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Systematic approach for content and construct validation: Case studies for arthroscopy and laparoscopy

机译:内容和构建验证的系统方法:关节镜和腹腔镜检查的案例研究

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Background: In minimally invasive surgery, there are several challenges for training novice surgeons, such as limited field-of-view and unintuitive hand-eye coordination due to performing the operation according to video feedback. Virtual reality (VR) surgical simulators are a novel, risk-free, and cost-effective way to train and assess surgeons. Methods: We developed VR-based simulations to accurately assess and quantify performance of two VR simulations: gentleness simulation for laparoscopy and rotator cuff repair for arthroscopy. We performed content and construct validity studies for the simulators. In our analysis, we systematically rank surgeons using data mining classification techniques. Results: Using classification algorithms such as K-Nearest Neighbors, Support Vector Machines, and Logistic Regression we have achieved near 100% accuracy rate in identifying novices, and up to an 83% accuracy rate identifying experts. Sensitivity and specificity were up to 1.0 and 0.9, respectively. Conclusion: Developed methodology to measure and differentiate the highly ranked surgeonsand less-skilled surgeons.
机译:背景:在微创手术中,培训新手外科医生面临着一些挑战,例如视野有限,以及根据视频反馈进行手术导致手眼协调不直观。虚拟现实(VR)手术模拟器是培训和评估外科医生的一种新颖、无风险且经济高效的方法。方法:我们开发了基于虚拟现实的模拟,以准确评估和量化两种虚拟现实模拟的性能:腹腔镜下的轻柔模拟和关节镜下的肩袖修复。我们对模拟器进行了内容和结构效度研究。在我们的分析中,我们使用数据挖掘分类技术对外科医生进行了系统的排名。结果:使用K-近邻、支持向量机和Logistic回归等分类算法,我们在识别新手方面取得了接近100%的准确率,识别专家的准确率高达83%。敏感性和特异性分别高达1.0和0.9。结论:开发了测量和区分高级别外科医生和低技能外科医生的方法。

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