支持向量机辅助检测多发性硬化症认知功能障碍

J. V. Schependom, J. Gielen, J. Laton, M. D'hooghe, J. Keyser, G. Nagels
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引用次数: 2

摘要

认知障碍影响了一半的多发性硬化症(MS)患者,很难发现,需要大量的神经心理学测试。我们分析了P300实验中获得的数据。P300是意外刺激后的一个大正波,主要与注意力有关,这是MS中经常受损的一个领域,除了P300实验中使用的传统特征外,我们想研究不同连接测量对MS患者认知完好或受损分类的价值。我们纳入了来自比利时Melsbroek国家多发性硬化症中心的331名多发性硬化症患者。大约三分之一的人被认为认知受损(104)。我们将患者队列分为一个训练集(我们使用10倍交叉验证),以优化支持向量机的(超)参数和一个独立的测试集。报告最后一组的结果,以增加概括性。近年来,人们致力于设计脑电信号和脑电信号的连接指标。最常用的度量标准是相关性和一致性。然而,已经构建了其他指标,如相位滞后指数(PLI)和相干虚部(ImagCoh)。使用传统的P300特征,我们获得了68%的准确率。几个连接性指标返回了类似的结果,特别是更传统的相关性、频域相关性和相干性(delta)。然而,与使用传统P300特征获得的精度相比,获得的精度只有很小的提高。这些结果支持了最近提出的多发性硬化症的认知功能障碍可能是由大脑断连引起的。我们用图理论分析脑电图数据,而不是更常见的功能磁共振成像网络分析,得到了这些结果。虽然分类准确度是认知状态的重要环节,但在临床应用中尚不充分。
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SVM aided detection of cognitive impairment in MS
Cognitive impairment affects half of the multiple sclerosis (MS) patient population, is difficult to detect and requires extensive neuropsychological testing. We analyzed data obtained in a P300 experiment. The P300 is a large positive wave following an unexpected stimulus and is mainly related to attention, a domain frequently impaired in MS. Apart from the traditional features used in P300 experiments we want to investigate the value of different connectivity measures on the classification of MS patients as cognitively intact or impaired. We included 331 MS patients, recruited at the National MS Center Melsbroek (Belgium). About one third was denoted cognitively impaired (104). We divided our patient cohort in a training set (on which we used 10-fold crossvalidation) to optimize the (hyper)parameters of the SVM and an independent test set. Results are reported on this last group to increase the generalizability. In recent years many effort has been devoted to devising connectivity metrics for EEG and MEG data. The most commonly applied metrics are correlation and coherence. However, other metrics have been constructed like the Phase Lag Index (PLI) and the imaginary part of coherency (ImagCoh). Using traditional P300 features, we obtained an accuracy of 68 %. Several connectivity metrics returned similar results, especially the more traditional ones like correlation, correlation in the frequency domain and coherence (delta). The obtained accuracies were, however, only a minor improvement on the accuracy obtained using the traditional P300 features. These results support the recent suggestion that cognitive dysfunction in MS might be caused by cerebral disconnection. We have obtained these results applying graph theoretical analyses on EEG data instead of the more common fMRI network analyses. Although the classification accuracy denotes an important link to cognitive status, it is not sufficient for application in clinical practice.
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