用DBSCAN和监督分类算法预测住院时间的新方法

V. U. Panchami, N. Radhika
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引用次数: 15

摘要

患者住院时间是衡量医院资源消耗和监测医院绩效最常用的结果指标。预测病人在医院的住院时间是各级有效规划的一个重要方面。它有助于有效地利用资源和设施。因此,迫切需要建立准确可靠的模型来预测住院时间。本文分析了各种预测住院时间的方法及其优缺点,提出了一种预测患者住院时间是否大于一周的新方法。该方法使用DBSCAN聚类来创建用于分类的训练集。用准确度、精密度和召回率对预测模型进行了比较,发现使用DBSCAN作为分类的前兆可以获得更好的结果。
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A novel approach for predicting the length of hospital stay with DBSCAN and supervised classification algorithms
Patient length of stay is the most commonly employed outcome measure for hospital resource consumption and to monitor the performance of the hospital. Predicting the patient's length of stay in a hospital is an important aspect for effective planning at various levels. It helps in efficient utilization of resources and facilities. So, there exist a strong demand to make accurate and robust models to predict length of stay. This paper analyzes various methods for length of stay prediction, its advantages and disadvantages and proposes a novel approach for predicting whether the length of stay of the patient is greater than one week. The approach uses DBSCAN clustering to create the training set for classification. The prediction models are compared using accuracy, precision and recall and found that using DBSCAN as a precursor to classification gives better results.
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