The Deep Learning Method Differentiates Patients with Bipolar Disorder from Controls with High Accuracy Using EEG Data.

IF 1.6 4区 医学 Q3 CLINICAL NEUROLOGY
Clinical EEG and Neuroscience Pub Date : 2024-03-01 Epub Date: 2022-11-06 DOI:10.1177/15500594221137234
Barış Metin, Çağlar Uyulan, Türker Tekin Ergüzel, Shams Farhad, Elvan Çifçi, Ömer Türk, Nevzat Tarhan
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Abstract

Background: Bipolar disorder (BD) is a mental disorder characterized by depressive and manic or hypomanic episodes. The complexity in the diagnosis of Bipolar disorder (BD) due to its overlapping symptoms with other mood disorders prompted researchers and clinicians to seek new and advanced techniques for the precise detection of Bipolar disorder (BD). One of these methods is the use of advanced machine learning algorithms such as deep learning (DL). However, no study of BD has previously adopted DL techniques using EEG signals. Method: EEG signals of 169 BD patients and 45 controls were cleaned from the artifacts and processed using two different DL methods: a one-dimensional convolutional neural network (1D-CNN) combined with the long-short term memory (LSTM) and a two-dimensional convolutional neural network (2D-CNN). Additionally, Class Activation Maps (CAMs) acquired from the bipolar and control groups were used to obtain distinctive regions to specify a particular class in an image. Results: Group identifications were confirmed with 95.91% overall accuracy through the 2D-CNN method, demonstrating very high sensitivity and lower specificity. Also, the overall accuracy obtained from the 1D-CNN + LSTM method was 93%. We also found that F4, C3, F7, and F8 electrode activities produce predominant features to detect the bipolar group. Conclusion: To our knowledge, this study used EEG-based DL analysis for the first time in BD. Our results suggest that the raw EEG-based DL algorithm can successfully differentiate individuals with BD from controls. Class Activation Map (CAM) analysis suggests that prefrontal changes are predominant in EEG data of patients with BD.

深度学习方法利用脑电图数据高精度区分双相情感障碍患者和对照组。
背景:双相情感障碍(BD)是一种以抑郁和躁狂或躁狂发作为特征的精神疾病。由于双相情感障碍(BD)的症状与其他情绪障碍重叠,因此诊断非常复杂,这促使研究人员和临床医生寻求新的先进技术来精确检测双相情感障碍(BD)。其中一种方法是使用深度学习(DL)等先进的机器学习算法。然而,此前还没有针对躁郁症的研究采用脑电信号的深度学习技术。研究方法对 169 名 BD 患者和 45 名对照组的脑电信号进行人工痕迹清理,并使用两种不同的 DL 方法进行处理:一维卷积神经网络(1D-CNN)与长短期记忆(LSTM)相结合,以及二维卷积神经网络(2D-CNN)。此外,从双极性组和对照组获得的类激活图(CAMs)被用于获取图像中指定特定类别的独特区域。结果:通过 2D-CNN 方法确认组别识别的总体准确率为 95.91%,显示出极高的灵敏度和较低的特异性。此外,1D-CNN + LSTM 方法的总体准确率为 93%。我们还发现,F4、C3、F7 和 F8 电极活动产生的主要特征可用于检测双极组。结论据我们所知,本研究首次在 BD 中使用了基于脑电图的 DL 分析。我们的研究结果表明,基于原始脑电图的 DL 算法可以成功地区分 BD 患者和对照组。类激活图(CAM)分析表明,前额叶变化在 BD 患者的脑电图数据中占主导地位。
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来源期刊
Clinical EEG and Neuroscience
Clinical EEG and Neuroscience 医学-临床神经学
CiteScore
5.20
自引率
5.00%
发文量
66
审稿时长
>12 weeks
期刊介绍: Clinical EEG and Neuroscience conveys clinically relevant research and development in electroencephalography and neuroscience. Original articles on any aspect of clinical neurophysiology or related work in allied fields are invited for publication.
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