Abstract
AbstractDeep learning approaches for clinical predictions based on magnetic resonance imaging data have shown great promise as a translational technology for diagnosis and prognosis in neurological disorders, but its clinical impact has been limited. This is partially attributed to the opaqueness of deep learning models, causing insufficient understanding of what underlies their decisions. To overcome this, we trained convolutional neural networks on structural brain scans to differentiate dementia patients from healthy controls, and applied layerwise relevance propagation to procure individual-level explanations of the model predictions. Through extensive validations we demonstrate that deviations recognized by the model corroborate existing knowledge of structural brain aberrations in dementia. By employing the explainable dementia classifier in a longitudinal dataset of patients with mild cognitive impairment, we show that the spatially rich explanations complement the model prediction when forecasting transition to dementia and help characterize the biological manifestation of disease in the individual brain. Overall, our work exemplifies the clinical potential of explainable artificial intelligence in precision medicine.
Funder
University of Oslo | Livsvitenskap, Universitetet i Oslo
Ministry of Health and Care Services | Helse Sør-Øst RHF
Deutsche Forschungsgemeinschaft
Norges Forskningsråd
EC | Horizon 2020 Framework Programme
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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1. Normative modeling for clinical neuroscience;Computational and Network Modeling of Neuroimaging Data;2024