利用卷积神经网络中的多尺度注意块和数据增强技术诊断青光眼

Hamid Reza Khajeha, Mansoor Fateh, Vahid Abolghasemi
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引用次数: 0

摘要

青光眼是一种因视神经受损而导致视力下降的眼科疾病。青光眼通常没有症状,因此及时诊断和治疗至关重要。在本文中,我们提出了一种利用深度神经网络诊断青光眼的新方法,该方法在眼底图像上进行了训练。我们提出的方法涉及几个关键步骤,包括数据采样、预处理和分类。为了解决数据不平衡问题,我们在深度神经网络模型中结合使用了合适的图像增强技术和多尺度注意力区块(MAS Block)架构。MAS Block 是一种特定的 CNN 架构设计,允许多个不同大小的卷积滤波器并行捕捉多个尺度的特征。这将防止过拟合问题,并提高检测精度。通过对 ACRIMA 数据集的广泛实验,我们证明了我们提出的方法在诊断青光眼方面达到了很高的准确率。值得注意的是,在以往的研究中,我们的准确率最高(97.18%)。这项研究的结果揭示了我们的方法在改善青光眼早期检测方面的潜力,并在未来为医生和临床医师提供更有效的治疗策略。由于青光眼通常没有症状,因此及时诊断对青光眼的治疗起着至关重要的作用。我们提出的利用深度神经网络的方法有望提高诊断的准确性,并帮助医护人员做出明智的决定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis of glaucoma using multi‐scale attention block in convolution neural network and data augmentation techniques
Glaucoma is defined as an eye disease leading to vision loss due to the optic nerve damage. It is often asymptomatic, thus, timely diagnosis and treatment is crucial. In this article, we propose a novel approach for diagnosing glaucoma using deep neural networks, trained on fundus images. Our proposed approach involves several key steps, including data sampling, pre‐processing, and classification. To address the data imbalance issue, we employ a combination of suitable image augmentation techniques and Multi‐Scale Attention Block (MAS Block) architecture in our deep neural network model. The MAS Block is a specific architecture design for CNNs that allows multiple convolutional filters of various sizes to capture features at several scales in parallel. This will prevent the over‐fitting problem and increases the detection accuracy. Through extensive experiments with the ACRIMA dataset, we demonstrate that our proposed approach achieves high accuracy in diagnosing glaucoma. Notably, we recorded the highest accuracy (97.18%) among previous studies. The results from this study reveal the potential of our approach to improve early detection of glaucoma and offer more effective treatment strategies for doctors and clinicians in the future. Timely diagnosis plays a crucial role in managing glaucoma since it is often asymptomatic. Our proposed method utilizing deep neural networks shows promise in enhancing diagnostic accuracy and aiding healthcare professionals in making informed decisions.
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