全脑功能连接的极限学习机诊断阿尔茨海默病

IF 0.9 4区 医学 Q4 CHEMISTRY, PHYSICAL Concepts in Magnetic Resonance Part B-Magnetic Resonance Engineering Pub Date : 2022-05-19 DOI:10.1155/2022/1047616
Jia Lu, Weiming Zeng, Lu Zhang, Yuhu Shi
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引用次数: 1

摘要

通过对人脑功能磁共振成像对象的分析,可以研究神经相关疾病,探索人脑活动的相关规律。在本文中,我们提出了一个算法框架来分析全脑的功能连接网络,并区分阿尔茨海默病(AD)、轻度认知障碍(MCI)和认知正常(CN)。在其他研究中,他们使用算法选择特征或提取抽象特征,甚至基于先验信息手动选择特征。然后,构造分类器对所选特征进行分类。我们设计了一个简洁的算法框架,使用全脑功能连接进行分类,而不需要特征选择。该算法框架是基于极限学习机(ELM)的两隐层神经网络,克服了经典极限学习机在高维数据场景下的不稳定性。我们使用该方法对AD、MCI和CN数据进行了实验,并进行了10倍交叉验证。结果表明,该方法具有以下优点:(1)分类精度高,速度快。AD与CN的分类准确率为96.85%,MCI与CN的分类准确率为95.05%。受试者工作特征曲线下面积(AUC)分别为0.9891和0.9888。其敏感性分别为97.1%和94.7%,特异性分别为96.3%和95.3%。(2)与其他研究相比,本文提出的方法简洁。构建双隐层神经网络是为了学习全脑的特征,用于AD和MCI的诊断,而不需要进行特征筛选。它避免了算法或先验信息对特征筛选的负面影响。(3)该方法适用于小样本高维数据。满足医学图像分析的要求。在其他研究中,它的分类器通常处理几个到几十个特征维度。该方法处理4005个特征维。
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Diagnosis of Alzheimer’s Disease with Extreme Learning Machine on Whole-Brain Functional Connectivity
The analysis of human brain fMRI subjects can research neuro-related diseases and explore the related rules of human brain activity. In this paper, we proposed an algorithm framework to analyze the functional connectivity network of the whole brain and to distinguish Alzheimer’s disease (AD), mild cognitive impairment (MCI), and cognitively normal (CN). In other studies, they use algorithms to select features or extract abstract features, or even manually select features based on prior information. Then, a classifier is constructed to classify the selected features. We designed a concise algorithm framework that uses whole-brain functional connectivity for classification without feature selection. The algorithm framework is a two-hidden-layer neural network based on extreme learning machine (ELM), which overcomes the instability of classical ELM in high-dimensional data scenarios. We use this method to conduct experiments for AD, MCI, and CN data and perform 10-fold cross-validation. We found that it has several advantages: (1) the proposed method has excellent classification accuracy with high speed. The classification accuracy of AD vs. CN is 96.85%, and the accuracy of MCI vs. CN is 95.05%. Their AUC (area under curve) of ROC (receiver operating characteristic curve) reached 0.9891 and 0.9888, respectively. Their sensitivities are 97.1% and 94.7%, and specificities are 96.3% and 95.3%, respectively. (2) Compared with other studies, the proposed method is concise. Construction of a two-hidden-layer neural network is to learn features of the whole brain for the diagnosis of AD and MCI, without the feature screening. It avoids the negative effects of feature screening by algorithm or prior information. (3) The proposed method is suitable for small sample and high-dimensional data. It meets the requirements of medical image analysis. In other studies, its classifiers usually deal with several to dozens of feature dimensions. The proposed method deals with 4005 feature dimensions.
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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
3
审稿时长
>12 weeks
期刊介绍: Concepts in Magnetic Resonance Part B brings together engineers and physicists involved in the design and development of hardware and software employed in magnetic resonance techniques. The journal welcomes contributions predominantly from the fields of magnetic resonance imaging (MRI), nuclear magnetic resonance (NMR), and electron paramagnetic resonance (EPR), but also encourages submissions relating to less common magnetic resonance imaging and analytical methods. Contributors come from both academia and industry, to report the latest advancements in the development of instrumentation and computer programming to underpin medical, non-medical, and analytical magnetic resonance techniques.
期刊最新文献
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