Cryptogenic stroke and migraine: using probabilistic independence and machine learning to uncover latent sources of disease from the electronic health record
Joshua W. Betts, John M. Still, Thomas A. Lasko

TL;DR
This study uses probabilistic independence and machine learning on electronic health records to identify latent factors influencing cryptogenic stroke risk in migraine patients, highlighting pharmacologic interventions and allergic rhinitis as key sources.
Contribution
It introduces a novel data-driven method to extract independent sources from EHR data and develop a 10-year risk prediction model for cryptogenic stroke in migraine patients.
Findings
Pharmacologic interventions significantly reduce CS risk.
A factor related to allergic rhinitis may causally influence CS.
The model achieved an ROC of 0.771 in predicting CS risk.
Abstract
Migraine is a common but complex neurological disorder that doubles the lifetime risk of cryptogenic stroke (CS). However, this relationship remains poorly characterized, and few clinical guidelines exist to reduce this associated risk. We therefore propose a data-driven approach to extract probabilistically-independent sources from electronic health record (EHR) data and create a 10-year risk-predictive model for CS in migraine patients. These sources represent external latent variables acting on the causal graph constructed from the EHR data and approximate root causes of CS in our population. A random forest model trained on patient expressions of these sources demonstrated good accuracy (ROC 0.771) and identified the top 10 most predictive sources of CS in migraine patients. These sources revealed that pharmacologic interventions were the most important factor in minimizing CS risk…
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