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Fast ScanNet: Fast and Dense Analysis of Multi-Gigapixel Whole-Slide Images for Cancer Metastasis Detection

机译:Fast ScanNet:用于癌症转移检测的多千兆像素全幻灯片图像的快速密集分析

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摘要

Lymph node metastasis is one of the most important indicators in breast cancer diagnosis, that is traditionally observed under the microscope by pathologists. In recent years, with the dramatic advance of high-throughput scanning and deep learning technology, automatic analysis of histology from whole-slide images has received a wealth of interest in the field of medical image computing, which aims to alleviate pathologists' workload and simultaneously reduce misdiagnosis rate. However, the automatic detection of lymph node metastases from whole-slide images remains a key challenge because such images are typically very large, where they can often be multiple gigabytes in size. Also, the presence of hard mimics may result in a large number of false positives. In this paper, we propose a novel method with anchor layers for model conversion, which not only leverages the efficiency of fully convolutional architectures to meet the speed requirement in clinical practice but also densely scans the whole-slide image to achieve accurate predictions on both micro- and macro-metastases. Incorporating the strategies of asynchronous sample prefetching and hard negative mining, the network can be effectively trained. The efficacy of our method is corroborated on the benchmark dataset of 2016 Camelyon Grand Challenge. Our method achieved significant improvements in comparison with the state-of-the-art methods on tumor localization accuracy with a much faster speed and even surpassed human performance on both challenge tasks.
机译:淋巴结转移是乳腺癌诊断中最重要的指标之一,传统上是由病理学家在显微镜下观察到的。近年来,随着高通量扫描和深度学习技术的飞速发展,从全幻灯片图像进行组织学自动分析在医学图像计算领域引起了广泛关注,旨在减轻病理学家的工作量并同时降低误诊率。但是,从全幻灯片图像中自动检测淋巴结转移仍然是一个关键的挑战,因为此类图像通常非常大,通常大小可能为数GB。同样,硬模拟的存在可能会导致大量误报。在本文中,我们提出了一种使用锚层进行模型转换的新方法,该方法不仅充分利用了全卷积架构的效率来满足临床实践中对速度的要求,而且还对整个幻灯片图像进行了密集扫描,从而在两个微镜上都能获得准确的预测-和宏观转移。结合异步样本预取和硬负片挖掘策略,可以有效地训练网络。我们的方法的有效性在2016年Camelyon挑战赛的基准数据集中得到了证实。与最新技术相比,我们的方法在肿瘤定位精度上有了显着改善,在这两个挑战性任务上,速度更快,甚至超过了人类的表现。

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