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http://hdl.handle.net/10071/37261| Autoria: | Mascarenhas, M. Mendes, F. Cordeiro, J. R. Mota, J. Martins, M. Almeida, M. J. Araujo, C. Frias, J. Cardoso, P. El Hajra, I. Pinto da Costa, A. Matallana, V. Ciriza de Los Rios, C. Ferreira, J. Saraiva, M. M. Macedo, G. Niland, B. Santander, C. |
| Data: | 2026 |
| Título próprio: | Artificial intelligence and FLIP panometry: Automated classification of esophageal motility patterns |
| Título da revista: | Journal of Clinical Medicine |
| Volume: | 15 |
| Número: | 1 |
| Referência bibliográfica: | Mascarenhas, M., Mendes, F., Cordeiro, J. R., Mota, J., Martins, M., Almeida, M. J., Araujo, C., Frias, J., Cardoso, P., El Hajra, I., Pinto da Costa, A., Matallana, V., Ciriza de Los Rios, C., Ferreira, J., Saraiva, M. M., Macedo, G., Niland, B., & Santander, C. (2026). Artificial intelligence and FLIP panometry: Automated classification of esophageal motility patterns. Journal of Clinical Medicine, 15(1), Article 401. https://doi.org/10.3390/jcm15010401 |
| ISSN: | 2077-0383 |
| DOI (Digital Object Identifier): | 10.3390/jcm15010401 |
| Palavras-chave: | Artificial intelligence Esophageal disorders Gastroenterology Machine learning FLIP panometry |
| Resumo: | Functional lumen imaging probe (FLIP) panometry allows real-time assessment of the esophagogastric junction opening and esophageal body contractile activity during an endoscopic procedure. Despite the development of the Dallas Consensus, FLIP panometry analysis remains complex. Artificial intelligence (AI) models have proven their benefit in high-resolution esophageal manometry; however, data on their role in FLIP panometry are scarce. This study aims to develop an AI model for automatic classification of motility patterns during a FLIP panometry exam. Methods: A total of 105 exams from five centers from both the European and American continents were included. Several machine learning models were trained and evaluated for detection of FLIP panometry patterns. Each exam was classified with an expert consensus-based decision according to the Dallas Consensus, with division into a training and testing dataset in a patient-split design. Models’ performance was evaluated through their accuracy and area under the receiver-operating characteristic curve (AUC-ROC). Results: Pathological planimetry patterns were identified by an AdaBoost Classifier with 84.9% accuracy and a mean AUC-ROC of 0.92. Random Forest identified disorders of the esophagogastric junction opening with 86.7% accuracy and an AUC-ROC of 0.973. The Gradient Boosting Classifier identified disorders of the contractile response with 86.0% accuracy and an AUC-ROC of 0.933. Conclusions: In this study, integrating exams with different probe sizes and demographic contexts, a machine learning model accurately classified FLIP panometry exams according to the Dallas Consensus. AI-driven FLIP panometry could revolutionize the approach to this exam during an endoscopic procedure, optimizing exam accuracy, standardization, and accessibility, and transforming patient management. |
| Arbitragem científica: | yes |
| Acesso: | Acesso Aberto |
| Aparece nas coleções: | ISTAR-RI - Artigos em revistas científicas internacionais com arbitragem científica |
Ficheiros deste registo:
| Ficheiro | Tamanho | Formato | |
|---|---|---|---|
| article_118330.pdf | 1,54 MB | Adobe PDF | Ver/Abrir |
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