Introduction The current study presents a deep learning framework to determine, in real-time, position and rotation of a target organ from an endoscopic video. These inferred data are used to overlay the 3D model of patient's organ over its real counterpart. The resulting augmented video flow is streamed back to the surgeon as a support during laparoscopic robot-assisted procedures. Methods This framework exploits semantic segmentation and, thereafter, two techniques, based on Convolutional Neural Networks and motion analysis, were used to infer the rotation. Results The segmentation shows optimal accuracies, with a mean IoU score greater than 80% in all tests. Different performance levels are obtained for rotation, depending on the su...
Background For autonomous robot-delivered surgeries to ever become a feasible option, we recommend t...
Background Artificial intelligence (AI) has the potential to enhance patient safety in surgery, and...
Robot-assisted surgery is rapidly developing in the medical field, and the integration of augmented ...
Introduction: The current study presents a deep learning framework to determine, in real-time, posit...
Purpose: The current study aimed to propose a Deep Learning (DL) and Augmented Reality (AR) based so...
Semantic tool segmentation in surgical videos is important for surgical scene understanding and comp...
A significant breakthrough in the field of surgery has seen the integration of augmented reality (AR...
Robot-Assisted Surgery (RAS) has become increasingly important in modern surgical practice for its m...
Surgery is a high-stakes domain where surgeons must navigate critical anatomical structures and acti...
Objective: To develop a deep learning algorithm for anatomy recognition in thoracoscopic video frame...
Tutors: Amelia Jiménez Sánchez, Gemma Piella FenoyAlthough minimally invasive surgeries have achieve...
Surgical-tool joint detection from laparoscopic images is an important but challenging task in compu...
Background For autonomous robot-delivered surgeries to ever become a feasible option, we recommend t...
Background Artificial intelligence (AI) has the potential to enhance patient safety in surgery, and...
Robot-assisted surgery is rapidly developing in the medical field, and the integration of augmented ...
Introduction: The current study presents a deep learning framework to determine, in real-time, posit...
Purpose: The current study aimed to propose a Deep Learning (DL) and Augmented Reality (AR) based so...
Semantic tool segmentation in surgical videos is important for surgical scene understanding and comp...
A significant breakthrough in the field of surgery has seen the integration of augmented reality (AR...
Robot-Assisted Surgery (RAS) has become increasingly important in modern surgical practice for its m...
Surgery is a high-stakes domain where surgeons must navigate critical anatomical structures and acti...
Objective: To develop a deep learning algorithm for anatomy recognition in thoracoscopic video frame...
Tutors: Amelia Jiménez Sánchez, Gemma Piella FenoyAlthough minimally invasive surgeries have achieve...
Surgical-tool joint detection from laparoscopic images is an important but challenging task in compu...
Background For autonomous robot-delivered surgeries to ever become a feasible option, we recommend t...
Background Artificial intelligence (AI) has the potential to enhance patient safety in surgery, and...
Robot-assisted surgery is rapidly developing in the medical field, and the integration of augmented ...