Robust multi-label surgical tool classification in noisy endoscopic videos.

Journal: Scientific reports
PMID:

Abstract

Over the past few years, surgical data science has attracted substantial interest from the machine learning (ML) community. Various studies have demonstrated the efficacy of emerging ML techniques in analysing surgical data, particularly recordings of procedures, for digitising clinical and non-clinical functions like preoperative planning, context-aware decision-making, and operating skill assessment. However, this field is still in its infancy and lacks representative, well-annotated datasets for training robust models in intermediate ML tasks. Also, existing datasets suffer from inaccurate labels, hindering the development of reliable models. In this paper, we propose a systematic methodology for developing robust models for surgical tool classification using noisy endoscopic videos. Our methodology introduces two key innovations: (1) an intelligent active learning strategy for minimal dataset identification and label correction by human experts through collective intelligence; and (2) an assembling strategy for a student-teacher model-based self-training framework to achieve the robust classification of 14 surgical tools in a semi-supervised fashion. Furthermore, we employ strategies such as weighted data loaders and label smoothing to enable the models to learn difficult samples and address class imbalance issues. The proposed methodology achieves an average F1-score of 85.88% for the ensemble model-based self-training with class weights, and 80.88% without class weights for noisy tool labels. Also, our proposed method significantly outperforms existing approaches, which effectively demonstrates its effectiveness.

Authors

  • Adnan Qayyum
    Department of Computer Engineering, University of Engineering and Technology Taxila, Taxila, 47050, Pakistan.
  • Hassan Ali
    Information Technology University of the Punjab, Lahore, Pakistan.
  • Massimo Caputo
    Department of Translational Health Sciences, Bristol Heart Institute, University of Bristol, London, United Kingdom.
  • Hunaid Vohra
    NHS Bristol Heart Institute, University of Bristol, Bristol, UK.
  • Taofeek Akinosho
    University of the West of England, Bristol, UK.
  • Sofiat Abioye
    University of the West of England, Bristol, UK.
  • Ilhem Berrou
    University of the West of England, Bristol, UK.
  • PaweÅ‚ Capik
    University of the West of England, Bristol, UK.
  • Junaid Qadir
    Department of Computer Engineering, Qatar University, Doha, Qatar.
  • Muhammad Bilal
    Agri-Biophotonics Division, National Institute of Lasers and Optronics (NILOP), Nilore, Islamabad 45650, Pakistan.