组织病理图像分类中最优指标集的寻找

C. Stoean
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引用次数: 13

摘要

目前有大量的组织病理学图像由于密集的预防筛查计划在世界范围内。这一事实加重了病理学家的工作负担。因此,对数字病理切片的定量图像评估有很高的需求。目前的工作从357张组织病理学图像中提取了76个数字特征,并着重于选择最有价值的特征,这些特征可以用于更小的数据集,在这些数据集上SVM分类器可以实现更好的预测。与使用整个数据集的情况相比,准确度提高了4%以上。本文还指出了在4种特征选择方法中被证明是最具信息量的属性子集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In Search of the Optimal Set of Indicators when Classifying Histopathological Images
There is currently a large amount of histopathological images due to the intensive prevention screening programs worldwide. This fact overloads the pathologists' tasks. Hence, there is a connected high need for a quantitative image-based evaluation of digital pathology slides. The current work extracts 76 numerical features from 357 histopathological images and focuses on the selection of the most valuable features that conducts to a smaller data set on which a SVM classifier achieves a better prediction. The gain in accuracy is of over 4% more than in the situation when the entire data set was used. The paper also indicates a subset of the attributes that proved to be the most informative with respect to 4 feature selection approaches.
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