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Providing Automated Real-Time Technical Feedback for Virtual Reality Based Surgical Training: Is the Simpler the Better?

机译:为基于虚拟现实的手术培训提供自动实时技术反馈:越简单越好?

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In surgery, where mistakes have the potential for dire consequences, proper training plays a crucial role. Surgical training has traditionally relied upon experienced surgeons mentoring trainees through cadaveric dissection and operating theatre practice. However, with the growing demand for more surgeons and more efficient training programs, it has become necessary to employ supplementary forms of training such as virtual reality simulation. However, the use of such simulations as autonomous training platforms is limited by the extent to which they can provide automated performance feedback. Recent work has focused on overcoming this issue by developing algorithms to provide feedback that emulates the advice of human experts. These algorithms can mainly be categorized into rule-based and machine learning based methods, and they have typically been validated through user studies against controls that received no feedback. To our knowledge, no investigations into the performance of the two types of feedback generation methods in comparison to each other have so far been conducted. To this end, we introduce a rule-based method of providing technical feedback in virtual reality simulation-based temporal bone surgery, implement a machine learning based method that has been proven to outperform other similar methods, and compare their performance in teaching surgical skills in practice through a user study. We show that simpler rule-based methods can be equally or more effective in teaching surgical skills when compared to more complex methods of feedback generation.
机译:在外科手术中,错误有可能带来可怕的后果,正确的培训起着至关重要的作用。传统上,外科手术培训依靠经验丰富的外科医生通过尸体解剖和手术室实践来指导受训者。但是,随着对更多外科医生和更有效的培训计划的需求的增长,有必要采用补充形式的培训,例如虚拟现实仿真。但是,此类模拟作为自主训练平台的使用受到它们可以提供自动性能反馈的程度的限制。最近的工作集中在通过开发算法来提供模仿人类专家建议的反馈来克服这一问题。这些算法主要可以分为基于规则的方法和基于机器学习的方法,并且通常已通过针对未收到反馈的控件的用户研究进行了验证。据我们所知,到目前为止,尚未对这两种类型的反馈生成方法的性能进行比较。为此,我们介绍了一种基于规则的方法,可在基于虚拟现实仿真的颞骨手术中提供技术反馈,实施一种基于机器学习的方法,该方法已被证明优于其他类似方法,并比较了它们在教授外科技能方面的表现。通过用户研究进行练习。我们显示,与更复杂的反馈生成方法相比,更简单的基于规则的方法在教授手术技能方面可以同等或更有效。

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