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Analysis of Length of Stay (LOS) Data from the Medical Records of Tertiary Care Hospital in Saudi Arabia for Five Diagnosis Related Groups: Application of Cox Prediction Model

机译:Saudi Arabia的第三级护理医院病假(LOS)数据分析了五个诊断相关群体:Cox预测模型的应用

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Background: One of the main objectives of hospital managements is to control the length of stay (LOS). Successful control of LOS of inpatients will result in reduction in the cost of care, decrease in nosocomial infections, medication side effects, and better management of the limited number of available patients’ beds. The length of stay (LOS) is an important indicator of the efficiency of hospital management by improving the quality of treatment, and increased hospital profit with more efficient bed management. The purpose of this study was to model the distribution of LOS as a function of patient’s age, and the Diagnosis Related Groups (DRG), based on electronic medical records of a large tertiary care hospital. Materials and Methods: Information related to the research subjects were retrieved from a database of patients admitted to King Faisal Specialist Hospital and Research Center hospital in Riyadh, Saudi Arabia between January 2014 and December 2016. Subjects’ confidential information was masked from the investigators. The data analyses were reported visually, descriptively, and analytically using Cox proportional hazard regression model to predict the risk of long-stay when patients’ age and the DRG are considered as antecedent risk factors. Results: Predicting the risk of long stay depends significantly on the age at admission, and the DRG to which a patient belongs to. We demonstrated the validity of the Cox regression model for the available data as the proportionality assumption is shown to be satisfied. Two examples were presented to demonstrate the utility of the Cox model in this regard.
机译:背景:医院管理的主要目标之一是控制逗留时间(LOS)。对住院患者洛杉矶的成功控制将导致治疗成本降低,减少医院感染,药物副作用,更好地管理有限的可用患者床。逗留时间(LOS)是通过提高治疗质量的医院管理效率的重要指标,并通过更高效的床管理增加医院利润。本研究的目的是根据患者年龄的函数和诊断相关群体(DRG),根据大型第三节护理医院的电子医疗记录来模拟LOS的分布。材料和方法:从2014年1月至2016年1月至2016年1月至2016年1月间在沙特阿拉伯录取的患者的患者患者数据库中检索了与研究科目相关的信息。受试者掩盖了受试者的机密信息。使用Cox比例危害回归模型在视觉上,描述和分析数据分析,以预测患者年龄和DRG被视为前一种危险因素时长期留下的风险。结果:预测长期以来的风险取决于入场时的年龄,患者所属的DRG。我们展示了可用数据的Cox回归模型的有效性,因为表现出满足比例假设。提出了两个例子以证明COX模型在这方面的效用。

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