University of Primorska, Faculty of Mathematics, Natural Sciences and Information Technologies, Koper, Slovenia.
University of Primorska, Andrej Marušič Institute, Koper, Slovenia.
PLoS One. 2020 Mar 16;15(3):e0230099. doi: 10.1371/journal.pone.0230099. eCollection 2020.
Community-dwelling African American elders are twice as likely to develop mild cognitive impairment (MCI) or Alzheimer's disease and related dementias than older white Americans and therefore represent a significant at-risk group in need of early monitoring. More extensive imaging or cerebrospinal fluid studies represent significant barriers due to cost and burden. We combined functional connectivity and graph theoretical measures, derived from resting-state electroencephalography (EEG) recordings, with computerized cognitive testing to identify differences between persons with MCI and healthy controls based on a sample of community-dwelling African American elders. We found a significant decrease in functional connectivity and a less integrated graph topology in persons with MCI. A combination of functional connectivity, topological and cognition measurements is powerful for prediction of MCI and combined measures are clearly more effective for prediction than using a single approach. Specifically, by combining cognition features with functional connectivity and topological features the prediction improved compared with the classification using features from single cognitive or EEG domains, with an accuracy of 86.5%, compared with the accuracy of 77.5% of the best single approach. Community-dwelling African American elders find EEG and computerized testing acceptable and results are promising in terms of differentiating between healthy controls and persons with MCI living in the community.
与老年白种美国人相比,居住在社区中的非裔美国老年人发生轻度认知障碍(MCI)或阿尔茨海默病及相关痴呆的可能性要高出两倍,因此他们是一个需要早期监测的高风险群体。由于成本和负担,更广泛的影像学或脑脊液研究代表了重大障碍。我们结合了来自静息态脑电图(EEG)记录的功能连接和图论测量,以及计算机认知测试,根据居住在社区中的非裔美国老年人的样本,来识别 MCI 患者和健康对照组之间的差异。我们发现 MCI 患者的功能连接明显减少,图拓扑结构的整合度降低。功能连接、拓扑和认知测量的组合对于 MCI 的预测非常有效,组合测量明显比单一方法更有效。具体来说,通过将认知特征与功能连接和拓扑特征相结合,与使用单个认知或 EEG 域的特征进行分类相比,预测精度提高到 86.5%,而最佳单一方法的精度为 77.5%。居住在社区中的非裔美国老年人发现 EEG 和计算机测试可以接受,并且在区分健康对照组和社区中患有 MCI 的人群方面取得了有希望的结果。