Awards & Nominations

AerosOx has received the following awards and nominations. Way to go!

Global Nominee

A One Health Approach

Air pollution is a major global environmental health risk, causing an estimated seven million deaths across the globe annually. Your challenge is to take an interdisciplinary approach, using both Earth science and health science, and integrate different types of datasets and applications to study the effects of air pollution.

AeroSox - Linking satellite images of aerosols to respiratory health effects

Summary

We use NASA / ESA satellite data to map aerosol levels in the UK across time. We link this data on air quality to NHS data on prescriptions for respiratory illnesses. Combining daily satellite image data and daily prescription data provides a novel and affordable way to investigate the affects of air pollution on human health across the world.

How We Addressed This Challenge

The key objectives of the ‘A One Health Approach’ are:



  1. Work at the interface of both Earth science and health science
  2. integrate different types of datasets and applications 
  3. study the effects of air pollution.


To meet these objectives we developed the following:



  • We created a pipeline to extract global satellite air quality data at a resolution of 0.1 degrees per month 
  • We created a pipeline to extract NHS prescribing data, available from https://openprescribing.net/, at the resolution of individual drugs at individual clinical sites per month 
  • We created plots of the association between these datasets, allowing for understandings of how air quality 


This is important for the following reasons:



  • There is an established link between air quality and prescription of respiratory drugs (see https://pubmed.ncbi.nlm.nih.gov/24293452/). However, studies in this area have only made use of ground-level air quality sensors. Acquiring this data can be expensive, and coverage by ground sensors is poor in many areas of the world
  • By using satellite data, we can assess air pollution health dynamics in sub-urban areas, non-industrial locations and other areas that may have poor connectivity or where ground-based sensors are not available. This air quality metric provides a cursory predictive value indicating a potentially upcoming decline to respiratory health
  • By relying on data pipelines instead of static data files, we can quickly run new models to make new observations: for instance, air quality data satellite data could be swapped for greenery data, and respiratory drug prescription data could be swapped for anti-allergy drug prescription data  


How it works:



  • Our system relies on publicly available NASA satellite data and publicly available NHS prescription data
  • The system is implemented in python and makes use of standard packages used for data comparisons

 

What we hope to achieve:



  • By creating a system that can be used across the world, we can provide public health services with useful data that would otherwise be unobtainable. 
  • We can also build predictive models in areas where we have good prescribing data, which can be used to predict need for drugs in areas that are under-supplied and have no current prescribing data. This data is highly valuable to both public health services in countries where air pollution is developing rapidly, but also to pharmaceutical suppliers who can better forecast regional demand.
  • By expanding into additional pollutant indices and other common medications, forecasting health outbreaks, particularly in rural areas, becomes simpler, cheaper and faster.
How We Developed This Project

We chose the 'One Health Approach' due to our teams' experience: Collectively we have studied data science, physics, medicine, artificial intelligence, and business development. This challenge allowed us to combine our expertise in a creative way.


To ensure that our code was fairly interpretable and platform-agnostic, we chose to develop much of our codebase on the Google Colab online platform. Code implemented in this system is run in a cloud hosted environment, and does not require installation of Python or Python packages.


Due to the pandemic situation, our team was collaborating mostly online. While this came with its own challenges, we managed to make it work! We were happy in that we achieved our key objective of creating robust data pipelines for both satellite data and prescription data.


Our approach to tackling this challenge was split into different parts:



  • Idea exploration
  • Data exploration
  • Investigating the current state-of-the-art, competitors, and published research
  • Project development
  • Demo development
How We Used Space Agency Data in This Project

In this demonstration, we use monthly NASA Earth Observation data from AQUA/MODIS at 0.1 degrees resolution (https://neo.sci.gsfc.nasa.gov/view.php?datasetId=MYDAL2_D_AER_OD&date=2020-09-01 )


This data was fundamental in the success of our project! We downloaded all available data from 2004 - today, and plotted the changing aerosol optical depth across the UK. We chose to focus on monthly data for now, due to the time constrains of this hackathon. In the future, we would like to expand our analysis to the AQUA/MODIS data at 1 day temporal resolution.


Not shown in this presentation, we started by investigating data from NASA's VIIRS / Suomi NPP. While the monthly data we found didn't give us the right spatial resolution for this work, VIIRS has great data on splitting aerosols by origin (i.e. smoke, high altitude smoke, fine particles etc).


In addition, we looked at alternative data sources, like data from NASA's Terra/MOPITT mission, which will allow us to look at aerosol optical depth at a resolution of 250 m. We also want to expand our future analysis to ESA Sentinel data to look at carbon monoxide and nitrogen dioxide.


The NASA air quality data was correlated with publicly available, geo-tagged NHS prescription data (https://openprescribing.net/)

Tags
#air quality #earth observation #AQUA/MODIS #NHS #health care
Judging
This project was submitted for consideration during the Space Apps Judging process.