Hang-Ling Wu, Dailen C. Brown, Scarlett R. Miller, Jason E. Moore
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引用次数: 0
摘要
开发了一种机器学习(ML)目标检测算法,以取代原来的基于颜色的图像检测算法,用于Dynamic Haptic Robotic Trainer Plus (DHRT+)。该图像识别系统用于中心静脉置管(CVC)的医学培训。这种图像跟踪允许训练系统在训练过程中向用户提供准确的性能反馈。使用训练数据开发并评估了ML对象检测算法。结果表明,增加训练数据集可以提高检测系统的准确率。该系统的总体准确率为90.9%,召回率为81.69%。这个新的ML模型将被应用到DHRT+系统中,并用于培训住院医师。
DEPLOYING COMPUTER VISION DETECTION METHOD IN MEDICAL SIMULATION TRAINING USING MACHINE LEARNING
A machine learning (ML) object detection algorithm was developed to replace the original color-based image detection algorithm for the Dynamic Haptic Robotic Trainer Plus (DHRT+). This image recognition system was used for medical training in Central Venous Catheterization (CVC). This image tracking allows for the training system to provide accurate performance feedback to the user during the training process. The ML object detection algorithm was developed and evaluated using training data. The results indicate that increasing the training data set improves the detection system’s accuracy. The system was found to have an overall precision rate of 90.9% and a recall rate of 81.69%. This new ML model will be implemented into the DHRT+ system and used to train medical residents.