1871使用机器学习模型调整国家和地方数据以预测青少年和年轻成人风湿病的诊所缺席率

A. Bouraoui, M. Bai, C. Fisher, S. Mavrommatis, Luke Williamson, C. Ciurtin, Maria Leandro, Debait Sen
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This approach is especially important for vulnerable population including young people (YP) due to the complex interplay between developmental, socio-economic factors can impact significantly on their medical care.The increasing use of electronic health record systems (EHRS) and data availability creates opportunities to develop risk scores for specific patient populations.In this study, we aim to develop a machine learning approach to develop a complex, multi-dimensional predictive model to identify YP at risk of clinic nonattendance.MethodsUniversity College London Hospital (UCLH) switched to a new EHRS in April 2019 . We extracted data on outpatient Adolescent and Young Adult Rheumatology (AYAR) between 2019 -2022.Our primary outcome was nonattendance of a scheduled appointment.Our Predictor variables were defined after literature review, consultation with clinical and operational teams. We extracted data on 67 predictors of nonattendance. 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引用次数: 0

摘要

目的不参加医院预约是影响服务效率、效率和护理质量的一个主要问题,每年花费NHS超过10亿英镑。在COVID-19大流行时期,NHS正在经历创纪录的等待时间,这种影响更加有害。我们提出了一种积极主动的模式,而不是因为病人没有按时赴约而让他们出院的被动模式,我们提出了一种积极主动的模式,识别有不赴约风险的病人,并在正确的时间为他们提供正确的支持。这种方法对包括年轻人在内的弱势群体尤其重要,因为发展和社会经济因素之间的复杂相互作用可能对他们的医疗保健产生重大影响。越来越多地使用电子健康记录系统(EHRS)和数据可用性,为特定患者群体开发风险评分创造了机会。在这项研究中,我们的目标是开发一种机器学习方法来开发一个复杂的、多维的预测模型,以识别有临床不出席风险的YP。方法伦敦大学学院医院(UCLH)于2019年4月改用新的电子健康记录系统。我们提取了2019 -2022年间门诊青少年和年轻成人风湿病(AYAR)的数据。我们的主要结果是没有出席预定的约会。我们的预测变量是在文献回顾、咨询临床和操作团队后确定的。我们提取了67个缺勤预测因素的数据。这些变量大致分为人口统计(如年龄、性别、种族)和从国家统计局(ONS)数据库中提取的多重剥夺指数(IMD)。我们还纳入了服务使用历史(例如,以前不去诊所的历史)、预约信息(月、日、时间、诊所代码)和患者参与度(例如,在MyChart[在线患者门户]中的活跃度)。使用来自UCLH (AYAR)诊所11602次门诊预约的数据,我们建立并评估了一个预测模型的性能,以确定YP是否不会参加预定的门诊预约。我们使用逻辑回归分析来拟合和评估所建立的模型。我们基于判别和校准对其拟合进行了评估。结果在11602例(13.1%)预约中,共发现1517例门诊未出诊。非就诊组的男女比例为2.03,而门诊总人数的男女比例为2.33。按年龄组划分,14-18岁的青少年预约就诊的诊所中,10%(606/5547)没有就诊,而19-24岁的青少年预约就诊的诊所中,这一比例为15%(651/4282)。特征工程分析显示,最重要的因素是IMD,其次是距离、既往未就诊史、年龄和就诊时间。结论:为了确定有缺勤风险的YP,我们采用循序渐进的方法建立了一个模型,该模型可以在护理点使用EHR和IMD数据。不赴约的青少年生育计划的很大一部分来自贫困地区。对缺勤风险进行准确的分层可以为我们提供独特的机会进行预防性干预,为最脆弱的青少年提供支持,并在更广泛的系统内改善资源的使用
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1871 Aligning national and local data to predict clinic non-attendance in adolescent and young adult rheumatology using machine learning model
ObjectivesNon-attendance of scheduled hospital appointments represents a major issue affecting service effectiveness, efficiency and quality of care costing the NHS over £1billion annually. This impact is even more detrimental at a time where the NHS is experiencing record high waiting times in the peri- COVID-19 pandemic era.Rather than a reactive model of discharging patients for nonattending their appointments, we propose a proactive model identifying patients at risk of not showing up and provide them with right support at the right time. This approach is especially important for vulnerable population including young people (YP) due to the complex interplay between developmental, socio-economic factors can impact significantly on their medical care.The increasing use of electronic health record systems (EHRS) and data availability creates opportunities to develop risk scores for specific patient populations.In this study, we aim to develop a machine learning approach to develop a complex, multi-dimensional predictive model to identify YP at risk of clinic nonattendance.MethodsUniversity College London Hospital (UCLH) switched to a new EHRS in April 2019 . We extracted data on outpatient Adolescent and Young Adult Rheumatology (AYAR) between 2019 -2022.Our primary outcome was nonattendance of a scheduled appointment.Our Predictor variables were defined after literature review, consultation with clinical and operational teams. We extracted data on 67 predictors of nonattendance. These variables are broadly divided into demographics (e.g, Age, Sex, ethnicity) and index of multiple deprivation (IMD) extracted from office of national statistics (ONS) database. We also included service utilisation history (e.g., previous history of clinic non-attendance.), appointment information (month, day, time, clinic codes), and patient engagement (e.g., active in MyChart [ online patient portal]).Using data from 11602 outpatient appointments in (AYAR) clinics at UCLH, we built and assessed the performance of a predictive model as to whether a YP would not attend a scheduled outpatient appointment. We used logistic regression analysis to fit and assess the Model built. We evaluated its fit based on discrimination and calibration.ResultsWe identified a total of 1517 clinic non-attendance out of total of 11602 (13.1%) appointment.Female/male ratio was 2.03 in non attendance group as compared to 2.33 in total clinic population.In terms of age group, 10% (606/5547) of clinics booked for YP aged 14–18 were not attended as compared to 15% (651/4282 ) in those aged [19–24].Feature engineering analysis revealed that the most significant factors were IMD followed by distance, previous history of Non-attendance, age group and appointment hour.ConclusionsAiming to identify YP at risk of Non-attendance, we used a step-by-step approach to build a model that can be applied using EHR and IMD data at the point of care. High proportion of YP nonattending their appointments were from deprived areas.Accurate stratification of non-attendance risk can provide us with unique opportunity for preventative interventions, supporting to most vulnerable YP and improve the use of resources within the wider system
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