The Relationship Between Head Injury and Alzheimer's Disease: A Causal Analysis with Bayesian Networks
Journal:
arXiv
Published Date:
Feb 18, 2025
Abstract
This study examines the potential causal relationship between head injury and
the risk of developing Alzheimer's disease (AD) using Bayesian networks and
regression models. Using a dataset of 2,149 patients, we analyze key medical
history variables, including head injury history, memory complaints,
cardiovascular disease, and diabetes. Logistic regression results suggest an
odds ratio of 0.88 for head injury, indicating a potential but statistically
insignificant protective effect against AD. In contrast, memory complaints
exhibit a strong association with AD, with an odds ratio of 4.59. Linear
regression analysis further confirms the lack of statistical significance for
head injury (coefficient: -0.0245, p = 0.469) while reinforcing the predictive
importance of memory complaints. These findings highlight the complex interplay
of medical history factors in AD risk assessment and underscore the need for
further research utilizing larger datasets and advanced causal modeling
techniques.