WoundAmbit: Bridging State-of-the-Art Semantic Segmentation and Real-World Wound Care
Journal:
arXiv
Published Date:
Apr 8, 2025
Abstract
Chronic wounds affect a large population, particularly the elderly and
diabetic patients, who often exhibit limited mobility and co-existing health
conditions. Automated wound monitoring via mobile image capture can reduce
in-person physician visits by enabling remote tracking of wound size. Semantic
segmentation is key to this process, yet wound segmentation remains
underrepresented in medical imaging research. To address this, we benchmark
state-of-the-art deep learning models from general-purpose vision, medical
imaging, and top methods from public wound challenges. For fair comparison, we
standardize training, data augmentation, and evaluation, conducting
cross-validationto minimize partitioning bias. We also assess real-world
deployment aspects, including generalization to an out-of-distribution wound
dataset, computational efficiency, and interpretability. Additionally, we
propose a reference object-based approach to convert AI-generated masks into
clinically relevant wound size estimates, and evaluate this, along with mask
quality, for the best models based on physician assessments. Overall, the
transformer-based TransNeXt showed the highest levels of generalizability.
Despite variations in inference times, all models processed at least one image
per second on the CPU, which is deemed adequate for the intended application.
Interpretability analysis typically revealed prominent activations in wound
regions, emphasizing focus on clinically relevant features. Expert evaluation
showed high mask approval for all analyzed models, with VWFormer and ConvNeXtS
backbone performing the best. Size retrieval accuracy was similar across
models, and predictions closely matched expert annotations. Finally, we
demonstrate how our AI-driven wound size estimation framework, WoundAmbit, can
be integrated into a custom telehealth system. Our code will be made available
on GitHub upon publication.