An Efficient Investigation on Age-Related Macular Degeneration Using Deep Learning with Cloud-Based Teleophthalmology Architecture

P. Selvakumar, R. Arunprakash
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Abstract

AMD, or age-related macular degeneration, is the fourth most common visual ailment leading to blindness worldwide and mostly affects persons over the age of 60. Early-stage blindness may be reduced with timely and precise screening. High-resolution analysis and identification of the retinal layers damaged by illness is made possible by optical coherence tomography (OCT), a diagnostic technique. Setting up a comprehensive eye screening system to identify AMD is a difficult task. Manually sifting through OCT pictures for anomalies is a time-consuming and error-prone operation. Automatic feature extraction from OCT images may speed up the diagnostic process and reduce the potential for human mistake. Historically, several methods have been developed to identify characteristics in OCT pictures. This thesis documents the development and evaluation of many such algorithms for the identification of AMD. In order to minimize the severity of AMD, retinal fundus images must be employed for early detection and classification. In this work, we develop a useful deep learning cloud-based AMD categorization model for wearables. The suggested model is DLCTO-AMDC model, a patient outfitted with a head-mounted camera (OphthoAI IoMT headset) may send retinaldehyde fundus imageries to a secure virtual server for analysis. The suggested AMD classification model employs Inception v3 as the feature extractor and a noise reduction approach based on midway point filtering (MPF). The deep belief network (DBN) model is also used to detect and classify AMD. Then, an AOA-inspired hyperparameter optimisation method is used to fine-tune the DBN parameters. To ensure the DLCTO-AMDC model would provide superior classification results, extensive simulations were done using the benchmark dataset. The findings prove the DLCTO-AMDC model is superior to other approaches already in use.
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基于云的远距眼科架构的深度学习对老年性黄斑变性的有效研究
AMD,即年龄相关性黄斑变性,是全球第四大导致失明的常见视觉疾病,主要影响60岁以上人群。通过及时和精确的筛查,可以减少早期失明。光学相干断层扫描(OCT)是一种诊断技术,可以对疾病损伤的视网膜层进行高分辨率分析和识别。建立一个全面的眼部筛查系统来识别AMD是一项艰巨的任务。手动筛选OCT图像中的异常是一项耗时且容易出错的操作。从OCT图像中自动提取特征可以加快诊断过程,减少人为错误的可能性。历史上,已经开发了几种方法来识别OCT图像中的特征。本文记录了许多此类识别AMD算法的发展和评估。为了减少AMD的严重程度,视网膜眼底图像必须用于早期发现和分类。在这项工作中,我们为可穿戴设备开发了一个有用的基于云的深度学习AMD分类模型。建议的模型是DLCTO-AMDC模型,患者配备头戴式摄像头(OphthoAI IoMT headset),将视黄醛眼底图像发送到安全的虚拟服务器进行分析。建议的AMD分类模型采用Inception v3作为特征提取器和基于中点滤波(MPF)的降噪方法。采用深度信念网络(DBN)模型对AMD进行检测和分类。然后,采用aoa启发的超参数优化方法对DBN参数进行微调。为了确保DLCTO-AMDC模型能够提供更好的分类结果,我们使用基准数据集进行了大量的模拟。研究结果证明,DLCTO-AMDC模型优于其他已经使用的方法。
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