Pour Elias Khalili, Pourreza Hamidreza, Zamani Kambiz Ameli, Mahmoudi Alireza, Sadeghi Arash Mir Mohammad, Shadravan Mahla, Karkhaneh Reza, Pour Ramak Rouhi, Esfahani Mohammad Riazi
Department of Vitreoretinal Surgery, Farabi Eye Hospital, Tehran University of Medical Sciences, Tehran, Iran.
Department of Computer Engineering, Faculty of Engineering, Ferdowsi University of Mashhad, Mashhad, Iran.
Korean J Ophthalmol. 2017 Dec;31(6):524-532. doi: 10.3341/kjo.2015.0143. Epub 2017 Sep 22.
To design software with a novel algorithm, which analyzes the tortuosity and vascular dilatation in fundal images of retinopathy of prematurity (ROP) patients with an acceptable accuracy for detecting plus disease.
Eighty-seven well-focused fundal images taken with RetCam were classified to three groups of plus, non-plus, and pre-plus by agreement between three ROP experts. Automated algorithms in this study were designed based on two methods: the curvature measure and distance transform for assessment of tortuosity and vascular dilatation, respectively as two major parameters of plus disease detection.
Thirty-eight plus, 12 pre-plus, and 37 non-plus images, which were classified by three experts, were tested by an automated algorithm and software evaluated the correct grouping of images in comparison to expert voting with three different classifiers, k-nearest neighbor, support vector machine and multilayer perceptron network. The plus, pre-plus, and non-plus images were analyzed with 72.3%, 83.7%, and 84.4% accuracy, respectively.
The new automated algorithm used in this pilot scheme for diagnosis and screening of patients with plus ROP has acceptable accuracy. With more improvements, it may become particularly useful, especially in centers without a skilled person in the ROP field.
设计一种采用新型算法的软件,该算法可分析早产儿视网膜病变(ROP)患者眼底图像中的血管迂曲度和血管扩张情况,以可接受的准确率检测加征疾病。
由三位ROP专家共同将用RetCam拍摄的87张聚焦良好的眼底图像分为加征、非加征和预加征三组。本研究中的自动化算法基于两种方法设计:曲率测量法和距离变换法,分别用于评估血管迂曲度和血管扩张情况,这是检测加征疾病的两个主要参数。
由三位专家分类的38张加征、12张预加征和37张非加征图像,通过自动化算法进行测试,并使用软件与专家投票结果进行比较,评估图像的正确分组情况,使用了三种不同的分类器:k近邻、支持向量机和多层感知器网络。加征、预加征和非加征图像的分析准确率分别为72.3%、83.7%和84.4%。
本初步方案中用于诊断和筛查加征ROP患者的新型自动化算法具有可接受的准确率。经过更多改进后,它可能会变得特别有用,尤其是在没有ROP领域专业人员的中心。