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Automatic Detection of Tumor Cells in Microscopic Images of Unstained Blood using Convolutional Neural Networks

机译:使用卷积神经网络自动检测未染色的血液显微图像中的肿瘤细胞

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Accessible high-performance computing power has recently spiked interest in medical image analysis and processing. Biomedical image segmentation has been used to aid in the process of medical analysis and diagnosis. In this paper we present a novel approach to identifying circulating tumor cells (CTCs) using convolutional neural networks on Dark Field microscopic images of unstained blood. We use a modified U-Net that is able to automatically perform image segmentation in order to detect CTCs. We perform detection on our own dataset containing input images and ground truth label images. Detection is done on small image patches using a sliding window mechanism in order to reduce computation time. The final result is reconstructed from the patches and further refined using post-processing. The total number of CTCs is computed from the segmented image using the Hough circle algorithm. We were able to obtain over 99.8% accuracy using our data set.
机译:可访问的高性能计算能力最近对医学图像分析和处理的兴趣飙升。生物医学图像分割已被用于帮助医学分析和诊断过程。本文介绍了一种在未染色的血液的暗场微观图像上使用卷积神经网络鉴定循环肿瘤细胞(CTC)的新方法。我们使用经过修改的U-Net,可以自动执行图像分段以检测CTC。我们在包含输入图像和地面真理标签图像上对我们自己的数据集进行检测。使用滑动窗口机制在小图像贴片上进行检测,以减少计算时间。最终结果从贴片重建并进一步使用后处理改进。使用Hough Circle算法从分段图像计算CTC的总数。我们可以使用我们的数据集获得超过99.8%的准确性。

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