Abstract
Due to recent advancements in industrialization, climate change and overpopulation, air pollution has become an issue of global concern and air quality is being highlighted as a social issue. Public interest and concern over respiratory health are increasing in terms of a high reliability of a healthy life or the social sustainability of human beings. Air pollution can have various adverse or deleterious effects on human health. Respiratory diseases such as asthma, the subject of this study, are especially regarded as ‘directly affected’ by air pollution. Since such pollution is derived from the combined effects of atmospheric pollutants and meteorological environmental factors, and it is not easy to estimate its influence on feasible respiratory diseases in various atmospheric environments. Previous studies have used clinical and cohort data based on relatively a small number of samples to determine how atmospheric pollutants affect diseases such as asthma. This has significant limitations in that each sample of the collections is likely to produce inconsistent results and it is difficult to attempt the experiments and studies other than by those in the medical profession. This study mainly focuses on predicting the actual asthmatic occurrence while utilizing and analyzing the data on both the atmospheric and meteorological environment officially released by the government. We used one of the advanced analytic models, often referred to as the vector autoregressive model (VAR), which traditionally has an advantage in multivariate time-series analysis to verify that each variable has a significant causal effect on the asthmatic occurrence. Next, the VAR model was applied to a deep learning algorithm to find a prediction model optimized for the prediction of asthmatic occurrence. The average error rate of the hybrid deep neural network (DNN) model was numerically verified to be about 8.17%, indicating better performance than other time-series algorithms. The proposed model can help streamline the national health and medical insurance system and health budget management in South Korea much more effectively. It can also provide efficiency in the deployment and management of the supply and demand of medical personnel in hospitals. In addition, it can contribute to the promotion of national health, enabling advance alerts of the risk of outbreaks by the atmospheric environment for chronic asthma patients. Furthermore, the theoretical methodologies, experimental results and implications of this study will be able to contribute to our current issues of global change and development in that the meteorological and environmental data-driven, deep-learning prediction model proposed hereby would put forward a macroscopic directionality which leads to sustainable public health and sustainability science.
Highlights
Increase in Air Pollutants and Asthma Increase in Air Pollutants and AsthmaAdvancements in industry, urbanization, increased human activity due to population growth and thAedivnacnrceeamseednctsoninsuinmdputsitorny,oufrrbeasnoiuzarctieosnh, ainvcereleadsetdo hthueminancraecatsieviitnyadiur epotolluptoapnutlsaatinodn cgornowsetqhuaenndt tthhreeiantcsretoasheudmcoannsuhmeapltthio.nAoifrrqesuoaulirtcyesishabveeinlgedhtioghthliegihntcerdeaasse ainsaoicripaol lilsustuaentasnadndpcuobnlisceqinuteenrtestht raenadts ctoonhcuermnaonvhereareltshp.irAatirorqyuhaeliatylthisabreeiinngcrheiagshinligg.hAteidr paosllaustaoncitaslciasnsuheaavnedchpruobnliicceifnfteecrtessotnanthdechounmcearnn boovdeyr raensdpirpaotsoerya hgeraelatthraisrke ibneccraeuasseintgh.eiAr ierfpfeocltlsuatarnetesxcparneshsaevdeinchlraorngiec peoffpecutlsatoionnthgerohuupms a[n1]b. oFdory eaxnadmppolsee, Laognrdeaotnr’sisskmboegcapuhseentohmeierneoffnecitns1a9r5e2erxepsruelstseeddininalatorgtael poof p12u,l0a0t0iodnegarthous pdsue[1t]o
The Korea Meteorological Agency (KMA) provides meteorological environment data obtained through the Automatic Synoptic Observation System (ASOS) as a public service, and the types and time differences of collectable data are diverse, which is highly useful for analysis
This study proposes a prediction model to predict asthmatic occurrence by utilizing the deep neural network algorithm, which enhanced usability in model analysis for existing problem resolving, utilizing the advancement of computing power and the potentials of big-data collection
Summary
Advancements in industry, urbanization, increased human activity due to population growth and thAedivnacnrceeamseednctsoninsuinmdputsitorny,oufrrbeasnoiuzarctieosnh, ainvcereleadsetdo hthueminancraecatsieviitnyadiur epotolluptoapnutlsaatinodn cgornowsetqhuaenndt tthhreeiantcsretoasheudmcoannsuhmeapltthio.nAoifrrqesuoaulirtcyesishabveeinlgedhtioghthliegihntcerdeaasse ainsaoicripaol lilsustuaentasnadndpcuobnlisceqinuteenrtestht raenadts ctoonhcuermnaonvhereareltshp.irAatirorqyuhaeliatylthisabreeiinngcrheiagshinligg.hAteidr paosllaustaoncitaslciasnsuheaavnedchpruobnliicceifnfteecrtessotnanthdechounmcearnn boovdeyr raensdpirpaotsoerya hgeraelatthraisrke ibneccraeuasseintgh.eiAr ierfpfeocltlsuatarnetesxcparneshsaevdeinchlraorngiec peoffpecutlsatoionnthgerohuupms a[n1]b. oFdory eaxnadmppolsee, Laognrdeaotnr’sisskmboegcapuhseentohmeierneoffnecitns1a9r5e2erxepsruelstseeddininalatorgtael poof p12u,l0a0t0iodnegarthous pdsue[1t]o. High O3 concentration in the atmosphere can induce a decrease in lung function and an increase in airway hyper-sensitivity [29,30], and exposure in a high temperature environment in a short period of time, in particular, can induce worsening symptoms in asthmatic patients [31]. Particulate matter is mainly produced through combustion in industrial processes and chemical reactions with the primary pollutants generated by automobile exhaust. Exposure to high concentrations of particulate matter in a short period of time can worsen symptoms of asthma patients [34,35], and differences in the influence of particulate matter among age groups have been identified. The influence of particulate matter on asthma is higher for the elderly and children than for adults
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