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Comparison of Different Classifiers with Active Learning to Support Quality Control in Nucleus Segmentation in Pathology Images

机译:带有主动学习以支持质量控制的病理图像中核分割的不同分类器的比较

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摘要

Segmentation of nuclei in whole slide tissue images is a common methodology in pathology image analysis. Most segmentation algorithms are sensitive to input algorithm parameters and the characteristics of input images (tissue morphology, staining, etc.). Because there can be large variability in the color, texture, and morphology of tissues within and across cancer types (heterogeneity can exist even within a tissue specimen), it is likely that a set of input parameters will not perform well across multiple images. It is, therefore, highly desired, and necessary in some cases, to carry out a quality control of segmentation results. This work investigates the application of machine learning in this process. We report on the application of active learning for segmentation quality assessment for pathology images and compare three classification methods, Support Vector Machine (SVM), Random Forest (RF) and Convolutional Neural Network (CNN), for their performance improvement and efficiency.
机译:整个玻片组织图像中的细胞核分割是病理图像分析中的常用方法。大多数分割算法对输入算法参数和输入图像的特征(组织形态,染色等)敏感。由于癌症类型之内和之间的组织的颜色,纹理和形态可能存在很大差异(即使在组织标本中也可能存在异质性),因此一组输入参数可能无法在多个图像上很好地表现。因此,非常需要在某些情况下进行分割结果的质量控制。这项工作研究了机器学习在此过程中的应用。我们报告了主动学习在病理图像分割质量评估中的应用,并比较了三种分类方法,即支持向量机(SVM),随机森林(RF)和卷积神经网络(CNN),以提高性能和效率。

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