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Evaluating Deep Neural Networks Trained on Clinical Images in Dermatology with the Fitzpatrick 17k Dataset

机译:用FITZPATRICK 17K DATASET评估深度神经网络培训训练皮肤科临床图像

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How does the accuracy of deep neural network models trained to classify clinical images of skin conditions vary across skin color? While recent studies demonstrate computer vision models can serve as a useful decision support tool in healthcare and provide dermatologist-level classification on a number of specific tasks, darker skin is under-represented in the data. Most publicly available data sets do not include Fitzpatrick skin type labels. We annotate 16,577 clinical images sourced from two dermatology atlases with Fitzpatrick skin type labels and open-source these annotations. Based on these labels, we find that there are significantly more images of light skin types than dark skin types in this dataset. We train a deep neural network model to classify 114 skin conditions and find that the model is most accurate on skin types similar to those it was trained on. In addition, we evaluate how an algorithmic approach to identifying skin tones, individual typology angle, compares with Fitzpatrick skin type labels annotated by a team of human labelers.
机译:深神经网络模型的准确性如何培训,以对皮肤状况的临床图像进行分类,呈现肤色的颜色变化?虽然最近的研究表明了计算机视觉模型可以作为医疗保健的有用决策支持工具,并为许多特定任务提供皮肤科医生级分类,在数据中暗示了较暗的皮肤。大多数公开的数据集不包括Fitzpatrick皮肤类型标签。我们注释了16,577次临床图像,采用Fitzpatrick皮肤类型标签和开源这些注释。基于这些标签,我们发现在该数据集中的暗皮肤类型的浅色皮肤类型的图像显着更多。我们训练深度神经网络模型来分类114个皮肤状况,并发现该模型最准确于类似于它培训的皮肤类型。此外,我们评估算法方法如何识别肤色,单个类型的角度,与人类贴标队员团队注释的Fitzpatrick皮肤型标签相比。

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