The deep learning model MS-TCN++, developed by Prof. Jürgen Gall’s group at the University of Bonn, achieved over 85% accuracy in identifying different surgical phases, such as incision preparation and lens treatment.
“The analysis of surgical phases is important because it enables a quantitative comparison between different surgeons, feedback on identified critical steps and the detection of deviations from surgical protocols. It is therefore the first step towards automatic assessment of surgical quality,” says Dr. Kaushik Murali, president of medical administration at the Sankara Eye Foundation India.