Celi Leo Anthony G, Tang Robin J, Villarroel Mauricio C, Davidzon Guido A, Lester William T, Chueh Henry C
Division of Pulmonary, Critical Care and Sleep Medicine, Beth Israel Deaconess Medical Center, Boston, MA USA.
J Healthc Eng. 2011 Mar;2(1):97-110. doi: 10.1260/2040-2295.2.1.97. Epub 2011 Apr 12.
In exploring an approach to decision support based on information extracted from a clinical database, we developed mortality prediction models of intensive care unit (ICU) patients who had acute kidney injury (AKI) and compared them against the Simplified Acute Physiology Score (SAPS). We used MIMIC, a public de-identified database of ICU patients admitted to Beth Israel Deaconess Medical Center, and identified 1400 patients with an ICD9 diagnosis of AKI and who had an ICU stay > 3 days. Multivariate regression models were built using the SAPS variables from the first 72 hours of ICU admission. All the models developed on the training set performed better than SAPS (AUC = 0.64, Hosmer-Lemeshow p < 0.001) on an unseen test set; the best model had an AUC = 0.74 and Hosmer-Lemeshow p = 0.53. These findings suggest that local customized modeling might provide more accurate predictions. This could be the first step towards an envisioned individualized point-of-care probabilistic modeling using one's clinical database.
在探索一种基于从临床数据库提取的信息进行决策支持的方法时,我们开发了患有急性肾损伤(AKI)的重症监护病房(ICU)患者的死亡率预测模型,并将其与简化急性生理学评分(SAPS)进行比较。我们使用了MIMIC,这是一个贝斯以色列女执事医疗中心收治的ICU患者的公开匿名数据库,识别出1400例ICD9诊断为AKI且在ICU住院超过3天的患者。使用ICU入院前72小时的SAPS变量构建多变量回归模型。在一个未见过的测试集上,所有在训练集上开发的模型表现均优于SAPS(AUC = 0.64,Hosmer-Lemeshow p < 0.001);最佳模型的AUC = 0.74,Hosmer-Lemeshow p = 0.53。这些发现表明,局部定制建模可能提供更准确的预测。这可能是朝着使用个人临床数据库进行设想中的个性化床边概率建模迈出的第一步。