Biswas Sangeeta, Khan Md Iqbal Aziz, Hossain Md Tanvir, Biswas Angkan, Nakai Takayoshi, Rohdin Johan
Faculty of Engineering, University of Rajshahi, Rajshahi 6205, Bangladesh.
CAPM Company Limited, Bonani, Dhaka 1213, Bangladesh.
Life (Basel). 2022 Jun 28;12(7):973. doi: 10.3390/life12070973.
Color fundus photographs are the most common type of image used for automatic diagnosis of retinal diseases and abnormalities. As all color photographs, these images contain information about three primary colors, i.e., red, green, and blue, in three separate color channels. This work aims to understand the impact of each channel in the automatic diagnosis of retinal diseases and abnormalities. To this end, the existing works are surveyed extensively to explore which color channel is used most commonly for automatically detecting four leading causes of blindness and one retinal abnormality along with segmenting three retinal landmarks. From this survey, it is clear that all channels together are typically used for neural network-based systems, whereas for non-neural network-based systems, the green channel is most commonly used. However, from the previous works, no conclusion can be drawn regarding the importance of the different channels. Therefore, systematic experiments are conducted to analyse this. A well-known U-shaped deep neural network (U-Net) is used to investigate which color channel is best for segmenting one retinal abnormality and three retinal landmarks.
彩色眼底照片是用于视网膜疾病和异常自动诊断的最常见图像类型。与所有彩色照片一样,这些图像在三个独立的颜色通道中包含有关三种原色(即红色、绿色和蓝色)的信息。这项工作旨在了解每个通道在视网膜疾病和异常自动诊断中的影响。为此,广泛调查了现有工作,以探索哪个颜色通道最常用于自动检测四种主要致盲原因和一种视网膜异常,以及分割三个视网膜标志。从这项调查中可以清楚地看出,所有通道通常一起用于基于神经网络的系统,而对于非基于神经网络的系统,绿色通道最常被使用。然而,从以前的工作中,无法得出关于不同通道重要性的结论。因此,进行了系统实验来分析这一点。使用一个著名的U形深度神经网络(U-Net)来研究哪个颜色通道最适合分割一种视网膜异常和三个视网膜标志。