학술논문

An SVM-based discrimination method of tracheal-intubation skill between experts and novices
Document Type
Conference
Source
2018 12th France-Japan and 10th Europe-Asia Congress on Mechatronics Mechatronics, 2018 12th France-Japan and 10th Europe-Asia Congress on. :401-404 Sep, 2018
Subject
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Transportation
Medical services
Support vector machines
Acceleration
Angular velocity
Machine learning
Electron tubes
Standards
Tracheal intubation
Classification
SVM
Language
Abstract
Our research aims at objective evaluation in endotracheal intubation techniques. We have aimed at the establishment of decision methods of tracheal intubation skill level of medical doctors. As a preliminary approach to achieving the goal, we proposed a discrimination method between experts and novices. We obtained the doctor’s full-body motion data by using a motion capture suit. This motion data were discriminated by a machine learning technique, i.e., an SVM classifier. Considering the importance of the movement of tracheal intubation, we employed the velocity, acceleration, and angular velocity as the feature vector for the SVM. As a result, we could classify with an average accuracy rate of 97.6%. It shows the effectiveness of our proposed method.