人工智能辅助汽车糖尿病视网膜病变分类系统的性能评价

Venkata Kotam Raju Poranki, B. Rao
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摘要

长期以来,糖尿病视网膜病变(DR)的可靠诊断一直是研究人员关注的问题。由于血糖水平的波动,视网膜中的血管更容易受到异常代谢的影响。这些差异导致病变或视网膜损伤,这被统称为DR。DR的症状对于目前的眼科保健程序来说通常很难诊断。建立一个人工智能辅助的自动DR分类(AI-ADRC)系统是减少错误诊断压力的一个很好的方法。本文重点研究了DR分类方法的性能评估,包括机器学习模型、深度学习模型、特征提取和特征选择方法。解决了当前AI-ADRC系统中存在的问题,这将有助于开发新的AI-ADRC模型。此外,与使用各种数据集的基于机器学习的AI-ADRC模型相比,基于深度学习的AI-ADRC模型具有更好的性能。
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Performance Evaluation of AI Assisted Automotive Diabetic Retinopathy Classification Systems
The reliable diagnosis of diabetic retinopathy (DR) has long been a source of concern for researchers. Due to fluctuating glucose levels, the blood vessels in the retina are more vulnerable to aberrant metabolism. These variances result in lesions or retinal damage, which are then referred to as DR collectively. The signs of DR are often difficult for the current eye healthcare procedures to diagnose. Building an artificial intelligence-assisted automated DR classification (AI-ADRC) system is an excellent way to reduce the pressure of incorrect diagnoses as a result. This article is focused on performance evaluation of DR classification methods, which includes machine learning models, deep learning models, feature extraction, and feature selection methods. The problems presented in state-of-art AI-ADRC systems are addressed, which will help to develop the novel AI-ADRC model. Further, the deep learning-based AI-ADRC models are resulted in superior performance as compared to machine learning based AI-ADRC models using various datasets.
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