首页 /研究 /Systematic review of machine learning applications using nonoptical motion tracking in surgery
SURGICAL

Systematic review of machine learning applications using nonoptical motion tracking in surgery

Teona Z. Carciumaru, Wichor M. Bramer, Jenny Dankelman, Chirag Raman, Clemens M.F. Dirven, Maryam Gholinejad, Dalibor Vasilic

发表年份
2025
引用次数
14
访问权限
开放获取

摘要

This systematic review explores machine learning (ML) applications in surgical motion analysis using non-optical motion tracking systems (NOMTS), alone or with optical methods. It investigates objectives, experimental designs, model effectiveness, and future research directions. From 3632 records, 84 studies were included, with Artificial Neural Networks (38%) and Support Vector Machines (11%) being the most common ML models. Skill assessment was the primary objective (38%). NOMTS used included internal device kinematics (56%), electromagnetic (17%), inertial (15%), mechanical (11%), and electromyography (1%) sensors. Surgical settings were robotic (60%), laparoscopic (18%), open (16%), and others (6%). Procedures focused on bench-top tasks (67%), clinical models (17%), clinical simulations (9%), and non-clinical simulations (7%). Over 90% accuracy was achieved in 36% of studies. Literature shows NOMTS and ML can enhance surgical precision, assessment, and training. Future research should advance ML in surgical environments, ensure model interpretability and reproducibility, and use larger datasets for accurate evaluation.

关键词

InterpretabilityComputer scienceKinematicsMotion (physics)Artificial intelligenceSupport vector machineMatch movingMachine learningTracking (education)Simulation

相关论文

查看 SURGICAL 分类全部论文