Wavelet image scattering based glaucoma detection.

Hafeez Alani Agboola, Jesuloluwa Emmanuel Zaccheus
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引用次数: 4

Abstract

Background: The ever-growing need for cheap, simple, fast, and accurate healthcare solutions spurred a lot of research activities which are aimed at the reliable deployment of artificial intelligence in the medical fields. However, this has proved to be a daunting task especially when looking to make automated diagnoses using biomedical image data. Biomedical image data have complex patterns which human experts find very hard to comprehend. Against this backdrop, we applied a representation or feature learning algorithm: Invariant Scattering Convolution Network or Wavelet scattering Network to retinal fundus images and studied the the efficacy of the automatically extracted features therefrom for glaucoma diagnosis/detection. The influence of wavelet scattering network parameter settings as well as 2-D channel image type on the detection correctness is also examined. Our work is a distinct departure from the usual method where wavelet transform is applied to pre-processed retinal fundus images and handcrafted features are extracted from the decomposition results. Here, the RIM-ONE DL image dataset was fed into a wavelet scattering network developed in the Matlab environment to achieve a stage-wise decomposition process called wavelet scattering of the retinal fundus images thereby, automatically learning features from the images. These features were then used to build simple and computationally cheap classification algorithms.

Results: Maximum detection correctness of 98% was achieved on the held-out test set. Detection correctness is highly sensitive to scattering network parameter setting and 2-D channel image type.

Conclusion: A superficial comparison of the classification results obtained from our work and those obtained using a convolutional neural network underscores the potentiality of the proposed method for glaucoma detection.

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基于小波图像散射的青光眼检测。
背景:对廉价、简单、快速和准确的医疗保健解决方案日益增长的需求刺激了许多旨在将人工智能可靠地部署在医疗领域的研究活动。然而,这已被证明是一项艰巨的任务,特别是在寻求使用生物医学图像数据进行自动诊断时。生物医学图像数据具有复杂的模式,人类专家很难理解。在此背景下,我们将一种表征或特征学习算法:不变散射卷积网络或小波散射网络应用于视网膜眼底图像,并研究其自动提取的特征在青光眼诊断/检测中的有效性。研究了小波散射网络参数设置和二维通道图像类型对检测正确性的影响。我们的工作与通常的方法不同,通常的方法是将小波变换应用于预处理的视网膜眼底图像,并从分解结果中提取手工制作的特征。在这里,将RIM-ONE DL图像数据集输入到Matlab环境下开发的小波散射网络中,实现视网膜眼底图像的分阶段分解过程,称为小波散射,从而自动从图像中学习特征。然后使用这些特征来构建简单且计算成本低廉的分类算法。结果:在hold -out测试集上实现了98%的最大检测正确性。检测正确性对散射网络参数设置和二维通道图像类型高度敏感。结论:从我们的工作中获得的分类结果与使用卷积神经网络获得的分类结果进行表面比较,强调了所提出的青光眼检测方法的潜力。
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