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Training nuclei detection algorithms with simple annotations

机译:使用简单注释训练核检测算法

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Background: Generating good training datasets is essential for machine learning-based nuclei detection methods. However, creating exhaustive nuclei contour annotations, to derive optimal training data from, is often infeasible. Methods: We compared different approaches for training nuclei detection methods solely based on nucleus center markers. Such markers contain less accurate information, especially with regard to nuclear boundaries, but can be produced much easier and in greater quantities. The approaches use different automated sample extraction methods to derive image positions and class labels from nucleus center markers. In addition, the approaches use different automated sample selection methods to improve the detection quality of the classification algorithm and reduce the run time of the training process. We evaluated the approaches based on a previously published generic nuclei detection algorithm and a set of Ki-67-stained breast cancer images. Results: A Voronoi tessellation-based sample extraction method produced the best performing training sets. However, subsampling of the extracted training samples was crucial. Even simple class balancing improved the detection quality considerably. The incorporation of active learning led to a further increase in detection quality. Conclusions: With appropriate sample extraction and selection methods, nuclei detection algorithms trained on the basis of simple center marker annotations can produce comparable quality to algorithms trained on conventionally created training sets.
机译:背景:生成良好的训练数据集对于基于机器学习的核检测方法至关重要。然而,创建穷举的核轮廓注解以从中获得最佳训练数据通常是不可行的。方法:我们比较了仅基于核中心标记物训练核检测方法的不同方法。这样的标记物包含的信息较不准确,特别是关于核边界的信息,但可以更容易,更大量地生产。这些方法使用不同的自动样本提取方法来从核中心标记导出图像位置和类别标签。此外,这些方法使用不同的自动样本选择方法来提高分类算法的检测质量并减少训练过程的运行时间。我们基于以前发布的通用核检测算法和一组Ki-67染色的乳腺癌图像评估了这些方法。结果:基于Voronoi细分的样本提取方法产生了性能最佳的训练集。但是,提取的训练样本的二次采样至关重要。甚至简单的类平衡也大大提高了检测质量。主动学习的结合导致检测质量的进一步提高。结论:通过适当的样本提取和选择方法,基于简单中心标记注释训练的核检测算法可以产生与传统创建的训练集训练的算法相当的质量。

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