Hybrid modelling for stroke care: Review and suggestions of new approaches for risk assessment and simulation of scenarios
Citation:
Herrgårdh, T. and Madai, V.I. and Kelleher, J.D. and Magnusson, R. and Gustafsson, M. and Milani, L. and Gennemark, P. and Cedersund, G., Hybrid modelling for stroke care: Review and suggestions of new approaches for risk assessment and simulation of scenarios, NeuroImage: Clinical, 2021, 31, 102694Download Item:

Abstract:
Stroke is an example of a complex and multi-factorial disease involving multiple organs, timescales, and disease
mechanisms. To deal with this complexity, and to realize Precision Medicine of stroke, mathematical models are
needed. Such approaches include: 1) machine learning, 2) bioinformatic network models, and 3) mechanistic
models. Since these three approaches have complementary strengths and weaknesses, a hybrid modelling
approach combining them would be the most beneficial. However, no concrete approach ready to be imple-
mented for a specific disease has been presented to date. In this paper, we both review the strengths and
weaknesses of the three approaches, and propose a roadmap for hybrid modelling in the case of stroke care. We
focus on two main tasks needed for the clinical setting: a) For stroke risk calculation, we propose a new two-step
approach, where non-linear mixed effects models and bioinformatic network models yield biomarkers which are
used as input to a machine learning model and b) For simulation of care scenarios, we propose a new four-step
approach, which revolves around iterations between simulations of the mechanistic models and imputations of
non-modelled or non-measured variables. We illustrate and discuss the different approaches in the context of
Precision Medicine for stroke
Author's Homepage:
http://people.tcd.ie/kellehjd
Author: Kelleher, John
Type of material:
Journal ArticleCollections:
Series/Report no:
NeuroImage: Clinical;31;
102694;
Availability:
Full text availableKeywords:
Stroke, hybrid modelling, Precision Medicine for stroke, Precision medicine, Bioinformatics, Machine learning, Mechanistic modellingDOI:
http://dx.doi.org/10.1016/j.nicl.2021.102694Licences: