首页> 外文会议> >Deep Learning in Computer-Aided Diagnosis Incorporating Mammographic Characteristics of both Tumor and Parenchyma Stroma
【24h】

Deep Learning in Computer-Aided Diagnosis Incorporating Mammographic Characteristics of both Tumor and Parenchyma Stroma

机译:结合肿瘤和实质实质的乳腺X线摄影特征的计算机辅助诊断的深度学习

获取原文

摘要

We investigated the additive role of breast parenchyma stroma in the computer-aided diagnosis (CADx) of tumors on full-field digital mammograms (FFDM) by combining images of the tumor and contralateral normal parenchyma information via deep learning. The study included 182 breast lesions in which 106 were malignant and 76 were benign. All FFDM images were acquired using a GE 2000D Senographe system and retrospectively collected under an Institution Review Board (IRB) approved. Health Insurance Portability and Accountability Act (HIPAA) compliant protocol. Convolutional neutral networks (CNNs) with transfer learning were used to extract image-based characteristics of lesions and of parenchymal patterns (on the contralateral breast) directly from the FFDM images. Classification performance was evaluated and compared between analysis of only tumors and that of combined tumor and parenchymal patterns in the task of distinguishing between malignant and benign cases with the area under the Receiver Operating Characteristic (ROC) curve (AUC) used as the figure of merit. Using only lesion image data, the transfer learning method yielded an AUC value of 0.871 (SE=0.025) and using combined information from both lesion and parenchyma analyses, an AUC value of 0.911 (SE=0.021) was observed. This improvement was statistically significant (p-value=0.0362). Thus, we conclude that using CNNs with transfer learning to combine extracted image information of both tumor and parenchyma may improve breast cancer diagnosis.
机译:我们通过深度学习结合了肿瘤的图像和对侧正常实质信息,研究了乳房实质基质在全域数字化乳房X线照片(FFDM)上的计算机辅助诊断(CADx)肿瘤中的累加作用。该研究包括182例乳腺病变,其中106例为恶性,76例为良性。所有FFDM图像均使用GE 2000D Senographe系统获取,并在机构审查委员会(IRB)批准下进行回顾性收集。符合健康保险可移植性和责任法案(HIPAA)的协议。使用带转移学习的卷积神经网络(CNN)直接从FFDM图像中提取基于图像的病变特征和实质模式(在对侧乳房上)。评估分类性能并在仅分析肿瘤和结合肿瘤与实质模式的分析之间进行比较,以区分恶性和良性病例,并以接受者工作特征(ROC)曲线(AUC)曲线下的面积为优值。 。仅使用病变图像数据,转移学习方法得出的AUC值为0.871(SE = 0.025),并且使用来自病变和实质分析的组合信息,观察到的AUC值为0.911(SE = 0.021)。这种改善具有统计学意义(p值= 0.0362)。因此,我们得出结论,将CNN与转移学习结合使用来组合提取的肿瘤和实质的图像信息可以改善乳腺癌的诊断。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号