首页> 外文会议>IEEE Symposium on Computational Intelligence in Healthcare and e-health >A comparison of artificial neural network, latent class analysis and logistic regression for determining which patients benefit from a cognitive behavioural approach to treatment for non-specific low back pain
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A comparison of artificial neural network, latent class analysis and logistic regression for determining which patients benefit from a cognitive behavioural approach to treatment for non-specific low back pain

机译:人工神经网络,潜在类别分析和逻辑回归的比较,用于确定哪些患者受益于认知行为方法来治疗非特异性下腰痛

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It can be difficult to select the right treatment for low back pain for a given individual. The objective of this study was to compare the use of artificial neural networks with latent class analysis and logistic regression to identify for whom a new, cognitive behavioural approach to the treatment of low back pain is indicated or contra-indicated. Data was made available to us from a cohort of low back pain patients recruited to a clinical trial of a cognitive behavioural approach. The 701 participants had at least moderately troublesome back pain of at least 6 weeks' duration and were recruited from 56 general practices in 7 regions in the UK between April 2005 and April 2007. For the purposes of this study, the main outcome measure was the Roland Morris Disability Questionnaire. We found that the artificial neural network with one hidden node and weight decay 0.1 was the optimal network for this application. The artificial neural network and the ordinary logistic regression had the lowest overall error rate, but the artificial neural network and the latent class logistic regression had superior log score. We concluded the superior log score of the techniques which can allow for nonlinear relationships between the variables suggests that these are more likely to be useful in decision support than linear models. We have shown that the artificial neural network provides the best combination of overall error rate and log score, and would be the best candidate of these three models for decision support for allocating patients to the cognitive behavioural approach to treatment of lower back pain.
机译:对于给定的个体,可能很难为腰痛选择正确的治疗方法。这项研究的目的是将人工神经网络与潜在类别分析和逻辑回归的使用进行比较,以确定针对谁指示或禁忌使用新的认知行为学方法治疗腰痛。我们从一组参加认知行为方法临床试验的腰痛患者中获得了数据。这701名参与者的背痛至少为中度痛苦,至少持续6周,于2005年4月至2007年4月期间从英国7个地区的56种常规方法中招募。罗兰·莫里斯(Roland Morris)残疾问卷。我们发现具有一个隐藏节点且权重衰减为0.1的人工神经网络是此应用程序的最佳网络。人工神经网络和普通logistic回归的总错误率最低,而人工神经网络和潜在类logistic回归的对数得分更高。我们得出的结论是,该技术具有较高的对数得分,该得分可以允许变量之间存在非线性关系,这表明,与线性模型相比,这些变量更可能在决策支持中有用。我们已经表明,人工神经网络提供了总体错误率和对数得分的最佳组合,并且将是这三种模型的最佳候选者,可以为将患者分配到认知行为方法来治疗下腰痛提供决策支持。

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