# GLENDA: Gynecologic Laparoscopy Endometriosis Dataset

**Authors:** Andreas Leibetseder, Sabrina Kletz, Klaus Schoeffmann, Simon Keckstein, J\"org Keckstein

arXiv: 2508.21398 · 2025-09-01

## TL;DR

This paper introduces GLENDA, a pioneering image dataset with region-based annotations of endometriosis in gynecologic laparoscopy videos, aiming to support advanced computer vision and machine learning research in medical analysis.

## Contribution

The creation and publication of the first region-annotated gynecologic laparoscopy dataset focused on endometriosis, developed with expert collaboration to aid medical AI research.

## Key findings

- Dataset contains detailed region annotations of endometriosis.
- Supports development of automated detection and analysis methods.
- Facilitates improved surgical video analysis and diagnosis.

## Abstract

Gynecologic laparoscopy as a type of minimally invasive surgery (MIS) is performed via a live feed of a patient's abdomen surveying the insertion and handling of various instruments for conducting treatment. Adopting this kind of surgical intervention not only facilitates a great variety of treatments, the possibility of recording said video streams is as well essential for numerous post-surgical activities, such as treatment planning, case documentation and education. Nonetheless, the process of manually analyzing surgical recordings, as it is carried out in current practice, usually proves tediously time-consuming. In order to improve upon this situation, more sophisticated computer vision as well as machine learning approaches are actively developed. Since most of such approaches heavily rely on sample data, which especially in the medical field is only sparsely available, with this work we publish the Gynecologic Laparoscopy ENdometriosis DAtaset (GLENDA) - an image dataset containing region-based annotations of a common medical condition named endometriosis, i.e. the dislocation of uterine-like tissue. The dataset is the first of its kind and it has been created in collaboration with leading medical experts in the field.

## Full text

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## Figures

91 figures with captions in the complete paper: https://tomesphere.com/paper/2508.21398/full.md

## References

12 references — full list in the complete paper: https://tomesphere.com/paper/2508.21398/full.md

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Source: https://tomesphere.com/paper/2508.21398