使用脑电图衍生振幅极坐标图预测抑郁症治疗结果。

IF 2.8 3区 医学 Q3 NEUROSCIENCES
Hesam Akbari, Wael Korani, Sadiq Muhammad, Reza Rostami, Reza Kazemi, Muhammad Tariq Sadiq
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引用次数: 0

摘要

背景/目的:抑郁症是一种精神障碍,如果不及时治疗,可能导致自残或自杀念头。精神科医生在确定对抑郁症患者最有效的治疗方案时经常面临挑战。两种广泛推荐的抑郁症相关疗法是选择性血清素再摄取抑制剂(SSRIs)和重复经颅磁刺激(rTMS)。然而,他们的回应率大约是50%,这是相对较低的。本研究引入了一种计算机辅助决策(CAD)系统,旨在确定抑郁症治疗的有效性,并为患者推荐最合适的治疗方法。方法:通过一种称为振幅极坐标图(APM)的新技术在二维(2D)空间中绘制EEG的每个通道。在每个通道中,利用APM的二维图,通过5条连续线的二值模式提取出鲜明的特征。将各通道提取的特征进行融合,归纳出脑电信号的模式。通过邻域分量分析算法选择最相关的特征。将选择的特征输入到一个简单的前馈神经网络结构中,将抑郁症患者的脑电图信号分类为对抑郁症治疗有反应或没有反应。采用10倍交叉验证策略以确保结果无偏。结果:我们提出的CAD系统预测SSRI和rTMS治疗结果的准确率分别为98.06%和97.19%。在SSRI预测中,前额叶和顶叶通道(如F7、Fz、Fp2、P4和Pz)信息量最大,反映了涉及情绪调节和执行功能的大脑区域。相比之下,rTMS预测更多地依赖于额叶、颞叶和枕叶通道,如F4、O2、T5、T3、Cz和T6,表明通过神经调节有更广泛的网络调节。结论:所提出的CAD框架作为一种临床决策支持工具具有相当大的前景,可以帮助心理健康专业人员确定最适合抑郁症患者的治疗干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Depression Therapy Outcomes Using EEG-Derived Amplitude Polar Maps.

Background/Objectives: Depression is a mental disorder that can lead to self-harm or suicidal thoughts if left untreated. Psychiatrists often face challenges in identifying the most effective courses of treatment for patients with depression. Two widely recommended depression-related therapies are selective serotonin reuptake inhibitors (SSRIs) and repetitive transcranial magnetic stimulation (rTMS). However, their response rates are approximately 50%, which is relatively low. This study introduces a computer-aided decision (CAD) system designed to determine the effectiveness of depression therapies and recommends the most appropriate treatments for patients. Methods: Each channel of the EEG is plotted in two-dimensional (2D) space via a novel technique called the amplitude polar map (APM). In each channel, the 2D plot of APM is utilized to extract distinctive features via the binary pattern of five successive lines method. The extracted features from each channel are fused to generalize the pattern of EEG signals. The most relevant features are selected via the neighborhood component analysis algorithm. The chosen features are input into a simple feed-forward neural network architecture to classify the EEG signal of a depressed patient into either a respondent to depression therapies or not. The 10-fold cross-validation strategy is employed to ensure unbiased results. Results: The results of our proposed CAD system show accuracy rates of 98.06% and 97.19% for predicting the outcomes of SSRI and rTMS therapies, respectively. In SSRI predictions, prefrontal and parietal channels such as F7, Fz, Fp2, P4, and Pz were the most informative, reflecting brain regions involved in emotional regulation and executive function. In contrast, rTMS prediction relied more on frontal, temporal, and occipital channels such as F4, O2, T5, T3, Cz, and T6, indicating broader network modulation via neuromodulation. Conclusions: The proposed CAD framework holds considerable promise as a clinical decision-support tool, assisting mental health professionals in identifying the most suitable therapeutic interventions for individuals with depression.

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来源期刊
Brain Sciences
Brain Sciences Neuroscience-General Neuroscience
CiteScore
4.80
自引率
9.10%
发文量
1472
审稿时长
18.71 days
期刊介绍: Brain Sciences (ISSN 2076-3425) is a peer-reviewed scientific journal that publishes original articles, critical reviews, research notes and short communications in the areas of cognitive neuroscience, developmental neuroscience, molecular and cellular neuroscience, neural engineering, neuroimaging, neurolinguistics, neuropathy, systems neuroscience, and theoretical and computational neuroscience. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Electronic files or software regarding the full details of the calculation and experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material.
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