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首页> 外文期刊>JAIDS: Journal of acquired immune deficiency syndromes >An electronic medical record-based model to predict 30-day risk of readmission and death among HIV-infected inpatients.
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An electronic medical record-based model to predict 30-day risk of readmission and death among HIV-infected inpatients.

机译:一种基于电子病历的模型,可以预测感染了HIV的住院患者30天内再次入院和死亡的风险。

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Readmission after hospitalization is costly, time-consuming, and remains common among HIV-infected individuals. We sought to use data from the Electronic Medical Record (EMR) to create a clinical, robust, multivariable model for predicting readmission risk in hospitalized HIV-infected patients.We extracted clinical and nonclinical data from the EMR of HIV-infected patients admitted to a large urban hospital between March 2006 and November 2008. These data were used to build automated predictive models for 30-day risk of readmission and death.We identified 2476 index admissions among HIV-infected inpatients who were 73% males, 57% African American, with a mean age of 43 years. One-quarter were readmitted, and 3% died within 30 days of discharge. Those with a primary diagnosis during the index admission of HIV/AIDS accounted for the largest proportion of readmissions (41%), followed by those initially admitted for other infections (10%) or for oncologic (6%), pulmonary (5%), gastrointestinal (4%), and renal (3%) causes. Factors associated with readmission risk include: AIDS defining illness, CD4 ≤ 92, laboratory abnormalities, insurance status, homelessness, distance from the hospital, and prior emergency department visits and hospitalizations (c = 0.72; 95% confidence interval: 0.70 to 0.75). The multivariable predictors of death were CD4 < 132, abnormal liver function tests, creatinine >1.66, and hematocrit <30.8 (c = 0.79; 95% confidence interval: 0.74 to 0.84) for death.Readmission rates among HIV-infected patients were high. An automated model composed of factors accessible from the EMR in the first 48 hours of admission performed well in predicting the 30-day risk of readmission among HIV patients. Such a model could be used in real-time to identify HIV patients at highest risk so readmission prevention resources could be targeted most efficiently.
机译:住院后的再入院费用高昂,费时,并且在感染了HIV的个体中仍然很普遍。我们试图利用电子病历(EMR)的数据来创建一个临床,稳健,多变量的模型,以预测住院的HIV感染患者的再入院风险;我们从HIV感染患者的EMR中提取了临床和非临床数据在2006年3月至2008年11月之间,这些大型城市医院使用了这些数据。这些数据用于建立30天再入院和死亡风险的自动化预测模型。我们在感染HIV的住院患者中确认了2476个指数入院,其中男性占73%,非洲裔占57%,平均年龄43岁。四分之一被重新录取,有3%在出院后30天内死亡。接受HIV / AIDS指数诊断期间具有初步诊断的患者占再入院的比例最大(41%),其次是最初因其他感染而入院的患者(10%)或因肿瘤而入院的患者(6%),肺部(5%) ,胃肠道(4%)和肾脏(3%)的原因。与再入院风险相关的因素包括:艾滋病定义疾病,CD4≤92,实验室异常,保险状况,无家可归,离医院的距离以及先前的急诊就诊和住院(c = 0.72; 95%的置信区间:0.70至0.75)。死亡的多变量预测指标为CD4 <132,肝功能检查异常,肌酐> 1.66,血细胞比容<30.8(c = 0.79; 95%置信区间:0.74至0.84).HIV感染患者的再入院率很高。在入院后的48小时内,由EMR可获得的因素组成的自动模型在预测HIV患者30天再入院风险方面表现良好。可以实时使用这种模型来识别风险最高的HIV患者,因此可以最有效地针对再入院预防资源。

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