The Readmission Risk Flag: Using the Electronic Health Record to Automatically Identify Patients at Risk for 30-Day Readmission

被引:44
|
作者
Baillie, Charles A. [1 ]
VanZandbergen, Christine [2 ]
Tait, Gordon [3 ]
Hanish, Asaf [4 ]
Leas, Brian [5 ]
French, Benjamin [1 ,6 ]
Hanson, C. William [2 ]
Behta, Maryam [4 ]
Umscheid, Craig A. [1 ,5 ,6 ,7 ]
机构
[1] Univ Penn, Ctr Clin Epidemiol & Biostat, Perelman Sch Med, Philadelphia, PA 19104 USA
[2] Univ Penn Hlth Syst, Office Chief Med Informat Officer, Philadelphia, PA USA
[3] Univ Penn Hlth Syst, Informat Serv, Philadelphia, PA USA
[4] Univ Penn Hlth Syst, Dept Clin Effectiveness & Qual Improvement, Philadelphia, PA USA
[5] Univ Penn Hlth Syst, Ctr Evidence Based Practice, Philadelphia, PA USA
[6] Univ Penn, Dept Biostat & Epidemiol, Perelman Sch Med, Philadelphia, PA 19104 USA
[7] Univ Penn, Dept Med, Sect Hosp Med, Div Gen Internal Med,Perelman Sch Med, Philadelphia, PA 19104 USA
关键词
HOSPITAL READMISSIONS; UNPLANNED READMISSION; CARE; REHOSPITALIZATION; QUALITY; RATES;
D O I
10.1002/jhm.2106
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BACKGROUNDIdentification of patients at high risk for readmission is a crucial step toward improving care and reducing readmissions. The adoption of electronic health records (EHR) may prove important to strategies designed to risk stratify patients and introduce targeted interventions. OBJECTIVETo develop and implement an automated prediction model integrated into our health system's EHR that identifies on admission patients at high risk for readmission within 30 days of discharge. DESIGNRetrospective and prospective cohort. SETTINGHealthcare system consisting of 3 hospitals. PATIENTSAll adult patients admitted from August 2009 to September 2012. INTERVENTIONSAn automated readmission risk flag integrated into the EHR. MEASURESThirty-day all-cause and 7-day unplanned healthcare system readmissions. RESULTSUsing retrospective data, a single risk factor, 2 inpatient admissions in the past 12 months, was found to have the best balance of sensitivity (40%), positive predictive value (31%), and proportion of patients flagged (18%), with a C statistic of 0.62. Sensitivity (39%), positive predictive value (30%), proportion of patients flagged (18%), and C statistic (0.61) during the 12-month period after implementation of the risk flag were similar. There was no evidence for an effect of the intervention on 30-day all-cause and 7-day unplanned readmission rates in the 12-month period after implementation. CONCLUSIONSAn automated prediction model was effectively integrated into an existing EHR and identified patients on admission who were at risk for readmission within 30 days of discharge. Journal of Hospital Medicine 2013;8:689-695. (c) 2013 Society of Hospital Medicine
引用
收藏
页码:689 / 695
页数:7
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