Department of Electronics and Communication Engineering, Silicon Institute of Technology, Bhubaneswar, Orissa, 751024, India.
Department of Electronics and Communication Engineering, National Institute of Technology, Rourkela, Odisha, 769008, India.
J Digit Imaging. 2022 Oct;35(5):1250-1270. doi: 10.1007/s10278-022-00640-9. Epub 2022 May 4.
The separation of blood vessels in the retina is a major aspect in detecting ailment and is carried out by segregating the retinal blood vessels from the fundus images. Moreover, it helps to provide earlier therapy for deadly diseases and prevent further impacts due to diabetes and hypertension. Many reviews already exist for this problem, but those reviews have presented the analysis of a single framework. Hence, this article on retinal segmentation review has revealed distinct methodologies with diverse frameworks that are utilized for blood vessel separation. The novelty of this review research lies in finding the best neural network model by comparing its efficiency. For that, machine learning (ML) and deep learning (DL) were compared and have been reported as the best model. Moreover, different datasets were used to segment the retinal blood vessels. The execution of each approach is compared based on the performance metrics such as sensitivity, specificity, and accuracy using publically accessible datasets like STARE, DRIVE, ROSE, REFUGE, and CHASE. This article discloses the implementation capacity of distinct techniques implemented for each segmentation method. Finally, the finest accuracy of 98% and sensitivity of 96% were achieved for the technique of Convolution Neural Network with Ranking Support Vector Machine (CNN-rSVM). Moreover, this technique has utilized public datasets to verify efficiency. Hence, the overall review of this article has revealed a method for earlier diagnosis of diseases to deliver earlier therapy.
视网膜血管分离是检测疾病的一个主要方面,它通过从眼底图像中分离视网膜血管来实现。此外,它有助于为致命疾病提供早期治疗,并防止糖尿病和高血压等疾病进一步恶化。针对这个问题已经有很多综述,但这些综述只分析了单一的框架。因此,这篇关于视网膜分割综述的文章揭示了利用不同框架进行血管分离的不同方法。本文的新颖之处在于通过比较效率来寻找最佳的神经网络模型。为此,对机器学习 (ML) 和深度学习 (DL) 进行了比较,并报告称这两种模型是最佳模型。此外,还使用不同的数据集来分割视网膜血管。根据敏感度、特异性和准确度等性能指标,对每种方法的执行情况进行了比较,这些指标是使用 STARE、DRIVE、ROSE、REFUGE 和 CHASE 等公共数据集报告的。本文揭示了针对每种分割方法实施的不同技术的实现能力。最后,卷积神经网络与排序支持向量机(CNN-rSVM)技术的准确率达到了 98%,敏感度达到了 96%。此外,该技术还利用公共数据集验证了其效率。因此,本文的综述总体上揭示了一种早期诊断疾病的方法,从而可以提供早期治疗。