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Prediction of Conversion from Mild Cognitive Impairment to Alzheimer's Disease Using MRI and Structural Network Features

机译:MRI和结构网络特征预测从轻度认知障碍向阿尔茨海默氏病的转化

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Optimized magnetic resonance imaging (MRI) features and abnormalities of brain network architectures may allow earlier detection and accurate prediction of the progression from mild cognitive impairment (MCI) to Alzheimer's disease (AD). In this study, we proposed a classification framework to distinguish MCI converters (MCIc) from MCI non-converters (MCInc) by using a combination of FreeSurfer-derived MRI features and nodal features derived from the thickness network. At the feature selection step, we first employed sparse linear regression with stability selection, for the selection of discriminative features in the iterative combinations of MRI and network measures. Subsequently the top K features of available combinations were selected as optimal features for classification. To obtain unbiased results, support vector machine (SVM) classifiers with nested cross validation were used for classification. The combination of 10 features including those from MRI and network measures attained accuracies of 66.04, 76.39, 74.66, and 73.91% for mixed conversion time, 6, 12, and 18 months before diagnosis of probable AD, respectively. Analysis of the diagnostic power of different time periods before diagnosis of probable AD showed that short-term prediction (6 and 12 months) achieved more stable and higher AUC scores compared with long-term prediction (18 months), with K -values from 1 to 30. The present results suggest that meaningful predictors composed of MRI and network measures may offer the possibility for early detection of progression from MCI to AD.
机译:优化的磁共振成像(MRI)功能和大脑网络体系结构异常可以允许从轻度认知障碍(MCI)到阿尔茨海默氏病(AD)的进展的早期检测和准确预测。在这项研究中,我们提出了一个分类框架,通过结合使用FreeSurfer派生的MRI特征和从厚度网络得出的节点特征,将MCI转换器(MCIc)与MCI非转换器(MCInc)区分开。在特征选择步骤中,我们首先将稀疏线性回归与稳定性选择结合起来,用于在MRI和网络度量的迭代组合中选择判别特征。随后,将可用组合的前K个特征选择为分类的最佳特征。为了获得公正的结果,将具有嵌套交叉验证的支持向量机(SVM)分类器用于分类。包括MRI和网络测量在内的10个特征的组合在诊断可能的AD之前的混合转换时间分别为66.04%,76.39、74.66和73.91%,准确度分别为6、12和18个月。对可能的AD诊断之前不同时间段的诊断能力的分析表明,与长期预测(18个月)相比,短期预测(6和12个月)获得了更稳定和更高的AUC评分,K值从1开始30至30。目前的结果表明,由MRI和网络测量组成的有意义的预测因子可能为早期检测从MCI到AD的进展提供可能性。

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