A Computational Approach to Epilepsy Treatment: An AI-optimized Global Natural Product Prescription System
Journal:
arXiv
Published Date:
May 10, 2025
Abstract
Epilepsy is a prevalent neurological disease with millions of patients
worldwide. Many patients have turned to alternative medicine due to the limited
efficacy and side effects of conventional antiepileptic drugs. In this study,
we developed a computational approach to optimize herbal epilepsy treatment
through AI-driven analysis of global natural products and statistically
validated randomized controlled trials (RCTs). Our intelligent prescription
system combines machine learning (ML) algorithms for herb-efficacy
characterization, Bayesian optimization for personalized dosing, and
meta-analysis of RCTs for evidence-based recommendations. The system analyzed
1,872 natural compounds from traditional Chinese medicine (TCM), Ayurveda, and
ethnopharmacological databases, integrating their bioactive properties with
clinical outcomes from 48 RCTs covering 48 epilepsy conditions (n=5,216). Using
LASSO regression and SHAP value analysis, we identified 17 high-efficacy herbs
(e.g., Gastrodia elata [using \'e for accented characters], Withania
somnifera), showing significant seizure reduction (p$<$0.01, Cohen's d=0.89)
with statistical significance confirmed by multiple testing (p$<$0.001). A
randomized double-blind validation trial (n=120) demonstrated 28.5\% greater
seizure frequency reduction with AI-optimized herbal prescriptions compared to
conventional protocols (95\% CI: 18.7-37.3\%, p=0.003).