Cheung Eva Y W, Wu Ricky W K, Chu Ellie S M, Mak Henry K F
School of Medical and Health Sciences, Tung Wah College, 31 Wylie Road, HoManTin, Hong Kong.
Department of Biological and Biomedical Sciences, School of Health and Life Sciences, Glasgow Caledonian University, Glasgow G4 0BA, UK.
Biomedicines. 2024 Apr 18;12(4):896. doi: 10.3390/biomedicines12040896.
MRI magnetization-prepared rapid acquisition (MPRAGE) is an easily available imaging modality for dementia diagnosis. Previous studies suggested that volumetric analysis plays a crucial role in various stages of dementia classification. In this study, volumetry, radiomics and demographics were integrated as inputs to develop an artificial intelligence model for various stages, including Alzheimer's disease (AD), mild cognitive decline (MCI) and cognitive normal (CN) dementia classifications.
The Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset was separated into training and testing groups, and the Open Access Series of Imaging Studies (OASIS) dataset was used as the second testing group. The MRI MPRAGE image was reoriented via statistical parametric mapping (SPM12). Freesurfer was employed for brain segmentation, and 45 regional brain volumes were retrieved. The 3D Slicer software was employed for 107 radiomics feature extractions from within the whole brain. Data on patient demographics were collected from the datasets. The feed-forward neural network (FFNN) and the other most common artificial intelligence algorithms, including support vector machine (SVM), ensemble classifier (EC) and decision tree (DT), were used to build the models using various features.
The integration of brain regional volumes, radiomics and patient demographics attained the highest overall accuracy at 76.57% and 73.14% in ADNI and OASIS testing, respectively. The subclass accuracies in MCI, AD and CN were 78.29%, 89.71% and 85.14%, respectively, in ADNI testing, as well as 74.86%, 88% and 83.43% in OASIS testing. Balanced sensitivity and specificity were obtained for all subclass classifications in MCI, AD and CN.
The FFNN yielded good overall accuracy for MCI, AD and CN categorization, with balanced subclass accuracy, sensitivity and specificity. The proposed FFNN model is simple, and it may support the triage of patients for further confirmation of the diagnosis.
MRI磁化准备快速采集(MPRAGE)是一种易于获得的用于痴呆诊断的成像方式。先前的研究表明,体积分析在痴呆分类的各个阶段都起着至关重要的作用。在本研究中,将体积测量、放射组学和人口统计学作为输入,以开发一种用于各个阶段的人工智能模型,包括阿尔茨海默病(AD)、轻度认知障碍(MCI)和认知正常(CN)的痴呆分类。
将阿尔茨海默病神经影像学倡议(ADNI)数据集分为训练组和测试组,并将开放获取影像研究系列(OASIS)数据集用作第二个测试组。通过统计参数映射(SPM12)对MRI MPRAGE图像进行重新定向。使用FreeSurfer进行脑部分割,并获取45个脑区体积。使用3D Slicer软件从全脑内提取107个放射组学特征。从数据集中收集患者人口统计学数据。使用前馈神经网络(FFNN)以及其他最常见的人工智能算法,包括支持向量机(SVM)、集成分类器(EC)和决策树(DT),使用各种特征构建模型。
脑区体积、放射组学和患者人口统计学的整合在ADNI测试和OASIS测试中分别达到了最高总体准确率,分别为76.57%和73.14%。在ADNI测试中,MCI、AD和CN的亚类准确率分别为78.29%、89.71%和85.14%,在OASIS测试中分别为74.86%、88%和83.43%。在MCI、AD和CN的所有亚类分类中均获得了平衡的敏感性和特异性。
FFNN在MCI、AD和CN分类中产生了良好的总体准确率,亚类准确率、敏感性和特异性均达到平衡。所提出的FFNN模型简单,可能有助于对患者进行分流以进一步确诊。