Object Detection in Laparoscopic Surgery: A Comparative Study of Deep Learning Models on a Custom Endometriosis Dataset.

Journal: Diagnostics (Basel, Switzerland)
Published Date:

Abstract

Laparoscopic surgery for endometriosis presents unique challenges due to the complexity of and variability in lesion appearances within the abdominal cavity. This study investigates the application of deep learning models for object detection in laparoscopic videos, aiming to assist surgeons in accurately identifying and localizing endometriosis lesions and related anatomical structures. A custom dataset was curated, comprising of 199 video sequences and 205,725 frames. Of these, 17,560 frames were meticulously annotated by medical professionals. The dataset includes object detection annotations for 10 object classes relevant to endometriosis, alongside segmentation masks for some classes. To address the object detection task, we evaluated the performance of two deep learning models-FasterRCNN and YOLOv9-under both stratified and non-stratified training scenarios. The experimental results demonstrated that stratified training significantly reduced the risk of data leakage and improved model generalization. The best-performing FasterRCNN object detection model achieved a high average test precision of 0.9811 ± 0.0084, recall of 0.7083 ± 0.0807, and mAP50 (mean average precision at 50% overlap) of 0.8185 ± 0.0562 across all presented classes. Despite these successes, the study also highlights the challenges posed by the weak annotations and class imbalances in the dataset, which impacted overall model performances. In conclusion, this study provides valuable insights into the application of deep learning for enhancing laparoscopic surgical precision in endometriosis treatment. The findings underscore the importance of robust dataset curation and advanced training strategies in developing reliable AI-assisted tools for surgical interventions. The latter could potentially improve the guidance of surgical interventions and prevent blind spots occurring in difficult to reach abdominal regions. Future work will focus on refining the dataset and exploring more sophisticated model architectures to further improve detection accuracy.

Authors

  • Andrey Bondarenko
    Institute of Applied Computer Systems, Riga Technical University, LV-1048 Riga, Latvia.
  • Vilen Jumutc
    Institute of Smart Computer Technologies, Riga Technical University, LV-1658 Riga, Latvia.
  • Antoine Netter
    Department of Obstetrics and Gynecology, Assistance Publique Hôpitaux de Marseille, La Conception Hospital, Aix Marseille University, Marseille 13005, France; Institut Méditerranéen de Biodiversité et d'Écologie Marine et Continentale (IMBE), Aix Marseille University, CNRS, IRD, Avignon University, Marseille, France. Electronic address: antoine.netter@gmail.com.
  • Fanny Duchateau
    Department of Obstetrics and Gynecology, Marseille Hospital, 13005 Marseille, France.
  • Henrique Mendonca Abrão
    Gynecologic Division, Beneficência Portuguesa de São Paulo, Sao Paulo 01323-001, Brazil.
  • Saman Noorzadeh
    SurgAR, 63000 Clermont-Ferrand, France.
  • Giuseppe Giacomello
    SurgAR, 63000 Clermont-Ferrand, France.
  • Filippo Ferrari
    SurgAR, 63000 Clermont-Ferrand, France.
  • Nicolas Bourdel
    Department of Gynaecological Surgery, CHU Clermont-Ferrand, 1 Place Lucie et Raymond Aubrac, 63000, Clermont-Ferrand, France. nicolas.bourdel@gmail.com.
  • Ulrik Bak Kirk
    Department of Public Health, Aarhus University, Aarhus, Denmark.
  • Dmitrijs Bļizņuks
    Institute of Smart Computer Technologies, Riga Technical University, LV-1658 Riga, Latvia.

Keywords

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