Clustering of Drug Sampling Data to Determine Drug Distribution Patterns with K-Means Method : Study on Central Kalimantan Province, Indonesia

Background: Drug sampling and testing in the context of post-marketing control is an important component to ensure drug safety in the supply chains. The results are used by the Indonesian National Agency for Drug and Food Control (NA-FDC) for conducting public warnings, evaluating the Good Manufactu...

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Main Authors: Wahyuri Wahyuri, Umi Athiyah, Ira Puspitasari, Yunita Nita
Format: Article
Language:English
Published: Universitas Airlangga 2019-10-01
Series:Journal of Information Systems Engineering and Business Intelligence
Online Access:https://e-journal.unair.ac.id/JISEBI/article/view/14794
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author Wahyuri Wahyuri
Umi Athiyah
Ira Puspitasari
Yunita Nita
author_facet Wahyuri Wahyuri
Umi Athiyah
Ira Puspitasari
Yunita Nita
author_sort Wahyuri Wahyuri
collection DOAJ
description Background: Drug sampling and testing in the context of post-marketing control is an important component to ensure drug safety in the supply chains. The results are used by the Indonesian National Agency for Drug and Food Control (NA-FDC) for conducting public warnings, evaluating the Good Manufacturing Practice (GMP) and Good Distribution Practice (GDP) implementation, and enforcing the law against drug violation. Objective: This study aimed to identify and analyze drug distribution patterns to provide an overview of drug sampling in the public sector. Methods: The data was collected from Balai Besar Pengawas Obat dan Makanan (BBPOM) Palangka Raya’s database. The collected data were the drug sampling data from Integrated Information Reporting Systems (IIRS) application from 2014 to 2018. Next, we employed CRISP-DM methodology to analyze the data and to identify the pattern. K-means clustering model was selected for data modeling. Results: The dataset contained five attributes, i.e., drug name, therapeutic classes, district/city, sample category, and evaluation of drug surveillance. The drug distribution pattern formed three clusters. First cluster contained 522 drug items in eight therapeutic classes and spread over ten districts, second cluster contained 1542 drug items in five therapeutic classes and spread over five districts, and third cluster contained 503 drug items in eleven therapeutic classes and spread across nine districts. Conclusion: To conclude, the applied data mining technique has improved the decision on the drug sampling planning. It also provides in-depth information on the improvement of drug post-marketing control performance in Central Kalimantan Province. Keywords: Clustering, CRISP-DM, Data Mining, Drug distribution patterns, Drug quality control, Drug sampling
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spelling doaj.art-e37baa3ef3604060990dc3d69a80ce382023-03-06T02:56:32ZengUniversitas AirlanggaJournal of Information Systems Engineering and Business Intelligence2598-63332443-25552019-10-015220821810.20473/jisebi.5.2.208-21812020Clustering of Drug Sampling Data to Determine Drug Distribution Patterns with K-Means Method : Study on Central Kalimantan Province, IndonesiaWahyuri Wahyuri0Umi Athiyah1Ira Puspitasari2Yunita Nita3Universitas Airlangga BBPOM di Palangka RayaFaculty of Pharmacy Universitas AirlanggaFaculty of Science and Technology, Universitas AirlanggaFaculty of Pharmacy Universitas AirlanggaBackground: Drug sampling and testing in the context of post-marketing control is an important component to ensure drug safety in the supply chains. The results are used by the Indonesian National Agency for Drug and Food Control (NA-FDC) for conducting public warnings, evaluating the Good Manufacturing Practice (GMP) and Good Distribution Practice (GDP) implementation, and enforcing the law against drug violation. Objective: This study aimed to identify and analyze drug distribution patterns to provide an overview of drug sampling in the public sector. Methods: The data was collected from Balai Besar Pengawas Obat dan Makanan (BBPOM) Palangka Raya’s database. The collected data were the drug sampling data from Integrated Information Reporting Systems (IIRS) application from 2014 to 2018. Next, we employed CRISP-DM methodology to analyze the data and to identify the pattern. K-means clustering model was selected for data modeling. Results: The dataset contained five attributes, i.e., drug name, therapeutic classes, district/city, sample category, and evaluation of drug surveillance. The drug distribution pattern formed three clusters. First cluster contained 522 drug items in eight therapeutic classes and spread over ten districts, second cluster contained 1542 drug items in five therapeutic classes and spread over five districts, and third cluster contained 503 drug items in eleven therapeutic classes and spread across nine districts. Conclusion: To conclude, the applied data mining technique has improved the decision on the drug sampling planning. It also provides in-depth information on the improvement of drug post-marketing control performance in Central Kalimantan Province. Keywords: Clustering, CRISP-DM, Data Mining, Drug distribution patterns, Drug quality control, Drug samplinghttps://e-journal.unair.ac.id/JISEBI/article/view/14794
spellingShingle Wahyuri Wahyuri
Umi Athiyah
Ira Puspitasari
Yunita Nita
Clustering of Drug Sampling Data to Determine Drug Distribution Patterns with K-Means Method : Study on Central Kalimantan Province, Indonesia
Journal of Information Systems Engineering and Business Intelligence
title Clustering of Drug Sampling Data to Determine Drug Distribution Patterns with K-Means Method : Study on Central Kalimantan Province, Indonesia
title_full Clustering of Drug Sampling Data to Determine Drug Distribution Patterns with K-Means Method : Study on Central Kalimantan Province, Indonesia
title_fullStr Clustering of Drug Sampling Data to Determine Drug Distribution Patterns with K-Means Method : Study on Central Kalimantan Province, Indonesia
title_full_unstemmed Clustering of Drug Sampling Data to Determine Drug Distribution Patterns with K-Means Method : Study on Central Kalimantan Province, Indonesia
title_short Clustering of Drug Sampling Data to Determine Drug Distribution Patterns with K-Means Method : Study on Central Kalimantan Province, Indonesia
title_sort clustering of drug sampling data to determine drug distribution patterns with k means method study on central kalimantan province indonesia
url https://e-journal.unair.ac.id/JISEBI/article/view/14794
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AT irapuspitasari clusteringofdrugsamplingdatatodeterminedrugdistributionpatternswithkmeansmethodstudyoncentralkalimantanprovinceindonesia
AT yunitanita clusteringofdrugsamplingdatatodeterminedrugdistributionpatternswithkmeansmethodstudyoncentralkalimantanprovinceindonesia