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A multi-method analysis of free-text comments from the UK General Medical Council Colleague Questionnaires

机译:英国通用医学委员会同事问卷对自由文本评论的多方法分析

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CONTEXT Colleague surveys are important sources of information on a doctor's professional performance in UK revalidation plans. Colleague surveys are analysed by deriving quantitative measures from rating scales. As free-text comments are also recorded, we explored the utility of a mixed-methods approach to their analysis.METHODS A volunteer sample of practising UK doctors (from acute, primary and other care settings) undertook a General Medical Council (GMC) colleague survey. Up to 20 colleagues per doctor completed an online Colleague Questionnaire (CQ), which included 18 performance evaluation items and an optional comment box. The polarity of each comment Was noted and a qualitative content analysis undertaken. Emerging themes were mapped onto existing items to identify areas not previously captured. We then quantitatively analysed the associations between the polarity of comments (positive/adverse) and their related item scale scores.RESULTS A total of 1636 of 4269 (38.3%) colleagues recorded free-text comments (med-ian = 14 per doctor) and most were unequivocally positive; only 127 of 1636 (7.8%) recorded negative statements and these were clustered on a subset comprising 80 of 302 (26.5%) doctors. Doctors' overall mean CQ performance scores were significantly correlated with the numbers of colleagues recording positive (r= 0.35; P< 0.0001) and adverse (r= - 0.40; P= 0.0003) comments. In total, 1224 of 1636 (74.8%) comments included statements that mapped on CQ items, and statistically significant associations (P < 0.05) were observed for 14 of 15 items. Five global themes (innovative-ness, interpersonal skills, popularity, professionalism, respect) were identified in 904 of 1636 (73.9%) comments.CONCLUSIONS There is an inevitable tradeoff between the capturing of indicators of problematic performance (i.e. adverse statements which contradict a positive scale rating) and the ease with which such statements can be identified. Our data suggest there is little benefit in routinely analysing narrative comments for the purposes of revalidation.
机译:语境同事调查是英国重新验证计划中医生专业表现的重要信息来源。通过从评级量表中得出量化指标来分析同事的调查。由于还记录了自由文本评论,因此我们探索了混合方法分析的效用。方法一名在职英国医生(来自急性,初级和其他护理机构)的志愿者样本与美国通用医学委员会(GMC)的同事进行了接触。调查。每位医生最多20位同事完成了在线同事问卷(CQ),其中包括18个绩效评估项目和一个可选的注释框。记录了每个评论的极性,并进行了定性的内容分析。新兴主题被映射到现有项目上,以识别先前未捕获的区域。然后我们定量分析了评论的极性(正面/负面)与其相关项目量表得分之间的联系。结果共有4636名同事中的1636名(38.3%)记录了自由文本的评论(每位医生中位数= 14)和多数人肯定是积极的; 1636个中只有127个(7.8%)记录了负面陈述,这些陈述集中在302个医生中的80个(26.5%)的子集中。医生的总体CQ绩效平均得分与记录为正面(r = 0.35; P <0.0001)和负面(r =-0.40; P = 0.0003)的同事人数显着相关。总的来说,在1636条评论中有1224条(占74.8%)的评论包括了映射到CQ项目上的陈述,并且在15个项目中有14个被观察到具有统计学意义的关联(P <0.05)。在1636条评论中,有904条(占73.9%)的评论中确定了五个全球主题(创新性,人际交往能力,受欢迎程度,敬业精神,尊重)。结论在捕获有问题的绩效指标(即与A矛盾的不利陈述)之间存在不可避免的权衡取舍。积极的等级评定)以及易于识别此类陈述的方式。我们的数据表明,以重新验证为目的,常规分析叙述性注释几乎没有好处。

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