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An Embedded Feature Selection and Multi-Class Classification Method for Detection of the Progression from Mild Cognitive Impairment to Alzheimer's Disease

机译:嵌入式特征选择和多级分类方法,用于检测对阿尔茨海默病的轻度认知障碍的进展

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Background: Mild cognitive impairment (MCI) patients are a high-risk group for Alzheimer's disease (AD). Each year, the diagnosed of 10-15% of MCI patients are converted to AD (MCI converters, MCI_C), while some MCI patients remain relatively stable, and unconverted (MCI stable, MCI_S). MCI patients are considered the most suitable population for early intervention treatment for dementia, and magnetic resonance imaging (MRI) is clinically the most recommended means of imaging examination. Therefore, using MRI image features to reliably predict the conversion from MCI to AD can help physicians carry out an effective treatment plan for patients in advance so to prevent or slow down the development of dementia. Methods: We proposed an embedded feature selection method based on the least squares loss function and within-class scatter to select the optimal feature subset. The optimal subsets of features were used for binary classification (AD, MCI_C, MCI_S, normal control (NC) in pairs) based on a support vector machine (SVM), and the optimal 3-class features were used for 3-class classification (AD, MCI_C, MCI_S, NC in triples) based on one-versus-one SVMs (OVOSVMs). To ensure the insensitivity of the results to the random train/test division, a 10-fold cross-validation has been repeated for each classification. Results: Using our method for feature selection, only 7 features were selected from the original 90 features. With using the optimal subset in the SVM, we classified MCI_C from MCI_S with an accuracy, sensitivity, and specificity of 71.17%, 68.33% and 73.97%, respectively. In comparison, in the 3-class classification (AD vs. MCI_C vs. MCI_S) with OVOSVMs, our method selected 24 features, and the classification accuracy was 81.9%. The feature selection results were verified to be identical to the conclusions of the clinical diagnosis. Our feature selection method achieved the best performance, comparing with the existing methods using lasso and fused lasso for feature selection. Conclusion: The results of this study demonstrate the potential of the proposed approach for predicting the conversion from MCI to AD by identifying the affected brain regions undergoing this conversion.
机译:背景:轻度认知障碍(MCI)患者是阿尔茨海默病(AD)的高风险组。每年,诊断为10-15%的MCI患者转换为广告(MCI转换器,MCI_C),而一些MCI患者仍然相对稳定,而不是未转化(MCI稳定,MCI_S)。 MCI患者被认为是最适合早期干预治疗的痴呆症的群体,磁共振成像(MRI)是临床上最推荐的成像检查手段。因此,使用MRI图像特征来可靠地预测从MCI到AD的转换可以帮助医生提前对患者进行有效的治疗计划,以防止或减缓痴呆的发展。方法:我们提出了一种基于最小二乘损耗函数和课堂散射内的嵌入特征选择方法来选择最佳特征子集。基于支持向量机(SVM),基于支持向量机(SVM),使用最佳分类(AD,MCI_C,MCI_S,正常控制(NC)),并且最佳3级功能用于3级分类(基于一个与一个SVMS(OVOSVMS),三分之一的AD,MCI_C,MCI_S,NC)。为了确保结果对随机列车/测试划分的不敏感,对每个分类重复了10倍的交叉验证。结果:使用我们的功能选择方法,仅选中原始90个功能的7个功能。通过使用SVM中的最佳子集,我们分别从MCI_S分为MCI_C,精度,灵敏度和特异性分别为71.17%,68.3%和73.97%。相比之下,在具有OVOSVMS的3级分类(AD与MCI_C与MCI_S)中,我们的方法选择了24个功能,分类准确度为81.9%。特征选择结果验证与临床诊断的结论相同。我们的特征选择方法实现了最佳性能,与使用套索和熔融套索进行特征选择的现有方法相比。结论:本研究的结果表明,通过识别受到遭受这种转换的受影响的大脑区域,提出了预测从MCI转换到AD的方法的潜力。

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