Towards Automated Melanoma Detection With Deep Learning: Data Purification and Augmentation

arXiv: Computer Vision and Pattern Recognition(2019)

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摘要
Melanoma is one of ten most common cancers in the US. Early detection is crucial for survival, but often the cancer is diagnosed in the fatal stage. Deep learning has the potential to improve cancer detection rates, but its applicability to melanoma detection is compromised by the limitations of the available skin lesion data bases, which are small, heavily imbalanced, and contain images with occlusions. We build deep-learning-based tools for data purification and augmentation to counter-act these limitations. The developed tools can be utilized in a deep learning system for lesion classification and we show how to build such system. The system heavily relies on the processing unit for removing image occlusions and the data generation unit, based on generative adversarial networks, for populating scarce lesion classes, or equivalently creating virtual patients with pre-defined types of lesions. We empirically verify our approach and show that incorporating these two units into melanoma detection system results in the superior performance over common baselines.
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关键词
automated melanoma detection,data purification,fatal stage,cancer detection rates,deep learning system,lesion classification,image occlusion removal,data generation unit,scarce lesion classes,skin lesion data bases,melanoma detection system,data augmentation,generative adversarial networks,virtual patients
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