Developing environmentally sustainable best practices for human brain imaging
Lead Research Organisation:
University of Sussex
Department Name: Sch of Psychology
Abstract
Human brain imaging techniques such as Magnetic Resonance Imaging (MRI), Positron Emission Tomography (PET) and Computerised Tomography (CT) are invaluable healthcare research tools. However, increasingly, their acquisition, storage, and analysis are generating substantial environmental costs.
At present, the brain imaging research community has little awareness of these costs, and little to no understanding of how to reduce them. Taking energy demands as an example, we do not know exactly how much energy is used over a dataset lifecycle. This means that it is difficult to identify what precise steps in the brain imaging research process to target for energy reduction. There are, however, emerging tools we can draw upon from parallel fields that are more advanced in calculating carbon footprints of research procedures - in particular, from the field of machine learning (ML).
This project will focus on assessing the carbon impacts associated with brain imaging research, using existing approaches to carbon tracking ML models to create a neuroimaging carbon tracker tool. This tool will be embedded within commonly used neuroimaging software and research tools, enabling the field to measure the carbon footprint of brain imaging research procedures.
We will then use the neuroimaging carbon tracker to measure the carbon footprint of a variety of brain imaging research procedures and examples, including using publicly available software and tools to enable wider adoption. Having identified the precise procedural steps that drive neuroimaging research footprints, we will then develop optimisation strategies to reduce energy consumption, and thereby, carbon emissions. For example, we will investigate how to remove unnecessary analysis steps, and how to store data optimally. Ultimately, this will enable us to generate 'best practice' guidance for researchers in neuroscience, to enable them to adopt more sustainable research procedures. We will share this guidance with the research community via open source software tools, an open access '10 simple steps' journal publication, conferences, and a cross-sectoral workshop with colleagues across healthcare sciences.
By raising awareness of the carbon costs of human brain imaging, and providing specific recommendations on how to reduce this, we will facilitate human brain imagers, and colleagues in related fields, to minimise the environmental footprint of imaging-based life sciences research.
At present, the brain imaging research community has little awareness of these costs, and little to no understanding of how to reduce them. Taking energy demands as an example, we do not know exactly how much energy is used over a dataset lifecycle. This means that it is difficult to identify what precise steps in the brain imaging research process to target for energy reduction. There are, however, emerging tools we can draw upon from parallel fields that are more advanced in calculating carbon footprints of research procedures - in particular, from the field of machine learning (ML).
This project will focus on assessing the carbon impacts associated with brain imaging research, using existing approaches to carbon tracking ML models to create a neuroimaging carbon tracker tool. This tool will be embedded within commonly used neuroimaging software and research tools, enabling the field to measure the carbon footprint of brain imaging research procedures.
We will then use the neuroimaging carbon tracker to measure the carbon footprint of a variety of brain imaging research procedures and examples, including using publicly available software and tools to enable wider adoption. Having identified the precise procedural steps that drive neuroimaging research footprints, we will then develop optimisation strategies to reduce energy consumption, and thereby, carbon emissions. For example, we will investigate how to remove unnecessary analysis steps, and how to store data optimally. Ultimately, this will enable us to generate 'best practice' guidance for researchers in neuroscience, to enable them to adopt more sustainable research procedures. We will share this guidance with the research community via open source software tools, an open access '10 simple steps' journal publication, conferences, and a cross-sectoral workshop with colleagues across healthcare sciences.
By raising awareness of the carbon costs of human brain imaging, and providing specific recommendations on how to reduce this, we will facilitate human brain imagers, and colleagues in related fields, to minimise the environmental footprint of imaging-based life sciences research.
Technical Summary
The rapid increase in the accessibility to high performance computing has accelerated large-scale analysis of complex medical imaging data. This has particularly impacted the study of the human brain by enabling application of novel computational methods to imaging modalities such as MRI, PET and CT. The computational study of the human brain has, in turn, led to the development of elaborate pipelines operating on vast amounts of data which are being adopted globally. As a consequence, the computational costs of such neuroimaging pipelines have increased considerably. The increasing storage and computational requirements of neuroimaging pipelines translate into significant increase in the corresponding energy- and carbon- costs.
In this project, we aim to assess the carbon footprint of computational neuroimaging pipelines and present basic measures to reduce these costs in some instances. As the first objective, we will adapt existing carbon-tracking tools for neuroimaging pipelines, which we hope will first provide an insight into the carbon-intensity of these pipelines. We will build tools to measure the energy costs of running specialised computation infrastructure used in research data centres. We also aim to 1.) develop a slurm-based job scheduler that can utilise the instantaneous carbon intensities of local power grids to modulate and reduce the energy costs of neuroimaging pipelines 2.) investigate the usefulness of image derived phenotypes in tasks where using massive amounts of raw image data can be computationally expensive. 3.) systematically explore the loss in precision compared to the gains in carbon efficiency. Finally, as neuroimaging pipelines comprise several intermediate steps, we also aim to assess different alternatives and configurations of these steps. This we hope will serve as a guiding framework when deciding the trade-off between a specific choice of method and its corresponding carbon cost.
In this project, we aim to assess the carbon footprint of computational neuroimaging pipelines and present basic measures to reduce these costs in some instances. As the first objective, we will adapt existing carbon-tracking tools for neuroimaging pipelines, which we hope will first provide an insight into the carbon-intensity of these pipelines. We will build tools to measure the energy costs of running specialised computation infrastructure used in research data centres. We also aim to 1.) develop a slurm-based job scheduler that can utilise the instantaneous carbon intensities of local power grids to modulate and reduce the energy costs of neuroimaging pipelines 2.) investigate the usefulness of image derived phenotypes in tasks where using massive amounts of raw image data can be computationally expensive. 3.) systematically explore the loss in precision compared to the gains in carbon efficiency. Finally, as neuroimaging pipelines comprise several intermediate steps, we also aim to assess different alternatives and configurations of these steps. This we hope will serve as a guiding framework when deciding the trade-off between a specific choice of method and its corresponding carbon cost.
Publications


Souter N
(2023)
Ten recommendations for reducing the carbon footprint of research computing in human neuroimaging
in Imaging Neuroscience

Souter N
(2024)
Measuring and reducing the carbon footprint of fMRI preprocessing in fMRIPrep
in Human Brain Mapping
Title | How to decrease the carbon footprint of your research computing video |
Description | Brief video released on social media and youtube explaining simple steps to reduce the carbon footprint of research computing |
Type Of Art | Film/Video/Animation |
Year Produced | 2023 |
Impact | 100 views of video on youtube |
URL | https://www.youtube.com/watch?v=S59UOH3HLFo |
Description | Training for research users: Environmental impacts of computing in health & life sciences workshop |
Geographic Reach | National |
Policy Influence Type | Influenced training of practitioners or researchers |
Impact | 80 attendees of varying career stages and from multiple disciplines across the health & life sciences learnt practical steps to reduce the energy usage (and thereby carbon emissions) of their research computing (e.g. how to implement a carbon tracker, how to schedule jobs for less carbon intensive times of day). Funder host (Wellcome Trust) influenced to increase sustainability strategy and advocacy work. |
URL | https://www.eicworkshop.info/ |
Description | Sussex Neuroscience Seed Fund: Greener research computing for neuroscience: Measuring impacts, integrating tools, and overcoming barriers |
Amount | £21,530 (GBP) |
Organisation | University of Sussex |
Sector | Academic/University |
Country | United Kingdom |
Start | 01/2024 |
End | 06/2024 |
Title | Human Connectome Project conversion to Brain Imaging Data Structure format tool |
Description | Code to convert data that has been acquired or stored in Human Connectome Project convention to the Brain Imaging Data Structure format. |
Type Of Material | Improvements to research infrastructure |
Year Produced | 2023 |
Provided To Others? | Yes |
Impact | Code made available to the wider community to convert data structure. Used internally within our team to automate the conversion of MRI brain scan data structure. |
URL | https://github.com/NickESouter/HCPinBIDS |
Title | fMRIPrep preprocessing digital file clean up tool |
Description | Code to automatically delete unnecessary files created by the MRI brain scan analysis software fMRIPrep. |
Type Of Material | Improvements to research infrastructure |
Year Produced | 2023 |
Provided To Others? | Yes |
Impact | Code made available to neuroimaging community via GitHub. Internally within our team, we have reduced the storage footprint of our files arising from use of this software by 95%. |
URL | https://github.com/NickESouter/fMRIPrepCleanup |
Description | Authoring 'Ten recommendations for reducing the carbon footprint of research computing in human neuroimaging' |
Organisation | King's College London |
Country | United Kingdom |
Sector | Academic/University |
PI Contribution | First-authoring and senior-authoring review paper with ten recommendations for reducing carbon footprint of computing in human neuroimaging research. Drafted manuscript and organised input from co-authors. |
Collaborator Contribution | Reviewing manuscript and making edits to the text. In particular, bringing expertise in computing science and medical sociology to complement the PDRA and PI's expertise in human neuroimaging. |
Impact | Published paper (also reported in Publications section): https://doi.org/10.1162/imag_a_00043 Multi-disciplinary collaboration, disciplines involved: - Human neuroimaging (MRI brain scanning) - Computing science - Medical sociology |
Start Year | 2023 |
Description | Authoring 'Ten recommendations for reducing the carbon footprint of research computing in human neuroimaging' |
Organisation | McGill University |
Country | Canada |
Sector | Academic/University |
PI Contribution | First-authoring and senior-authoring review paper with ten recommendations for reducing carbon footprint of computing in human neuroimaging research. Drafted manuscript and organised input from co-authors. |
Collaborator Contribution | Reviewing manuscript and making edits to the text. In particular, bringing expertise in computing science and medical sociology to complement the PDRA and PI's expertise in human neuroimaging. |
Impact | Published paper (also reported in Publications section): https://doi.org/10.1162/imag_a_00043 Multi-disciplinary collaboration, disciplines involved: - Human neuroimaging (MRI brain scanning) - Computing science - Medical sociology |
Start Year | 2023 |
Description | Authoring 'Ten recommendations for reducing the carbon footprint of research computing in human neuroimaging' |
Organisation | University of Cambridge |
Department | Department of Public Health and Primary Care |
Country | United Kingdom |
Sector | Academic/University |
PI Contribution | First-authoring and senior-authoring review paper with ten recommendations for reducing carbon footprint of computing in human neuroimaging research. Drafted manuscript and organised input from co-authors. |
Collaborator Contribution | Reviewing manuscript and making edits to the text. In particular, bringing expertise in computing science and medical sociology to complement the PDRA and PI's expertise in human neuroimaging. |
Impact | Published paper (also reported in Publications section): https://doi.org/10.1162/imag_a_00043 Multi-disciplinary collaboration, disciplines involved: - Human neuroimaging (MRI brain scanning) - Computing science - Medical sociology |
Start Year | 2023 |
Description | Authoring 'Ten recommendations for reducing the carbon footprint of research computing in human neuroimaging' |
Organisation | University of Copenhagen |
Department | Department of Computer Science |
Country | Denmark |
Sector | Academic/University |
PI Contribution | First-authoring and senior-authoring review paper with ten recommendations for reducing carbon footprint of computing in human neuroimaging research. Drafted manuscript and organised input from co-authors. |
Collaborator Contribution | Reviewing manuscript and making edits to the text. In particular, bringing expertise in computing science and medical sociology to complement the PDRA and PI's expertise in human neuroimaging. |
Impact | Published paper (also reported in Publications section): https://doi.org/10.1162/imag_a_00043 Multi-disciplinary collaboration, disciplines involved: - Human neuroimaging (MRI brain scanning) - Computing science - Medical sociology |
Start Year | 2023 |
Description | Delivering workshop 'Environmental impacts of computing in health & life sciences research' |
Organisation | King's College London |
Country | United Kingdom |
Sector | Academic/University |
PI Contribution | PDRA and PI led organisation, advertisement, and delivery of the workshop, which brought together 80 participants from across the health and life sciences to learn and discuss how to reduce the carbon footprint of computing. |
Collaborator Contribution | Partners facilitated organisation of the workshop by creating the website and registration platform. They assisted with advertising. They delivered several of the talks within the day's schedule, and facilitated question & answer sessions. |
Impact | Multi-disciplinary workshop, hosted at the Wellcome Trust in November 2023. This brought together 80 participants from across the health and life sciences to learn and discuss how to reduce the carbon footprint of computing. Disciplines involved: - Human neuroimaging (MRI brain scanning) - Computing science - Medical sociology |
Start Year | 2023 |
Description | Delivering workshop 'Environmental impacts of computing in health & life sciences research' |
Organisation | University of Cambridge |
Department | Department of Public Health and Primary Care |
Country | United Kingdom |
Sector | Academic/University |
PI Contribution | PDRA and PI led organisation, advertisement, and delivery of the workshop, which brought together 80 participants from across the health and life sciences to learn and discuss how to reduce the carbon footprint of computing. |
Collaborator Contribution | Partners facilitated organisation of the workshop by creating the website and registration platform. They assisted with advertising. They delivered several of the talks within the day's schedule, and facilitated question & answer sessions. |
Impact | Multi-disciplinary workshop, hosted at the Wellcome Trust in November 2023. This brought together 80 participants from across the health and life sciences to learn and discuss how to reduce the carbon footprint of computing. Disciplines involved: - Human neuroimaging (MRI brain scanning) - Computing science - Medical sociology |
Start Year | 2023 |
Description | Delivering workshop 'Environmental impacts of computing in health & life sciences research' |
Organisation | Wellcome Trust |
Country | United Kingdom |
Sector | Charity/Non Profit |
PI Contribution | PDRA and PI led organisation, advertisement, and delivery of the workshop, which brought together 80 participants from across the health and life sciences to learn and discuss how to reduce the carbon footprint of computing. |
Collaborator Contribution | Partners facilitated organisation of the workshop by creating the website and registration platform. They assisted with advertising. They delivered several of the talks within the day's schedule, and facilitated question & answer sessions. |
Impact | Multi-disciplinary workshop, hosted at the Wellcome Trust in November 2023. This brought together 80 participants from across the health and life sciences to learn and discuss how to reduce the carbon footprint of computing. Disciplines involved: - Human neuroimaging (MRI brain scanning) - Computing science - Medical sociology |
Start Year | 2023 |
Description | Organization for Human Brain Mapping Sustainability & Environment Action Special Interest Group |
Form Of Engagement Activity | A formal working group, expert panel or dialogue |
Part Of Official Scheme? | No |
Geographic Reach | International |
Primary Audience | Professional Practitioners |
Results and Impact | PDRA Chairs the Neuroimaging Working Group within the international OHBM society special interest group on environmental sustainability. This reaches approximately 50 colleagues internationally and includes webinars and dissemination of tools created by the project to fellow practising researchers in human neuroimaging. |
Year(s) Of Engagement Activity | 2023,2024 |
URL | https://ohbm-environment.org |