用卷积神经网络识别组织元素

Christopher Malon, Matthew L. Miller, Harold Christopher Burger, E. Cosatto, H. Graf
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引用次数: 35

摘要

对染色活检样本进行组织学分析需要识别多种局部和结构细节,并具有一定的背景意识。卷积网络等机器学习算法可以成为解决此类问题的强大工具,但通常可能没有足够的训练数据来充分利用它们的潜力。在本文中,我们展示了卷积网络如何与适当的图像分析相结合,在乳腺癌和胃癌分级的三个非常不同的任务中实现高精度,尽管训练数据有限的挑战。这三个问题是计算乳腺中的有丝分裂象,识别胃中的上皮层,以及检测印戒细胞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying histological elements with convolutional neural networks
Histological analysis on stained biopsy samples requires recognizing many kinds of local and structural details, with some awareness of context. Machine learning algorithms such as convolutional networks can be powerful tools for such problems, but often there may not be enough training data to exploit them to their full potential. In this paper, we show how convolutional networks can be combined with appropriate image analysis to achieve high accuracies on three very different tasks in breast and gastric cancer grading, despite the challenge of limited training data. The three problems are to count mitotic figures in the breast, to recognize epithelial layers in the stomach, and to detect signet ring cells.
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