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Multi-Modal MRI Analysis with Disease-Specific Spatial Filtering: Initial Testing to Predict Mild Cognitive Impairment Patients Who Convert to Alzheimer’s Disease

机译:具有特定疾病空间过滤功能的多模态MRI分析:初步测试可预测轻度认知障碍患者转化为阿尔茨海默氏病的情况

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摘要

Background: Alterations of the gray and white matter have been identified in Alzheimer’s disease (AD) by structural magnetic resonance imaging (MRI) and diffusion tensor imaging (DTI). However, whether the combination of these modalities could increase the diagnostic performance is unknown. Methods: Participants included 19 AD patients, 22 amnestic mild cognitive impairment (aMCI) patients, and 22 cognitively normal elderly (NC). The aMCI group was further divided into an “aMCI-converter” group (converted to AD dementia within 3 years), and an “aMCI-stable” group who did not convert in this time period. A T1-weighted image, a T2 map, and a DTI of each participant were normalized, and voxel-based comparisons between AD and NC groups were performed. Regions-of-interest, which defined the areas with significant differences between AD and NC, were created for each modality and named “disease-specific spatial filters” (DSF). Linear discriminant analysis was used to optimize the combination of multiple MRI measurements extracted by DSF to effectively differentiate AD from NC. The resultant DSF and the discriminant function were applied to the aMCI group to investigate the power to differentiate the aMCI-converters from the aMCI-stable patients. Results: The multi-modal approach with AD-specific filters led to a predictive model with an area under the receiver operating characteristic curve (AUC) of 0.93, in differentiating aMCI-converters from aMCI-stable patients. This AUC was better than that of a single-contrast-based approach, such as T1-based morphometry or diffusion anisotropy analysis. Conclusion: The multi-modal approach has the potential to increase the value of MRI in predicting conversion from aMCI to AD.
机译:背景:已经通过结构磁共振成像(MRI)和扩散张量成像(DTI)在阿尔茨海默病(AD)中发现了灰白色物质的变化。但是,这些方式的组合是否可以提高诊断性能尚不清楚。方法:参与者包括19名AD患者,22名轻度轻度认知障碍(aMCI)患者和22名认知正常的老年人(NC)。 aMCI组又分为“ aMCI转化者”组(在3年内转化为AD痴呆)和“ aMCI稳定”组,在此期间未转化。标准化每个参与者的T1加权图像,T2图和DTI,并在AD和NC组之间进行基于体素的比较。为每个模态创建了感兴趣的区域,该区域定义了AD和NC之间的显着差异,并被命名为“疾病特定的空间过滤器”(DSF)。线性判别分析用于优化DSF提取的多个MRI测量值的组合,以有效区分AD和NC。将所得的DSF和判别函数应用于aMCI组,以研究区分aMCI转化子与aMCI稳定患者的能力。结果:使用AD专用滤波器的多模式方法可以将接收器工作特征曲线(AUC)下方的面积设为0.93,从而将aMCI转化器与aMCI稳定的患者区分开来。该AUC优于基于单对比度的方法,如基于T1的形态学或扩散各向异性分析。结论:多模式方法有可能增加MRI在预测从aMCI到AD转化中的价值。

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