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Data-Driven Surgical Duration Prediction Model for Surgery Scheduling: A Case-Study for a Practice-Feasible Model in a Public Hospital

机译:外科调度的数据驱动外科持续时间预测模型:公立医院实践可行模式的案例研究

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Hospitals have been trying to improve the utilization of operating rooms as it affects patient satisfaction, surgery throughput, revenues and costs. Surgical prediction model which uses post-surgery data often requires high-dimensional data and contains key predictors such as surgical team factors which may not be available during the surgical listing process. Our study considers a two-step data-mining model which provides a practical, feasible and parsimonious surgical duration prediction. Our model first leverages on domain knowledge to provide estimate of the first surgeon rank (a key predicting attribute) which is unavailable during the listing process, then uses this predicted attribute and other predictors such as surgical team, patient, temporal and operational factors in a tree-based model for predicting surgical durations. Experimental results show that the proposed two-step model is more parsimonious and outperforms existing moving averages method used by the hospital. Our model bridges the research-to-practice gap by combining data analytics with expert’s inputs to develop a deployable surgical duration prediction model for a real-world public hospital.
机译:医院一直在努力改善手术室的利用,因为它会影响患者满意度,手术吞吐量,收入和成本。使用外科后数据的外科预测模型通常需要高维数据,并包含诸如外科手术团队因素的关键预测因子,这在外科市过程中可能无法使用。我们的研究考虑了一款两步数据挖掘模式,提供了实用,可行和令人置捉渐播的外科持续时间预测。我们的模型首先利用域知识来提供在列表过程中不可用的第一外科医生等级(一个关键预测属性)的估计,然后使用此预测属性和其他预测因子,例如外科团队,患者,时间和运营因素基于树的预测手术持续时间的模型。实验结果表明,所提出的两步模型更加解析,优于医院使用的现有移动平均方法。我们的模型通过将数据分析与专家的投入组合来开发现实世界公立医院的可部署外科持续时间预测模型来弥合研究 - 实践差距。

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