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Bulk Production Augmentation Towards Explainable Melanoma Diagnosis

机译:散装生产增强可解释的黑色素瘤诊断

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Although highly accurate automated diagnostic techniques for melanoma have been reported, the realization of a system capable of providing diagnostic evidence based on medical indices remains an open issue because of difficulties in obtaining reliable training data. In this paper, we propose bulk production augmentation (BPA) to generate high-quality, diverse pseudo-skin tumor images with the desired structural malignant features for additional training images from a limited number of labeled images. The proposed BPA acts as an effective data augmentation in constructing the feature detector for the atypical pigment network (APN), which is a key structure in melanoma diagnosis. Experiments show that training with images generated by our BPA largely boosts the APN detection performance by 20.0 percentage points in the area under the receiver operating characteristic curve, which is 11.5 to 13.7 points higher than that of conventional CycleGAN-based augmentations in AUC.
机译:虽然已经报告了对黑色素瘤的高度准确的自动诊断技术,但是,能够提供基于医疗指标的诊断证据的系统仍然是开放问题,因为获得可靠的培训数据。 在本文中,我们提出了批量生产增强(BPA),以产生高质量的多样性皮肤肿瘤图像,具有所需的结构恶性特征,用于来自有限数量的标记图像的额外训练图像。 该提议的BPA充当了构建非典型颜料网络(APN)特征检测器的有效数据增强,这是黑色素瘤诊断中的关键结构。 实验表明,通过我们的BPA产生的图像的训练主要将APN检测性能提升20.0个百分点在接收器操作特性曲线下的区域,这比AUC中的传统ConscaN的增强率高11.5至13.7点。

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