Wei Shicheng, Yang Wencheng, Wang Eugene, Wang Song, Li Yan
School of Mathematics and Computing, University of Southern Queensland, 487-535 West Street, Toowoomba, QLD 4350 Australia.
Personalised Oncology Division, The Walter and Eliza Hall Institute of Medical Research, Parkville, VIC Australia.
Health Inf Sci Syst. 2025 Jan 17;13(1):17. doi: 10.1007/s13755-024-00333-3. eCollection 2025 Dec.
This paper aims to develop a three-dimensional (3D) Alzheimer's disease (AD) prediction method, thereby bettering current predictive methods, which struggle to fully harness the potential of structural magnetic resonance imaging (sMRI) data.
Traditional convolutional neural networks encounter pressing difficulties in accurately focusing on the AD lesion structure. To address this issue, a 3D decoupling, self-attention network for AD prediction is proposed. Firstly, a multi-scale decoupling block is designed to enhance the network's ability to extract fine-grained features by segregating convolutional channels. Subsequently, a self-attention block is constructed to extract and adaptively fuse features from three directions (sagittal, coronal and axial), so that more attention is geared towards brain lesion areas. Finally, a clustering loss function is introduced and combined with the cross-entropy loss to form a joint loss function for enhancing the network's ability to discriminate between different sample types.
The accuracy of our model is 0.985 for the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset and 0.963 for the Australian Imaging, Biomarker & Lifestyle (AIBL) dataset, both of which are higher than the classification accuracy of similar tasks in this category. This demonstrates that our model can accurately distinguish between normal control (NC) and Alzheimer's Disease (AD), as well as between stable mild cognitive impairment (sMCI) and progressive mild cognitive impairment (pMCI).
The proposed AD prediction network exhibits competitive performance when compared with state-of-the-art methods. The proposed model successfully addresses the challenges of dealing with 3D sMRI image data and the limitations stemming from inadequate information in 2D sections, advancing the utility of predictive methods for AD diagnosis and treatment.
本文旨在开发一种三维(3D)阿尔茨海默病(AD)预测方法,从而改进当前的预测方法,当前方法难以充分利用结构磁共振成像(sMRI)数据的潜力。
传统卷积神经网络在准确聚焦AD病变结构方面面临紧迫困难。为解决此问题,提出一种用于AD预测的3D解耦自注意力网络。首先,设计一个多尺度解耦块,通过分离卷积通道来增强网络提取细粒度特征的能力。随后,构建一个自注意力块,从三个方向(矢状面、冠状面和横断面)提取并自适应融合特征,以便更多关注脑病变区域。最后,引入聚类损失函数并与交叉熵损失相结合,形成联合损失函数,以增强网络区分不同样本类型的能力。
我们的模型在阿尔茨海默病神经影像倡议(ADNI)数据集上的准确率为0.985,在澳大利亚影像、生物标志物与生活方式(AIBL)数据集上的准确率为0.963,两者均高于该类别中类似任务的分类准确率。这表明我们的模型能够准确区分正常对照(NC)和阿尔茨海默病(AD),以及稳定轻度认知障碍(sMCI)和进展性轻度认知障碍(pMCI)。
与现有最先进方法相比,所提出的AD预测网络具有竞争性能。所提出的模型成功解决了处理3D sMRI图像数据的挑战以及二维切片中信息不足所带来的局限性,推动了AD诊断和治疗预测方法的实用性。