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Computer-Aided Tumor Diagnosis in Automated Breast Ultrasound Using 3D Detection Network

机译:使用3D检测网络自动乳房超声波计算机辅助肿瘤诊断

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Automated breast ultrasound (ABUS) is a new and promising imaging modality for breast cancer detection and diagnosis, which could provide intuitive 3D information and coronal plane information with great diagnostic value. However, manually screening and diagnosing tumors from ABUS images is very time-consuming and overlooks of abnormalities may happen. In this study, we propose a novel two-stage 3D detection network for locating suspected lesion areas and further classifying lesions as benign or malignant tumors. Specifically, we propose a 3D detection network rather than frequently-used segmentation network to locate lesions in ABUS images, thus our network can make full use of the spatial context information in ABUS images. A novel similarity loss is designed to effectively distinguish lesions from background. Then a classification network is employed to identify the located lesions as benign or malignant. An IoU-balanced classification loss is adopted to improve the correlation between classification and localization task. The efficacy of our network is verified from a collected dataset of 418 patients with 145 benign tumors and 273 malignant tumors. Experiments show our network attains a sensitivity of 97.66% with 1.23 false positives (FPs), and has an area under the curve(AUC) value of 0.8720.
机译:自动乳房超声(ABUS)是一种新的和有前途的乳腺癌检测和诊断的成像模型,可以提供具有良好诊断价值的直观的3D信息和冠状平面信息。然而,手动筛选和诊断来自滥用性图像的肿瘤是非常耗时的,可能发生异常的忽略。在这项研究中,我们提出了一种用于定位疑似病变区域的新型两级3D检测网络,进一步将病变进一步分类为良性或恶性肿瘤。具体地,我们提出了一种3D检测网络,而不是常用的分割网络来定位在滥用图像中的病变,因此我们的网络可以充分利用滥用图像中的空间上下文信息。新颖的相似性损失旨在有效地区分病变从背景中区分病变。然后采用分类网络来识别所定位的病变作为良性或恶性。采用IOO平衡分类损失来改善分类与本地化任务之间的相关性。我们网络的功效从418名患有145例良性肿瘤和273名恶性肿瘤患者的收集数据集进行了验证。实验表明,我们的网络达到了97.66%的灵敏度,具有1.23个假阳性(FPS),并且具有0.8720的曲线(AUC)值下的区域。

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