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Performance Enhanced Hybrid Artificial Neural Network for Abnormal Retinal Image Classification

机译:性能增强混合人工神经网络异常视网膜图像分类

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Artificial Neural Networks (ANN) is becoming increasingly important in the medical field for diagnostic applications. The popularity of ANN is mainly due to the high accuracy and the nominal convergence rate. But, the major drawback is that these characteristic features are not simultaneously available in the same network. While supervised neural networks are highly accurate, the requirement for convergence time is high. On the other hand, unsupervised neural networks are sufficiently faster but less accurate. This problem is tackled in this work by proposing a Modified Neural Network (MNN) which possesses the features of both the supervised neural network and the unsupervised neural network. The applicability of this network is explored in the context of abnormal retinal image classification. Images from four abnormal categories such as Non-Proliferative Diabetic Retinopathy (NPDR), Choroidal Neo-Vascularization Membrane (CNVM), Central Serous Retinopathy (CSR) and Central Retinal Vein Occlusion (CRVO) are used in this work. Suitable features are extracted from these images and further used for the training and testing process of the proposed ANN. Experimental results are analyzed in terms of classification accuracy and convergence rate. The experimental results are also compared with the results of conventional networks such as Back Propagation Network (BPN) and the Kohonen Network (KN). The results of the proposed modified ANN are promising in terms of the performance measures.
机译:人工神经网络(ANN)在诊断应用的医疗领域变得越来越重要。 Ann的普及主要是由于高精度和标称收敛速度。但是,主要缺点是这些特征特征在同一网络中不同时可用。虽然监督神经网络高度准确,但收敛时间的要求很高。另一方面,无监督的神经网络足够快,但不太准确。通过提出具有监督神经网络和无监督的神经网络的特征,通过提出修改的神经网络(MNN)来解决这一问题。在视网膜图像分类异常的背景下探讨了该网络的适用性。在这项工作中使用来自四种异常类别,例如不增殖糖尿病视网膜病变(NPDR),脉络膜新血管化膜(CNVM),中央浆液视网膜病变(CNVM)和中央视网膜静脉闭塞(CRVO)。从这些图像中提取合适的特征,并进一步用于所提出的ANN的训练和测试过程。在分类精度和收敛速率方面分析了实验结果。还与诸如反向传播网络(BPN)和Kohonen网络(KN)的传统网络的结果进行了比较实验结果。拟议的修改安的结果在绩效措施方面具有很大的意见。

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