An Enhanced Harmonic Densely Connected Hybrid Transformer Network Architecture for Chronic Wound Segmentation Utilising Multi-Colour Space Tensor Merging
Chronic wounds and associated complications present ever growing burdens for clinics and hospitals world wide. Venous, arterial, diabetic, and pressure wounds are becoming increasingly common globally. These conditions can result in highly debilitating repercussions for those affected, with limb amp...
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Zusammenfassung: | Chronic wounds and associated complications present ever growing burdens for
clinics and hospitals world wide. Venous, arterial, diabetic, and pressure
wounds are becoming increasingly common globally. These conditions can result
in highly debilitating repercussions for those affected, with limb amputations
and increased mortality risk resulting from infection becoming more common. New
methods to assist clinicians in chronic wound care are therefore vital to
maintain high quality care standards. This paper presents an improved HarDNet
segmentation architecture which integrates a contrast-eliminating component in
the initial layers of the network to enhance feature learning. We also utilise
a multi-colour space tensor merging process and adjust the harmonic shape of
the convolution blocks to facilitate these additional features. We train our
proposed model using wound images from light-skinned patients and test the
model on two test sets (one set with ground truth, and one without) comprising
only darker-skinned cases. Subjective ratings are obtained from clinical wound
experts with intraclass correlation coefficient used to determine inter-rater
reliability. For the dark-skin tone test set with ground truth, we demonstrate
improvements in terms of Dice similarity coefficient (+0.1221) and intersection
over union (+0.1274). Qualitative analysis showed high expert ratings, with
improvements of >3% demonstrated when comparing the baseline model with the
proposed model. This paper presents the first study to focus on darker-skin
tones for chronic wound segmentation using models trained only on wound images
exhibiting lighter skin. Diabetes is highly prevalent in countries where
patients have darker skin tones, highlighting the need for a greater focus on
such cases. Additionally, we conduct the largest qualitative study to date for
chronic wound segmentation. |
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DOI: | 10.48550/arxiv.2410.03359 |