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A data-driven and practice-based approach to identify risk factors associated with hospital-acquired falls: Applying manual and semi- and fully-automated methods

机译:一种基于数据和基于实践的方法来识别与医院获得的跌倒相关的风险因素:应用手动,半自动和全自动方法

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Background and purpose: Electronic health record (EHR) data provides opportunities for new approaches to identify risk factors associated with iatrogenic conditions, such as hospital-acquired falls. There is a critical need to validate and translate prediction models that support fall prevention clinical decision-making in hospitals. The purpose of this study was to explore a combined data-driven and practice-based approach to identify risk factors associated with falls.Procedures: We conducted an observational case-control study of EHR data from January 1, 2013 to October 31, 2013 from 14 medical-surgical units of a tertiary referral teaching hospital. Patients aged 21 or older admitted to medical surgical units were included in the study. Manual and semi- and fully-automated methods were used to identify fall risk factors across four prediction models. Sensitivity, specificity, and the Area under the Receiver Operating Characteristic (AUROC) curve were calculated for all models using 10-fold cross validation.Findings: We confirmed the significance of a set of valid fall risk factors (i.e., age, gender, fall risk assessment, history of falling, mental status, mobility, and confusion) and identified set of new risk factors (i.e., # of fall risk increasing drugs, hemoglobin level, physical therapy initiation, Charlson Comorbity Index, nurse skill mix, and registered nurse staffing ratio) based on the most precise prediction approach, namely stepwise regression.Conclusions: The use of semi- and fully-automated approaches with expert clinical knowledge over expert or data-driven only approaches can significantly improve identifying patient, clinical, and organizational risk factors of iatrogenic conditions, including hospital-acquired falls.
机译:背景和目的:电子健康记录(EHR)数据为识别与医源性疾病相关的危险因素(例如医院获得的跌倒)的新方法提供了机会。迫切需要验证和转换支持医院预防跌倒临床决策的预测模型。这项研究的目的是探索一种结合数据驱动和基于实践的方法来识别与跌倒相关的风险因素。程序:我们从2013年1月1日至2013年10月31日对EHR数据进行了观察性病例对照研究。三级转诊教学医院的14个医疗外科单位。该研究纳入了21岁或以上接受外科手术治疗的患者。使用手动,半自动和全自动方法来识别四个预测模型中的跌倒风险因素。使用10倍交叉验证计算了所有模型的敏感性,特异性和受体工作特征(AUROC)曲线下面积。发现:我们确认了一组有效的跌倒危险因素(即年龄,性别,跌倒)的重要性风险评估,跌倒史,精神状态,活动能力和精神错乱),并确定了一组新的风险因素(例如,跌倒风险增加药物的数量,血红蛋白水平,物理治疗的开始,查尔森综合指数,护士技能组合和注册护士结论:与专家或仅数据驱动的方法相比,使用具有专家临床知识的半自动化和全自动方法可显着改善对患者,临床和组织风险的识别医源性因素,包括医院获得性跌倒。

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