2024
DOI: 10.3390/cancers16010208
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Artificial Intelligence and Panendoscopy—Automatic Detection of Clinically Relevant Lesions in Multibrand Device-Assisted Enteroscopy

Francisco Mendes,
Miguel Mascarenhas,
Tiago Ribeiro
et al.

Abstract: Device-assisted enteroscopy (DAE) is capable of evaluating the entire gastrointestinal tract, identifying multiple lesions. Nevertheless, DAE’s diagnostic yield is suboptimal. Convolutional neural networks (CNN) are multi-layer architecture artificial intelligence models suitable for image analysis, but there is a lack of studies about their application in DAE. Our group aimed to develop a multidevice CNN for panendoscopic detection of clinically relevant lesions during DAE. In total, 338 exams performed in tw… Show more

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“…This study achieved a sensitivity of 89%, a specificity of 99%, and an overall accuracy of 96.8% for the diagnosis of multiple clinically relevant lesions in a panendoscopic setting. To the best of our knowledge, this paper is the first to address the detection of pleomorphic multi-lesions, enabling the study not only of the SB but also of other topographies [87].…”
Section: Ai and Pleomorphic Multi-lesion Detectionmentioning
confidence: 99%
“…This study achieved a sensitivity of 89%, a specificity of 99%, and an overall accuracy of 96.8% for the diagnosis of multiple clinically relevant lesions in a panendoscopic setting. To the best of our knowledge, this paper is the first to address the detection of pleomorphic multi-lesions, enabling the study not only of the SB but also of other topographies [87].…”
Section: Ai and Pleomorphic Multi-lesion Detectionmentioning
confidence: 99%