首页> 外文会议>Engineering in Medicine and Biology Society, 2004. IEMBS '04. 26th Annual International Conference of the IEEE >An input classification scheme for use in evidence-based dynamic recurrent neuro-fuzzy prognosis
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An input classification scheme for use in evidence-based dynamic recurrent neuro-fuzzy prognosis

机译:用于基于证据的动态复发性神经模糊预后的输入分类方案

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摘要

This paper presents an input classification scheme used in an evidence-based dynamic recurrent neuro-fuzzy system for prognosis in rehabilitation. All external variables which may have an effect on the outcome of the rehabilitative process are classified into facts, contexts and interventions. Their effects on patients' physical and/or physiological states, which are estimated based on available evidence, are represented by fuzzy rules and/or non-linear models of physiologic processes. The outcomes of rehabilitation are defined as functions of those states.
机译:本文提出了一种输入分类方案,该方案在基于证据的动态复发性神经模糊系统中用于康复的预后。所有可能影响康复过程结果的外部变量均被分类为事实,情境和干预措施。基于可用证据估计的它们对患者身体和/或生理状态的影响由模糊规则和/或生理过程的非线性模型表示。康复的结果被定义为这些国家的职能。

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