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A computationally bio-inspired framework of brain activities based on cognitive processes for estimating the depth of anesthesia

机译:一个基于生物过程的大脑活动框架,基于认知过程来估计麻醉深度

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This paper develops a computationally bio-inspired framework of brain activities based on concepts, such as sensory register (SR), encoding, emotion, short-term memory (STM), selective attention, working memory (WM), forgetting, long-term memory (LTM), sustained memory (SM), and response selection for estimating the depth of anesthesia (DOA) using electroencephalogram (EEG) signals. Different brain regions, such as the thalamus, cortex, neocortex, amygdala, striatum, basal ganglia, cerebellum, and hippocampus, are considered for developing a cognitive architecture and a computationally bio-inspired framework. A clinical study was managed on twenty-two patients corresponding to three anesthetic states, including awake state, moderate anesthesia, and general anesthesia. The proposed approach utilizes a multiple of dynamically reconfigurable neural networks with radial basis function (RBF) and its associated data processing mechanisms. The emotion effect in the model, dynamic RBFs in WM and LTMs, and adjusting the adaptive weights in the last layer are the main innovations of the proposed approach. In the proposed approach, various incoming information is entered into the model. The correct labeling process of EEG signals is performed by qualitative and quantitative analyses of peripheral parameters. Then, an SR is used to accumulate the pre-processed EEG segment for a period of 2.3s. Feature extraction is performed in the encoding stage as a primary perception. The output of this stage can be transferred to STM and WM with a bottom-up involuntary attentional capture. LTM and SM are a fairly permanent reservoir for information which is passed from WM using a top-down voluntary attention mechanism. Finally, weighting factors in SM and LTMs outputs are determined and then response selection is used by winner-take-all (WTA) strategy. The results indicate that the proposed approach can classify in different anesthetic states with an average accuracy of 89.2%. Results also indicate that the combined use of the above elements can effectively decipher the cognitive process task. A final comparison between the obtained results and the previous method on the same database indicate the effectiveness of the proposed approach for estimating DOA.
机译:本文基于概念(如感觉寄存器(SR),编码,情感,短期记忆(STM),选择性注意,工作记忆(WM),遗忘,长期),开发了一种受生物启发的大脑活动框架。记忆(LTM),持续记忆(SM)和使用脑电图(EEG)信号估计麻醉深度(DOA)的响应选择。人们考虑将不同的大脑区域(例如丘脑,皮质,新皮质,杏仁核,纹状体,基底神经节,小脑和海马体)用于建立认知体系和受生物启发的框架。我们对22位患者进行了一项临床研究,这些患者分别对应于三种麻醉状态,包括清醒状态,中度麻醉和全身麻醉。所提出的方法利用具有径向基函数(RBF)及其相关数据处理机制的多个动态可重构神经网络。该模型的情感创新,WM和LTM中的动态RBF以及最后一层的自适应权重调整是该方法的主要创新。在提出的方法中,各种输入信息被输入到模型中。脑电信号的正确标记过程是通过对外围参数进行定性和定量分析来完成的。然后,使用SR累积预处理的EEG段达2.3s。在编码阶段执行特征提取作为主要感知。该阶段的输出可以通过自下而上的非自愿注意力捕获转移到STM和WM。 LTM和SM是一个相当永久的信息存储库,它是使用自上而下的自愿注意机制从WM传递的。最后,确定SM和LTM输出中的权重因子,然后由“赢家通吃”(WTA)策略使用响应选择。结果表明,该方法可以在不同的麻醉状态下进行分类,平均准确率为89.2%。结果还表明上述元素的组合使用可以有效地破译认知过程任务。在同一数据库上,将获得的结果与先前的方法进行最终比较,表明所提出的方法在估计DOA方面的有效性。

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