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Automated Chicago Classification for Esophageal Motility Disorder Diagnosis Using Machine Learning.

Teodora Surdea-BlagaGheorghe SebestyenZoltan CzakoAnca HanganDan Lucian DumitrascuAbdulrahman IsmaielLiliana DavidImre ZsigmondGiuseppe ChiarioniEdoardo Vincenzo SavarinoDaniel-Corneliu LeucutaStefan-Lucian Popa
Published in: Sensors (Basel, Switzerland) (2022)
The goal of this paper is to provide a Machine Learning-based solution that can be utilized to automate the Chicago Classification algorithm, the state-of-the-art scheme for esophageal motility disease identification. First, the photos were preprocessed by locating the area of interest-the precise instant of swallowing. After resizing and rescaling the photos, they were utilized as input for the Deep Learning models. The InceptionV3 Deep Learning model was used to identify the precise class of the IRP. We used the DenseNet201 CNN architecture to classify the images into 5 different classes of swallowing disorders. Finally, we combined the results of the two trained ML models to automate the Chicago Classification algorithm. With this solution we obtained a top-1 accuracy and f1-score of 86% with no human intervention, automating the whole flow, from image preprocessing until Chicago classification and diagnosis.
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