Department of Industrial and Systems Engineering, Chung Yuan Christian University, Taoyuan, Taiwan.
Department of Information Management, Chung Yuan Christian University, Taoyuan, Taiwan.
Technol Health Care. 2024;32(2):997-1013. doi: 10.3233/THC-230374.
Scheduling patient appointments in hospitals is complicated due to various types of patient examinations, different departments and physicians accessed, and different body parts affected.
This study focuses on the radiology scheduling problem, which involves multiple radiological technologists in multiple examination rooms, and then proposes a prototype system of computer-aided appointment scheduling based on information such as the examining radiological technologists, examination departments, the patient's body parts being examined, the patient's gender, and the patient's age.
The system incorporated a stepwise multiple regression analysis (SMRA) model to predict the number of examination images and then used the K-Means clustering with a decision tree classification model to classify the patient's examination time within an appropriate time interval.
The constructed prototype creates a feasible patient appointment schedule by classifying patient examination times into different categories for different patients according to the four types of body parts, eight hospital departments, and 10 radiological technologists.
The proposed patient appointment scheduling system can schedule appointment times for different types of patients according to the type of visit, thereby addressing the challenges associated with diversity and uncertainty in radiological examination services. It can also improve the quality of medical treatment.
由于患者检查类型多样、可访问的科室和医师不同,以及受影响的身体部位不同,医院的患者预约安排变得复杂。
本研究专注于放射科预约安排问题,其中涉及多个检查室中的多名放射技师,然后提出了一个基于检查放射技师、检查科室、患者受检身体部位、患者性别和患者年龄等信息的计算机辅助预约安排原型系统。
该系统纳入逐步多元回归分析(SMRA)模型来预测检查图像数量,然后使用 K-Means 聚类与决策树分类模型对患者检查时间在适当时间间隔内进行分类。
所构建的原型系统根据四种身体部位、八个医院科室和十名放射技师,将患者检查时间分为不同类别,为不同患者创建可行的预约安排。
所提出的患者预约安排系统可以根据就诊类型为不同类型的患者安排预约时间,从而解决放射检查服务多样性和不确定性带来的挑战。它还可以提高医疗质量。