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使用双深度卷积神经网络和基因发现的假彩色输入增强技术进行乳腺钼靶摄影中的恶性肿瘤检测。

Malignancy Detection on Mammography Using Dual Deep Convolutional Neural Networks and Genetically Discovered False Color Input Enhancement.

作者信息

Teare Philip, Fishman Michael, Benzaquen Oshra, Toledano Eyal, Elnekave Eldad

机构信息

Zebra Medical Vision LTD, Shfayim, Israel.

Beth Israel Deaconess Medical Center, Boston, MA, USA.

出版信息

J Digit Imaging. 2017 Aug;30(4):499-505. doi: 10.1007/s10278-017-9993-2.

DOI:10.1007/s10278-017-9993-2
PMID:28656455
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5537100/
Abstract

Breast cancer is the most prevalent malignancy in the US and the third highest cause of cancer-related mortality worldwide. Regular mammography screening has been attributed with doubling the rate of early cancer detection over the past three decades, yet estimates of mammographic accuracy in the hands of experienced radiologists remain suboptimal with sensitivity ranging from 62 to 87% and specificity from 75 to 91%. Advances in machine learning (ML) in recent years have demonstrated capabilities of image analysis which often surpass those of human observers. Here we present two novel techniques to address inherent challenges in the application of ML to the domain of mammography. We describe the use of genetic search of image enhancement methods, leading us to the use of a novel form of false color enhancement through contrast limited adaptive histogram equalization (CLAHE), as a method to optimize mammographic feature representation. We also utilize dual deep convolutional neural networks at different scales, for classification of full mammogram images and derivative patches combined with a random forest gating network as a novel architectural solution capable of discerning malignancy with a specificity of 0.91 and a specificity of 0.80. To our knowledge, this represents the first automatic stand-alone mammography malignancy detection algorithm with sensitivity and specificity performance similar to that of expert radiologists.

摘要

乳腺癌是美国最常见的恶性肿瘤,也是全球癌症相关死亡的第三大原因。在过去三十年中,定期乳房X光检查筛查使早期癌症检测率提高了一倍,但经验丰富的放射科医生进行乳房X光检查的准确性估计仍不理想,敏感性范围为62%至87%,特异性范围为75%至91%。近年来,机器学习(ML)的进展展示了图像分析能力,其往往超过人类观察者。在此,我们提出两种新颖技术,以应对将ML应用于乳房X光检查领域时的固有挑战。我们描述了对图像增强方法进行遗传搜索的用途,这使我们采用了一种通过对比度受限自适应直方图均衡化(CLAHE)进行新型伪彩色增强的方法,作为优化乳房X光特征表示的一种手段。我们还在不同尺度上利用双深度卷积神经网络,用于全乳房X光图像和派生补丁的分类,并结合随机森林门控网络,作为一种能够以0.91的敏感性和0.80的特异性识别恶性肿瘤的新型架构解决方案。据我们所知,这代表了首个具有与专家放射科医生相似的敏感性和特异性性能的自动独立乳房X光恶性肿瘤检测算法。

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Supplemental Breast MR Imaging Screening of Women with Average Risk of Breast Cancer.补充乳腺磁共振成像筛查对乳腺癌平均风险女性。
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Representation learning for mammography mass lesion classification with convolutional neural networks.基于卷积神经网络的乳腺钼靶肿块病变分类的表征学习
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