基于物联网的糖尿病视网膜病变诊断可靠医疗保健系统,捍卫患者视力

Sengathir Janakiraman, Deva Priya M., Christy Jeba Malar A., Karthick S., Anitha Rajakumari P.
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引用次数: 1

摘要

目的设计一种基于物联网(IoT)架构的糖尿病视网膜病变检测方案(DRDS),用于识别i型或ii型糖尿病,并针对性地告知ii型糖尿病患者视力丧失的可能性。设计/方法/方法提出的DRDS包括自动计算夹限参数和子窗口的好处,使检测过程完全自适应。它利用扩展的5 × 5 Sobels算子的优点,通过对24个像素与8个模板卷积确定的最大边缘进行估计,得到对应于单个像素的24个输出,以寻找最大幅度。它提高了血管图中像素点与眼底图像中相邻点连接的概率。然后,通过鲁棒半监督核模糊局部信息c均值聚类(RSKFL-CMC)方法将邻域像素的空间信息与核进行融合,得到显著聚类过程;研究结果提出的DRDS体系结构在准确性、特异性和敏感性方面具有优势。所提出的DRDS技术具有优异的性能,平均准确率为99.64%,灵敏度为76.84%,特异性为99.93%。研究局限性/意义利用Dexcom G4 Plantinum传感器的优点,提出了一种舒适、无痛、无害的糖尿病患者血糖诊断系统。它利用RSKFL-CMC方法的优点来估计邻域像素的空间信息和核,从而获得显著的聚类过程。实际意义物联网架构包括应用层,该应用层继承了DR应用程序支持的图形用户界面(GUI),该界面通过使用MATLAB应用程序组合用于处理眼底图像。这一层帮助患者将捕获的眼底图像存储在数据库中,以便将来进行诊断。本文提出的DRDS方法在DR的检测和基于疾病强度的重度、中度和轻度分类中起着至关重要的作用。提出的DRDS负责通过利用物联网架构实现准确和潜在的检测,预防ii型糖尿病患者的视力丧失。原创性/价值利用MATLAB R2010a实现了采用文献基准方法的拟议方案的性能。利用HRF、REVIEW、STARE和DRIVE数据集对所提出的方案进行完整的评估,并由专家提供主观量化,目的是对潜在的视网膜血管进行分割。
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Reliable IoT-based Health-care System for Diabetic Retinopathy Diagnosis to defend the Vision of Patients
Purpose The purpose of this paper is to design an Internet-of-Things (IoT) architecture-based Diabetic Retinopathy Detection Scheme (DRDS) proposed for identifying Type-I or Type-II diabetes and to specifically advise the Type-II diabetic patients about the possibility of vision loss. Design/methodology/approach The proposed DRDS includes the benefits of automatic calculation of clip limit parameters and sub-window for making the detection process completely adaptive. It uses the advantages of extended 5 × 5 Sobels operator for estimating the maximum edges determined through the convolution of 24 pixels with eight templates to achieve 24 outputs corresponding to individual pixels for finding the maximum magnitude. It enhances the probability of connecting pixels in the vascular map with its closely located neighbourhood points in the fundus images. Then, the spatial information and kernel of the neighbourhood pixels are integrated through the Robust Semi-supervised Kernelized Fuzzy Local information C-Means Clustering (RSKFL-CMC) method to attain significant clustering process. Findings The results of the proposed DRDS architecture confirm the predominance in terms of accuracy, specificity and sensitivity. The proposed DRDS technique facilitates superior performance at an average of 99.64% accuracy, 76.84% sensitivity and 99.93% specificity. Research limitations/implications DRDS is proposed as a comfortable, pain-free and harmless diagnosis system using the merits of Dexcom G4 Plantinum sensors for estimating blood glucose level in diabetic patients. It uses the merits of RSKFL-CMC method to estimate the spatial information and kernel of the neighborhood pixels for attaining significant clustering process. Practical implications The IoT architecture comprises of the application layer that inherits the DR application enabled Graphical User Interface (GUI) which is combined for processing of fundus images by using MATLAB applications. This layer aids the patients in storing the capture fundus images in the database for future diagnosis. Social implications This proposed DRDS method plays a vital role in the detection of DR and categorization based on the intensity of disease into severe, moderate and mild grades. The proposed DRDS is responsible for preventing vision loss of diabetic Type-II patients by accurate and potential detection achieved through the utilization of IoT architecture. Originality/value The performance of the proposed scheme with the benchmarked approaches of the literature is implemented using MATLAB R2010a. The complete evaluations of the proposed scheme are conducted using HRF, REVIEW, STARE and DRIVE data sets with subjective quantification provided by the experts for the purpose of potential retinal blood vessel segmentation.
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