IEEE/ACM Trans Comput Biol Bioinform. 2024 Jul-Aug;21(4):559-572. doi: 10.1109/TCBB.2022.3204619. Epub 2024 Aug 8.
Multimodal learning is widely used in automated early diagnosis of Alzheimer's disease. However, the current studies are based on an assumption that different modalities can provide more complementary information to help classify the samples from the public dataset Alzheimer's Disease Neuroimaging Initiative (ADNI). In addition, the combination of modalities and different tasks are external factors that affect the performance of multimodal learning. Above all, we summrise three main problems in the early diagnosis of Alzheimer's disease: (i) unimodal vs multimodal; (ii) different combinations of modalities; (iii) classification of different tasks. In this paper, to experimentally verify these three problems, a novel and reproducible multi-classification framework for Alzheimer's disease early automatic diagnosis is proposed to evaluate and verify the above issues. The multi-classification framework contains four layers, two types of feature representation methods, and two types of models to verify these three issues. At the same time, our framework is extensible, that is, it is compatible with new modalities generated by new technologies. Following that, a series of experiments based on the ADNI-1 dataset are conducted and some possible explanations for the early diagnosis of Alzheimer's disease are obtained through multimodal learning. Experimental results show that SNP has the highest accuracy rate of 57.09% in the early diagnosis of Alzheimer's disease. In the modality combination, the addition of Single Nucleotide Polymorphism modality improves the multi-modal machine learning performance by 3% to 7%. Furthermore, we analyse and discuss the most related Region of Interest and Single Nucleotide Polymorphism features of different modalities.
多模态学习被广泛应用于阿尔茨海默病的自动早期诊断。然而,目前的研究基于这样一个假设,即不同的模态可以提供更多的互补信息,以帮助从公共数据集阿尔茨海默病神经影像学倡议 (ADNI) 中对样本进行分类。此外,模态的组合和不同的任务是影响多模态学习性能的外部因素。综上所述,我们总结了阿尔茨海默病早期诊断中的三个主要问题:(i)单模态与多模态;(ii)模态的不同组合;(iii)不同任务的分类。在本文中,为了实验验证这三个问题,提出了一种新颖的、可重复的多分类框架,用于阿尔茨海默病的早期自动诊断,以评估和验证上述问题。多分类框架包含四层,两种类型的特征表示方法,以及两种类型的模型,以验证这三个问题。同时,我们的框架具有可扩展性,即它与新技术产生的新模态兼容。在此基础上,基于 ADNI-1 数据集进行了一系列实验,并通过多模态学习获得了阿尔茨海默病早期诊断的一些可能解释。实验结果表明,SNP 在阿尔茨海默病的早期诊断中具有 57.09%的最高准确率。在模态组合中,添加单核苷酸多态性模态可将多模态机器学习性能提高 3%至 7%。此外,我们分析和讨论了不同模态中最相关的感兴趣区域和单核苷酸多态性特征。