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A Bayesian Network Model for the Diagnosis of the Caring Procedure for Wheelchair Users with Spinal Injury

机译:贝叶斯网络模型对脊柱损伤轮椅使用者护理程序的诊断

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This paper describes a probabilistic causal model for the caring procedure to be followed on wheelchair users with spinal injury. Uncertainty in the caring procedure arises mostly from incomplete information about patient findings (i.e. the signs and symptoms) due to loss of sensation and movement caused by the spinal cord injury. As a result, it may not be easy to assess the extent of a condition -- and, thus, make an accurate diagnosis. Bayesian Networks are used for diagnostic reasoning because they offer a way of conducting probabilistic inference about the conditions associated with the caring procedure in the face of uncertainty. The network structure and numerical parameters are based on data elicited from the qualified staff nurses and literature of the National Spinal Injury Centre, Stoke Mandeville Hospital, Aylesbury, UK. We also present the model and report the results of the diagnostic performance tests using the AgenaRisk Bayesian network package.
机译:本文描述了脊髓损伤轮椅使用者应遵循的护理程序的概率因果模型。护理过程中的不确定性主要是由于由于脊髓损伤引起的感觉和运动丧失而导致有关患者发现的不完整信息(即体征和症状)引起的。结果,评估病情的程度可能并不容易-因此做出准确的诊断。贝叶斯网络用于诊断推理,因为它们提供了一种在不确定性情况下对与护理程序相关的条件进行概率推断的方法。网络结构和数值参数是根据合格的护士护士提供的数据以及英国艾尔斯伯里斯托克曼德维尔医院国家脊椎损伤中心的文献资料得出的。我们还介绍了该模型,并使用AgenaRisk贝叶斯网络程序包报告了诊断性能测试的结果。

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