Gemini-Assisted Deep Learning Classification Model for Automated Diagnosis of High-Resolution Esophageal Manometry Images

<i>Background/Objectives:</i> To develop a deep learning model for esophageal motility disorder diagnosis using high-resolution manometry images with the aid of Gemini. <i>Methods:</i> Gemini assisted in developing this model by aiding in code writing, preprocessing, model op...

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Main Authors: Stefan Lucian Popa, Teodora Surdea-Blaga, Dan Lucian Dumitrascu, Andrei Vasile Pop, Abdulrahman Ismaiel, Liliana David, Vlad Dumitru Brata, Daria Claudia Turtoi, Giuseppe Chiarioni, Edoardo Vincenzo Savarino, Imre Zsigmond, Zoltan Czako, Daniel Corneliu Leucuta
Format: Article
Language:English
Published: MDPI AG 2024-09-01
Series:Medicina
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Online Access:https://www.mdpi.com/1648-9144/60/9/1493
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Summary:<i>Background/Objectives:</i> To develop a deep learning model for esophageal motility disorder diagnosis using high-resolution manometry images with the aid of Gemini. <i>Methods:</i> Gemini assisted in developing this model by aiding in code writing, preprocessing, model optimization, and troubleshooting. <i>Results:</i> The model demonstrated an overall precision of 0.89 on the testing set, with an accuracy of 0.88, a recall of 0.88, and an F1-score of 0.885. It presented better results for multiple categories, particularly in the panesophageal pressurization category, with precision = 0.99 and recall = 0.99, yielding a balanced F1-score of 0.99. <i>Conclusions:</i> This study demonstrates the potential of artificial intelligence, particularly Gemini, in aiding the creation of robust deep learning models for medical image analysis, solving not just simple binary classification problems but more complex, multi-class image classification tasks.
ISSN:1010-660X
1648-9144