AI for the prediction of early stages of Alzheimer's disease from neuroimaging biomarkers -- A narrative review of a growing field
Thorsten Rudroff, Oona Rainio, Riku Kl\'en

TL;DR
This review summarizes how AI applied to neuroimaging can enhance early Alzheimer's disease detection, prognosis, and management, highlighting recent advances, challenges, and future directions in the field.
Contribution
It provides a comprehensive overview of AI methods in neuroimaging for early AD prediction, emphasizing multi-modality approaches and longitudinal modeling.
Findings
Single-modality imaging achieves high classification accuracy.
Multi-modality approaches improve robustness and performance.
AI models can identify individuals at risk of rapid decline.
Abstract
Objectives: The objectives of this narrative review are to summarize the current state of AI applications in neuroimaging for early Alzheimer's disease (AD) prediction and to highlight the potential of AI techniques in improving early AD diagnosis, prognosis, and management. Methods: We conducted a narrative review of studies using AI techniques applied to neuroimaging data for early AD prediction. We examined single-modality studies using structural MRI and PET imaging, as well as multi-modality studies integrating multiple neuroimaging techniques and biomarkers. Furthermore, they reviewed longitudinal studies that model AD progression and identify individuals at risk of rapid decline. Results: Single-modality studies using structural MRI and PET imaging have demonstrated high accuracy in classifying AD and predicting progression from mild cognitive impairment (MCI) to AD.…
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