基于大数据改进随机森林的医院排队系统患者等待时间预测

Prashant S. Patil, Sanjay Thakur
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引用次数: 2

摘要

此时,主要是医院超载,需要一个有帮助的病人排队管理。病人排执行和等待时间预言是一个艰难的职业,因为每个病人的能力,涉及不同的部分或程序,如检查,各种检查,如尿检,注射或定期检查,可忽略的手术,整个行动。因此,虽然评估这些整体检查的病人必须在队列和多余的等待时间中度过的时间,以及在排队等待期间也给予挫折。为了利用最小化路径感知减少患者的等待时间,我们提出了一种基于改进随机森林方法的增量患者治疗时间预测(IPTTP)算法,该算法用于计算患者所有处理工作的等待时间。如果在一个实时显示治疗准备和预测等待时刻的应用程序上,患者可能会得到预测的等待时间和治疗计划,这将是一种创新。我们利用数据采集模型中的真实患者数据,随机使用患者性别、年龄、任务、医院科室等特征生成数据,完成每项工作的患者处理时间。根据这些有意义的、合理的信息,建议每个任务队列中每个病人的动作等待时间。基于对每个患者背后情况的预测,利用治疗任务的特点,开发了具有最小化路径感知的医院排队推荐系统。HQR确定并预测为每位患者建议的组织良好且合适的管理计划。因为重要的,明智的信息,瞬时返回的先决条件,一个IPTTP和HQR系统具有最小的路径意识,默认有效性和低延迟反应。为了实现前面提到的目标,我们在印度印多尔的Lord Krishna理工学院的计算机工程系使用了一个Hadoop pig脚本实现。广泛开展的实验和模仿结果揭示了我们的预测代表的有效性和适用性,为患者提出了一个成功的行动计划,以减少他们在医院的等待时间。
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Patient waiting time prediction in hospital queuing system using improved random forest in big data
At this moment, mainly hospitals are overloaded and require a helpful patient wait in line management. Patient row executive and wait for time prophecy appearance a tough, as well as difficult occupation since every patient capacity, involves different segment or procedures, such as checkups, a variety of check-up like a Urine test, injection or a regular checkup, negligible operations, throughout the action. Consequently although evaluating these whole check patients have to pass the time in a queue and redundant waiting time as well as also give frustration during waiting in the queue. To reduce patient waiting times using minimized path-awareness we propose an Incremental Patient Treatment Time Prediction (IPTTP) algorithm based on improved Random Forest method which is used to calculate the waiting instant for all handling jobs for a patient. It would be innovative suitable if a patient possibly will get the predicted waiting time and treatment plan on an application that shows the treatment preparation and forecast waiting moment in real-time. We utilize realistic patient data from the data acquisition model where data is generated by randomly using some features like patient gender, age, task, hospital departments, etc. to accomplish a patient handling time for every one job. Depend on this significant, sensible information, the action waiting time for every patient in the wait in a line of every task is suggested. Based on the forecast behind you occasion for every patient, Hospital Queuing-Recommendation (HQR) with the minimized path- awareness system is developed by makes use of treatment task features. HQR determines and forecasts a well-organized and suitable management plan suggested for every patient. For the reason that of the significant, sensible information, the prerequisite for instantaneous come back with, An IPTTP as well as HQR system with minimized path-awareness, acquiescence effectiveness, and low-latency reaction. We bring into play a Hadoop pig script implementation at the Department of Computer Engg at Lord Krishna College Of Technology in Indore, India to achieve the objective as mentioned earlier. Widespread conducting experiment and imitation consequences reveal the effectiveness and applicability of our projected representation to propose a successful action plan for patients to reduce their waiting time in the hospital.
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