (94.9%) images (P < 0.0001, sign test).
Focal plane merging by the automated algorithm can make the gonio-images deeper focus compared with the paired best-focused images subjectively and objectively, which would be useful for angle pathological assessment in clinical practice.
Focal plane merging algorithm for the automated gonio-photography can facilitate the angle assessment by providing informative deep-focus image, which would be useful for glaucoma care.
本研究旨在利用已建立的聚焦堆叠算法,研究使用不同景深(DOF)采集的共焦照片自动合并焦平面的效用。
这是一项在日本出云市岛根大学医院进行的横断面研究。本研究纳入了 16 名来自青光眼诊所的 16 只眼。对 16 个角度扇区的 16 只眼的图像进行图像处理。以随机顺序准备 256 组聚焦堆叠和最佳聚焦图像,并由掩蔽观察者在每组中对 DOF 和诊断角度病变的信息量进行主观评估。此外,还通过拉普拉斯滤波器对图像锐度的指标——拉普拉斯(平均 |ΔI|)能量进行了分析。
所有图像堆栈的自动图像处理均成功完成。在 255 张(99.6%,双侧秩和检验,P < 0.0001)和 216 张(84.4%,双侧秩和检验,P < 0.0001)图像中实现了景深的显著加深和信息量的显著提高,并且在 243 张(94.9%,双侧秩和检验,P < 0.0001)图像中拉普拉斯能量也显著增加。
与配对的最佳聚焦图像相比,自动算法的焦平面合并可以使共焦图像的焦点更深,无论是主观还是客观,这对临床实践中的角度病理评估都很有用。
杨玲