Domain shifts in dermoscopic skin cancer datasets: Evaluation of essential limitations for clinical translation
Katharina Fogelberg, Sireesha Chamarthi, Roman C. Maron, Julia, Niebling, Titus J. Brinker

TL;DR
This paper investigates the impact of domain shifts on dermoscopic skin cancer classification models, highlighting the importance of datasets that accurately represent real-world variability for clinical translation.
Contribution
It introduces a new approach to group and quantify domain shifts in dermoscopic images, and evaluates the effectiveness of domain adaptation techniques.
Findings
Domain shifts are prevalent in dermoscopic datasets.
Quantification measures confirm distinct domain differences.
Unsupervised domain adaptation improves model performance.
Abstract
The limited ability of Convolutional Neural Networks to generalize to images from previously unseen domains is a major limitation, in particular, for safety-critical clinical tasks such as dermoscopic skin cancer classification. In order to translate CNN-based applications into the clinic, it is essential that they are able to adapt to domain shifts. Such new conditions can arise through the use of different image acquisition systems or varying lighting conditions. In dermoscopy, shifts can also occur as a change in patient age or occurence of rare lesion localizations (e.g. palms). These are not prominently represented in most training datasets and can therefore lead to a decrease in performance. In order to verify the generalizability of classification models in real world clinical settings it is crucial to have access to data which mimics such domain shifts. To our knowledge no…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management · Nonmelanoma Skin Cancer Studies · AI in cancer detection
