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Classifying early and late mild cognitive impairment stages of Alzheimer’s disease by fusing default mode networks extracted with multiple seeds

机译:通过融合多种种子提取的默认模式网络来分类阿尔茨海默病的早期和后期轻度认知障碍阶段

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摘要

Abstract Background The default mode network (DMN) in resting state has been increasingly used in disease diagnosis since it was found in 2001. Prior work has mainly focused on extracting a single DMN with various techniques. However, by using seeding-based analysis with more than one desirable seed, we can obtain multiple DMNs, which are likely to have complementary information, and thus are more promising for disease diagnosis. In the study, we used 18 early mild cognitive impairment (EMCI) participants and 18 late mild cognitive impairment (LMCI) participants of Alzheimer’s disease (AD). First, we used seeding-based analysis with four seeds to extract four DMNs for each subject. Then, we conducted fusion analysis for all different combinations of the four DMNs. Finally, we carried out nonlinear support vector machine classification based on the mixing coefficients from the fusion analysis. Results We found that (1) the four DMNs corresponding to the four different seeds indeed capture different functional regions of each subject; (2) Maps of the four DMNs in the most different joint source from fusion analysis are centered at the regions of the corresponding seeds; (3) Classification results reveal the effectiveness of using multiple seeds to extract DMNs. When using a single seed, the regions of posterior cingulate cortex (PCC) extractions of EMCI and LMCI show the largest difference. For multiple-seed cases, the regions of PCC extraction and right lateral parietal cortex (RLP) extraction provide complementary information for each other in fusion, which improves the classification accuracy. Furthermore, the regions of left lateral parietal cortex (LLP) extraction and RLP extraction also have complementary effect in fusion. In summary, AD diagnosis can be improved by exploiting complementary information of DMNs extracted with multiple seeds. Conclusions In this study, we applied fusion analysis to the DMNs extracted by using different seeds for exploiting the complementary information hidden among the separately extracted DMNs, and the results supported our expectation that using the complementary information can improve classification accuracy.
机译:摘要背景默认模式网络(DMN)在静息状态下已经在疾病诊断被越来越多地使用,因为它是在2001年以前的工作中发现主要集中在提取各种技术单一的DMN。然而,通过使用基于播种分析与一个以上的所希望的种子,我们可以得到多个葡聚糖磁性纳米颗粒,其中有可能具有互补的信息,因此是更有前途的用于疾病的诊断。在这项研究中,我们使用18早期轻度认知障碍(EMCI)参与者和阿尔茨海默氏病(AD)的18晚轻度认知障碍(LMCI)的参与者。首先,我们采用播种为基础的分析与四号种子提取每个主题4个葡聚糖磁性纳米颗粒。然后,我们四个葡聚糖磁性纳米颗粒的所有不同组合进行融合分析。最后,我们进行了非线性支持向量机分类基于从融合分析的混合系数。结果我们发现对应于四个不同的种子(1)的四个葡聚糖磁性纳米颗粒确实捕获每个对象的不同功能区域; (2)在大多数不同的联合信源的四个葡聚糖磁性纳米颗粒从融合分析在相应的种子的区域为中心的地图; (3)分类的结果揭示了使用多个籽提取葡聚糖磁性纳米颗粒的有效性。当使用单一种子,后扣带皮层的区域(PCC)和EMCI的LMCI提取显示的最大差。对于多种子的情况下,PCC提取的区域和右侧顶叶皮层(RLP)萃取提供融合彼此互补的信息,从而提高了分类精度。此外,左外侧顶叶皮层(LLP)提取和RLP萃取也具有互补的在融合效果的区域。总之,AD诊断可以通过利用与多个种子中提取葡聚糖磁性纳米颗粒的互补信息得到改善。结论:在这项研究中,我们应用融合分析,通过使用不同的种子剥削分别提取葡聚糖磁性纳米颗粒中隐藏的补充信息中提取的葡聚糖磁性纳米颗粒,其结果支持了我们的预期,使用补充信息可以提高分类准确率。

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