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Risk Assessment Program of Highly Pathogenic Avian Influenza with Deep Learning Algorithm

Hachung Yoon, Ah-Reum Jang, Chung‐Sik Jung, Hunseok Ko, Kwang‐Nyeong Lee, Eunesub Lee

2020Osong Public Health and Research Perspectives12 citationsDOIOpen Access PDF

Abstract

OBJECTIVES: This study presents the development and validation of a risk assessment program of highly pathogenic avian influenza (HPAI). This program was developed by the Korean government (Animal and Plant Quarantine Agency) and a private corporation (Korea Telecom, KT), using a national database (Korean animal health integrated system, KAHIS). METHODS: Our risk assessment program was developed using the multilayer perceptron method using R Language. HPAI outbreaks on 544 poultry farms (307 with H5N6, and 237 with H5N8) that had available visit records of livestock-related vehicles amongst the 812 HPAI outbreaks that were confirmed between January 2014 and June 2017 were involved in this study. RESULTS: < 0.001). CONCLUSION: The risk assessment model developed was employed during the epidemics of 2016/2017 (pilot version) and 2017/2018 (complementary version). This risk assessment model enhanced risk management activities by enabling preemptive control measures to prevent the spread of diseases.

Topics & Concepts

Influenza A virus subtype H5N1OutbreakAlgorithmRisk assessmentLivestockEnvironmental healthHighly pathogenicMedicineComputer scienceVeterinary medicineArtificial intelligenceMachine learningGeographyComputer securityVirologyVirusForestryInfluenza Virus Research StudiesAnimal Disease Management and EpidemiologyData-Driven Disease Surveillance