通过多元回归模型模拟腹腔镜阑尾切除术患者的住院时间

Teresa Angela Trunfio, A. Scala, Cristiana Giglio, Giovanni Rossi, A. Borrelli, P. Gargiulo, Maria Romano
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引用次数: 4

摘要

医疗机构一直承受着控制成本的压力。由于服务复杂性的快速增长和严格的质量要求,这一目标正变得越来越难以实现。因此,实施了若干战略,使评估和获得尽可能接近标准的卫生过程成为可能。在文献中广泛使用的一个参数是停留时间(LOS)。患者的LOS可能受到许多因素的影响,包括他们的特殊状况、病史或医疗需求。能够先验地了解这种变化对于医院资源(如床位)的管理非常重要。本研究建立了腹腔镜阑尾切除术患者总LOS的预测模型,腹腔镜阑尾切除术是最常见的急诊手术之一。采用多元线性回归得到模型,R2值为0.638。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling the hospital length of stay for patients undergoing laparoscopic appendectomy through a Multiple Regression Model
Healthcare facilities are under constant pressure to contain costs. This goal is becoming increasingly difficult to achieve due to the rapid growth of the complexity of the services and stringent quality requirements. Therefore, several strategies are implemented that make it possible to evaluate and obtain health processes as close as possible to standards. A widely used parameter in the literature is the length of stay (LOS). A patient's LOS can be affected by a number of factors, including their particular condition, medical history, or medical needs. Being able to know this variation a priori can be very important for the management of hospital resources, such as beds. In this study, a predictive model was built for the total LOS of patients undergoing laparoscopic appendectomy, one of the most common emergency procedures. The model was obtained using multiple linear regression with an R2 value of 0.638.
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