Deep Learning-Based Diagnosis Algorithm for Alzheimer's Disease.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Zhenhao Jin, Junjie Gong, Minghui Deng, Piaoyi Zheng, Guiping Li
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引用次数: 0

Abstract

Alzheimer's disease (AD), a degenerative condition affecting the central nervous system, has witnessed a notable rise in prevalence along with the increasing aging population. In recent years, the integration of cutting-edge medical imaging technologies with forefront theories in artificial intelligence has dramatically enhanced the efficiency of identifying and diagnosing brain diseases such as AD. This paper presents an innovative two-stage automatic auxiliary diagnosis algorithm for AD, based on an improved 3D DenseNet segmentation model and an improved MobileNetV3 classification model applied to brain MR images. In the segmentation network, the backbone network was simplified, the activation function and loss function were replaced, and the 3D GAM attention mechanism was introduced. In the classification network, firstly, the CA attention mechanism was added to enhance the model's ability to capture positional information of disease features; secondly, dilated convolutions were introduced to extract richer features from the input feature maps; and finally, the fully connected layer of MobileNetV3 was modified and the idea of transfer learning was adopted to improve the model's feature extraction capability. The results of the study showed that the proposed approach achieved classification accuracies of 97.85% for AD/NC, 95.31% for MCI/NC, 93.96% for AD/MCI, and 92.63% for AD/MCI/NC, respectively, which were 3.1, 2.8, 2.6, and 2.8 percentage points higher than before the improvement. Comparative and ablation experiments have validated the proposed classification performance of this method, demonstrating its capability to facilitate an accurate and efficient automated auxiliary diagnosis of AD, offering a deep learning-based solution for it.

基于深度学习的阿尔茨海默病诊断算法。
阿尔茨海默病(AD)是一种影响中枢神经系统的退行性疾病,随着人口老龄化的加剧,其患病率显著上升。近年来,尖端医学成像技术与人工智能前沿理论的融合,极大地提高了对AD等脑部疾病的识别和诊断效率。本文提出了一种基于改进的三维DenseNet分割模型和改进的MobileNetV3分类模型的两阶段AD自动辅助诊断算法。在分割网络中,对主干网络进行了简化,替换了激活函数和损失函数,引入了三维GAM注意机制。在分类网络中,首先加入CA注意机制,增强模型捕捉疾病特征位置信息的能力;其次,引入扩展卷积,从输入特征映射中提取更丰富的特征;最后,对MobileNetV3的全连接层进行修改,采用迁移学习的思想提高模型的特征提取能力。研究结果表明,该方法对AD/NC的分类准确率为97.85%,对MCI/NC的分类准确率为95.31%,对AD/MCI的分类准确率为93.96%,对AD/MCI/NC的分类准确率为92.63%,分别比改进前提高了3.1、2.8、2.6和2.8个百分点。对比和消融实验验证了该方法的分类性能,证明了该方法能够实现准确、高效的AD自动辅助诊断,为AD提供了一种基于深度学习的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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