Burns R, Nichols L O
Section of Geriatric Medicine, Veterans Affairs Medical Center, Memphis, TN 38104.
J Gen Intern Med. 1991 Sep-Oct;6(5):389-93. doi: 10.1007/BF02598158.
Interview- and chart-based study of emergent admissions that occurred within 60 days of discharge.
General medicine wards of the Memphis Veterans Affairs Medical Center, an 862-bed university-affiliated tertiary care facility.
PATIENTS/PARTICIPANTS: General medicine patients greater than or equal to 65 years old (n = 173). Inclusion criteria were willingness to participate, written consent (patient or family member), and patient interview within 36 hours of admission.
The dependent variable was emergent readmission within 60 days of discharge from the hospital. Independent variables included demographic (age, race, income, education), social support (marital status, living arrangements), psychological (cognition, depression), activities of daily living functioning, and clinical (diagnoses, type and source of admission, length of stay, numbers of hospitalizations and days of hospitalizations in the past year, illness severity) parameters. Readmitted patients were emergently admitted and more severely ill, had more diagnoses of chronic obstructive pulmonary disease (COPD) or congestive heart failure (CHF), less ischemic heart disease, and more hospitalizations and hospital days in the past year (all p less than 0.05). Logistic regression identified diagnostic group (COPD or CHF), emergent admission, and admission severity of illness as predictive of readmission. The likelihood of being readmitted was 5.4. Accuracy of the three-variable model was 76%, predicted value positive, 73%, and predictive value negative, 77%.
Chronically ill patients who are severely ill at index admission and who have had several hospitalizations in the past year tend to be readmitted. Using this model, high-risk patients may be prospectively targeted to reduce readmissions.
1)确定一组老年普通内科患者在入院24小时内可获取数据的人口统计学、临床社会支持、功能和心理因素,这些因素与紧急非计划再入院相关;2)开发一个预测紧急再入院的模型。
基于访谈和病历的对出院后60天内发生的紧急入院情况的研究。
孟菲斯退伍军人事务医疗中心的普通内科病房,这是一家拥有862张床位的大学附属三级护理机构。
患者/参与者:65岁及以上的普通内科患者(n = 173)。纳入标准为愿意参与、书面同意(患者或家庭成员)以及入院36小时内接受患者访谈。
因变量为出院后60天内的紧急再入院。自变量包括人口统计学因素(年龄、种族、收入、教育程度)、社会支持(婚姻状况、居住安排)、心理因素(认知、抑郁)、日常生活功能活动以及临床因素(诊断、入院类型和来源、住院时间、过去一年的住院次数和住院天数、疾病严重程度)参数。再入院患者为紧急入院且病情更严重,慢性阻塞性肺疾病(COPD)或充血性心力衰竭(CHF)诊断更多,缺血性心脏病较少,过去一年住院次数和住院天数更多(所有p均小于0.05)。逻辑回归确定诊断组(COPD或CHF)、紧急入院以及入院时疾病严重程度可预测再入院。再入院的可能性为5.4。三变量模型的准确率为76%,阳性预测值为73%,阴性预测值为77%。
首次入院时病情严重且过去一年有多次住院经历的慢性病患者往往会再次入院。使用该模型,可前瞻性地针对高危患者以减少再入院情况。