Abstract

Infectious disease occurs when a person is infected by a pathogen from another person or an animal. It is a problem that causes harm at both individual and macro scales. The Korea Center for Disease Control (KCDC) operates a surveillance system to minimize infectious disease contagions. However, in this system, it is difficult to immediately act against infectious disease because of missing and delayed reports. Moreover, infectious disease trends are not known, which means prediction is not easy. This study predicts infectious diseases by optimizing the parameters of deep learning algorithms while considering big data including social media data. The performance of the deep neural network (DNN) and long-short term memory (LSTM) learning models were compared with the autoregressive integrated moving average (ARIMA) when predicting three infectious diseases one week into the future. The results show that the DNN and LSTM models perform better than ARIMA. When predicting chickenpox, the top-10 DNN and LSTM models improved average performance by 24% and 19%, respectively. The DNN model performed stably and the LSTM model was more accurate when infectious disease was spreading. We believe that this study’s models can help eliminate reporting delays in existing surveillance systems and, therefore, minimize costs to society.

Highlights

  • Infectious disease occurs when a person is infected by a pathogen from another person or an animal

  • The aim of this study is to design a model that uses the infectious disease occurrence data provided by the Korea Center for Disease Control (KCDC), search query data from search engines that are specialized for South Korea, Twitter social media big data, and weather data such as temperature and humidity

  • The regression model was formed based on 569 days of data in which a lag of seven days was applied to each infectious disease dataset

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Summary

Introduction

Infectious disease occurs when a person is infected by a pathogen from another person or an animal. It harms individuals, and causes harm on a macro scale and, is regarded as a social problem [1]. The results are distributed quickly to people who need them to prevent and control infectious disease. The KCDC operates a mandatory surveillance system in which mandatory reports are made without delay to the relevant health center when an infectious disease occurs and it operates a sentinel surveillance system in which the medical organization that has been designated as the sentinel reports to the relevant health center within seven days. The targets of mandatory surveillance consist of a total of 59 infectious diseases from Groups 1 to 4 by the KCDC.

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