基于聚类数据挖掘的药品库存分组

Joanna Ardhyanti Mita Nugraha
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引用次数: 0

摘要

保健服务的一个主要因素是药品供应充足。Puskesmas是由区和市卫生局管理的保健服务机构之一,每天为病人提供服务。然而,在Puskesmas的药品供应过程中存在障碍。Puskesmas仍然通过查看最低药品库存来手动使用药品供应技术。就这样,许多药物未被使用,甚至缺乏。数据挖掘的应用可以作为一种分析,根据患者的需求来确定药物供应。在数据挖掘方法中,聚类算法是最常用的一种算法,因为属于同一簇的数据彼此接近,而属于另一个簇的数据则相对较远。因此,本研究采用聚类方法,根据用药次数和用药要求对药品进行分类。结果以3年数据中每月快速使用的药物类型和延长使用的m模型的信息形式获得。此外,从聚类过程中获得的药物类型信息可用于改善患者服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medicine Inventory Grouping using Clustering Data Mining
One of the main factors in health services is adequate medicine supplies. Puskesmas is one of the health services that is managed under the district and city health offices to serve patients every day. However, there are obstacles in the process of medicine supply at the Puskesmas. Puskesmas still uses medicine supply techniques manually by looking at the minimum medicine stock. In this way, many medicines are unused and even lacking. The application of data mining can be used as an analysis to determine the medicine supply according to the patient's needs. In the data mining method, the clustering algorithm is one of the most popular to use where the data belonging to the same cluster will be close to each other and will be far from the data about another cluster. For this reason, this study used clustering to classify types of medicines based on the number of medicine uses and requests. The results are obtained in the form of information on the type of medicine with rapid use and model of m with extended usage every month taken from three years of data. Also, information on the types of medicines from the clustering process can be used to improve better patient service.
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