了解图像和输入分辨率对深度数字病理贴片分类器的影响

Eu Wern Teh, Graham W. Taylor
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引用次数: 0

摘要

我们考虑在数字病理学(DP)中,专家注释是昂贵的,因此稀缺的注释高效学习。我们探讨了图像和输入分辨率对DP补丁分类性能的影响。我们使用两个癌症斑块分类数据集PCam和CRC来验证我们的研究结果。我们的实验表明,在注释稀缺和注释丰富的环境下,通过控制图像和输入分辨率可以提高补丁分类的性能。我们在两个数据集上显示了图像与输入分辨率和补丁分类精度之间的正相关关系。通过利用图像和输入分辨率,我们在< 1%的数据上训练的最终模型与在PCam数据集上原始图像分辨率下100%的数据上训练的模型表现同样好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding the impact of image and input resolution on deep digital pathology patch classifiers
We consider annotation efficient learning in Digital Pathology (DP), where expert annotations are expensive and thus scarce. We explore the impact of image and input resolution on DP patch classification performance. We use two cancer patch classification datasets PCam and CRC, to validate the results of our study. Our experiments show that patch classification performance can be improved by manipulating both the image and input resolution in annotation-scarce and annotation-rich environments. We show a positive correlation between the image and input resolution and the patch classification accuracy on both datasets. By exploiting the image and input resolution, our final model trained on < 1% of data performs equally well compared to the model trained on 100% of data in the original image resolution on the PCam dataset.
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