Low Lian Leng, Liu Nan, Ong Marcus Eng Hock, Ng Eileen Yining, Ho Andrew Fu Wah, Thumboo Julian, Lee Kheng Hock
Department of Family Medicine and Continuing Care, Singapore General Hospital Family Medicine Program, Duke-NUS Medical School Health Services Research Centre, Singapore Health Services Centre for Quantitative Medicine, Duke-NUS Medical School Department of Emergency Medicine, Singapore General Hospital Health Services and Systems Research, Duke-NUS Medical School School of Physical and Mathematical Sciences, Nanyang Technological University Singhealth Emergency Medicine Residency Programme, Singapore Health Services Department of Rheumatology and Immunology, Singapore General Hospital, Singapore.
Medicine (Baltimore). 2017 May;96(19):e6728. doi: 10.1097/MD.0000000000006728.
Unplanned readmissions may be avoided by accurate risk prediction and appropriate resources could be allocated to high risk patients. The Length of stay, Acuity of admission, Charlson comorbidity index, Emergency department visits in past six months (LACE) index was developed to predict hospital readmissions in Canada. In this study, we assessed the performance of the LACE index in a Singaporean cohort by identifying elderly patients at high risk of 30-day readmissions. We further investigated the use of additional risk factors in improving readmission prediction performance.Data were extracted from the hospital's electronic health records (EHR) for all elderly patients ≥ 65 years, with alive-discharge episodes from Singapore General Hospital in 2014. In addition to LACE, we also collected patients' data during the index admission, including demographics, medical history, laboratory results, and previous medical utilization.Among the 17,006 patients analyzed, 2051 or 12.1% of them were observed 30-day readmissions. The final predictive model was better than the LACE index in terms of discriminative ability; c-statistic of LACE index and final logistic regression model was 0.595 and 0.628, respectively.The LACE index had poor discriminative ability in identifying elderly patients at high risk of 30-day readmission, even if it was augmented with additional risk factors. Further studies should be conducted to discover additional factors that may enable more accurate and timely identification of patients at elevated risk of readmissions, so that necessary preventive actions can be taken.
通过准确的风险预测可以避免非计划再入院,并且可以将适当的资源分配给高危患者。住院时间、入院 acuity、查尔森合并症指数、过去六个月的急诊科就诊次数(LACE)指数是为预测加拿大的医院再入院情况而制定的。在本研究中,我们通过识别有30天再入院高风险的老年患者,评估了LACE指数在新加坡队列中的表现。我们进一步研究了使用额外的风险因素来提高再入院预测性能。数据从该医院2014年所有年龄≥65岁、从新加坡总医院存活出院的老年患者的电子健康记录(EHR)中提取。除了LACE,我们还收集了患者在索引住院期间的数据,包括人口统计学、病史、实验室检查结果和既往医疗利用情况。在分析的17006名患者中,有2051名(即12.1%)患者出现了30天再入院情况。最终的预测模型在区分能力方面优于LACE指数;LACE指数和最终逻辑回归模型的c统计量分别为0.595和0.628。LACE指数在识别有30天再入院高风险的老年患者方面区分能力较差,即使增加了额外的风险因素也是如此。应开展进一步研究以发现可能有助于更准确及时识别再入院风险升高患者的其他因素,以便能够采取必要的预防措施。