Publication | Open Access
An Intelligent Augmented Reality Training Framework for Neonatal Endotracheal Intubation
31
Citations
42
References
2020
Year
Unknown Venue
NeonatologyEngineeringNeonatal Endotracheal IntubationIntelligent Augmented RealityVideo InterpretationVirtual RealitySurgery SimulatorMachine VisionAssistive TechnologyComputer-assisted SurgeryNewborn MedicineImage GuidanceMedical Image ComputingDeep LearningAugmented RealityComputer VisionNeonatal ResuscitationEye TrackingPediatricsExtended RealityMedicineEmergency Medicine
Neonatal Endotracheal Intubation (ETI) is a critical resuscitation skill that requires tremendous practice of trainees before clinical exposure. However, current manikin-based training regimen is ineffective in providing satisfactory real-time procedural guidance for accurate assessment due to the lack of see-through visualization within the manikin. The training efficiency is further reduced by the limited availability of expert instructors, which inevitably results in a long learning curve for trainees. To this end, we propose an intelligent Augmented Reality (AR) training framework that provides trainees with a complete visualization of the ETI procedure for real-time guidance and assessment. Specifically, the proposed framework is capable of capturing the motions of the laryngoscope and the manikin and offer 3D see-through visualization rendered to the head-mounted display (HMD). Furthermore, an attention-based Convolutional Neural Network (CNN) model is developed to automatically assess the ETI performance from the captured motions as well as identify regions of motions that significantly contribute to the performance evaluation. Lastly, augmented user-friendly feedback is delivered with interpretable results with the ETI scoring rubric through the color-coded motion trajectory that classifies highlighted regions that need more practice. The classification accuracy of our machine learning model is 84.6%.
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