首页> 外文期刊>BioMed research international >Predicting 30-Day Readmissions: Performance of the LACE Index Compared with a Regression Model among General Medicine Patients in Singapore
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Predicting 30-Day Readmissions: Performance of the LACE Index Compared with a Regression Model among General Medicine Patients in Singapore

机译:预测30天的阅览:蕾丝指数的表现与新加坡一般医学患者的回归模型相比

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摘要

The LACE index (length of stay, acuity of admission, Charlson comorbidity index, CCI, and number of emergency department visits in preceding 6 months) derived in Canada is simple and may have clinical utility in Singapore to predict readmission risk. We compared the performance of the LACE index with a derived model in identifying 30-day readmissions from a population of general medicine patients in Singapore. Additional variables include patient demographics, comorbidities, clinical and laboratory variables during the index admission, and prior healthcare utilization in the preceding year. 5, 62 patients were analysed and 572 patients (9.8%) were readmitted in the 30 days following discharge. Age, CCI, count of surgical procedures during index admission, white cell count, serum albumin, and number of emergency department visits in previous 6 months were significantly associated with 30-day readmission risk. The final logistic regression model had fair discriminative ability c-statistic of 0.650 while the LACE index achieved c-statistic of 0.628 in predicting 30-day readmissions. Our derived model has the advantage of being available early in the admission to identify patients at high risk of readmission for interventions. Additional factors predicting readmission risk and machine learning techniques should be considered to improve model performance.
机译:蕾丝指数(入住时间,入院的敏锐度,古老师,CCI,CCI和9个月前6个月的急诊部门访问)很简单,可能在新加坡有临床公用事业,以预测入院风险。我们将蕾丝指数与衍生模型进行了比较了鉴定新加坡一般医学患者群体的30天入伍的衍生模型。附加变量包括在指数入院期间的患者人口统计学,合并症,临床和实验室变量以及前一年的医疗利用。 5,62例患者分析,在出院后30天内预约572名患者(9.8%)。年龄,CCI,指数入院期间的手术程序,白细胞计数,血清白蛋白及之前6个月内的急诊室访问数量与30天的入院风险显着相关。最终的逻辑回归模型具有公平的歧视性能力C统计0.650,而蕾丝指数在预测30天的阅约度方面取得了0.628的C统计。我们的衍生模型具有在入学期间早期提供的优势,以识别患者的入学度的高风险。应考虑预测入院风险和机器学习技术的其他因素来提高模型性能。

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