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Cluster analysis for diabetic retinopathy prediction using data mining techniques

机译:使用数据挖掘技术进行糖尿病视网膜病预测的聚类分析

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Diabetic retinopathy is a one of the increasing medical situation occurs due to fluctuating insulin level in the blood that leads to loss of vision. It is an ophthalmic disease which is mainly occurs due to the generation of the new abnormal blood vessels. Diabetic retinopathy with exudates are causing main health problem that leads to loss of sight. Patient suffering from diabetes are advised to undergo continual retinal test by reason of diabetic retinopathy. As the population is quite large as compared to healthcare system available, tests should be optimised and identification of the disease is complex and time consuming task. In this paper, clustering technique is used among the various data mining techniques, clustering is the good approach to handle the complex task. Experiment is conducted to identify the best clustering technique which can easily identify the various impacting factors of DR in less complex way. The experimental results reflect that the performance of K-means is better than other clustering techniques. This analysis will help the medical practitioner to identify best algorithm for disease detection and provide preventive measures in advance.
机译:糖尿病视网膜病变是由于血液中的胰岛素水平波动导致视力丧失的血液水平的增加之一。它是一种眼科疾病,主要是由于产生新的异常血管。具有渗出物的糖尿病视网膜病变导致主要的健康问题导致视力丧失。建议通过糖尿病视网膜病变的患者进行患有糖尿病的患者进行连续视网膜试验。由于与医疗保健系统相比,人口相当大,应优化测试,并且鉴定该疾病是复杂和耗时的任务。在本文中,各种数据挖掘技术中使用聚类技术,聚类是处理复杂任务的好方法。进行实验以识别最佳聚类技术,可以以不太复杂的方式轻松识别DR的各种影响因素。实验结果反映了K-Means的性能优于其他聚类技术。该分析将有助于医生识别最佳的疾病检测算法,并提前提供预防措施。

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