Scientific Reports (Aug 2024)

Automated diagnosis of adenoid hypertrophy with lateral cephalogram in children based on multi-scale local attention

  • Yanying Rao,
  • Qiuyun Zhang,
  • Xiaowei Wang,
  • Xiaoling Xue,
  • Wenjing Ma,
  • Lin Xu,
  • Shuli Xing

DOI
https://doi.org/10.1038/s41598-024-69827-0
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 10

Abstract

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Abstract Adenoid hypertrophy can lead to adenoidal mouth breathing, which can result in “adenoid face” and, in severe cases, can even lead to respiratory tract obstruction. The Fujioka ratio method, which calculates the ratio of adenoid (A) to nasopharyngeal (N) space in an adenoidal-cephalogram (A/N), is a well-recognized and effective technique for detecting adenoid hypertrophy. However, this process is time-consuming and relies on personal experience, so a fully automated and standardized method needs to be designed. Most of the current deep learning-based methods for automatic diagnosis of adenoids are CNN-based methods, which are more sensitive to features similar to adenoids in lateral views and can affect the final localization results. In this study, we designed a local attention-based method for automatic diagnosis of adenoids, which takes AdeBlock as the basic module, fuses the spatial and channel information of adenoids through two-branch local attention computation, and combines the downsampling method without losing spatial information. Our method achieved mean squared error (MSE) 0.0023, mean radial error (MRE) 1.91, and SD (standard deviation) 7.64 on the three hospital datasets, outperforming other comparative methods.