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本文引用的文献

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Automatic mass detection in mammograms using deep convolutional neural networks.使用深度卷积神经网络在乳腺X光片中进行自动肿块检测。
J Med Imaging (Bellingham). 2019 Jul;6(3):031409. doi: 10.1117/1.JMI.6.3.031409. Epub 2019 Feb 20.
2
The American Cancer Society's Facts & Figures: 2020 Edition.美国癌症协会《2020年事实与数据》版
J Adv Pract Oncol. 2020 Mar;11(2):135-136. doi: 10.6004/jadpro.2020.11.2.1. Epub 2020 Mar 1.
3
An interpretable classifier for high-resolution breast cancer screening images utilizing weakly supervised localization.一种利用弱监督定位的高分辨率乳腺癌筛查图像可解释分类器。
Med Image Anal. 2021 Feb;68:101908. doi: 10.1016/j.media.2020.101908. Epub 2020 Dec 16.
4
Globally-Aware Multiple Instance Classifier for Breast Cancer Screening.用于乳腺癌筛查的全球感知多实例分类器
Mach Learn Med Imaging. 2019 Oct;11861:18-26. doi: 10.1007/978-3-030-32692-0_3. Epub 2019 Oct 10.
5
International evaluation of an AI system for breast cancer screening.国际乳腺癌筛查人工智能系统评估。
Nature. 2020 Jan;577(7788):89-94. doi: 10.1038/s41586-019-1799-6. Epub 2020 Jan 1.
6
Multiple Bilateral Circumscribed Breast Masses Detected at Imaging: Review of Evidence for Management Recommendations.影像学检查发现多个双侧局限性乳腺肿块:管理建议证据回顾。
AJR Am J Roentgenol. 2020 Feb;214(2):276-281. doi: 10.2214/AJR.19.22061. Epub 2019 Dec 11.
7
Screening Guidelines Update for Average-Risk and High-Risk Women.普通风险和高风险女性的筛查指南更新。
AJR Am J Roentgenol. 2020 Feb;214(2):316-323. doi: 10.2214/AJR.19.22205. Epub 2019 Nov 12.
8
Deep Neural Networks Improve Radiologists' Performance in Breast Cancer Screening.深度神经网络可提高放射科医生在乳腺癌筛查中的表现。
IEEE Trans Med Imaging. 2020 Apr;39(4):1184-1194. doi: 10.1109/TMI.2019.2945514. Epub 2019 Oct 7.
9
Medication Use to Reduce Risk of Breast Cancer: US Preventive Services Task Force Recommendation Statement.药物预防乳腺癌的使用:美国预防服务工作组推荐声明。
JAMA. 2019 Sep 3;322(9):857-867. doi: 10.1001/jama.2019.11885.
10
Association of Digital Breast Tomosynthesis vs Digital Mammography With Cancer Detection and Recall Rates by Age and Breast Density.数字乳腺断层合成摄影术与数字乳腺 X 线摄影术对年龄和乳腺密度相关的癌症检出率和召回率的比较。
JAMA Oncol. 2019 May 1;5(5):635-642. doi: 10.1001/jamaoncol.2018.7078.

利用深度学习神经网络,利用筛查性乳房 X 光照片的局部和全局图像上下文减少假阳性活检。

Reducing False-Positive Biopsies using Deep Neural Networks that Utilize both Local and Global Image Context of Screening Mammograms.

机构信息

Center for Data Science, New York University, New York City, USA.

Department of Radiology, New York University School of Medicine, New York City, USA.

出版信息

J Digit Imaging. 2021 Dec;34(6):1414-1423. doi: 10.1007/s10278-021-00530-6. Epub 2021 Nov 3.

DOI:10.1007/s10278-021-00530-6
PMID:34731338
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8669066/
Abstract

Breast cancer is the most common cancer in women, and hundreds of thousands of unnecessary biopsies are done around the world at a tremendous cost. It is crucial to reduce the rate of biopsies that turn out to be benign tissue. In this study, we build deep neural networks (DNNs) to classify biopsied lesions as being either malignant or benign, with the goal of using these networks as second readers serving radiologists to further reduce the number of false-positive findings. We enhance the performance of DNNs that are trained to learn from small image patches by integrating global context provided in the form of saliency maps learned from the entire image into their reasoning, similar to how radiologists consider global context when evaluating areas of interest. Our experiments are conducted on a dataset of 229,426 screening mammography examinations from 141,473 patients. We achieve an AUC of 0.8 on a test set consisting of 464 benign and 136 malignant lesions.

摘要

乳腺癌是女性最常见的癌症,全世界每年都有数十万人进行不必要的活检,耗费巨大。减少活检结果为良性组织的比例至关重要。在这项研究中,我们构建了深度神经网络(DNN),将活检病变分为恶性或良性,目标是将这些网络用作辅助放射科医生的第二读者,以进一步减少假阳性发现的数量。我们通过将整个图像中学习到的显著图形式的全局上下文集成到其推理中,来增强从小图像补丁中学习的 DNN 的性能,类似于放射科医生在评估感兴趣区域时考虑全局上下文的方式。我们的实验是在来自 141473 名患者的 229426 份筛查乳房 X 光检查数据集上进行的。我们在包含 464 个良性和 136 个恶性病变的测试集中实现了 AUC 为 0.8。