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A High-Performance System for Robust Stain Normalization of Whole-Slide Images in Histopathology

机译:高性能的组织病理学完整幻灯片图像的污点归一化

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摘要

Stain normalization is an important processing task for computer-aided diagnosis (CAD) systems in modern digital pathology. This task reduces the color and intensity variations present in stained images from different laboratories. Consequently, stain normalization typically increases the prediction accuracy of CAD systems. However, there are computational challenges that this normalization step must overcome, especially for real-time applications: the memory and run-time bottlenecks associated with the processing of images in high resolution, e.g., 40X. Moreover, stain normalization can be sensitive to the quality of the input images, e.g., when they contain stain spots or dirt. In this case, the algorithm may fail to accurately estimate the stain vectors. We present a high-performance system for stain normalization using a state-of-the-art unsupervised method based on stain-vector estimation. Using a highly-optimized normalization engine, our architecture enables high-speed and large-scale processing of high-resolution whole-slide images. This optimized engine integrates an automated thresholding technique to determine the useful pixels and uses a novel pixel-sampling method that significantly reduces the processing time of the normalization algorithm. We demonstrate the performance of our architecture using measurements from images of different sizes and scanner formats that belong to four different datasets. The results show that our optimizations achieve up to 58x speedup compared to a baseline implementation. We also prove the scalability of our system by showing that the processing time scales almost linearly with the amount of tissue pixels present in the image. Furthermore, we show that the output of the normalization algorithm can be adversely affected when the input images include artifacts. To address this issue, we enhance the stain normalization pipeline by introducing a parameter cross-checking technique that automatically detects the distortion of the algorithm's critical parameters. To assess the robustness of the proposed method we employ a machine learning (ML) pipeline that classifies images for detection of prostate cancer. The results show that the enhanced normalization algorithm increases the classification accuracy of the ML pipeline in the presence of poor-quality input images. For an exemplary ML pipeline, our new method increases the accuracy on an unseen dataset from 0.79 to 0.87.
机译:染色归一化是现代数字病理学中计算机辅助诊断(CAD)系统的重要处理任务。该任务可减少来自不同实验室的染色图像中出现的颜色和强度变化。因此,污渍归一化通常会提高CAD系统的预测精度。但是,此标准化步骤必须克服一些计算难题,尤其是对于实时应用程序:与高分辨率(例如40X)图像处理相关的内存和运行时瓶颈。此外,污渍归一化可能对输入图像的质量敏感,例如当它们包含污点或污垢时。在这种情况下,该算法可能无法准确估计污点矢量。我们提出了一种基于污渍矢量估计的,使用最新的无监督方法进行污渍归一化的高性能系统。通过使用高度优化的归一化引擎,我们的体系结构可以实现高分辨率全幻灯片图像的高速,大规模处理。这种经过优化的引擎集成了自动阈值技术来确定有用像素,并使用了一种新颖的像素采样方法,该方法大大减少了归一化算法的处理时间。我们使用来自属于四个不同数据集的不同尺寸和扫描仪格式的图像进行的测量来证明我们的体系结构的性能。结果表明,与基准实施相比,我们的优化实现了58倍的加速。通过显示处理时间几乎与图像中存在的组织像素数量成线性比例,我们还证明了系统的可伸缩性。此外,我们表明当输入图像包含伪像时,归一化算法的输出会受到不利影响。为了解决这个问题,我们通过引入参数交叉检查技术来增强污点归一化流程,该技术可以自动检测算法关键参数的失真。为了评估所提出方法的鲁棒性,我们采用了机器学习(ML)管道,该管道对图像进行分类以检测前列腺癌。结果表明,在输入图像质量较差的情况下,改进的归一化算法提高了ML管道的分类精度。对于示例性的ML管道,我们的新方法将看不见的数据集的准确性从0.79提高到0.87。

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