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首页> 外文期刊>Statistics in medicine >A Bayesian hierarchical model for multi-level repeated ordinal data: analysis of oral practice examinations in a large anaesthesiology training programme.
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A Bayesian hierarchical model for multi-level repeated ordinal data: analysis of oral practice examinations in a large anaesthesiology training programme.

机译:用于多层次重复序贯数据的贝叶斯层次模型:在大型麻醉学培训计划中对口腔练习检查的分析。

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摘要

Oral practice examinations (OPEs) are used in many anaesthesiology programmes to familiarize anaesthesiology residents with the format of the oral examination administered by the American Board of Anesthesiology. The OPE outcome (final grade) consists of 'Definite Not Pass', 'Probable Not Pass', 'Probable Pass' and 'Definite Pass'. In our study to assess the validity of the OPE, residents took an average of two (ranging from one to six) OPEs, each of which was evaluated by two board certified anaesthesiologists randomly selected from a pool of 12. A key question of interest was to identify factors, for example, the length of training, didactic experience and other characteristics, that most influence OPE outcome. In addition, we were interested in assessing the reliability of the final grade, that is, the covariance parameters are of interest as well. However, estimating variance components in multi-level data with an unequal number of repeated ordinal outcomes presents several statistical challenges, such as how to estimate high dimensional random effects parameters, especially for ordinal outcomes. We propose a Bayesian hierarchical proportional odds model for data with such complexity. The flexibility of such a model allows us to make inference on the association of OPE outcomes with other factors and to estimate the variance components as well. Copyright 1999 John Wiley & Sons, Ltd.
机译:在许多麻醉科计划中都使用了口腔练习检查(OPE),以使麻醉科医师熟悉由美国麻醉学委员会进行的口腔检查的格式。 OPE结果(最终成绩)包括“绝对不及格”,“可能不及格”,“可能不及格”和“绝对不及格”。在我们评估OPE有效性的研究中,居民平均采取了两个(从一到六个)OPE,每个评估是由从12个样本池中随机选择的两名经董事会认证的麻醉师进行评估的。找出最能影响OPE结局的因素,例如培训时间,教学经验和其他特征。此外,我们对评估最终成绩的可靠性也很感兴趣,也就是说,协方差参数也很重要。然而,用不相等数量的重复序数结果来估计多级数据中的方差成分提出了一些统计挑战,例如如何估计高维随机效应参数,尤其是序数结果。对于这种复杂性的数据,我们提出了贝叶斯分层比例赔率模型。这种模型的灵活性使我们可以推断出OPE结果与其他因素之间的关联,并可以估算方差成分。版权所有1999 John Wiley&Sons,Ltd.

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