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Mapping Ventricular Expansion and its Clinical Correlates in Alzheimer's Disease and Mild Cognitive Impairment using Multi-Atlas Fluid Image Alignment

机译:使用多地图集流体图像对准,映射心室扩张及其在阿尔茨海默病和轻度认知障碍中的临床相关性

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We developed an automated analysi's pipeline to analyze 3D changes in ventricular morphology; it provides a highly sensitive quantitative marker of Alzheimer's disease (AD) progression for MRI studies. In the ADNI image database, we created expert delineations of the ventricles, as parametric surface meshes, in 6 brain MRI scans. These 6 images and their embedded surfaces were fluidly registered to MRI scans of 80 AD patients, 80 individuals with mild cognitive impairment (MCI), and 80 healthy controls. Surface averaging within subjects greatly reduced segmentation error. Surface-based statistical maps revealed powerful correlations between surface morphology at baseline and (1) diagnosis, (2) cognitive performance (MMSE scores), (3) depression, and (4) predicted future decline, over a 1 year interval, in 3 standard clinical scores (MMSE, global and sum-of-boxes CDR). We used a false discovery rate method (FDR) method based on cumulative probability plots to find that 40 subjects were sufficient to discriminate AD from normal groups. 60 and 119 subjects, respectively, were required to correlate ventricular enlargement with MMSE and clinical depression. Surface-based FDR, along with multi-atlas fluid registration to reduce segmentation error, will allow researchers to (1) estimate sample sizes with adequate power to detect groups differences, and (2) compare the power of mapping methods head-to-head, optimizing cost-effectiveness for future clinical trials.
机译:我们开发了一种自动分析的管道,分析心室形态的3D变化;它为Alzheimer疾病(AD)进展提供了高度敏感的定量标记,用于MRI研究。在Adni Image数据库中,我们创建了心室的专家描绘,作为参数表面网格,在6脑MRI扫描中。这些6个图像及其嵌入式表面流体登记到80名AD患者的MRI扫描,80名具有轻度认知障碍(MCI)和80个健康对照的个体。在受试者内平均大大降低分割误差。基于表面的统计图显示了基线的表面形态与(1)诊断之间的强大相关性,(2)认知性能(MMSE评分),(3)抑郁症,(4)预测未来下降,在3年内,3标准临床评分(MMSE,全球和箱子CDR)。我们使用了基于累积概率的曲线的错误发现率法(FDR)方法,发现40名受试者足以从正常组判别AD。需要分别与MMSE和临床抑郁症相关的60和119个受试者。基于表面的FDR,以及多地图集流体登记以降低分割误差,将研究人员估算(1)估计样本大小,以检测组差异的足够功率,并且(2)比较映射方法头部的力量,优化未来临床试验的成本效益。

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