The initial assessment of skin lesions is typically based on dermoscopic images. As this is a difficult and time-consuming task, machine learning methods using dermoscopic images have been proposed to assist human experts. Other approaches have studied electrical impedance spectroscopy (EIS) as a basis for clinical decision support systems. Both methods represent different ways of measuring skin lesion properties as dermoscopy relies on visible light and EIS uses electric currents. Thus, the two methods might carry complementary features for lesion classification. Therefore, we propose joint deep learning models considering both EIS and dermoscopy for melanoma detection. For this purpose, we first study machine learning methods for EIS that incorporate domain knowledge and previously used heuristics into the design process. As a result, we propose a recurrent model with state-max-pooling which automatically learns the relevance of different EIS measurements. Second, we combine this new model with different convolutional neural networks that process dermoscopic images. We study ensembling approaches and also propose a cross-attention module guiding information exchange between the EIS and dermoscopy model. In general, combinations of EIS and dermoscopy clearly outperform models that only use either EIS or dermoscopy. We show that our attention-based, combined model outperforms other models with specificities of 34.4% (CI 31.3-38.4), 34.7% (CI 31.0-38.8) and 53.7% (CI 50.1-57.6) for dermoscopy, EIS and the combined model, respectively, at a clinically relevant sensitivity of 98%.
翻译:对皮肤损伤的初步评估通常基于温度3838的图象。由于这是一项困难和耗时的任务,因此建议采用使用温度38的图象的机器学习方法来帮助人类专家。其他方法研究了作为临床决策支持系统基础的阻碍电阻光谱学(EIS),这两种方法都代表了测量皮肤损伤特性的不同方法,因为脱温镜像依靠可见光,而EIS使用电流。因此,两种方法可能具有腐蚀分类的互补特征。因此,我们建议采用考虑到EIS和色素检测的体温检查的50种深度学习模型。为此目的,我们首先为EIS研究将域知识及以前使用的超光电学作为临床决定支持系统的基础的机器学习方法。结果,我们建议采用一种经常性模型,用状态-负载模型,自动了解不同EIS测量值的相关性。因此,我们将这一新模型与不同的电流模型结合起来,处理以温度为基础的图象。 因此,我们研究各种方法,并提议一个交叉的模块,用以指导 EIS 和 demodal Exmal 模型之间的信息交换。