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Topic Analysis of UK Fitness to Practise Cases: What Lessons Can Be Learnt?

机译:英国健身案例分析:可以学到什么?

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Background : Fitness to practise (FtP) impairment (failure of a healthcare professional to demonstrate skills, knowledge, character and/or health required for their job) can compromise patient safety, the profession’s reputation, and an individual’s career. In the United Kingdom (UK), various healthcare professionals’ FtP cases (documents about the panel hearing(s) and outcome(s) relating to the alleged FtP impairment) are publicly available, yet reviewing these to learn lessons may be time-consuming given the number of cases across the professions and amount of text in each. We aimed to demonstrate how machine learning facilitated the examination of such cases (at uni- and multi-professional level), involving UK dental, medical, nursing and pharmacy professionals. Methods : Cases dating from August 2017 to June 2019 were downloaded (577 dental, 481 medical, 2199 nursing and 63 pharmacy) and converted to text files. A topic analysis method (non-negative matrix factorization; machine learning) was employed for data analysis. Results : Identified topics were criminal offences; dishonesty (fraud and theft); drug possession/supply; English language; indemnity insurance; patient care (including incompetence) and personal behavior (aggression, sexual conduct and substance misuse). The most frequently identified topic for dental, medical and nursing professions was patient care whereas for pharmacy, it was criminal offences. Conclusions : While commonalities exist, each has different priorities which professional and educational organizations should strive to address.
机译:背景:锻炼适应度(FtP)受损(医疗保健专业人员无法展示其工作所需的技能,知识,性格和/或健康状况)可能会损害患者的安全性,职业的声誉以及个人的职业生涯。在英国(UK),各种医疗保健专业人员的FtP案例(有关专家组听证会和与所谓的FtP损害有关的结局的文件)都是公开可用的,但是对这些案例进行审查以获取教训可能很耗时考虑到各行业的案件数量以及各行业的案文数量。我们的目标是展示英国的牙科,医疗,护理和药学专业人士如何使用机器学习来促进此类案例的检查(单专业和多专业)。方法:下载2017年8月至2019年6月的病例(577个牙科,481个医疗,2199个护理和63个药房)并转换为文本文件。主题分析方法(非负矩阵分解;机器学习)用于数据分析。结果:确定的主题为刑事犯罪;不诚实(欺诈和盗窃);毒品拥有/供应;英语;赔偿保险;患者护理(包括无能)和个人行为(侵略,性行为和滥用药物)。牙科,医疗和护理行业最常发现的主题是患者护理,而在药房则是刑事犯罪。结论:尽管存在共性,但每个共性都有不同的优先级,专业和教育组织应努力解决这些优先级。

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