AI-Powered Evaluation of Dementia Severity Based on Clinical Data and Visual Scoring Systems (MTA,ERICA, GCA) from MRI

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Abstract

Dementia, particularly Alzheimer's disease (AD), is a growing concern in aging populations, with mild cognitive impairment (MCI) frequently progressing to AD. Current diagnostic methods rely on clinical assessments and MRI-based visual scoring systems such as MTA, ERICA, and GCA, requiring expert evaluation and leading to delays. This study presents an AI-based diagnostic framework utilizing deep learning models to predict visual scores and classify dementia stages using brain MRI and clinical measures such as TMSE and MoCA. ResNet18 was trained separately for MTA, ERICA, and GCA scoring, while DenseNet121 was applied for MRI-based dementia classification. Results indicate that models integrating AI-predicted Visual Scores with clinical data achieved up to 75.24% accuracy, outperforming MRI-only models (63.44%). Notably, the inclusion of MoCA unexpectedly reduced classification accuracy, suggesting potential biases in its application. The AI system offers a promising tool for early dementia screening, particularly in areas with limited access to neurologists and radiologists, such as rural Thailand. Future studies will focus on refining model generalizability across diverse populations and improving prediction robustness in real-world clinical settings.

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