AI-assisted in silico trial for the optimization of osmotherapy after ischaemic stroke

Date published

2025

Free to read from

2025-03-03

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE

Department

Type

Article

ISSN

2168-2194

Format

Citation

Chen X, Lu L, Józsa TI, et al., (2025) AI-assisted in silico trial for the optimization of osmotherapy after ischaemic stroke. IEEE Journal of Biomedical and Health Informatics, Available online 12 February 2025

Abstract

Over the past few decades, osmotherapy has commonly been employed to reduce intracranial pressure in post-stroke oedema. However, evaluating the effectiveness of osmotherapy has been challenging due to the difficulties in clinical intracranial pressure measurement. As a result, there are no established guidelines regarding the selection of administration protocol parameters. Considering that the infusion of osmotic agents can also give rise to various side effects, the effectiveness of osmotherapy has remained a subject of debate. In previous studies, we proposed the first mathematical model for the investigation of osmotherapy and validated the model with clinical intracranial pressure data. The physiological parameters vary among patients and such variations can result in the failure of osmotherapy. Here, we propose an AI-assisted in silico trial for further investigation of the optimisation of administration protocols. The proposed deep neural network predicts intracranial pressure evolution over osmotherapy episodes. The effects of the parameters and the choice of dose of osmotic agents are investigated using the model. In addition, clinical stratifications of patients are related to a brain model for the first time for the optimisation of treatment of different patient groups. This provides an alternative approach to tackle clinical challenges with in silico trials supported by both mathematical/physical laws and patient-specific biomedical information.

Description

Software Description

Software Language

Github

Keywords

46 Information and Computing Sciences, 4601 Applied Computing, Stroke, Neurosciences, Clinical Research, Networking and Information Technology R&D (NITRD), Bioengineering, Clinical Trials and Supportive Activities, Brain Disorders, Cerebrovascular, Machine Learning and Artificial Intelligence, 6.1 Pharmaceuticals, Stroke

DOI

Rights

Attribution 4.0 International

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Funder/s

Stephen J. Payne is supported by a Yushan Fellowship from the Ministry of Education, Taiwan (111V1004-2). David A. Clifton is supported by the Pandemic Sciences Institute at the University of Oxford; the National Institute for Health Research (NIHR) Oxford Biomedical Research Centre (BRC); an NIHR Research Professorship; a Royal Academy of Engineering Research Chair; and the InnoHK Hong Kong Centre for Centre for Cerebro-cardiovascular Engineering (COCHE).