Inferring the dynamical effects of stroke lesions through whole-brain modeling

•We derived a causal mechanistic generative whole-brain model to explain the functional and behavioral consequences of stroke lesions.•The model got enhanced by adding structural disconnection masks.•The model classified behavioral impairment severity with higher accuracy than empirical data.•We sho...

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Veröffentlicht in:NeuroImage clinical 2022-01, Vol.36, p.103233-103233, Article 103233
Hauptverfasser: Idesis, Sebastian, Favaretto, Chiara, Metcalf, Nicholas V., Griffis, Joseph C., Shulman, Gordon L., Corbetta, Maurizio, Deco, Gustavo
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Sprache:eng
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Zusammenfassung:•We derived a causal mechanistic generative whole-brain model to explain the functional and behavioral consequences of stroke lesions.•The model got enhanced by adding structural disconnection masks.•The model classified behavioral impairment severity with higher accuracy than empirical data.•We showed how network dynamics change emerge after a stroke injury. Understanding the effect of focal lesions (stroke) on brain structure-function traditionally relies on behavioral analyses and correlation with neuroimaging data. Here we use structural disconnection maps from individual lesions to derive a causal mechanistic generative whole-brain model able to explain both functional connectivity alterations and behavioral deficits induced by stroke. As compared to other models that use only the local lesion information, the similarity to the empirical fMRI connectivity increases when the widespread structural disconnection information is considered. The presented model classifies behavioral impairment severity with higher accuracy than other types of information (e.g.: functional connectivity). We assessed topological measures that characterize the functional effects of damage. With the obtained results, we were able to understand how network dynamics change emerge, in a nontrivial way, after a stroke injury of the underlying complex brain system. This type of modeling, including structural disconnection information, helps to deepen our understanding of the underlying mechanisms of stroke lesions.
ISSN:2213-1582
2213-1582
DOI:10.1016/j.nicl.2022.103233