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Review
. 2023 Oct 1;137(4):830-840.
doi: 10.1213/ANE.0000000000006679. Epub 2023 Sep 5.

Machine Vision and Image Analysis in Anesthesia: Narrative Review and Future Prospects

Affiliations
Review

Machine Vision and Image Analysis in Anesthesia: Narrative Review and Future Prospects

Hannah Lonsdale et al. Anesth Analg. .

Abstract

Machine vision describes the use of artificial intelligence to interpret, analyze, and derive predictions from image or video data. Machine vision-based techniques are already in clinical use in radiology, ophthalmology, and dermatology, where some applications currently equal or exceed the performance of specialty physicians in areas of image interpretation. While machine vision in anesthesia has many potential applications, its development remains in its infancy in our specialty. Early research for machine vision in anesthesia has focused on automated recognition of anatomical structures during ultrasound-guided regional anesthesia or line insertion; recognition of the glottic opening and vocal cords during video laryngoscopy; prediction of the difficult airway using facial images; and clinical alerts for endobronchial intubation detected on chest radiograph. Current machine vision applications measuring the distance between endotracheal tube tip and carina have demonstrated noninferior performance compared to board-certified physicians. The performance and potential uses of machine vision for anesthesia will only grow with the advancement of underlying machine vision algorithm technical performance developed outside of medicine, such as convolutional neural networks and transfer learning. This article summarizes recently published works of interest, provides a brief overview of techniques used to create machine vision applications, explains frequently used terms, and discusses challenges the specialty will encounter as we embrace the advantages that this technology may bring to future clinical practice and patient care. As machine vision emerges onto the clinical stage, it is critically important that anesthesiologists are prepared to confidently assess which of these devices are safe, appropriate, and bring added value to patient care.

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Conflict of interest statement

The authors declare no conflicts of interest.

Figures

Figure 1.
Figure 1.
Schematic diagram of a real-time machine vision system. Abbreviation: ML, machine learning; MRI, magnetic resonance imaging; CT, computed tomography.
Figure 2.
Figure 2.
Stages of perioperative journey with the potential to be enhanced by machine vision. Abbreviations: US, ultrasound; IV, intravenous; ECG, electrocardiograph; CXR, chest radiograph; ETT, endotracheal tube.

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