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Segmentation of Both Diseased and Healthy Skin From Clinical Photographs in a Primary Care Setting

机译:从基层医疗机构的临床照片对患病皮肤和健康皮肤进行细分

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This work presents the first segmentation study of both diseased and healthy skin in standard camera photographs from a clinical environment. Challenges arise from varied lighting conditions, skin types, backgrounds, and pathological states. For study, 400 clinical photographs (with skin segmentation masks) representing various pathological states of skin are retrospectively collected from a primary care network. 100 images are used for training and fine-tuning, and 300 are used for evaluation. This distribution between training and test partitions is chosen to reflect the difficulty in amassing large quantities of labeled data in this domain. A deep learning approach is used, and 3 public segmentation datasets of healthy skin are collected to study the potential benefits of pretraining. Two variants of U-Net are evaluated: U-Net and Dense Residual U-Net. We find that Dense Residual U-Nets have a 7.8% improvement in Jaccard, compared to classical U-Net architectures (0.55 vs. 0.51 Jaccard), for direct transfer, where fine-tuning data is not utilized. However, U-Net outperforms Dense Residual U-Net for both direct training (0.83 vs. 0.80) and fine-tuning (0.89 vs. 0.88). The stark performance improvement with fine-tuning compared to direct transfer and direct training emphasizes both the need for adequate representative data of diseased skin, and the utility of other publicly available data sources for this task.
机译:这项工作在临床环境的标准相机照片中提出了对患病皮肤和健康皮肤的第一个细分研究。挑战来自变化的光照条件,皮肤类型,背景和病理状态。为了研究,从初级保健网络回顾性地收集了代表皮肤各种病理状态的400张临床照片(带有皮肤分割面罩)。 100张图像用于训练和微调,300张图像用于评估。选择训练分区和测试分区之间的这种分布以反映在该域中积累大量标记数据的困难。使用深度学习方法,并收集了3个健康皮肤的公开细分数据集,以研究预训练的潜在好处。对U-Net的两个变体进行了评估:U-Net和密集D-Residual U-Net。我们发现,与传统的U-Net架构(0.55 vs. 0.51 Jaccard)相比,Dense Residual U-Net在Jaccard上有7.8%的改进,可直接传输,而无需使用微调数据。但是,在直接训练(0.83 vs. 0.80)和微调(0.89 vs. 0.88)方面,U-Net的性能都优于Dense Residual U-Net。与直接转移和直接培训相比,通过微调可以显着提高性能,这不仅需要对患病皮肤有足够的代表性数据,而且还需要使用其他公共可用数据源来完成此任务。

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