Title: Exploring the impact of air quality and health-related factors on COVID-19 outcomes in England
This project aims to investigate the potential relationship between COVID-19 outcomes, air pollution, and health-related factors. The key questions that the project will address are:
- Do regional air quality measures play a role in COVID-19 outcomes e.g. severity or death?
- Are any health-related factors associated with an increase in COVID-19 cases or COVID-19 severity?
- If yes, can any of these health-related factors be attributed to air quality?
Motivation: The impact of the COVID-19 pandemic has been significant and far-reaching and remains prevalent to this day. Therefore, a better understanding of factors that contribute to disease severity, such as air quality and health-related factors, can inform interventions aiming to improve COVID-19 outcomes.
Why this project?: Air quality is an indicator of air pollution, which has been linked to various respiratory and cardiovascular health issues. As COVID-19 is primarily a respiratory disease, exploring its potential association with air quality can provide insights into the interplay between environmental factors and disease severity.
What problem did it solve?: The results highlight the potential health and environmental risk factors for COVID-19. There is potential application for awareness of the impact that air pollution has on COVID virus severity. The results could provide evidenced based interventions in the event of future outbreaks, or evidence for the need for future research into other respiratory diseases and the link to air quality.
What did we learn?: Poorer air quality is strongly correlated with increased ICU/HDU admissions (r=0.85) and weakly correlated with the number of deaths (r=0.12). Factors such as e-cigarette and vape usage are strongly correlated with COVID deaths (r=0.9), as is hay fever (r=0.8), whereas cancer has the lowest correlation coefficient at r=0.3. Although the high correlation with hay fever was a surprise, it can be explained by how common the condition is. As there is a strong correlation between poor air quality and ICU/HDU, this indicates that future intervention with COVID should involve consideration to areas with poorer air quality.
- Clone this repo (for help see this tutorial).
- Raw data is being kept here within this repo.
- Data processing/transformation scripts are being kept here
Branch | Instructions |
---|---|
data-analysis-CSV | There are five CSV files that store project data:
|
data-analysis-results | health_factors.ipynb that uses the CSV files Covid_deaths_2023 , Covid_icu_23 and all_covid_data .Air_quality_aqi_sabina.ipynb that uses the AQI_catagories and Air_quality_data .air_quality_&_covid-rebecca.ipynb that uses the CSV files Covid_deaths_2023 , Covid_icu_23 and Air_quality_data .Air_quality_&_health_factors-emma.ipynb that uses the CSV files all_covid data and Air_quality data . |
API | Requests folder were used to obtain the current regional air quality dataAir_quality_table_data.sql were used to insert these values into the Air_quality_data |
mysql-database | This branch contains the raw data and the code for the SQL database. Please see README.md for an entity relationship diagram of the SQL database. |
Name | GitHub |
---|---|
Emer Buggy | https://github.com/fufu78 |
Emma Horton | https://github.com/emma-horton |
Maariya Rachid Daud | https://github.com/maariya-daud |
Punam Rattu | https://github.com/punamrattu |
Rebecca W | https://github.com/weebesom |
Sabina Wellington | https://github.com/sabs-codes |