A New Application of Louvain Algorithm for Identifying Disease Fields Using Big Data Techniques

Q4 Medicine
Saeed Shirazi, Hamed Baziyad, N. Ahmadi, A. Albadvi
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引用次数: 9

Abstract

Background and aim: Recently, the use of data science techniques in healthcare has been increased remarkably. Community detection as one the important methods of data science is utilized in the health domain. Methods: This paper detects disease areas based on combination of big data and graph mining methods on drug prescriptions. At first, network of prescription is designed, and Louvain algorithm is applied for community detection of 50000 Iranian prescriptions in 2014 gathered from the Iranian Health Insurance Organization. We use modularity metric for validation of the results and the experts’ opinion as the external validation of communities. Results: The outputs are consist of six communities. These communities are labeled based on experts’ opinion that present the disease fields. Conclusion: The Louvain algorithm has the ability to detect the major communities of the prescription database with an acceptable accuracy. We have proven that these communities present the disease fields.
Louvain算法在大数据疾病场识别中的新应用
背景和目的:近年来,数据科学技术在医疗保健中的应用显著增加。社区检测作为数据科学的重要方法之一,被应用于健康领域。方法:采用大数据与处方图挖掘相结合的方法,对处方病区进行检测。首先,设计了处方网络,并将Louvain算法应用于2014年从伊朗健康保险组织收集的5万张伊朗处方的社区检测。我们使用模块性度量来验证结果,并将专家的意见作为社区的外部验证。结果:产出由六个社区组成。这些社区是根据专家提出的疾病领域的意见进行标记的。结论:Louvain算法能够以可接受的准确性检测处方数据库的主要社区。我们已经证明,这些社区提供了疾病领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
26
审稿时长
12 weeks
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