CompBioMedX: Computational Biomedicine at the Exascale
Lead Research Organisation:
UNIVERSITY COLLEGE LONDON
Department Name: Chemistry
Abstract
Computational biomedicine offers many avenues for taking full advantage of emerging exascale computing resources and, as such, will provide a wealth of benefits as a use-case within the wider ExCALIBUR initiative. These benefits will be realised not just via the medical problems we elucidate but also through the technical developments we implement to enhance the underlying algorithmic performance and workflows supporting their deployment. Without the technical capacity to effectively utilise resources at such unprecedented scale - either in large monolithic simulations spread over the equivalent of many hundreds of thousands of cores, in coupled code settings, or being launched as massive sets of tasks to enhance drug discovery or probe a human population - the advances in hardware performance and scale cannot be fully capitalised on. Our project will seek to identify solutions to these challenges and communicate them throughout the ExCALIBUR community, bringing the field of computational biomedicine and its community of practitioners to join those disciplines that make regular use of high-performance computing and are also seeking to reach the exascale.
In this project, we will be deploying applications in three key areas of computational biomedicine: molecular medicine, vascular modelling and cardiac simulation. This scope and diversity of our use cases mean that we shall appeal strongly to the biomedical community at large. We shall demonstrate how to develop and deploy applications on emerging exascale machines to achieve increasingly high-fidelity descriptions of the human body in health and disease. In the field of molecular modelling, we shall develop and deploy complex workflows built from a combination of machine learning and physics-based methods to accelerate the preclinical drug discovery pipeline and for personalised drug treatment. These methods will enable us to develop highly selective small molecule therapeutics for cell surface receptors that mediate key physiological responses. Our vascular studies will utilise a combination of 1D, 3D models and machine learning to examine blood flow through complex, personalised arterial and venous structures. We will seek to utilise these in the identification of risk factors in clinical applications such as aneurysm rupture and for the management of ischaemic stroke. Within the cardiac simulation domain, a new GPU accelerated code will be utilised to perform multiscale cardiac electrophysiology simulations. By running large populations based on large clinical datasets such as UK Biobank, we can identify individual at elevated risk of various forms of heart disease. Coupling heart models to simulations of vascular blood flow will allow us to assess how problems which arise in one part of the body (such as the heart) can cause pathologies on remote regions.
This exchange of knowledge will form a key component of CompBioMedX. Through this focussed effort, we will engage with the broader ExCALIBUR initiative to ensure that we take advantage of the efforts already underway within the community and in return reciprocate through the advances made with our use case. Many biomedical experts remain unfamiliar with high-performance computing and need to be better informed of its advantages and capabilities. We shall engage pro-actively with medical students early in their career to illustrate the benefits of using modelling and supercomputers and encourage them to exploit them in their own medical research. We shall engage in a similar manner with undergraduate biosciences students to establish a culture and practice of using computational methods to inform the experimental work underpinning the basic science that is the first step in the translational pathway from bench to bedside.
In this project, we will be deploying applications in three key areas of computational biomedicine: molecular medicine, vascular modelling and cardiac simulation. This scope and diversity of our use cases mean that we shall appeal strongly to the biomedical community at large. We shall demonstrate how to develop and deploy applications on emerging exascale machines to achieve increasingly high-fidelity descriptions of the human body in health and disease. In the field of molecular modelling, we shall develop and deploy complex workflows built from a combination of machine learning and physics-based methods to accelerate the preclinical drug discovery pipeline and for personalised drug treatment. These methods will enable us to develop highly selective small molecule therapeutics for cell surface receptors that mediate key physiological responses. Our vascular studies will utilise a combination of 1D, 3D models and machine learning to examine blood flow through complex, personalised arterial and venous structures. We will seek to utilise these in the identification of risk factors in clinical applications such as aneurysm rupture and for the management of ischaemic stroke. Within the cardiac simulation domain, a new GPU accelerated code will be utilised to perform multiscale cardiac electrophysiology simulations. By running large populations based on large clinical datasets such as UK Biobank, we can identify individual at elevated risk of various forms of heart disease. Coupling heart models to simulations of vascular blood flow will allow us to assess how problems which arise in one part of the body (such as the heart) can cause pathologies on remote regions.
This exchange of knowledge will form a key component of CompBioMedX. Through this focussed effort, we will engage with the broader ExCALIBUR initiative to ensure that we take advantage of the efforts already underway within the community and in return reciprocate through the advances made with our use case. Many biomedical experts remain unfamiliar with high-performance computing and need to be better informed of its advantages and capabilities. We shall engage pro-actively with medical students early in their career to illustrate the benefits of using modelling and supercomputers and encourage them to exploit them in their own medical research. We shall engage in a similar manner with undergraduate biosciences students to establish a culture and practice of using computational methods to inform the experimental work underpinning the basic science that is the first step in the translational pathway from bench to bedside.
Organisations
- UNIVERSITY COLLEGE LONDON (Lead Research Organisation)
- Northwell Health Orthopaedic Institute (Collaboration)
- ARM Ltd (Project Partner)
- Federal University of Juiz de Fora (Project Partner)
- Uni Hospital Southampton NHS Fdn Trust (Project Partner)
- Atos UK&I (Project Partner)
- Leibniz Supercomputing Center (Project Partner)
- Evotec (UK) Ltd (Project Partner)
- John Radcliffe Hospital (Project Partner)
- Dassault Systemes Simulia Corp (Project Partner)
- Cancer Research UK Medical Oncology Unit (Project Partner)
- Barcelona Supercomputing Center (Project Partner)
- SURF (Project Partner)
- DiRAC (Distributed Res utiliz Adv Comp) (Project Partner)
- AstraZeneca (Global) (Project Partner)
- Frederick National Lab for Cancer Res (Project Partner)
- Devices for Dignity (Project Partner)
- Rutgers State University of New Jersey (Project Partner)
- nVIDIA (Project Partner)
- NIMS University (Project Partner)
Publications

Benemerito I
(2024)
Computational fluid dynamics and shape analysis enhance aneurysm rupture risk stratification.
in International journal of computer assisted radiology and surgery

Bertrand A
(2024)
Multi-modal characterisation of early-stage, subclinical cardiac deterioration in patients with type 2 diabetes
in Cardiovascular Diabetology

Bieniek MK
(2023)
TIES 2.0: A Dual-Topology Open Source Relative Binding Free Energy Builder with Web Portal.
in Journal of chemical information and modeling

Groen D
(2023)
FabSim3: An automation toolkit for verified simulations using high performance computing
in Computer Physics Communications

Lawson BAJ
(2024)
Perlin noise generation of physiologically realistic cardiac fibrosis.
in Medical image analysis

Lo SCY
(2024)
Uncertainty quantification of the impact of peripheral arterial disease on abdominal aortic aneurysms in blood flow simulations.
in Journal of the Royal Society, Interface

Wan S
(2023)
Ensemble-Based Approaches Ensure Reliability and Reproducibility.
in Journal of chemical information and modeling
Description | Digital Twins |
Organisation | Northwell Health Orthopaedic Institute |
Country | United States |
Sector | Hospitals |
PI Contribution | Digital Twins: Implementing Personalised Medicine in Supercomputing |
Collaborator Contribution | Funding supporting travels to their site and conferences |
Impact | My presentation at the Constellation Forum 2023 and further meetings with Northwell and others. A focused meeting dealing with the Midway Crossing project and associated opportunities in NYC/Long Island for building a NY-centric initiative in biomedical research based around the concept of virtual humans and digital twins. |
Start Year | 2023 |
Description | Digital Twins |
Organisation | Northwell Health Orthopaedic Institute |
Country | United States |
Sector | Hospitals |
PI Contribution | Digital Twins: Implementing Personalised Medicine in Supercomputing |
Collaborator Contribution | Funding supporting travels to their site and conferences |
Impact | My presentation at the Constellation Forum 2023 and further meetings with Northwell and others. A focused meeting dealing with the Midway Crossing project and associated opportunities in NYC/Long Island for building a NY-centric initiative in biomedical research based around the concept of virtual humans and digital twins. |
Start Year | 2023 |