Bibliometric analysis of deep learning for surgical instrument segmentation, detection and tracking in minimally invasive surgery
Mahmoud Yousef, Kareem Essam Aly, Mariam Ahmed, Fatimaelzahraa Ali Ahmed, Khalid Al Jalham, Shidin Balakrishnan

TL;DR
This paper provides a bibliometric overview of deep learning research for surgical instrument analysis in minimally invasive surgery, highlighting trends and key contributors from 2017 to 2024.
Contribution
The study offers the first structured bibliometric analysis of deep learning methods for surgical instrument segmentation, detection, and tracking in MIS.
Findings
Annual research output on DL for MIS instrument analysis peaked in 2023, showing sustained growth since 2017.
The United States and France were the most productive countries, with key institutions like the University of Strasbourg and Furtwangen University.
Convolutional neural networks remain dominant, but emerging themes include transformers, multimodal learning, and real-time applications.
Abstract
Deep learning (DL) methods for surgical video analysis have expanded rapidly in minimally invasive surgery (MIS). However, a structured bibliometric overview focused on DL-based surgical instrument segmentation, detection, and tracking is lacking. The objective of this review is to systematically map the research landscape with this focus, by examining publication trends, influential authors, institutions, and countries, collaboration networks, keyword co-occurrence patterns, and the thematic trajectory of the discipline. We performed a bibliometric analysis of original research articles on DL-based surgical instrument segmentation/detection/tracking in laparoscopic or robotic MIS, published between 2017 and 2024. Searches were conducted in six databases namely PubMed, Scopus, IEEE Xplore, Embase, Medline, and Web of Science. Records were de-duplicated in EndNote and analyzed using the…
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Taxonomy
TopicsSurgical Simulation and Training · Soft Robotics and Applications · Minimally Invasive Surgical Techniques
