Wojtusiak Janusz, Levy Cari R, Williams Allison E, Alemi Farrokh
Department of Health Administration and Policy, George Mason University, Fairfax, Virginia.
Department of Internal Medicine, Palliative Care, Veterans Affairs Medical Center Eastern Colorado Health Care System, Denver.
Gerontologist. 2016 Feb;56(1):42-51. doi: 10.1093/geront/gnv065. Epub 2015 Jul 16.
This article describes methods and accuracy of predicting change in activities of daily living (ADLs) for nursing home patients following hospitalization.
Electronic Health Record data for 5,595 residents of Veterans Affairs' (VAs') Community Living Centers (CLCs) aged 70 years and older were analyzed within the VA Informatics and Computing Infrastructure. Data included diagnoses from 7,106 inpatient records, 21,318 functional status evaluations, and 69,140 inpatient diagnoses. The Barthel Index extracted from CLC's Minimum Data Set was used to assess ADLs loss and recovery. Patients' diagnoses on hospital admission, ADL status prior to hospitalization, age, and gender were used alone or in combination to predict ADL loss/gain following hospitalization. Area under the Receiver-Operator Curve (AUC) was used to report accuracy of predictions in short (14 days) and long-term (15-365 days) follow-up post-hospitalization.
Admissions fell into 7 distinct patterns of recovery and loss: early recovery 19%, delayed recovery 9%, delayed recovery after temporary decline 9%, early decline 29%, delayed decline 10%, delayed decline after temporary recovery 6%, and no change 18%. Models accurately predicted ADL's 14-day post-hospitalization (AUC for bathing 0.917, bladder 0.842, bowels 0.875, dressing 0.871, eating 0.867, grooming 0.902, toileting 0.882, transfer 0.852, and walking deficits was 0.882). Accuracy declined but remained relatively high when predicting 14-365 days post-hospitalization (AUC ranging from 0.798 to 0.875).
Predictive modeling may allow development of more personalized predictions of functional loss and recovery after hospitalization among nursing home patients.
本文描述了预测疗养院患者住院后日常生活活动(ADL)变化的方法及准确性。
在退伍军人事务部(VA)信息学与计算基础设施内,对5595名年龄在70岁及以上的退伍军人事务部社区生活中心(CLC)居民的电子健康记录数据进行了分析。数据包括来自7106份住院记录的诊断、21318份功能状态评估以及69140份住院诊断。从CLC的最小数据集提取的巴氏指数用于评估ADL的丧失和恢复情况。患者入院时的诊断、住院前的ADL状态、年龄和性别单独或组合使用,以预测住院后的ADL丧失/恢复情况。采用受试者操作特征曲线下面积(AUC)来报告住院后短期(14天)和长期(15 - 365天)随访中预测的准确性。
入院情况分为7种不同的恢复和丧失模式:早期恢复19%,延迟恢复9%,暂时下降后延迟恢复9%,早期下降29%,延迟下降10%,暂时恢复后延迟下降6%,无变化18%。模型准确预测了住院后14天的ADL情况(洗澡的AUC为0.917,膀胱控制为0.842,肠道控制为0.875,穿衣为0.871,进食为0.867,修饰为0.902,如厕为0.882,转移为0.852,步行障碍为0.882)。在预测住院后14 - 365天的情况时,准确性虽有所下降但仍相对较高(AUC范围为0.798至0.875)。
预测模型可能有助于针对疗养院患者住院后功能丧失和恢复情况制定更个性化的预测。