TY - UNPB
T1 - An Automated Machine Learning Framework for Surgical Suturing Action Detection under Class Imbalance
AU - Zhang, Baobing
AU - Sullivan, Paul
AU - Tang, Benjie
AU - Nabi, Ghulam
AU - Erden, Mustafa Suphi
N1 - arXiv.org - Non-exclusive license to distribute
PY - 2025/2/10
Y1 - 2025/2/10
N2 - In laparoscopy surgical training and evaluation, real-time detection of surgical actions with interpretable outputs is crucial for automated and real-time instructional feedback and skill development. Such capability would enable development of machine guided training systems. This paper presents a rapid deployment approach utilizing automated machine learning methods, based on surgical action data collected from both experienced and trainee surgeons. The proposed approach effectively tackles the challenge of highly imbalanced class distributions, ensuring robust predictions across varying skill levels of surgeons. Additionally, our method partially incorporates model transparency, addressing the reliability requirements in medical applications. Compared to deep learning approaches, traditional machine learning models not only facilitate efficient rapid deployment but also offer significant advantages in interpretability. Through experiments, this study demonstrates the potential of this approach to provide quick, reliable and effective real-time detection in surgical training environments.
AB - In laparoscopy surgical training and evaluation, real-time detection of surgical actions with interpretable outputs is crucial for automated and real-time instructional feedback and skill development. Such capability would enable development of machine guided training systems. This paper presents a rapid deployment approach utilizing automated machine learning methods, based on surgical action data collected from both experienced and trainee surgeons. The proposed approach effectively tackles the challenge of highly imbalanced class distributions, ensuring robust predictions across varying skill levels of surgeons. Additionally, our method partially incorporates model transparency, addressing the reliability requirements in medical applications. Compared to deep learning approaches, traditional machine learning models not only facilitate efficient rapid deployment but also offer significant advantages in interpretability. Through experiments, this study demonstrates the potential of this approach to provide quick, reliable and effective real-time detection in surgical training environments.
U2 - 10.48550/arXiv.2502.06407
DO - 10.48550/arXiv.2502.06407
M3 - Preprint
BT - An Automated Machine Learning Framework for Surgical Suturing Action Detection under Class Imbalance
PB - arXiv
ER -