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基于机器学习的超声引导介入操作教学反馈自动化技术技能评估方法。

Machine learning methods for automated technical skills assessment with instructional feedback in ultrasound-guided interventions.

机构信息

Laboratory for Percutaneous Surgery, School of Computing, Queen's University, Kingston, ON, Canada.

Department of Emergency Medicine, School of Medicine, Queen's University, Kingston, ON, Canada.

出版信息

Int J Comput Assist Radiol Surg. 2019 Nov;14(11):1993-2003. doi: 10.1007/s11548-019-01977-3. Epub 2019 Apr 20.

Abstract

OBJECTIVE

Currently, there is a worldwide shift toward competency-based medical education. This necessitates the use of automated skills assessment methods during self-guided interventions training. Making assessment methods that are transparent and configurable will allow assessment to be interpreted into instructional feedback. The purpose of this work is to develop and validate skills assessment methods in ultrasound-guided interventions that are transparent and configurable.

METHODS

We implemented a method based upon decision trees and a method based upon fuzzy inference systems for technical skills assessment. Subsequently, we validated these methods for their ability to predict scores of operators on a 25-point global rating scale in ultrasound-guided needle insertions and their ability to provide useful feedback for training.

RESULTS

Decision tree and fuzzy rule-based assessment performed comparably to state-of-the-art assessment methods. They produced median errors (on a 25-point scale) of 1.7 and 1.8 for in-plane insertions and 1.5 and 3.0 for out-of-plane insertions, respectively. In addition, these methods provided feedback that was useful for trainee learning. Decision tree assessment produced feedback with median usefulness 7 out of 7; fuzzy rule-based assessment produced feedback with median usefulness 6 out of 7.

CONCLUSION

Transparent and configurable assessment methods are comparable to the state of the art and, in addition, can provide useful feedback. This demonstrates their value in self-guided interventions training curricula.

摘要

目的

目前,全球范围内正在向基于能力的医学教育转变。这就需要在自主干预培训中使用自动化技能评估方法。使用透明且可配置的评估方法将允许将评估结果转化为教学反馈。这项工作的目的是开发和验证超声引导介入中透明且可配置的技能评估方法。

方法

我们实现了一种基于决策树和模糊推理系统的技术技能评估方法。随后,我们验证了这些方法在预测超声引导针插入术操作人员 25 分制总评分方面的能力,以及在提供有用培训反馈方面的能力。

结果

决策树和基于模糊规则的评估与最先进的评估方法表现相当。它们在平面内插入时的中位数误差(25 分制)分别为 1.7 和 1.8,在平面外插入时的中位数误差分别为 1.5 和 3.0。此外,这些方法提供了对学员学习有用的反馈。决策树评估的反馈有用性中位数为 7 分(满分 7 分);基于模糊规则的评估的反馈有用性中位数为 6 分(满分 7 分)。

结论

透明且可配置的评估方法与最先进的方法相当,并且可以提供有用的反馈。这证明了它们在自主干预培训课程中的价值。

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