Classification, registration and segmentation of ear canal impressions using convolutional neural networks

Med Image Anal. 2024 May:94:103152. doi: 10.1016/j.media.2024.103152. Epub 2024 Mar 21.

Abstract

Today, fitting bespoke hearing aids involves injecting silicone into patients' ears to produce ear canal molds. These are subsequently 3D scanned to create digital ear canal impressions. However, before digital impressions can be used they require a substantial amount of effort in manual 3D editing. In this article, we present computational methods to pre-process ear canal impressions. The aim is to create automation tools to assist the hearing aid design, manufacturing and fitting processes as well as normalizing anatomical data to assist the study of the outer ear canal's morphology. The methods include classifying the handedness of the impression into left and right ear types, orienting the geometries onto the same coordinate system sense, and removing extraneous artifacts introduced by the silicone mold. We investigate the use of convolutional neural networks for performing these semantic tasks and evaluate their accuracy using a dataset of 3000 ear canal impressions. The neural networks proved highly effective at performing these tasks with 95.8% adjusted accuracy in classification, 92.3% within 20° angular error in registration and 93.4% intersection over union in segmentation.

Keywords: Classification; Ear canal impression; Registration; Segmentation.

MeSH terms

  • Ear Canal* / anatomy & histology
  • Hearing Aids*
  • Humans
  • Neural Networks, Computer
  • Silicones

Substances

  • Silicones