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Knowledge-based decision system for automatic sleep staging using symbolic fusion in a turing machine-like decision process formalizing the sleep medicine guidelines

机译:在基于图灵机的决策过程中使用符号融合的基于知识的自动分期决策决策系统,将睡眠医学指南正式化

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Automatic sleep staging is challenging since several issues need to be addressed. Traditional approaches from literature do not satisfy medical experts since they do not reflect the cognitive process they perform when scoring polysomnographic curves. We propose a new approach that is based on the implementation of medical knowledge by symbolic fusion. Medical knowledge coming from the international clinical practice guidelines for sleep medicine is formalized as a five-layer framework dedicated to data abstraction in order to deliver local and global propositions and support the interpretation of polysomnographic curves. Firstly, features are extracted from raw curves. Then these features are combined to recognize sleep events in accordance with guidelines. Sleep events are then fused into the criteria required to recognize the different sleep stages. Sleep is not homogeneous through the night. The physiological events observed during the night follow a dynamic that needs to be included into an automatic sleep staging system. In order to take this into account, decision rules are selected and applied to recognize a sleep stage according to the current context. Thereby, transitions are considered with interest. In this paper, we propose to use a Turing Machine-like decision process to handle transitions. To interpret the local observations and properly score a given state, the previous state which has been stored in a specific register is used as a context. One of the advantages of following the principles of symbolic fusion is to benefit from the full traceability of the decision. Hence, it makes possible to discuss each final - or intermediate - decision with an expert and check for relevance. The preliminary results are encouraging since agreement rates provided between decisions taken by our automatic approach and human experts are similar to those measured between human experts (average agreement rate = 54.60% / average Cohen's kappa = 0.40) on a dataset of 131 full polysomnographic recordings. (C) 2018 Elsevier Ltd. All rights reserved.
机译:由于需要解决几个问题,因此自动进行睡眠分阶段具有挑战性。文献中的传统方法无法满足医学专家的要求,因为它们无法反映出在对多导睡眠图曲线进行评分时所执行的认知过程。我们提出一种新方法,该方法基于通过符号融合实现医学知识的基础。来自睡眠医学国际临床实践指南的医学知识被正式定义为致力于数据抽象的五层框架,以提供局部和全局命题并支持多导睡眠图曲线的解释。首先,从原始曲线中提取特征。然后,将这些功能组合起来以根据准则识别睡眠事件。然后将睡眠事件融合到识别不同睡眠阶段所需的标准中。整夜睡眠不均匀。夜间观察到的生理事件遵循动态,需要将其纳入自动睡眠分期系统中。为了考虑到这一点,选择决策规则并将其应用于根据当前上下文识别睡眠阶段。因此,转换被认为是令人感兴趣的。在本文中,我们建议使用类似于Turing Machine的决策过程来处理过渡。为了解释本地观察结果并适当地给定状态评分,已使用存储在特定寄存器中的先前状态作为上下文。遵循符号融合原理的优点之一是可以从决策的完全可追溯性中受益。因此,可以与专家讨论每个最终决定或中间决定,并检查相关性。初步结果令人鼓舞,因为在我们131条完整的多导睡眠图记录数据集上,由我们的自动方法做出的决定与人类专家之间达成的协议达成率类似于人类专家之间达成的协议达成率(平均达成协议率= 54.60%/平均科恩kappa = 0.40)。 (C)2018 Elsevier Ltd.保留所有权利。

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