Publication | Open Access
Predicting the Urgency Demand of COPD Patients From Environmental Sensors Within Smart Cities With High-Environmental Sensitivity
13
Citations
43
References
2018
Year
Environmental MonitoringUrban HealthMachine LearningEngineeringSmart CityUrban Air QualityAir QualityCopd PatientsIntelligent SystemsData ScienceData MiningEnvironmental HealthUrgency DemandPublic HealthUrban ApplicationStatisticsEnvironmental SensorsPrediction ModellingPopulation ExposureHealth PolicyPredictive AnalyticsKnowledge DiscoveryPredictive ModelingTemporal Pattern RecognitionIntelligent ClassificationForecastingExpert KnowledgeHealth MonitoringAir PollutionHealth InformaticsEmergency Medicine
Predicting the urgency demand of patients at health centers in smart cities supposes a challenge for adapting emergency service in advance. In this paper, we propose a methodology to predict the number of cases of chronic obstructive pulmonary disease (COPD) from environmental sensors located in the city of Jaén (Spain). The approach presents a general methodology to predict events from environmental sensors within smart cities based on four stages: 1) summarize and expand features by means of temporal aggregations; 2) evaluate the correlation for selecting relevant features; 3) integrate straightforwardly expert knowledge under a fuzzy linguistic approach; and 4) predict the target event with the sequence-based classifier long short-term memory under a sliding window approach. The results show an encouraging performance of the methodology over the COPD patients of the city of Jaén based on a quantitative regression analysis and qualitative categorization of data.
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