IEEE J Biomed Health Inform. 2021 Sep;25(9):3554-3563. doi: 10.1109/JBHI.2021.3062002. Epub 2021 Sep 3.
Computer-aided skin cancer classification systems built with deep neural networks usually yield predictions based only on images of skin lesions. Despite presenting promising results, it is possible to achieve higher performance by taking into account patient demographics, which are important clues that human experts consider during skin lesion screening. In this article, we deal with the problem of combining images and metadata features using deep learning models applied to skin cancer classification. We propose the Metadata Processing Block (MetaBlock), a novel algorithm that uses metadata to support data classification by enhancing the most relevant features extracted from the images throughout the classification pipeline. We compared the proposed method with two other combination approaches: the MetaNet and one based on features concatenation. Results obtained for two different skin lesion datasets show that our method improves classification for all tested models and performs better than the other combination approaches in 6 out of 10 scenarios.
基于深度学习的计算机辅助皮肤癌分类系统通常仅根据皮肤损伤图像进行预测。尽管取得了很有前景的结果,但通过考虑患者人口统计学特征(人类专家在皮肤损伤筛查过程中考虑的重要线索),可以实现更高的性能。在本文中,我们处理了使用应用于皮肤癌分类的深度学习模型结合图像和元数据特征的问题。我们提出了元数据处理块(MetaBlock),这是一种新颖的算法,它使用元数据通过增强从图像中提取的与分类过程最相关的特征来支持数据分类。我们将提出的方法与另外两种组合方法进行了比较:MetaNet 和一种基于特征串联的方法。在两个不同的皮肤损伤数据集上获得的结果表明,我们的方法提高了所有测试模型的分类性能,并且在 10 个场景中的 6 个场景中优于其他组合方法。