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A Predictive Model to Identify Patients at Risk of Unplanned 30-Day Acute Care Hospital Readmission

机译:一种预测模型,识别计划预计急性护理医院入院风险的患者

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We tested an all-cause unplanned 30-day readmission risk model that produces timely risk scores from claims data and using the ACG predictive modeling framework. Our model achieves and AUC of. 75 on a test set. The major components of the model include fixed patient attributes such as maternity and disability, morbidity burden (ACG), count of hospital dominant morbidity types, cardiovascular, malignancy, neurologic and other condition clusters, count of ED episodes, and inpatient utilization measures including the number of previous acute care hospital stays, accumulated days, number of 30-day readmissions, and whether the patient had a major inpatient procedure.
机译:我们测试了一项全面导致的30天休息风险模型,它从索赔数据和使用ACG预测建模框架产生了及时的风险评分。我们的型号达到了。 75在测试集上。该模型的主要组成部分包括固定患者属性,如妇产性和残疾,发病率负担(ACG),医院占优势发病型,心血管,恶性肿瘤,神经系统和其他条件集群,ED剧集的计数,以及包括的INPatient利用措施以前的急性护理医院的数量保持,累计日,30天的阅览,以及患者是否具有主要的住院过程。

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