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Improved Anomaly Detection in Low-Resolution and Noisy Whole-Slide Images using Transfer Learning

机译:改进的低分辨率和嘈杂的全幻灯片图像中使用转移学习的异常检测

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Whole-slide imaging (WSI) is one of the most recent technologies introduced in medical pathology practices. WSI images are created using a computerized system that scans, stitches and stores pathology specimen glass slides into digital images, which provide a multi-resolution pyramid construction of a huge gigabyte size due to the need for containing a high amount of tissue details. Therefore, digital WSI brings major challenges in data storage, image analysis and transmission (e.g. telepathology and interoperability). In this paper, we propose a computer-aided diagnosis (CAD) system to detect cancer anomalies in breast lymph node WSI images under low-resolution (LR) and noise conditions. In particular, we investigate a transfer-learning approach to find the scale mappings between WSI levels using partial least-square (PLS) regression. The learned scale mappings can be used to detect anomalies in LR images and hence reduce the computational cost of anomaly detection. Then, we explore the effect of different levels of noise on detection performance. We simulated different scenarios where WSI images are contaminated with Gaussian noise and several de-noising algorithms were applied, namely de-noising with PLS, Block Matching $3D (BM3D)$ and the combination of PLS and BM3D. We show that these de-noising algorithms can help reduce the noise severity on anomaly detection. For example, for noisy images with 0.8 noise standard deviation, these three algorithms improved the LR detection accuracy from 63.50% to 93.81%, 92.73%, and 97.51%, respectively. Our results lead to useful conclusions on how to handle whole slide images under scaling and noise conditions.
机译:全幻灯片成像(WSI)是医学病理学实践中引入的最新技术之一。 WSI图像是使用计算机系统创建的,该系统将病理样本玻璃片扫描,缝合和存储为数字图像,由于需要包含大量组织细节,因此该图像提供了千兆字节大小的多分辨率金字塔构造。因此,数字WSI在数据存储,图像分析和传输(例如远程病理学和互操作性)方面带来了重大挑战。在本文中,我们提出了一种计算机辅助诊断(CAD)系统,以在低分辨率(LR)和噪声条件下检测乳房淋巴结WSI图像中的癌症异常。特别是,我们研究了一种转移学习方法,以使用偏最小二乘(PLS)回归找到WSI级别之间的规模映射。学习的比例尺映射可用于检测LR图像中的异常,从而减少异常检测的计算成本。然后,我们探讨了不同级别的噪声对检测性能的影响。我们模拟了WSI图像被高斯噪声污染并应用了几种降噪算法的不同场景,即使用PLS降噪,块匹配$ 3D(BM3D)$以及PLS和BM3D的组合。我们证明了这些降噪算法可以帮助降低异常检测时的噪声严重性。例如,对于噪声标准偏差为0.8的嘈杂图像,这三种算法将LR检测准确度分别从63.50 \%提高到93.81 \%,92.73 \%和97.51 \%。我们的结果得出有关如何在缩放和噪声条件下处理整个幻灯片图像的有用结论。

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