Jung Hyesil, Yoo Sooyoung, Kim Seok, Heo Eunjeong, Kim Borham, Lee Ho-Young, Hwang Hee
Office of eHealth Research and Business, Seoul National University Bundang Hospital, Seongnam-si, Republic of Korea.
Kakao Healthcare Company-In-Company, Seongnam-si, Republic of Korea.
JMIR Med Inform. 2022 Mar 11;10(3):e35104. doi: 10.2196/35104.
Falls in acute care settings threaten patients' safety. Researchers have been developing fall risk prediction models and exploring risk factors to provide evidence-based fall prevention practices; however, such efforts are hindered by insufficient samples, limited covariates, and a lack of standardized methodologies that aid study replication.
The objectives of this study were to (1) convert fall-related electronic health record data into the standardized Observational Medical Outcome Partnership's (OMOP) common data model format and (2) develop models that predict fall risk during 2 time periods.
As a pilot feasibility test, we converted fall-related electronic health record data (nursing notes, fall risk assessment sheet, patient acuity assessment sheet, and clinical observation sheet) into standardized OMOP common data model format using an extraction, transformation, and load process. We developed fall risk prediction models for 2 time periods (within 7 days of admission and during the entire hospital stay) using 2 algorithms (least absolute shrinkage and selection operator logistic regression and random forest).
In total, 6277 nursing statements, 747,049,486 clinical observation sheet records, 1,554,775 fall risk scores, and 5,685,011 patient acuity scores were converted into OMOP common data model format. All our models (area under the receiver operating characteristic curve 0.692-0.726) performed better than the Hendrich II Fall Risk Model. Patient acuity score, fall history, age ≥60 years, movement disorder, and central nervous system agents were the most important predictors in the logistic regression models.
To enhance model performance further, we are currently converting all nursing records into the OMOP common data model data format, which will then be included in the models. Thus, in the near future, the performance of fall risk prediction models could be improved through the application of abundant nursing records and external validation.
急性护理环境中的跌倒威胁患者安全。研究人员一直在开发跌倒风险预测模型并探索风险因素,以提供基于证据的跌倒预防措施;然而,这些努力受到样本不足、协变量有限以及缺乏有助于研究重复的标准化方法的阻碍。
本研究的目的是(1)将与跌倒相关的电子健康记录数据转换为标准化的观察性医疗结局合作组织(OMOP)通用数据模型格式,以及(2)开发预测两个时间段内跌倒风险的模型。
作为一项试点可行性测试,我们使用提取、转换和加载过程,将与跌倒相关的电子健康记录数据(护理记录、跌倒风险评估表、患者 acuity 评估表和临床观察表)转换为标准化的 OMOP 通用数据模型格式。我们使用两种算法(最小绝对收缩和选择算子逻辑回归以及随机森林)开发了两个时间段(入院后 7 天内和整个住院期间)的跌倒风险预测模型。
总共 6277 条护理记录、747049486 条临床观察表记录、1554775 个跌倒风险评分和 5685011 个患者 acuity 评分被转换为 OMOP 通用数据模型格式。我们所有的模型(受试者操作特征曲线下面积为 0.692 - 0.726)的表现均优于亨德里希二世跌倒风险模型。患者 acuity 评分、跌倒史、年龄≥60 岁、运动障碍和中枢神经系统药物是逻辑回归模型中最重要的预测因素。
为了进一步提高模型性能,我们目前正在将所有护理记录转换为 OMOP 通用数据模型数据格式,然后将其纳入模型。因此,在不久的将来,通过应用丰富的护理记录和外部验证,可以提高跌倒风险预测模型的性能。