青光眼和糖尿病视网膜病变的图像挖掘诊断

B. Baiju, V. Sharmila, B. Muthuraj, M. Abdulhasan, Mahendar
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引用次数: 0

摘要

糖尿病是一种总体上不可避免的疾病,它可以引起可识别的微血管复杂性,如糖尿病视网膜病变和正常视网膜中的黄斑水肿,这些疾病的图片今天用于人工疾病筛查和保证。通过使用深度学习方法的定制确认,这项工作真正的任务可能会产生难以想象的生产力。在这里,我们提出了一个深刻的学习结构,感知可参考的糖尿病视网膜病变相当或比在过去的调查中提出的更好。该策略避免了在安排阶段之前需要进行划分或申请人地图年龄。邻域平行例子和颗粒轮廓被私人注册,以从视网膜图像中提取表面和形态数据。这些数据的各种混合提供了安排计算,以理想地从实体组织中分离亮斑和暗斑病变。这些结果表明,径向基函数分类可以建立筛选和发现的费用可行性,同时取得比建议执行率更高的效果,该框架可以应用于需要更好审查的临床评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Glaucoma and diabetic retinopathy diagnosis using image mining
Diabetes is an overall unavoidable sickness that can cause recognizable microvascular complexities like diabetic retinopathy and macular edema in the normal eye retina, the pictures of which are today used for manual disease screening and assurance. This work genuine task could inconceivably productive by customized acknowledgment using a Deep learning methodology. Here we present a profound learning structure that perceives referable diabetic retinopathy comparably or better than presented in the past investigations. The proposed strategy evades the need of sore division or applicant map age before the arrangement stage. Neighbourhood parallel examples and granulometric profiles are privately registered to extricate surface and morphological data from retinal images. Various blends of this data feed arrangement calculations to ideally separate brilliant and dark lesions from solid tissues. These outcomes propose, radial basis function in classification could build the expense viability of screening and finding, while at the same time accomplishing higher than suggested execution, and that the framework could be applied in clinical assessments requiring better reviewing.
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