Abstract

Ultrasound-guided regional anesthesia involves visualizing sono-anatomy to guide needle insertion and the perineural injection of local anesthetic. Anatomical knowledge and recognition of anatomical structures on ultrasound are known to be imperfect amongst anesthesiologists. This investigation evaluates the performance of an assistive artificial intelligence (AI) system in aiding the identification of anatomical structures on ultrasound. Three independent experts in regional anesthesia reviewed 40 ultrasound scans of seven body regions. Unmodified ultrasound videos were presented side-by-side with AI-highlighted ultrasound videos. Experts rated the overall system performance, ascertained whether highlighting helped identify specific anatomical structures, and provided opinion on whether it would help confirm the correct ultrasound view to a less experienced practitioner. Two hundred and seventy-five assessments were performed (five videos contained inadequate views); mean highlighting scores ranged from 7.87 to 8.69 (out of 10). The Kruskal-Wallis H-test showed a statistically significant difference in the overall performance rating (χ2 [6]=36.719, asymptotic p< 0.001); regions containing a prominent vascular landmark ranked most highly. AI-highlighting was helpful in identifying specific anatomical structures in 1330/1334 cases (99.7%) and for confirming the correct ultrasound view in 273/275 scans (99.3%). These data demonstrate the clinical utility of an assistive AI system in aiding the identification of anatomical structures on ultrasound during ultrasound-guided regional anesthesia. Whilst further evaluation must follow, such technology may present an opportunity to enhance clinical practice and energize the important field of clinical anatomy amongst clinicians.

Highlights

  • Ultrasound-guided regional anesthesia (UGRA) involves visualizing sono-anatomy in real time to guide needle insertion and the subsequent perineural deposition of local anesthetic

  • Five of the 40 erector spinae plane ultrasound videos were deemed not to contain clinically relevant images; the analysis of this region was based on responses when assessing the remaining 35 videos

  • This paper reports a preliminary evaluation of an assistive artificial intelligence (AI) system which facilitates the recognition of anatomical structures on ultrasound for the purposes of UGRA

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Summary

Introduction

Ultrasound-guided regional anesthesia (UGRA) involves visualizing sono-anatomy in real time to guide needle insertion and the subsequent perineural deposition of local anesthetic. This provides selective blockade of sensory and motor stimuli conveyed by peripheral nerves in order to produce anesthesia and/or analgesia of the affected region. Its use has several potential advantages, including visualization of the relevant anatomical structures (Henderson & Dolan, 2016; Hutton et al, 2018). Anatomical knowledge amongst anesthesiologists may be flawed, as demonstrated by the following report on the Fellowship of the Royal College of Anesthetists (FRCA) examination (Tremlett, 2014):

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