三级护理医院预约未到的数据分析和预测建模

Amani Moharram, Saud Altamimi, Riyad Alshammari
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引用次数: 1

摘要

本研究旨在开发一种准确的机器学习模型,用于预测费萨尔国王专科医院和研究中心(KFSH&RC)儿科门诊诊所的缺勤情况,并了解最有可能不按时就诊的儿科患者的特征。从KFSH&RC数据仓库收集的在2019年1月1日至12月31日期间的预约未到数据。我们分析了一个数据集,其中包括35290名儿科患者的101534次预约。在上述期间,8105名患者中有11573人没有出现。比较了逻辑回归、JRip和Hoeffding树这三种机器学习算法,找到了最佳算法。儿科门诊失诊率为11.39%。选择准确性、精密度、召回率和f分数来评价所建模型的性能。三种型号的准确率和召回率均在90%左右。三种模型的f值相近,均为0.86。这些模型提高了我们识别高危儿科患者特征的能力。
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Data Analytics and Predictive Modeling for Appointments No-show at a Tertiary Care Hospital
This study aims to develop an accurate machine learning model for predicting no-shows in pediatric outpatient clinics at King Faisal Specialist Hospital and Research Centre (KFSH&RC), and understand pediatric patients' characteristics who are most likely will not show to their scheduled appointments. Appointment no-show data collected from KFSH&RC data warehouse over the period (01 Jan – 31 Dec 2019). We analyzed a dataset that consists of 101,534 scheduled appointments for 35,290 pediatric patients. No-shows over the mentioned period was 11,573 for 8,105 patients. Three machine-learning algorithms, namely logistic regression, JRip, and Hoeffding tree, were compared to find the best one. The no-show rate in pediatric outpatient clinics was 11.39%. Accuracy, precision, recall, and F-score were selected to evaluate the built models performance. The precision and recall of the three models was around 90%. The F-score of the three models was similar and equal to 0.86. These models improved our capability to identify pediatric patients’ characteristics at high risk of not attending their appointments.
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