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Segmentation of Prognostic Tissue Structures in Cutaneous Melanoma Using Whole Slide Images

机译:使用完整幻灯片图像分割皮肤黑色素瘤的预后组织结构

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Our work applies modern machine learning techniques to melanoma diagnostics. First, we curated a new dataset of 50 patient cases of cutaneous melanoma in whole slide images (WSIs). We applied gold standard annotations for three tissue types (tumour, epidermis, and dermis) which are important for the prognostic measurements known as Breslow thickness and Clark level. Then, we devised a novel multi-stride fully convolutional network (FCN) architecture that outperformed other networks trained and tested using the same data and evaluated on standard metrics. Three pathologists measured the Breslow thickness on the network's output. Their responses were diagnostically equivalent to the ground truth measurements, showing that it is possible to overcome the discriminative challenges of the skin and tumour anatomy for segmentation. Though more work is required to improve the network's performance on dermis segmentation, we have shown it is possible to achieve a level of accuracy required to manually perform the Breslow thickness measurement.
机译:我们的工作将现代机器学习技术应用于黑色素瘤诊断。首先,我们从整个幻灯片图像(WSI)中选出了50个皮肤黑色素瘤患者病例的新数据集。我们对三种组织类型(肿瘤,表皮和真皮)应用了黄金标准注释,这对于预后测量至关重要,称为Breslow厚度和Clark水平。然后,我们设计了一种新颖的多步全卷积网络(FCN)架构,该架构优于使用相同数据进行训练和测试并在标准指标上进行评估的其他网络。三位病理学家测量了网络输出的Breslow厚度。他们的反应在诊断上等同于地面真实情况的测量结果,表明有可能克服皮肤和肿瘤解剖学在区分方面的区分性挑战。尽管需要做更多的工作来提高网络在真皮分割方面的性能,但我们已经表明,可以实现手动执行Breslow厚度测量所需的精度水平。

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