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Resting-State Multi-Spectrum Functional Connectivity Networks for Identification of MCI Patients

机译:静息状态多光谱功能连接网络用于MCI患者识别

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摘要

In this paper, a high-dimensional pattern classification framework, based on functional associations between brain regions during resting-state, is proposed to accurately identify MCI individuals from subjects who experience normal aging. The proposed technique employs multi-spectrum networks to characterize the complex yet subtle blood oxygenation level dependent (BOLD) signal changes caused by pathological attacks. The utilization of multi-spectrum networks in identifying MCI individuals is motivated by the inherent frequency-specific properties of BOLD spectrum. It is believed that frequency specific information extracted from different spectra may delineate the complex yet subtle variations of BOLD signals more effectively. In the proposed technique, regional mean time series of each region-of-interest (ROI) is band-pass filtered ( Hz) before it is decomposed into five frequency sub-bands. Five connectivity networks are constructed, one from each frequency sub-band. Clustering coefficient of each ROI in relation to the other ROIs are extracted as features for classification. Classification accuracy was evaluated via leave-one-out cross-validation to ensure generalization of performance. The classification accuracy obtained by this approach is 86.5%, which is an increase of at least 18.9% from the conventional full-spectrum methods. A cross-validation estimation of the generalization performance shows an area of 0.863 under the receiver operating characteristic (ROC) curve, indicating good diagnostic power. It was also found that, based on the selected features, portions of the prefrontal cortex, orbitofrontal cortex, temporal lobe, and parietal lobe regions provided the most discriminant information for classification, in line with results reported in previous studies. Analysis on individual frequency sub-bands demonstrated that different sub-bands contribute differently to classification, providing extra evidence regarding frequency-specific distribution of BOLD signals. Our MCI classification framework, which allows accurate early detection of functional brain abnormalities, makes an important positive contribution to the treatment management of potential AD patients.
机译:本文提出了一种基于高维模式分类框架,该模型基于静止状态下大脑区域之间的功能关联,可以从经历正常衰老的受试者中准确识别MCI个人。所提出的技术采用多光谱网络来表征由病理性攻击引起的复杂但微妙的血液氧合水平依赖性(BOLD)信号变化。 BOLD频谱固有的特定于频率的特性促使人们使用多频谱网络来识别MCI个人。可以相信,从不同频谱中提取的特定频率信息可以更有效地描绘BOLD信号的复杂而细微的变化。在提出的技术中,每个感兴趣区域(ROI)的区域平均时间序列在分解为五个频率子带之前都经过了带通滤波(Hz)。构建了五个连接网络,每个频率子带一个。提取每个ROI相对于其他ROI的聚类系数作为用于分类的特征。通过留一法交叉验证来评估分类准确性,以确保性能的通用性。通过这种方法获得的分类精度为86.5%,比常规的全光谱方法至少提高了18.9%。泛化性能的交叉验证估计显示,接收器工作特性(ROC)曲线下的面积为0.863,表明具有良好的诊断能力。还发现,基于选定的特征,前额叶皮层,眶额叶皮层,颞叶和顶叶区域的部分提供了最有区别的分类信息,这与先前研究报告的结果一致。对单个频率子带的分析表明,不同的子带对分类的贡献不同,为有关BOLD信号的特定频率分布提供了额外的证据。我们的MCI分类框架可以准确地早期检测功能性脑部异常,对潜在AD患者的治疗管理做出了重要的积极贡献。

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