Artificial Intelligence for Personalized Prediction of Alzheimer's Disease Progression: A Survey of Methods, Data Challenges, and Future Directions
Journal:
arXiv
Published Date:
Apr 29, 2025
Abstract
Alzheimer's Disease (AD) is marked by significant inter-individual
variability in its progression, complicating accurate prognosis and
personalized care planning. This heterogeneity underscores the critical need
for predictive models capable of forecasting patient-specific disease
trajectories. Artificial Intelligence (AI) offers powerful tools to address
this challenge by analyzing complex, multi-modal, and longitudinal patient
data. This paper provides a comprehensive survey of AI methodologies applied to
personalized AD progression prediction. We review key approaches including
state-space models for capturing temporal dynamics, deep learning techniques
like Recurrent Neural Networks for sequence modeling, Graph Neural Networks
(GNNs) for leveraging network structures, and the emerging concept of AI-driven
digital twins for individualized simulation. Recognizing that data limitations
often impede progress, we examine common challenges such as high
dimensionality, missing data, and dataset imbalance. We further discuss
AI-driven mitigation strategies, with a specific focus on synthetic data
generation using Variational Autoencoders (VAEs) and Generative Adversarial
Networks (GANs) to augment and balance datasets. The survey synthesizes the
strengths and limitations of current approaches, emphasizing the trend towards
multimodal integration and the persistent need for model interpretability and
generalizability. Finally, we identify critical open challenges, including
robust external validation, clinical integration, and ethical considerations,
and outline promising future research directions such as hybrid models, causal
inference, and federated learning. This review aims to consolidate current
knowledge and guide future efforts in developing clinically relevant AI tools
for personalized AD prognostication.