A Deep Learning-Driven Inhalation Injury Grading Assistant Using Bronchoscopy Images
Journal:
arXiv
Published Date:
May 13, 2025
Abstract
Inhalation injuries present a challenge in clinical diagnosis and grading due
to Conventional grading methods such as the Abbreviated Injury Score (AIS)
being subjective and lacking robust correlation with clinical parameters like
mechanical ventilation duration and patient mortality. This study introduces a
novel deep learning-based diagnosis assistant tool for grading inhalation
injuries using bronchoscopy images to overcome subjective variability and
enhance consistency in severity assessment. Our approach leverages data
augmentation techniques, including graphic transformations, Contrastive
Unpaired Translation (CUT), and CycleGAN, to address the scarcity of medical
imaging data. We evaluate the classification performance of two deep learning
models, GoogLeNet and Vision Transformer (ViT), across a dataset significantly
expanded through these augmentation methods. The results demonstrate GoogLeNet
combined with CUT as the most effective configuration for grading inhalation
injuries through bronchoscopy images and achieves a classification accuracy of
97.8%. The histograms and frequency analysis evaluations reveal variations
caused by the augmentation CUT with distribution changes in the histogram and
texture details of the frequency spectrum. PCA visualizations underscore the
CUT substantially enhances class separability in the feature space. Moreover,
Grad-CAM analyses provide insight into the decision-making process; mean
intensity for CUT heatmaps is 119.6, which significantly exceeds 98.8 of the
original datasets. Our proposed tool leverages mechanical ventilation periods
as a novel grading standard, providing comprehensive diagnostic support.