Early Melanoma Diagnosis with Sequential Dermoscopic Images
Zhen Yu, Jennifer Nguyen, Toan D Nguyen, John Kelly, Catriona Mclean,, Paul Bonnington, Lei Zhang, Victoria Mar, Zongyuan Ge

TL;DR
This paper introduces a novel framework for early melanoma detection using sequential dermoscopic images, leveraging temporal changes to improve accuracy and enable earlier diagnosis compared to existing single-image methods.
Contribution
The study develops a spatio-temporal neural network that analyzes aligned lesion images and their differences over time, outperforming existing models and clinicians in early melanoma diagnosis.
Findings
Model outperforms other sequence models in accuracy.
Achieves higher diagnostic accuracy than dermatologists.
Enables earlier detection of melanoma in follow-up images.
Abstract
Dermatologists often diagnose or rule out early melanoma by evaluating the follow-up dermoscopic images of skin lesions. However, existing algorithms for early melanoma diagnosis are developed using single time-point images of lesions. Ignoring the temporal, morphological changes of lesions can lead to misdiagnosis in borderline cases. In this study, we propose a framework for automated early melanoma diagnosis using sequential dermoscopic images. To this end, we construct our method in three steps. First, we align sequential dermoscopic images of skin lesions using estimated Euclidean transformations, extract the lesion growth region by computing image differences among the consecutive images, and then propose a spatio-temporal network to capture the dermoscopic changes from aligned lesion images and the corresponding difference images. Finally, we develop an early diagnosis module to…
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