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首页> 外文期刊>NeuroImage >Multivariate analysis of MRI data for Alzheimer's disease, mild cognitive impairment and healthy controls.
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Multivariate analysis of MRI data for Alzheimer's disease, mild cognitive impairment and healthy controls.

机译:阿尔茨海默氏病,轻度认知障碍和健康对照的MRI数据的多变量分析。

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We have used multivariate data analysis, more specifically orthogonal partial least squares to latent structures (OPLS) analysis, to discriminate between Alzheimer's disease (AD), mild cognitive impairment (MCI) and elderly control subjects combining both regional and global magnetic resonance imaging (MRI) volumetric measures. In this study, 117 AD patients, 122 MCI patients and 112 control subjects (from the AddNeuroMed study) were included. High-resolution sagittal 3D MP-RAGE datasets were acquired from each subject. Automated regional segmentation and manual outlining of the hippocampus were performed for each image. Altogether this yielded volumes of 24 different anatomically defined structures which were used for OPLS analysis. 17 randomly selected AD patients, 12 randomly selected control subjects and the 22 MCI subjects who converted to AD at 1-year follow up were excluded from the initial OPLS analysis to provide a small external test set for model validation. Comparing AD with controls we found a sensitivity of 87% and a specificity of 90% using hippocampal measures alone. Combining both global and regional measures resulted in a sensitivity of 90% and a specificity of 94%. This increase in sensitivity and specificity resulted in an increase of the positive likelihood ratio from 9 to 15. From the external test set, the model predicted 82% of the AD patients and 83% of the control subjects correctly. Finally, 73% of the MCI subjects which converted to AD at 1 year follow-up were shown to resemble AD patients more closely than controls. This method shows potential for distinguishing between different patient groups. Combining the different MRI measures together resulted in a significantly better classification than using them separately. OPLS also shows potential for predicting conversion from MCI to AD.
机译:我们使用了多元数据分析,更具体地说是将正交偏最小二乘与潜在结构正交(OPLS)分析,以结合区域和全局磁共振成像(MRI)来区分阿尔茨海默氏病(AD),轻度认知障碍(MCI)和老年人)体积测量。在这项研究中,包括117位AD患者,122位MCI患者和112位对照对象(来自AddNeuroMed研究)。从每个对象中获取高分辨率矢状3D MP-RAGE数据集。对每个图像进行海马的自动区域分割和手动概述。总共产生了体积的24种不同的解剖学定义的结构,用于OPLS分析。在最初的OPLS分析中排除了17位随机选择的AD患者,12位随机选择的对照对象和22位在1年随访后转变为AD的MCI对象,以提供用于模型验证的小型外部测试集。将AD与对照进行比较,我们发现仅使用海马措施的敏感性为87%,特异性为90%。结合全球和区域措施,可得出90%的敏感性和94%的特异性。敏感性和特异性的增加导致阳性可能性比从9增加到15。根据外部测试集,该模型正确预测了82%的AD患者和83%的对照对象。最后,在1年的随访中转化为AD的MCI受试者中,有73%的受试者比对照组更类似于AD患者。该方法显示出区分不同患者组的潜力。将不同的MRI措施组合在一起所产生的分类效果明显优于单独使用它们。 OPLS还显示了预测从MCI到AD转换的潜力。

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