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An endotracheal intubation confirmation system based on carina image detection: a proof of concept

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Abstract

In this paper, a novel system for automatic confirmation of endotracheal intubation is proposed. The system comprises a miniature CMOS sensor and electric wires attached to a rigid stylet. Video signals are continuously acquired and processed by the algorithm implemented on a PC/DSP. The system is based on detection of the carina image as an anatomical landmark of correct tube positioning and it thus utilizes direct visual cues. Detection of the carina is performed based on unsupervised clustering, using a greedy-Gaussian mixture framework. The performance of the proposed system was initially evaluated using a mannequin model. A scientific prototype was assembled and used to perform repeated intubations on the model and collect a database of video signals which were processed off-line. The videos were categoried by a medical professional into carina, upper-trachea, and esophagus. An accuracy of 100% was achieved in discriminating between the carina and other anatomical structures including esophagus and upper-trachea. As an additional validation, the system was tested using a dataset of 231 video images recorded from five human subjects during intubation. The system correctly classified 120 out of 125 non-carina images (i.e. a sensitivity of 96.0%), and 100 out of 106 carina images (i.e. a specificity 94.3%). Using a 10th-order median filter, applied on the frame-based classification results, a 100% accuracy rate was obtained.

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Notes

  1. University of Florida: http://vam.anest.ufl.edu/airwaydevice/videolibrary/index.html and http://www.youtube.com

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Acknowledgments

The author wishes to thank Yaron Daniely, Dr. Micha Shamir and Dudu Daniely for their efforts and continuous contribution to the project. The author is also grateful to the anonymous reviewers whose comments helped to substantially improve the paper.

Conflict of interest

The author is the inventor of the system presented in this paper, founder and owner of Tube-Eye Medical Ltd. which aims at commercializing the invention.

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Correspondence to Dror Lederman.

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Lederman, D. An endotracheal intubation confirmation system based on carina image detection: a proof of concept. Med Biol Eng Comput 49, 75–83 (2011). https://doi.org/10.1007/s11517-010-0680-4

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  • DOI: https://doi.org/10.1007/s11517-010-0680-4

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