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EEG machine learning for accurate detection of cholinergic intervention and Alzheimer's disease

机译:脑电图机器学习可准确检测胆碱能干预和阿尔茨海默氏病

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摘要

Monitoring effects of disease or therapeutic intervention on brain function is increasingly important for clinical trials, albeit hampered by inter-individual variability and subtle effects. Here, we apply complementary biomarker algorithms to electroencephalography (EEG) recordings to capture the brain's multi-faceted signature of disease or pharmacological intervention and use machine learning to improve classification performance. Using data from healthy subjects receiving scopolamine we developed an index of the muscarinic acetylcholine receptor antagonist (mAChR) consisting of 14 EEG biomarkers. This mAChR index yielded higher classification performance than any single EEG biomarker with cross-validated accuracy, sensitivity, specificity and precision ranging from 88-92%. The mAChR index also discriminated healthy elderly from patients with Alzheimer's disease (AD); however, an index optimized for AD pathophysiology provided a better classification. We conclude that integrating multiple EEG biomarkers can enhance the accuracy of identifying disease or drug interventions, which is essential for clinical trials.
机译:尽管个体间的变异性和微妙的影响阻碍了疾病的监测或治疗干预对脑功能的影响,但对临床试验而言却越来越重要。在这里,我们将补充生物标记算法应用于脑电图(EEG)记录,以捕获大脑对疾病或药理学干预的多方面特征,并使用机器学习来提高分类性能。使用来自接受东pol碱的健康受试者的数据,我们开发了毒蕈碱乙酰胆碱受体拮抗剂(mAChR)的指标,该指标由14种EEG生物标志物组成。该mAChR指数具有比任何单个EEG生物标志物更高的分类性能,并且交叉验证的准确性,敏感性,特异性和精确度在88-92%之间。 mAChR指数还可以将健康的老年人与阿尔茨海默氏病(AD)患者区分开;然而,针对AD病理生理优化的指标提供了更好的分类。我们得出的结论是,整合多个EEG生物标记物可以提高识别疾病或药物干预措施的准确性,这对于临床试验至关重要。

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