Chen Yonglin, Wang Huabin, Zhang Gong, Liu Xiao, Huang Wei, Han Xianjun, Li Xuejun, Martin Melanie, Tao Liang
IEEE J Biomed Health Inform. 2023 Apr;27(4):1735-1746. doi: 10.1109/JBHI.2022.3231905. Epub 2023 Apr 4.
Brain 18F-FDG PET images are commonly-known materials for effectively predicting Alzheimer's disease (AD). However, the data volume of PET is usually insufficient, which is unfavorable to train an accurate AD prediction networks. Furthermore, the PET image is noisy with low signal-to-noise ratio, and simultaneously the feature (metabolic abnormality) used for predicting AD in PET image is not always obvious. Therefore, a contrastive-based learning method is proposed to address the challenges of PET image inherently possessed. Firstly, the slices of 3D PET image are amplified by cropping the image of anchors (i.e., an augmented version of the same image) to generate extended training data. Meanwhile, contrastive loss is adopted to enlarge inter-class feature distances and reduce intra-class feature differences using subject fuzzy labels as supervised information. Secondly, we construct a double convolutional hybrid attention module to enhance the network to learn different perceptual domains where two convolutional layers with different convolutional kernels ($7\times 7$ and $5\times 5$) are constructed. Moreover, we recommend a diagnosis mechanism by analyzing the consistency of predicted result for PET slices alone with clinical neuropsychological assessment to achieve a better AD diagnosis. The experimental results show that the proposed method outperforms the state-of-the-arts for brain 18F-FDG PET images, and hence demonstrate the advantage of the method in effectively predicting AD.
脑部18F-FDG PET图像是有效预测阿尔茨海默病(AD)的常用材料。然而,PET的数据量通常不足,不利于训练准确的AD预测网络。此外,PET图像噪声大、信噪比低,同时用于预测PET图像中AD的特征(代谢异常)并不总是很明显。因此,提出了一种基于对比学习的方法来应对PET图像固有的挑战。首先,通过裁剪锚点图像(即同一图像的增强版本)来放大3D PET图像的切片,以生成扩展的训练数据。同时,采用对比损失,以主体模糊标签作为监督信息,扩大类间特征距离,减少类内特征差异。其次,我们构建了一个双卷积混合注意力模块,以增强网络学习不同的感知域,其中构建了具有不同卷积核(7×7和5×5)的两个卷积层。此外,我们通过分析PET切片单独的预测结果与临床神经心理学评估的一致性,推荐了一种诊断机制,以实现更好的AD诊断。实验结果表明,所提方法优于脑部18F-FDG PET图像的现有技术,从而证明了该方法在有效预测AD方面的优势。