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Frailty and In-Hospital Mortality Risk Using EHR Nursing Data

机译:使用 EHR 护理数据的虚弱和院内死亡风险

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Purpose The purpose of this study was to evaluate four definitions of a Frailty Risk Score (FRS) derived from EHR data that includes combinations of biopsychosocial risk factors using nursing flowsheet data or International Classification of Disease, 10th revision (ICD-10) codes and blood biomarkers and its predictive properties for in-hospital mortality in adults >= 50 years admitted to medical-surgical units. Methods In this retrospective observational study and secondary analysis of an EHR dataset, survival analysis and Cox regression models were performed with sociodemographic and clinical covariates. Integrated area under the ROC curve (iAUC) across follow-up time based on Cox modeling was estimated. Results The 46,645 patients averaged 1.5 hospitalizations (SD = 1.1) over the study period and 63.3 were emergent admissions. The average age was 70.4 years (SD = 11.4), 55.3 were female, 73.0 were non-Hispanic White (73.0), mean comorbidity score was 3.9 (SD = 2.9), 80.5 were taking 1.5 high risk medications, and 42 recorded polypharmacy. The best performing FRS-NF-26-LABS included nursing flowsheet data and blood biomarkers (Adj. HR = 1.30, 95 CI 1.28, 1.33), with good accuracy (iAUC = .794); the reduced model with age, sex, and FRS only demonstrated similar accuracy. The poorest performance was the ICD-10 code-based FRS. Conclusion The FRS captures information about the patient that increases risk for in-hospital mortality not accounted for by other factors. Identification of frailty enables providers to enhance various aspects of care, including increased monitoring, applying more intensive, individualized resources, and initiating more informed discussions about treatments and discharge planning.
机译:目的 本研究的目的是评估从 EHR 数据得出的虚弱风险评分 (FRS) 的四个定义,其中包括使用护理流程数据或国际疾病分类第 10 次修订版 (ICD-10) 代码和血液生物标志物的生物心理社会风险因素的组合及其对入院的成人住院死亡率的预测特性>= 50 岁入住内外科单位。方法 在这项回顾性观察性研究和 EHR 数据集的二次分析中,使用社会人口学和临床协变量进行生存分析和 Cox 回归模型。估计基于 Cox 模型的随访时间内的 ROC 曲线下积分面积 (iAUC)。结果 46,645例患者在研究期间平均住院1.5例(SD = 1.1),其中63.3%为急诊入院。平均年龄为 70.4 岁 (SD = 11.4),55.3% 为女性,73.0% 为非西班牙裔白人 (73.0%),平均合并症评分为 3.9 (SD = 2.9),80.5% 服用 1.5 种高风险药物,42% 记录为多药治疗。表现最好的FRS-NF-26-LABS包括护理流程数据和血液生物标志物(Adj. HR = 1.30, 95% CI [1.28, 1.33]),准确性良好(iAUC = .794);具有年龄、性别和 FRS 的简化模型仅显示出相似的准确性。性能最差的是ICD-10基于代码的FRS。结论 FRS捕获了有关患者的信息,这些信息增加了其他因素未考虑的院内死亡风险。识别虚弱使提供者能够加强护理的各个方面,包括加强监测、应用更密集、个性化的资源,以及就治疗和出院计划发起更明智的讨论。

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