Archive/Forecasting Regional COPD Outpatient Visits Using Environmental and Meteorological Data in Pennsylvania
Forecasting Regional COPD Outpatient Visits Using Environmental and Meteorological Data in Pennsylvania
Basema Jarrar, Parv Venkitasubramaniam, Hyunok Choi
July 13, 2026
en

Abstract

Chronic obstructive pulmonary disease (COPD) remains a major cause of respiratory morbidity and healthcare utilization, creating challenges for healthcare planning, resource allocation, and early intervention. This study aimed to develop a forecasting framework for quarterly age- adjusted COPD outpatient visit rates across 762 regions in Pennsylvania from 2019 to 2023, using multi-source data including PHC4 outpatient records, satellite-derived environmental pollutant variables, and meteorological variables. To compare models that capture nonlinear relationships with those that explicitly model temporal dependencies, several machine learning models and a deep learning long short-term memory (LSTM) model, designed to learn sequential patterns and lagged temporal effects, were evaluated. The seasonal naïve baseline achieved R2=0.570, classical machine learning models achieved R2=0.58–0.62, and the LSTM model achieved R2=0.705 with lower prediction error. Lagged COPD activity was the strongest predictor, while environmental, meteorological, and geographic variables provided additional predictive information. These findings highlight the value of integrating multi-source environmental data with sequence-based modeling for forecasting regional COPD activity and suggest that environmental and meteorological variables can provide additional predictive information beyond historical COPD activity alone.

IPC Classification

G06A61

Keywords

forecastingregionalcopdoutpatientvisitsenvironmentalmeteorologicaldatapennsylvaniachronicobstructivepulmonarydiseaseremainsmajorcauserespiratorymorbidityhealthcareutilizationcreatingchallengesplanningresource
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