Frontiers in Surgery (Nov 2022)

Automatic detection of foreign body objects in neurosurgery using a deep learning approach on intraoperative ultrasound images: From animal models to first in-human testing

  • Haley G. Abramson,
  • Eli J. Curry,
  • Griffin Mess,
  • Rasika Thombre,
  • Kelley M. Kempski-Leadingham,
  • Shivang Mistry,
  • Subhiksha Somanathan,
  • Laura Roy,
  • Nancy Abu-Bonsrah,
  • George Coles,
  • Joshua C. Doloff,
  • Joshua C. Doloff,
  • Henry Brem,
  • Henry Brem,
  • Nicholas Theodore,
  • Nicholas Theodore,
  • Judy Huang,
  • Judy Huang,
  • Amir Manbachi,
  • Amir Manbachi,
  • Amir Manbachi,
  • Amir Manbachi,
  • Amir Manbachi

DOI
https://doi.org/10.3389/fsurg.2022.1040066
Journal volume & issue
Vol. 9

Abstract

Read online

Objects accidentally left behind in the brain following neurosurgical procedures may lead to life-threatening health complications and invasive reoperation. One of the most commonly retained surgical items is the cotton ball, which absorbs blood to clear the surgeon’s field of view yet in the process becomes visually indistinguishable from the brain parenchyma. However, using ultrasound imaging, the different acoustic properties of cotton and brain tissue result in two discernible materials. In this study, we created a fully automated foreign body object tracking algorithm that integrates into the clinical workflow to detect and localize retained cotton balls in the brain. This deep learning algorithm uses a custom convolutional neural network and achieves 99% accuracy, sensitivity, and specificity, and surpasses other comparable algorithms. Furthermore, the trained algorithm was implemented into web and smartphone applications with the ability to detect one cotton ball in an uploaded ultrasound image in under half of a second. This study also highlights the first use of a foreign body object detection algorithm using real in-human datasets, showing its ability to prevent accidental foreign body retention in a translational setting.

Keywords