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A Predictive Model of Anesthesia Depth Based on SVM in the Primary Visual Cortex

机译:基于SVM的初级视觉皮层麻醉深度预测模型。

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摘要

In this paper, a novel model for predicting anesthesia depth is put forward based on local field potentials (LFPs) in the primary visual cortex (V1 area) of rats. The model is constructed using a Support Vector Machine (SVM) to realize anesthesia depth online prediction and classification. The raw LFP signal was first decomposed into some special scaling components. Among these components, those containing higher frequency information were well suited for more precise analysis of the performance of the anesthetic depth by wavelet transform. Secondly, the characteristics of anesthetized states were extracted by complexity analysis. In addition, two frequency domain parameters were selected. The above extracted features were used as the input vector of the predicting model. Finally, we collected the anesthesia samples from the LFP recordings under the visual stimulus experiments of Long Evans rats. Our results indicate that the predictive model is accurate and computationally fast, and that it is also well suited for online predicting.
机译:本文基于大鼠初级视觉皮层(V1区)的局部场电位(LFP),提出了一种预测麻醉深度的新模型。使用支持向量机(SVM)构建该模型,以实现麻醉深度在线预测和分类。首先将原始LFP信号分解为一些特殊的缩放比例分量。在这些成分中,包含较高频率信息的成分非常适合于通过小波变换更精确地分析麻醉深度的性能。其次,通过复杂度分析提取了麻醉状态的特征。另外,选择了两个频域参数。以上提取的特征用作预测模型的输入向量。最后,我们在Long Evans大鼠的视觉刺激实验下,从LFP录音中收集了麻醉样品。我们的结果表明,该预测模型准确且计算速度快,并且也非常适合在线预测。

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