利用高光谱眼底镜图像对阿尔茨海默病进行分级

H. Nguyen, Y. Tsao, Songcun Lu, Hsiang-Chen Wang
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摘要

检测阿尔茨海默病给医学领域带来了巨大挑战。高光谱成像技术通过分析病变视网膜的光谱信息,为识别该疾病提供了一种很有前景的方法。这项研究利用了 137 名患者的 3,256 张眼科视网膜图像,并应用高光谱成像技术捕捉这些图像中特定区域的光谱数据。研究引入了深度学习模型,包括 ResNet50、Inception v3、GoogLeNet 和 EfficientNet,并对病变检测的准确性进行了评估。在训练阶段,这些人工神经网络在使用原始图像和高光谱图像进行病变检测时表现出了不同的准确性。例如,ResNet50 使用原始图像的准确率为 80%,使用高光谱图像的准确率为 84%,而 Inception v3 使用两种图像的准确率均为 80%。GoogLeNet 对原始图像的准确率为 81%,对高光谱图像的准确率提高到 83%;EfficientNet 对原始图像的准确率为 80%,对高光谱图像的准确率为 82%。高光谱成像与深度学习模型的结合有望通过眼科图像分析提高阿尔茨海默病的检测能力,与原始图像相比,高光谱图像表现出更高的功效。
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Grade classification of Alzheimer's disease using hyperspectral ophthalmoscope images
Detecting Alzheimer’s disease presents considerable challenges in the medical field. Hyperspectral imaging offers a promising approach to identifying the disease by analyzing spectral information from the diseased retina. This study utilized 3,256 ophthalmoscopic images from 137 patients and applied hyperspectral imaging technology to capture spectral data from specific regions within these images. Deep learning models, including ResNet50, Inception v3, GoogLeNet, and EfficientNet, were introduced and evaluated for lesion detection accuracy. In the training phase, these artificial neural networks showed varying accuracies in lesion detection using both original and hyperspectral images. For instance, ResNet50 achieved 80% accuracy with original images and 84% with hyperspectral images, while Inception v3 consistently achieved 80% accuracy with both types of images. GoogLeNet demonstrated 81% accuracy with original images, improving to 83% with hyperspectral images, and EfficientNet recorded accuracies of 80% for original images and 82% for hyperspectral images. The combination of hyperspectral imaging and deep learning models shows promise in enhancing Alzheimer’s disease detection through ophthalmoscopic image analysis, with hyperspectral images exhibiting higher efficacy compared to original images.
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