利用脑电图对认知障碍进行分类,以便临床检查。

IF 1.7 4区 医学 Q3 ENGINEERING, BIOMEDICAL Proceedings of the Institution of Mechanical Engineers, Part H: Journal of Engineering in Medicine Pub Date : 2024-03-01 Epub Date: 2024-02-16 DOI:10.1177/09544119241228912
Karuppathal Easwaran, Kalpana Ramakrishnan, Senthil Nathan Jeyabal
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引用次数: 0

摘要

认知能力的损害虽然是由各种疾病引起的,但其进展是以神经元退化为基础的。一般来说,认知障碍(CI)分为三个阶段:轻度、中度和重度。认知障碍的量化对于决定/改变治疗方法非常重要。本研究试图量化脑电图(EEG)信号,并将其分为四个等级(对照组和三个阶段的 CI)。在获取参与者的静息状态脑电信号后,通过相位振幅耦合和相位锁定值得出非局部和局部同步测量值。每项任务每个人共有 160 个特征。我们构建了两种类型的分类网络。第一种是人工神经网络 (ANN),它采用衍生特征,最高准确率为 85.11%。第二个网络是卷积神经网络(CNN),其输入数据集是根据脑电图特征构建的地形图像。该网络使用 60% 的数据进行训练,然后使用剩余 40% 的数据进行测试。这一过程采用 5 倍技术,每个人只需输入 30 个数据,就能获得 94.75% 的平均准确率。研究结果表明,在输入数量相对较少的情况下,CNN 的表现优于 ANN。由此可以得出结论,该方法提出了一个获取脑电图的简单任务(可由 CI 受试者完成),并在对照组和测试组之间没有重叠的情况下量化 CI 阶段,从而使识别 CI 早期症状成为可能。
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Classification of cognitive impairment using electroencephalography for clinical inspection.

Impairment in cognitive skill though set-in due to various diseases, its progress is based on neuronal degeneration. In general, cognitive impairment (CI) is divided into three stages: mild, moderate and severe. Quantification of CI is important for deciding/changing therapy. Attempted in this work is to quantify electroencephalograph (EEG) signal and group it into four classes (controls and three stages of CI). After acquiring resting state EEG signal from the participants, non-local and local synchrony measures are derived from phase amplitude coupling and phase locking value. This totals to 160 features per individual for each task. Two types of classification networks are constructed. The first one is an artificial neural network (ANN) that takes derived features and gives a maximum accuracy of 85.11%. The second network is convolutional neural network (CNN) for which topographical images constructed from EEG features becomes the input dataset. The network is trained with 60% of data and then tested with remaining 40% of data. This process is performed in 5-fold technique, which yields an average accuracy of 94.75% with only 30 numbers of inputs for every individual. The result of the study shows that CNN outperforms ANN with a relatively lesser number of inputs. From this it can be concluded that this method proposes a simple task for acquiring EEG (which can be done by CI subjects) and quantifies CI stages with no overlapping between control and test group, thus making it possible for identifying early symptoms of CI.

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来源期刊
CiteScore
3.60
自引率
5.60%
发文量
122
审稿时长
6 months
期刊介绍: The Journal of Engineering in Medicine is an interdisciplinary journal encompassing all aspects of engineering in medicine. The Journal is a vital tool for maintaining an understanding of the newest techniques and research in medical engineering.
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