Multimodal Graph-based Classification of Esophageal Motility Disorders
Alexander Geiger, Lars Wagner, Daniel Rueckert, Alois Knoll, Dirk Wilhelm, Alissa Jell

TL;DR
This study presents a multimodal machine learning approach using graph neural networks and patient data to improve classification accuracy of esophageal motility disorders from HRIM data.
Contribution
It introduces a novel graph-based modeling of HRIM data combined with patient information for enhanced disorder classification.
Findings
Multimodal approach outperforms HRIM-only models.
Graph-based modeling improves classification over vision-based baselines.
Integrating patient data enhances diagnostic accuracy.
Abstract
Diagnosing esophageal motility disorders pose significant challenges due to the complexity of high-resolution impedance manometry (HRIM) data and variability in clinical interpretation. This work explores the feasibility of a multimodal Machine Learning (ML)-based classification approach that combines HRIM recordings with patient-specific information and incorporates a graph-based modeling of esophageal physiology. We analyze HRIM recordings with corresponding patient information from 104 patients with esophageal motility disorders. Patient data includes demographic, clinical, and symptom information extracted from structured questionnaires and free-text notes using keyword detection and large language model-based processing. HRIM data is represented as spatio-temporal graphs, where nodes correspond to pressure values along the esophagus and edges encode spatial adjacency and impedance…
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