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Integrative EEG biomarkers predict progression to Alzheimers disease at the MCI stage

机译:综合性脑电生物标志物预测在MCI阶段进展为阿尔茨海默氏病

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摘要

Alzheimer's disease (AD) is a devastating disorder of increasing prevalence in modern society. Mild cognitive impairment (MCI) is considered a transitional stage between normal aging and AD; however, not all subjects with MCI progress to AD. Prediction of conversion to AD at an early stage would enable an earlier, and potentially more effective, treatment of AD. Electroencephalography (EEG) biomarkers would provide a non-invasive and relatively cheap screening tool to predict conversion to AD; however, traditional EEG biomarkers have not been considered accurate enough to be useful in clinical practice. Here, we aim to combine the information from multiple EEG biomarkers into a diagnostic classification index in order to improve the accuracy of predicting conversion from MCI to AD within a 2-year period. We followed 86 patients initially diagnosed with MCI for 2 years during which 25 patients converted to AD. We show that multiple EEG biomarkers mainly related to activity in the beta-frequency range (13–30 Hz) can predict conversion from MCI to AD. Importantly, by integrating six EEG biomarkers into a diagnostic index using logistic regression the prediction improved compared with the classification using the individual biomarkers, with a sensitivity of 88% and specificity of 82%, compared with a sensitivity of 64% and specificity of 62% of the best individual biomarker in this index. In order to identify this diagnostic index we developed a data mining approach implemented in the Neurophysiological Biomarker Toolbox (). We suggest that this approach can be used to identify optimal combinations of biomarkers (integrative biomarkers) also in other modalities. Potentially, these integrative biomarkers could be more sensitive to disease progression and response to therapeutic intervention.
机译:阿尔茨海默氏病(AD)是一种在现代社会中日益流行的毁灭性疾病。轻度认知障碍(MCI)被认为是正常衰老和AD之间的过渡阶段;但是,并非所有患有MCI的受试者都可以发展为AD。对早期转化为AD的预测可以使AD的治疗更早且可能更有效。脑电图(EEG)生物标志物将提供一种非侵入性且相对便宜的筛查工具,以预测向AD的转化。然而,传统的脑电生物标志物还没有被认为足够准确,无法在临床实践中使用。在这里,我们旨在将来自多个脑电生物标志物的信息组合到诊断分类指数中,以提高预测在2年内从MCI转换为AD的准确性。我们追踪了最初诊断为MCI的86例患者,为期2年,其中25例患者转变为AD。我们显示,主要与β频率范围(13–30 Hz)活动有关的多个脑电生物标志物可以预测从MCI到AD的转化。重要的是,通过使用逻辑回归将六个EEG生物标志物整合到诊断指标中,与使用单个生物标志物进行分类相比,预测得到了改善,敏感性为88%,特异性为82%,敏感性为64%,特异性为62%该指数中最佳的个体生物标志物。为了确定该诊断指标,我们开发了一种在Neurophysiological Biomarker工具箱()中实施的数据挖掘方法。我们建议该方法可以用于识别其他形式的生物标志物(综合生物标志物)的最佳组合。这些整合生物标志物可能对疾病进展和对治疗干预的反应更敏感。

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