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Interpretable machine learning for dementia: A systematic review
119
Zitationen
4
Autoren
2023
Jahr
Abstract
Future work should incorporate clinicians to validate explanation methods and make conclusive inferences about dementia-related disease pathology. Critically analyzing model explanations also requires an understanding of the interpretability methods itself. Patient-specific explanations are also required to demonstrate the benefit of interpretable machine learning in clinical practice.
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