Minimally invasive surgery is highly operator dependant with a lengthy procedural time causing fatigue to surgeon and risks to patients such as injury to organs, infection, bleeding, and complications of anesthesia. To mitigate such risks, real-time systems are desired to be developed that can provide intra-operative guidance to surgeons. For example, an automated system for tool localization, tool (or tissue) tracking, and depth estimation can enable a clear understanding of surgical scenes preventing miscalculations during surgical procedures. In this work, we present a systematic review of recent machine learning-based approaches including surgical tool localization, segmentation, tracking, and 3D scene perception. Furthermore, we provid...
Background: Minimally invasive surgery creates two technological opportunities: (1) the development ...
Surgery is a high-stakes domain where surgeons must navigate critical anatomical structures and acti...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...
Tutors: Amelia Jiménez Sánchez, Gemma Piella FenoyAlthough minimally invasive surgeries have achieve...
Objective: The computation of anatomical information and laparoscope position is a fundamental block...
Aim: Artificial intelligence (AI) is rapidly evolving in healthcare worldwide, especially in surgery...
Introduction The current study presents a deep learning framework to determine, in real-time, posit...
Surgical-tool joint detection from laparoscopic images is an important but challenging task in compu...
In recent years, Minimally Invasive Surgery (MIS) has transformed the general practice of surgery. T...
Surgical data science (SDS) is a research field that aims to improve the quality of interventional h...
Introduction: The utilisation of artificial intelligence (AI) augments intraoperative safety, surgic...
Abstract Purpose: Advances in technology and computing play an increasingly important role in the ev...
Automatic analysis of minimally invasive surgical (MIS) video has the potential to drive new soluti...
Minimally invasive surgeries (MIS) are fundamentally constrained by image quality,access to the oper...
In recent years, tremendous progress has been made in surgical practice for example with Minimally I...
Background: Minimally invasive surgery creates two technological opportunities: (1) the development ...
Surgery is a high-stakes domain where surgeons must navigate critical anatomical structures and acti...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...
Tutors: Amelia Jiménez Sánchez, Gemma Piella FenoyAlthough minimally invasive surgeries have achieve...
Objective: The computation of anatomical information and laparoscope position is a fundamental block...
Aim: Artificial intelligence (AI) is rapidly evolving in healthcare worldwide, especially in surgery...
Introduction The current study presents a deep learning framework to determine, in real-time, posit...
Surgical-tool joint detection from laparoscopic images is an important but challenging task in compu...
In recent years, Minimally Invasive Surgery (MIS) has transformed the general practice of surgery. T...
Surgical data science (SDS) is a research field that aims to improve the quality of interventional h...
Introduction: The utilisation of artificial intelligence (AI) augments intraoperative safety, surgic...
Abstract Purpose: Advances in technology and computing play an increasingly important role in the ev...
Automatic analysis of minimally invasive surgical (MIS) video has the potential to drive new soluti...
Minimally invasive surgeries (MIS) are fundamentally constrained by image quality,access to the oper...
In recent years, tremendous progress has been made in surgical practice for example with Minimally I...
Background: Minimally invasive surgery creates two technological opportunities: (1) the development ...
Surgery is a high-stakes domain where surgeons must navigate critical anatomical structures and acti...
Data diversity and volume are crucial to the success of training deep learning models, while in the ...