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Automated multi-level pathology identification techniques for abnormal retinal images using artificial neural networks.

机译:使用人工神经网络对异常视网膜图像进行自动化的多级病理学识别技术。

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AIM: To automatically classify abnormal retinal images from four different categories using artificial neural networks with a high degree of accuracy in minimal time to assist the ophthalmologist in subsequent treatment planning. METHODS: We used 420 abnormal retinal images from four different categories (non-proliferative diabetic retinopathy, central retinal vein occlusion, central serous retinopathy and central neo-vascularisation membrane). Green channel extraction, histogram equalisation and median filtering were used as image pre-processing techniques, followed by texture-based feature extraction. The application of Kohonen neural networks for pathology identification was also explored. RESULTS: The approach described yielded an average classification accuracy of 97.7% with +/-0.8% deviation for individual categories. The average sensitivity and the specificity values are 96% and 98%, respectively. The time taken by the Kohonen neural network to achieve these accurate results was 300+/-40 s for the 420 images. CONCLUSION: This study suggests that the approach described can act as a diagnostic tool for retinal disease identification. Simultaneous multi-level classification of abnormal images is possible with high accuracy using artificial neural networks. The results also suggest that the approach is time-efficient, which is essential for ophthalmologic applications.
机译:目的:使用人工神经网络在最短的时间内以高度准确度自动对来自四个不同类别的异常视网膜图像进行分类,以协助眼科医生进行后续治疗计划。方法:我们使用了来自四个不同类别的420幅异常视网膜图像(非增生性糖尿病性视网膜病变,视网膜中央静脉阻塞,中央浆液性视网膜病变和中央新血管形成膜)。绿色通道提取,直方图均衡和中值滤波被用作图像预处理技术,然后进行基于纹理的特征提取。还探讨了Kohonen神经网络在病理学识别中的应用。结果:所描述的方法产生的平均分类准确率为97.7%,单个类别的平均偏差为+/- 0.8%。平均灵敏度和特异性值分别为96%和98%。对于420张图像,Kohonen神经网络获得这些准确结果所花费的时间为300 +/- 40 s。结论:这项研究表明所描述的方法可以作为视网膜疾病鉴定的诊断工具。使用人工神经网络可以同时对异常图像进行多级分类。结果还表明该方法省时,这对于眼科应用是必不可少的。

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