Although deep convolutional neural networks (DCNNs) have achieved significant accuracy in skin lesion classification comparable or even superior to those of dermatologists, practical implementation of these models for skin cancer screening in low resource settings is hindered by their limitations in computational cost and training dataset. To overcome these limitations, we propose a low-cost and high-performance data augmentation strategy that includes two consecutive stages of augmentation search and network search. At the augmentation search stage, the augmentation strategy is optimized in the search space of Low-Cost-Augment (LCA) under the criteria of balanced accuracy (BACC) with 5-fold cross validation. At the network search stage, the DCNNs are fine-tuned with the full training set in order to select the model with the highest BACC. The efficiency of the proposed data augmentation strategy is verified on the HAM10000 dataset using EfficientNets as a baseline. With the proposed strategy, we are able to reduce the search space to 60 and achieve a high BACC of 0.853 by using a single DCNN model without external database, suitable to be implemented in mobile devices for DCNN-based skin lesion detection in low resource settings.
翻译:虽然深相神经网络(DCNN)在皮肤损伤分类方面已取得了可比较甚至优于皮肤学家的显著准确性,但在低资源环境下,这些皮肤癌筛查模型的实际实施由于在计算成本和培训数据集方面的局限性而受阻。为了克服这些局限性,我们提议了一项低成本和高性能的数据增强战略,其中包括两个连续的增强搜索和网络搜索阶段。在增强搜索阶段,根据平衡准确性标准(BACC),在低费用启动(LAC)的搜索空间中优化了增强战略,并有5倍的跨度验证。在网络搜索阶段,DCNNP与全套培训配合,以选择最高BACC的模型。拟议的数据增强战略的效率在HAM1000数据集上得到核实,使用高效网络作为基线。在拟议的战略下,我们能够将搜索空间减少到60个,并通过使用一个没有外部数据库的单一DCNNM模型实现0.853的高BACC。适合在低资源环境下基于DCN的皮肤检测移动装置中实施。