病理实验室中的半在线患者预约安排
Semi-online patient scheduling in pathology laboratories.
作者信息
Azadeh Ali, Baghersad Milad, Farahani Mehdi Hosseinabadi, Zarrin Mansour
机构信息
School of Industrial Engineering and Centre of Excellence for Intelligent Experimental Mechanics, College of Engineering, University of Tehran, PO Box 515-14395, Tehran, Iran.
Department of Industrial and Systems Engineering, Virginia Polytechnic Institute and State University, Blacksburg, VA, USA.
出版信息
Artif Intell Med. 2015 Jul;64(3):217-26. doi: 10.1016/j.artmed.2015.05.001. Epub 2015 May 12.
OBJECTIVE
Nowadays, effective scheduling of patients in clinics, laboratories, and emergency rooms is becoming increasingly important. Hospitals are required to maximize the level of patient satisfaction, while they are faced with lack of space and facilities. An effective scheduling of patients in existing conditions is vital for improving healthcare delivery. The shorter waiting time of patients improves healthcare service quality and efficiency. Focusing on real settings, this paper addresses a semi-online patient scheduling problem in a pathology laboratory located in Tehran, Iran, as a case study.
METHODS AND MATERIAL
Due to partial precedence constraints of laboratory tests, the problem is formulated as a semi-online hybrid shop scheduling problem and a mixed integer linear programming model is proposed. A genetic algorithm (GA) is developed for solving the problem and response surface methodology is used for setting GA parameters. A lower bound is also calculated for the problem, and several experiments are conducted to estimate the validity of the proposed algorithm.
RESULTS
Based on the empirical data collected from the pathology laboratory, comparison between the current condition of the laboratory and the results obtained by the proposed approach is performed through simulation experiments. The results indicate that the proposed approach can significantly reduce waiting time of the patients and improve operations efficiency.
CONCLUSION
The proposed approach has been successfully applied to scheduling patients in a pathology laboratory considering the real-world settings including precedence constraints of tests, constraint on the number of sites or operators for taking tests (i.e. multi-machine problem), and semi-online nature of the problem.
目的
如今,在诊所、实验室和急诊室对患者进行有效调度变得越来越重要。医院需要在患者满意度最大化的同时,应对空间和设施不足的问题。在现有条件下对患者进行有效调度对于改善医疗服务至关重要。患者等待时间的缩短可提高医疗服务质量和效率。本文以伊朗德黑兰一家病理实验室为案例研究,聚焦实际场景,探讨了一个半在线患者调度问题。
方法与材料
由于实验室检测存在部分优先约束条件,该问题被表述为一个半在线混合车间调度问题,并提出了一个混合整数线性规划模型。开发了一种遗传算法(GA)来解决该问题,并使用响应面方法来设置GA参数。还计算了该问题的一个下界,并进行了若干实验以评估所提算法的有效性。
结果
基于从病理实验室收集的经验数据,通过模拟实验对实验室的当前状况与所提方法得到的结果进行了比较。结果表明,所提方法可显著减少患者的等待时间并提高运营效率。
结论
所提方法已成功应用于病理实验室的患者调度,考虑了包括检测优先约束、检测地点或操作人员数量限制(即多机问题)以及问题的半在线性质等实际情况。