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住院时长的预测。分位数回归在预测住院时长及其相关因素方面比现有方法表现更佳。

Prediction of Hospitalization Length. Quantile Regression Predicts Hospitalization Length and its Related Factors better than Available Methods.

作者信息

Kazemi M, Nazari S, Motamed N, Arsang-Jang S, Fallah R

机构信息

Department of Biostatistics and Epidemiology, School of Medicine, Zanjan University of Medical Sciences, Zanjan, Iran.

Department of Health Care Management, Zanjan Social Health Research Center, Zanjan University of Medical Sciences, Zanjan, Iran.

出版信息

Ann Ig. 2021 Mar-Apr;33(2):177-188. doi: 10.7416/ai.2021.2423.

Abstract

BACKGROUND

Length of hospitalization is one of the most important indices in evaluating the efficiency and effectiveness of hospitals and the optimal use of resources. Identifying these indices' associated factors could be useful. This study aimed to investigate effective factors of the length of hospitalization in Zanjan teaching hospitals in 2018 using the Quantile regression model.

METHODS

This cross-sectional study was conducted on 1,031 patients. The study population consisted of patients in orthopaedic, pediatric, internal, surgical and intensive care units. The samples were selected by multistage random sampling. The information was collected by a pre-designed checklist. The Quantile regression model and ordinary regression model were performed on the data.

RESULTS

Of the 1,031 patients admitted to different units, 624 (60.52%) were male. Mean and standard deviation of length of hospitalization for men, women and all patients were 7.25±5.48, 8.09±6.35 and 7.58±5.83 respectively. For 90 percent of patients the length of hospitalization was less than 14 days. Twenty-five percent of patients in pediatric and orthopedic units and ten percent of patients in internal and surgery units were hospitalized less than three days. In all quantiles, patients' length of hospitalization in surgery and orthopedic units, compared to the intensive care unit, and patients hospitalized for injuries and poisonings compared to other causes, had a statistically significant difference. (p<0.05).

CONCLUSION

Due to the heterogeneity (skewness) of the length of hospital stay in different units of the hospital, the quantile regression model predicts the length of hospital stay more precisely than the ordinary regression models.

摘要

背景

住院时间是评估医院效率和效益以及资源优化利用的最重要指标之一。确定这些指标的相关因素可能会有所帮助。本研究旨在使用分位数回归模型调查2018年赞詹教学医院住院时间的影响因素。

方法

本横断面研究对1031名患者进行。研究人群包括骨科、儿科、内科、外科和重症监护病房的患者。样本通过多阶段随机抽样选取。信息通过预先设计的检查表收集。对数据进行分位数回归模型和普通回归模型分析。

结果

在入住不同科室的1031名患者中,624名(60.52%)为男性。男性、女性和所有患者的住院时间均值及标准差分别为7.25±5.48、8.09±6.35和7.58±5.83。90%的患者住院时间少于14天。儿科和骨科科室25%的患者以及内科和外科科室10%的患者住院时间少于3天。在所有分位数中,与重症监护病房相比,外科和骨科科室患者的住院时间,以及与其他病因相比,因受伤和中毒住院的患者的住院时间,差异具有统计学意义(p<0.05)。

结论

由于医院不同科室住院时间的异质性(偏态性),分位数回归模型比普通回归模型更精确地预测住院时间。

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