基于掩模区域卷积神经网络的乳腺癌组织图像核分割

F. Khan, M. N. Mohd, Muhammad Danial Khan, Susama Bagchi
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引用次数: 5

摘要

在过去的二十年中,乳腺癌病例在全球范围内有所增加。通过乳腺组织活检获得的组织学图像分析被认为是评估任何细胞是否有恶性肿瘤迹象的最可靠方法。随着深度神经网络的出现,我们现在能够以近乎完美的准确度诊断疾病,而不是传统的乳房x光摄影技术来检测乳腺癌;然而,在这方面所做的工作考虑了细胞核分割。这项工作的重点是扩展深度学习技术的适用性,在深度学习技术中,网络被训练来执行分割并将数据分类为四类之一:正常、良性、原位和侵入性。在ICIAR2018乳腺癌数据集上,实现的分类准确率为98.16%,使用平均交集超过联合的重叠系数计算的分割准确率为86.39%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Breast Cancer Histological Images Nuclei Segmentation using Mask Regional Convolutional Neural Network
the breast cancer cases have increased globally, in the last two decades. Analysis of histological images acquired through biopsy of the breast tissues is thought to be the most reliable way to assess if any cells show signs of malignancy. With the advent of deep neural networks, we are now able to diagnose the disease with near perfect accuracy instead of conventional techniques of mammography for breast cancer detection; however, work done in this area considers nuclei segmentation. This work is focussed on extending the applicability of deep learning technology where network is trained to perform segmentation and classify data as one of the four classes: normal, benign, in-situ and invasive. The classification accuracy achieved is 98.16% and the segmentation accuracy calculated using overlap coefficient from mean intersection over union is 86.39% on the ICIAR2018 Breast Cancer dataset.
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