Utilize este identificador para referenciar este registo:
http://hdl.handle.net/10071/35606| Autoria: | Mascarenhas, M. Mota, J. Cordeiro, J. R. Mendes, F. Martins, M. Cardoso, P. Almeida, M. J. Pinto da Costa, A. Hajra Martinez, I. Matallana Royo, V. Niland, B. Di Palma, J. Ferreira, J. Macedo, G. Santander, C. |
| Data: | 2025 |
| Título próprio: | Artificial intelligence driven diagnosis of motility patterns in high-resolution esophageal manometry: A multicentric multidevice study |
| Título da revista: | Clinical and Translational Gastroenterology |
| Volume: | N/A |
| Referência bibliográfica: | Mascarenhas, M., Mota, J., Cordeiro, J. R., Mendes, F., Martins, M., Cardoso, P., Almeida, M. J., Pinto da Costa, A., Hajra Martinez, I., Matallana Royo, V., Niland, B., Di Palma, J., Ferreira, J., Macedo, G., & Santander, C. (2025). Artificial intelligence driven diagnosis of motility patterns in high-resolution esophageal manometry: A multicentric multidevice study. Clinical and Translational Gastroenterology. https://doi.org/10.14309/ctg.0000000000000941 |
| ISSN: | 2155-384X |
| DOI (Digital Object Identifier): | 10.14309/ctg.0000000000000941 |
| Palavras-chave: | Artificial intelligence High-resolution esophageal manometry Machine learning Esophageal motility disorders |
| Resumo: | INTRODUCTION: Esophageal motility disorders (EMDs) are common in clinical practice, with a high symptomatic burden and significant impact on the patients' quality of life. High-resolution esophageal manometry (HREM) is the gold standard for the evaluation of functional esophageal disorders. The Chicago Classification offers a standardized approach to HREM. However, HREM remains a complex procedure, both in data analysis and in accessibility. This study aimed to develop and validate machine learning (ML) models to detect EMDs according to the Chicago Classification. METHODS: We retrospectively analyzed 618 HREM examinations from 3 centers (Spain and the United States) using 2 recording systems. Labels were assigned by expert consensus as either disorder present or absent for 2 categories: esophagogastric junction outflow disorders and peristalsis disorders. Several ML models were trained and evaluated. ML classifiers were developed using an 80/20 patient-level stratified split for training/validation and testing. Model selection was guided by internal evaluation through repeated 10-fold cross-validation. Model performance was assessed by accuracy and area under the receiver-operating characteristic curve (AUC-ROC). RESULTS: The GradientBoostingClassifier model outperformed the remaining ML models with an accuracy of 0.942 ± 0.015 and an AUC-ROC of 0.921 ± 0.041 for identifying disorders of esophagogastric junction outflow. The xGBClassifier model detected disorders of peristalsis with an accuracy of 0.809 ± 0.029 and an AUC-ROC of 0.871 ± 0.027. Performance was consistent across repeated validations, demonstrating model robustness and generalization. DISCUSSION: This multicenter, multidevice study demonstrates that ML models can accurately detect EMDs in HREM. Artificial intelligence-driven HREM may improve diagnosis by standardizing interpretation and reducing interobserver variability. Abstract |
| 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_113687.pdf | 762,86 kB | Adobe PDF | Ver/Abrir |
Todos os registos no repositório estão protegidos por leis de copyright, com todos os direitos reservados.












