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

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 minin...

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Main Authors: Saeed Shirazi, Hamed Baziyad, Naser Ahmadi, Amir Albadvi
Format: Article
Language:English
Published: Tehran University of Medical Sciences 2020-06-01
Series:Journal of Biostatistics and Epidemiology
Subjects:
Online Access:https://jbe.tums.ac.ir/index.php/jbe/article/view/292
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spelling doaj-849808f99a3d4a5d91a9e6a3c4ec8b3d2020-12-06T04:14:16ZengTehran University of Medical SciencesJournal of Biostatistics and Epidemiology2383-41962383-420X2020-06-015310.18502/jbe.v5i3.3613A New Application of Louvain Algorithm for Identifying Disease Fields Using Big Data TechniquesSaeed Shirazi0Hamed Baziyad1Naser Ahmadi2Amir Albadvi3MSc, Department of Information Technology, Faculty of Industrial and Systems Engineering, Tarbiat Modares University, Tehran, IranMSc, Department of Information Technology, Faculty of Industrial and Systems Engineering, Tarbiat Modares University, Tehran, IranMSc, Department of Biostatistics, Faculty of Paramedical Science, Shahid beheshti University of medical Science, Tehran, IranProfessor, Department of Information Technology, Faculty of Industrial and Systems Engineering, Tehran, Iran 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. https://jbe.tums.ac.ir/index.php/jbe/article/view/292Big DataGraph theoryCommunity DetectionDrug Prescription
collection DOAJ
language English
format Article
sources DOAJ
author Saeed Shirazi
Hamed Baziyad
Naser Ahmadi
Amir Albadvi
spellingShingle Saeed Shirazi
Hamed Baziyad
Naser Ahmadi
Amir Albadvi
A New Application of Louvain Algorithm for Identifying Disease Fields Using Big Data Techniques
Journal of Biostatistics and Epidemiology
Big Data
Graph theory
Community Detection
Drug Prescription
author_facet Saeed Shirazi
Hamed Baziyad
Naser Ahmadi
Amir Albadvi
author_sort Saeed Shirazi
title A New Application of Louvain Algorithm for Identifying Disease Fields Using Big Data Techniques
title_short A New Application of Louvain Algorithm for Identifying Disease Fields Using Big Data Techniques
title_full A New Application of Louvain Algorithm for Identifying Disease Fields Using Big Data Techniques
title_fullStr A New Application of Louvain Algorithm for Identifying Disease Fields Using Big Data Techniques
title_full_unstemmed A New Application of Louvain Algorithm for Identifying Disease Fields Using Big Data Techniques
title_sort new application of louvain algorithm for identifying disease fields using big data techniques
publisher Tehran University of Medical Sciences
series Journal of Biostatistics and Epidemiology
issn 2383-4196
2383-420X
publishDate 2020-06-01
description 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.
topic Big Data
Graph theory
Community Detection
Drug Prescription
url https://jbe.tums.ac.ir/index.php/jbe/article/view/292
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