Point-wise spatial network for identifying carcinoma at the upper digestive and respiratory tract

BMC Med Imaging. 2023 Sep 25;23(1):140. doi: 10.1186/s12880-023-01076-5.

Abstract

Problem: Artificial intelligence has been widely investigated for diagnosis and treatment strategy design, with some models proposed for detecting oral pharyngeal, nasopharyngeal, or laryngeal carcinoma. However, no comprehensive model has been established for these regions.

Aim: Our hypothesis was that a common pattern in the cancerous appearance of these regions could be recognized and integrated into a single model, thus improving the efficacy of deep learning models.

Methods: We utilized a point-wise spatial attention network model to perform semantic segmentation in these regions.

Results: Our study demonstrated an excellent outcome, with an average mIoU of 86.3%, and an average pixel accuracy of 96.3%.

Conclusion: The research confirmed that the mucosa of oral pharyngeal, nasopharyngeal, and laryngeal regions may share a common appearance, including the appearance of tumors, which can be recognized by a single artificial intelligence model. Therefore, a deep learning model could be constructed to effectively recognize these tumors.

Keywords: Artificial intelligence; Hypopharynx; Larynx; Nasopharynx; Oral pharynx.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Artificial Intelligence*
  • Carcinoma*
  • Humans
  • Respiratory System
  • Semantics