A multi-stage machine learning model on diagnosis of esophageal manometry
Wenjun Kou, Dustin A. Carlson, Alexandra J. Baumann, Erica N. Donnan,, Jacob M. Schauer, Mozziyar Etemadi, John E. Pandolfino

TL;DR
This paper develops a multi-stage machine learning framework combining deep learning and feature-based models to automatically diagnose esophageal motility disorders from HRM data, achieving high accuracy and offering extensibility to multi-modal diagnostics.
Contribution
It introduces the first AI-style model for automatic CC diagnosis from raw HRM data and proposes a versatile multi-stage framework integrating various ML approaches.
Findings
Best model achieves 81% top-1 accuracy on test data.
Model averaging improves diagnostic prediction performance.
Framework can be extended to multi-modal clinical data analysis.
Abstract
High-resolution manometry (HRM) is the primary procedure used to diagnose esophageal motility disorders. Its interpretation and classification includes an initial evaluation of swallow-level outcomes and then derivation of a study-level diagnosis based on Chicago Classification (CC), using a tree-like algorithm. This diagnostic approach on motility disordered using HRM was mirrored using a multi-stage modeling framework developed using a combination of various machine learning approaches. Specifically, the framework includes deep-learning models at the swallow-level stage and feature-based machine learning models at the study-level stage. In the swallow-level stage, three models based on convolutional neural networks (CNNs) were developed to predict swallow type, swallow pressurization, and integrated relaxation pressure (IRP). At the study-level stage, model selection from families of…
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