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Using Demographic Factors and Comorbidities to Develop a Predictive Model for ICU Mortality in Patients with Acute Exacerbation COPD

机译:利用人口统计学因素和合并症为急性加重期COPD患者ICU死亡率建立预测模型

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摘要

Recognizing factors associated with mortality in patients admitted to the ICU with acute exacerbation of chronic obstructive pulmonary disease could reduce healthcare costs and improve end-of-life care. Previous studies have identified possible predictive variables, but analysis is lacking on the combined effect of demographic factors and comorbidities. Using the MIMIC-III database, this study examined factors associated with mortality in a model incorporating comorbidities, comorbidity indices, and demographic factors. After determining associations between predictive variables and mortality through univariate and multivariate binomial logistic regression, three predictive models were developed: (1) univariate GLM-derived logistic, (2) Mean Gini-derived logistic (MGDL), and (3) random forest. The MGDL model best predicted mortality with an AUROC of 0.778. Variables with the greatest relative importance in determining mortality included the Charlson Comorbidity Index, Elixhauser Index, male, and arrhythmia. The results support the potential of using the MGDL model and need for further work in exploring demographic factors.
机译:认识到入住ICU并伴有慢性阻塞性肺疾病的急性加重患者的死亡率相关因素,可以降低医疗保健成本并改善临终护理。先前的研究已经确定了可能的预测变量,但缺乏对人口统计学因素和合并症的综合影响的分析。本研究使用MIMIC-III数据库在合并症,合并症指数和人口统计学因素的模型中研究了与死亡率相关的因素。通过单变量和多变量二项式Logistic回归确定预测变量与死亡率之间的关联后,开发了三种预测模型:(1)单变量GLM衍生的Logistic,(2)平均基尼衍生的Logistic(MGDL)和(3)随机森林。 MGDL模型以0.778的AUROC最好地预测了死亡率。在确定死亡率方面相对重要性最高的变量包括Charlson合并症指数,Elixhauser指数,男性和心律失常。结果支持使用MGDL模型的潜力,并需要在探索人口统计学因素方面做进一步的工作。

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