Caballo Marco, Hernandez Andrew M, Lyu Su Hyun, Teuwen Jonas, Mann Ritse M, van Ginneken Bram, Boone John M, Sechopoulos Ioannis
Radboud University Medical Center, Department of Medical Imaging, Nijmegen, The Netherlands.
University of California Davis, Department of Radiology, Sacramento, California, United States.
J Med Imaging (Bellingham). 2021 Mar;8(2):024501. doi: 10.1117/1.JMI.8.2.024501. Epub 2021 Mar 29.
A computer-aided diagnosis (CADx) system for breast masses is proposed, which incorporates both handcrafted and convolutional radiomic features embedded into a single deep learning model. The model combines handcrafted and convolutional radiomic signatures into a multi-view architecture, which retrieves three-dimensional (3D) image information by simultaneously processing multiple two-dimensional mass patches extracted along different planes through the 3D mass volume. Each patch is processed by a stream composed of two concatenated parallel branches: a multi-layer perceptron fed with automatically extracted handcrafted radiomic features, and a convolutional neural network, for which discriminant features are learned from the input patches. All streams are then concatenated together into a final architecture, where all network weights are shared and the learning occurs simultaneously for each stream and branch. The CADx system was developed and tested for diagnosis of breast masses ( ) using image datasets acquired with independent dedicated breast computed tomography systems from two different institutions. The diagnostic classification performance of the CADx system was compared against other machine and deep learning architectures adopting handcrafted and convolutional approaches, and three board-certified breast radiologists. On a test set of 82 masses (45 benign, 37 malignant), the proposed CADx system performed better than all other model architectures evaluated, with an increase in the area under the receiver operating characteristics curve (AUC) of , and achieving a final AUC of 0.947, outperforming the three radiologists ( ). In conclusion, the system demonstrated its potential usefulness in breast cancer diagnosis by improving mass malignancy assessment.
本文提出了一种用于乳腺肿块的计算机辅助诊断(CADx)系统,该系统将手工制作的和卷积放射组学特征整合到一个深度学习模型中。该模型将手工制作的和卷积放射组学特征整合到一个多视图架构中,通过同时处理沿不同平面从三维肿块体积中提取的多个二维肿块切片来获取三维(3D)图像信息。每个切片由一个由两个串联的并行分支组成的流程进行处理:一个多层感知器,输入自动提取的手工制作的放射组学特征;以及一个卷积神经网络,从输入切片中学习判别特征。然后,所有流程被连接在一起形成一个最终架构,所有网络权重共享,每个流程和分支同时进行学习。该CADx系统使用从两个不同机构的独立专用乳腺计算机断层扫描系统获取的图像数据集进行开发和测试,用于乳腺肿块的诊断。将CADx系统的诊断分类性能与其他采用手工制作和卷积方法的机器学习和深度学习架构以及三位获得董事会认证的乳腺放射科医生进行了比较。在一个包含82个肿块(45个良性,37个恶性)的测试集上,所提出的CADx系统的表现优于所有其他评估的模型架构,接收器操作特征曲线(AUC)下面积增加了 ,最终AUC达到0.947,超过了三位放射科医生( )。总之,该系统通过改善肿块恶性程度评估,证明了其在乳腺癌诊断中的潜在实用性。