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Can self-training identify suspicious ugly duckling lesions?

机译:自我训练可以识别可疑丑陋的小鸭病变吗?

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One commonly used clinical approach towards detecting melanomas recognises the existence of Ugly Duckling nevi, or skin lesions which look different to the other lesions on the same patient. An automatic method of detecting and analysing these lesions would help to standardize studies, compared with manual screening methods. However, it is difficult to obtain expertly-labelled images for ugly duckling lesions. We therefore propose to use self-supervised machine learning to automatically detect outlier lesions. We first automatically detect and extract all the lesions from a wide-field skin image, and calculate an embedding for each detected lesion in a patient image, based on automatically identified features. These embeddings are then used to calculate the L2 distances as a way to measure dissimilarity. Using this deep learning method, Ugly Ducklings are identified as outliers which should deserve more attention from the examining physician. We evaluate through comparison with dermatologists, and achieve a sensitivity rate of 72.1% and diagnostic accuracy of 94.2% on the held-out test set.
机译:一种常用的临床方法来检测黑色素瘤的识别出存在丑陋的鸭绒内华,或皮肤病变,看起来与同一患者的其他病变不同。与手动筛选方法相比,检测和分析这些病变的自动检测和分析方法将有助于标准化研究。然而,很难获得丑陋的鸭病变的专业标记的图像。因此,我们建议使用自我监督机器学习自动检测异常值。我们首先自动检测和提取来自宽场肤色的所有病变,并根据自动识别的特征计算患者图像中的每个检测到的病变的嵌入。然后使用这些嵌入式来计算L2距离作为测量异化的方式。使用这种深度学习方法,丑陋的小鸭被确定为异常值,这些异常值应该得到审查的医生更多的关注。我们通过与皮肤科医生进行比较来评估,在保持试验组上达到72.1%和诊断准确性的敏感性率。

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