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Bayesian analysis of trinomial data in behavioral experiments and its application to human studies of general anesthesia

机译:贝叶斯分析行为实验中三组数据及其对全身麻醉人类研究的应用

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Accurate quantification of loss of response to external stimuli is essential for understanding the mechanisms of loss of consciousness under general anesthesia. We present a new approach for quantifying three possible outcomes that are encountered in behavioral experiments during general anesthesia: correct responses, incorrect responses and no response. We use a state-space model with two state variables representing a probability of response and a conditional probability of correct response. We show applications of this approach to an example of responses to auditory stimuli at varying levels of propofol anesthesia ranging from light sedation to deep anesthesia in human subjects. The posterior probability densities of model parameters and the response probability are computed within a Bayesian framework using Markov Chain Monte Carlo methods.
机译:准确量化对外部刺激的反应丧失对于了解全身麻醉下的意识丧失的机制至关重要。我们提出了一种用于量化在全身麻醉期间行为实验中遇到的三种可能结果的新方法:正确的响应,不正确的响应,不响应。我们使用具有两个状态变量的状态空间模型,表示响应概率和正确响应的条件概率。我们展示这种方法在不同水平的异丙酚麻醉中对听觉刺激的反应的典范的应用,从轻微镇静到人类受试者的深层麻醉。使用马尔可夫链蒙特卡罗方法在贝叶斯框架内计算了模型参数的后验概率密度和响应概率。

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