A Graph-Based Integration of Multimodal Brain Imaging Data for the Detection of Early Mild Cognitive Impairment (E-MCI).

Dokyoon Kim, Sungeun Kim, Shannon L Risacher, Li Shen, Marylyn D Ritchie, Michael W Weiner, Andrew J Saykin, Kwangsik Nho
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Abstract

Alzheimer's disease (AD) is the most common cause of dementia in older adults. By the time an individual has been diagnosed with AD, it may be too late for potential disease modifying therapy to strongly influence outcome. Therefore, it is critical to develop better diagnostic tools that can recognize AD at early symptomatic and especially pre-symptomatic stages. Mild cognitive impairment (MCI), introduced to describe a prodromal stage of AD, is presently classified into early and late stages (E-MCI, L-MCI) based on severity. Using a graph-based semi-supervised learning (SSL) method to integrate multimodal brain imaging data and select valid imaging-based predictors for optimizing prediction accuracy, we developed a model to differentiate E-MCI from healthy controls (HC) for early detection of AD. Multimodal brain imaging scans (MRI and PET) of 174 E-MCI and 98 HC participants from the Alzheimer's Disease Neuroimaging Initiative (ADNI) cohort were used in this analysis. Mean targeted region-of-interest (ROI) values extracted from structural MRI (voxel-based morphometry (VBM) and FreeSurfer V5) and PET (FDG and Florbetapir) scans were used as features. Our results show that the graph-based SSL classifiers outperformed support vector machines for this task and the best performance was obtained with 66.8% cross-validated AUC (area under the ROC curve) when FDG and FreeSurfer datasets were integrated. Valid imaging-based phenotypes selected from our approach included ROI values extracted from temporal lobe, hippocampus, and amygdala. Employing a graph-based SSL approach with multimodal brain imaging data appears to have substantial potential for detecting E-MCI for early detection of prodromal AD warranting further investigation.

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基于图形的多模态脑成像数据整合,用于检测早期轻度认知障碍(E-MCI)。
阿尔茨海默病(AD)是导致老年人痴呆症的最常见原因。当一个人被诊断出患有阿尔茨海默病时,潜在的疾病调整疗法可能已经太晚,无法对治疗结果产生重大影响。因此,开发更好的诊断工具,以便在早期症状,尤其是症状前阶段识别老年痴呆症至关重要。轻度认知障碍(MCI)是为了描述注意力缺失症的前驱阶段而引入的,目前根据严重程度分为早期和晚期(E-MCI、L-MCI)。我们使用基于图的半监督学习(SSL)方法整合多模态脑成像数据,并选择有效的成像预测因子以优化预测准确性,从而开发出一种模型,用于区分E-MCI和健康对照(HC),以便早期检测出AD。本分析采用了阿尔茨海默病神经影像学倡议(ADNI)队列中174名E-MCI和98名HC参与者的多模态脑成像扫描(MRI和PET)。从结构 MRI(基于体素的形态计量(VBM)和 FreeSurfer V5)和 PET(FDG 和 Florbetapir)扫描中提取的目标感兴趣区(ROI)平均值被用作特征。我们的研究结果表明,在这项任务中,基于图的 SSL 分类器的性能优于支持向量机,在整合 FDG 和 FreeSurfer 数据集时,交叉验证 AUC(ROC 曲线下面积)为 66.8%,表现最佳。从我们的方法中选出的基于成像的有效表型包括从颞叶、海马和杏仁核提取的 ROI 值。采用基于图形的 SSL 方法和多模态脑成像数据检测 E-MCI 似乎具有很大的潜力,值得进一步研究。
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Mapping Dynamic Changes in Ventricular Volume onto Baseline Cortical Surfaces in Normal Aging, MCI, and Alzheimer's Disease. A Dynamical Clustering Model of Brain Connectivity Inspired by the N -Body Problem. Modeling 4D Changes in Pathological Anatomy using Domain Adaptation: Analysis of TBI Imaging using a Tumor Database. PARP1 gene variation and microglial activity on [11C]PBR28 PET in older adults at risk for Alzheimer's disease. A Graph-Based Integration of Multimodal Brain Imaging Data for the Detection of Early Mild Cognitive Impairment (E-MCI).
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