Vanderbilt University School of Medicine, 1161 21St Ave S, Nashville, TN, 37232, US.
Current Address: University of California San Francisco, 500 Parnassus Avenue, San Francisco, CA, 94143, US.
BMC Geriatr. 2023 Jul 11;23(1):424. doi: 10.1186/s12877-023-04147-y.
Timely discharge to post-acute care (PAC) settings, such as skilled nursing facilities, requires early identification of eligible patients. We sought to develop and internally validate a model which predicts a patient's likelihood of requiring PAC based on information obtained in the first 24 h of hospitalization.
This was a retrospective observational cohort study. We collected clinical data and commonly used nursing assessments from the electronic health record (EHR) for all adult inpatient admissions at our academic tertiary care center from September 1, 2017 to August 1, 2018. We performed a multivariable logistic regression to develop the model from the derivation cohort of the available records. We then evaluated the capability of the model to predict discharge destination on an internal validation cohort.
Age (adjusted odds ratio [AOR], 1.04 [per year]; 95% Confidence Interval [CI], 1.03 to 1.04), admission to the intensive care unit (AOR, 1.51; 95% CI, 1.27 to 1.79), admission from the emergency department (AOR, 1.53; 95% CI, 1.31 to 1.78), more home medication prescriptions (AOR, 1.06 [per medication count increase]; 95% CI 1.05 to 1.07), and higher Morse fall risk scores at admission (AOR, 1.03 [per unit increase]; 95% CI 1.02 to 1.03) were independently associated with higher likelihood of being discharged to PAC facility. The c-statistic of the model derived from the primary analysis was 0.875, and the model predicted the correct discharge destination in 81.2% of the validation cases.
A model that utilizes baseline clinical factors and risk assessments has excellent model performance in predicting discharge to a PAC facility.
及时将患者转至康复护理机构(如康复护理院)等后期康复护理机构需要提前确定符合条件的患者。我们旨在开发并内部验证一种模型,该模型根据患者入院后 24 小时内获得的信息来预测患者接受后期康复护理的可能性。
这是一项回顾性观察性队列研究。我们从电子病历(EHR)中收集了 2017 年 9 月 1 日至 2018 年 8 月 1 日期间我们学术性三级护理中心所有成年住院患者的临床数据和常用护理评估数据。我们使用多元逻辑回归从可用记录的推导队列中开发模型。然后,我们在内部验证队列中评估了该模型预测出院去向的能力。
年龄(调整后优势比 [AOR],每增加 1 岁为 1.04 [95%置信区间 [CI],1.03 至 1.04])、入住重症监护病房(AOR,1.51 [95% CI,1.27 至 1.79])、从急诊室转入(AOR,1.53 [95% CI,1.31 至 1.78])、更多的家庭用药处方(AOR,每增加一种药物计数为 1.06 [95% CI,1.05 至 1.07])和入院时更高的 Morse 跌倒风险评分(AOR,每增加 1 个单位为 1.03 [95% CI,1.02 至 1.03])与更高的 PAC 设施出院可能性独立相关。主要分析中得出的模型 c 统计量为 0.875,该模型在 81.2%的验证病例中正确预测了出院去向。
一种利用基线临床因素和风险评估的模型在预测转至康复护理机构方面具有出色的模型性能。