Dexter Franklin, Ledolter Johannes
Division of Management Consulting, Department of Anesthesia, The University of Iowa, Iowa City, IA 52242, USA.
Anesthesiology. 2005 Dec;103(6):1259-167. doi: 10.1097/00000542-200512000-00023.
Lower prediction bounds (e.g., for fasting), upper prediction bounds (e.g., to schedule delays between sequential surgeons), comparisons of operating room (OR) times (e.g., when sequencing cases among ORs), and quantification of case uncertainty (e.g., for sequencing a surgeon's list of cases) can be done accurately for combinations of surgeon and scheduled procedure(s) by using historic OR times. The authors propose that when there are few or no historic data, the predictive distribution of the OR time of a future case be centered at the scheduled OR time, and its proportional uncertainty be based on that of other surgeons and procedures. When there are a moderate or large number of historic data, the historic data alone are used in the prediction. When there are a small number of historic data, a weighted combination is used.
This Bayesian method was tested with all 65,661 cases from a hospital.
Bayesian prediction bounds were accurate to within 2% (e.g., the 5% lower bounds exceeded 4.9% of the actual OR times). The predicted probability of one case taking longer than another was estimated to within 0.7%. When sequencing a surgeon's list of cases to reduce patient waiting past scheduled start times, both the scheduled OR time and the variability in historic OR times should be used together when assessing which cases should be done first.
The authors validated a practical way to calculate prediction bounds and compare the OR times of all cases, even those with few or no historic data for the surgeon and the scheduled procedure(s).
通过使用历史手术时间,可以准确地为外科医生和预定手术的组合计算较低预测界限(例如,用于禁食情况)、较高预测界限(例如,用于安排连续外科医生之间的延迟)、手术室(OR)时间的比较(例如,在不同手术室安排手术顺序时)以及病例不确定性的量化(例如,用于安排外科医生的病例清单顺序)。作者提出,当历史数据很少或没有时,未来病例的手术时间预测分布应以预定手术时间为中心,其比例不确定性应基于其他外科医生和手术的不确定性。当有中等数量或大量历史数据时,仅使用历史数据进行预测。当历史数据数量较少时,则使用加权组合。
使用一家医院的所有65661例病例对这种贝叶斯方法进行了测试。
贝叶斯预测界限的误差在2%以内(例如,5%的较低界限超过实际手术时间的4.9%)。估计一个病例比另一个病例耗时更长的预测概率误差在0.7%以内。在安排外科医生的病例清单顺序以减少患者等待超过预定开始时间的情况时,在评估哪些病例应优先进行时,应同时使用预定手术时间和历史手术时间的变异性。
作者验证了一种实用的方法,可用于计算预测界限并比较所有病例的手术时间,即使是那些外科医生和预定手术几乎没有或没有历史数据的病例。