Risk factors of pneumonia among elderly with robust Poisson regression - A study on mimic III data

IF 2.1 Q2 MEDICINE, GENERAL & INTERNAL BioMedicine-Taiwan Pub Date : 2023-05-25 DOI:10.51248/.v43i02.2250
Kalesh M. Karun, Amitha Puranik, Lintu M. K., D. M. S.
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引用次数: 2

Abstract

Introduction and Aim: Pneumonia is a common and serious illness among the elderly. Early identification of the risk factors for pneumonia is essential for improving the survival outcomes among elderly. The present study aimed to identify an optimal regression approach to determine the risk factors for pneumonia among elderly patients.   Materials and Methods: The present study utilized data from the Medical Information Mart for Intensive Care (MIMIC III) to evaluate the use of alternative generalized linear models to identify the risk factors for pneumonia. The regression model with the smallest AIC, BIC and SE was considered as the appropriate regression model for the data. Robust Poisson model was considered the best fit for the current data as it had the lowest AIC, BIC and standard error compared to other regression models.   Results: Variables such as BMI, renal failure, hypertension, diabetes and asthma were identified as the significant risk factors for pneumonia. The risk of pneumonia was found to be significantly higher in the underweight category of BMI [RRadj=1.70; 95% CI=1.38, 2.08]; diabetic patients [RRadj =1.29; 95% CI=1.03, 1.61); asthmatic patients [RRadj =1.35; 95% CI=1.15, 1.58] and patients with renal failure [RRadj =1.16; 95% CI= 1.05, 1.29].   Conclusion: Among various binary regression models, Poisson regression with robust variance (sandwich Poisson regression) provided unbiased estimates of the relationship. In the present study, variables such as BMI, renal failure, diabetics, hypertension and asthma were identified as the significant risk factors for pneumonia in the elderly using robust Poisson regression.
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老年人肺炎的危险因素与稳健泊松回归-模拟III数据的研究
引言和目的:肺炎是老年人常见的严重疾病。早期识别肺炎的危险因素对于提高老年人的生存率至关重要。本研究旨在确定一种最佳回归方法,以确定老年患者肺炎的危险因素。材料和方法:本研究利用重症监护医疗信息市场(MIMIC III)的数据,评估使用替代广义线性模型来确定肺炎的风险因素。AIC、BIC和SE最小的回归模型被认为是数据的适当回归模型。稳健泊松模型被认为是最适合当前数据的模型,因为与其他回归模型相比,它具有最低的AIC、BIC和标准误差。结果:BMI、肾功能衰竭、高血压、糖尿病和哮喘等变量被确定为肺炎的重要危险因素。在体重不足的BMI类别中,肺炎的风险显著更高[RRadj=1.70;95%CI=1.38,2.08];糖尿病患者[RRadj=1.29;95%CI=1.03,1.61);哮喘患者[RRdj=1.35;95%CI=1.115,1.58]和肾功能衰竭患者[RRadj=1.16;95%CI=1.05,1.29]。结论:在各种二元回归模型中,具有稳健方差的泊松回归(夹心泊松回归)提供了对关系的无偏估计。在本研究中,使用稳健泊松回归,将BMI、肾功能衰竭、糖尿病、高血压和哮喘等变量确定为老年人肺炎的重要危险因素。
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来源期刊
BioMedicine-Taiwan
BioMedicine-Taiwan MEDICINE, GENERAL & INTERNAL-
CiteScore
2.80
自引率
5.90%
发文量
21
审稿时长
24 weeks
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