Department of Medical Ultrasound, Shanghai Tenth People's Hospital, Ultrasound Research and Education Institute, Tongji University School of Medicine, Shanghai, China.
Shanghai Institute for Advanced Communication and Data Science, School of Communication and Information Engineering, Shanghai University, Shanghai, China.
Clin Hemorheol Microcirc. 2018;69(3):343-354. doi: 10.3233/CH-170275.
With the fast development of artificial intelligence techniques, we proposed a novel two-stage multi-view learning framework for the contrast-enhanced ultrasound (CEUS) based computer-aided diagnosis for liver tumors, which adopted only three typical CEUS images selected from the arterial phase, portal venous phase and late phase.
In the first stage, the deep canonical correlation analysis (DCCA) was performed on three image pairs between the arterial and portal venous phases, arterial and delayed phases, and portal venous and delayed phases respectively, which then generated total six-view features. While in the second stage, these multi-view features were then fed to a multiple kernel learning (MKL) based classifier to further promote the diagnosis result. Two MKL classification algorithms were evaluated in this MKL-based classification framework. We evaluated proposed DCCA-MKL framework on 93 lesions (47 malignant cancers vs. 46 benign tumors).
The proposed DCCA-MKL framework achieved the mean classification accuracy, sensitivity, specificity, Youden index, false positive rate, and false negative rate of 90.41 ± 5.80%, 93.56 ± 5.90%, 86.89 ± 9.38%, 79.44 ± 11.83%, 13.11 ± 9.38% and 6.44 ± 5.90%, respectively, by soft margin MKL classifier.
The experimental results indicate that the proposed DCCA-MKL framework achieves best performance for discriminating benign liver tumors from malignant liver cancers. Moreover, it is also proved that the three-phase CEUS image based CAD is feasible for liver tumors with the proposed DCCA-MKL framework.
随着人工智能技术的快速发展,我们提出了一种新颖的两阶段多视图学习框架,用于基于对比增强超声(CEUS)的肝肿瘤计算机辅助诊断,该框架仅采用动脉期、门静脉期和延迟期选择的三个典型 CEUS 图像。
在第一阶段,对动脉期和门静脉期、动脉期和延迟期以及门静脉期和延迟期之间的三个图像对分别进行深度典型相关分析(DCCA),从而生成总共 6 个视图特征。在第二阶段,将这些多视图特征输入基于多核学习(MKL)的分类器中,以进一步提高诊断结果。在这个基于 MKL 的分类框架中,评估了两种 MKL 分类算法。我们在 93 个病灶(47 个恶性癌症与 46 个良性肿瘤)上评估了所提出的 DCCA-MKL 框架。
所提出的 DCCA-MKL 框架的平均分类准确率、灵敏度、特异性、约登指数、假阳性率和假阴性率分别为 90.41 ± 5.80%、93.56 ± 5.90%、86.89 ± 9.38%、79.44 ± 11.83%、13.11 ± 9.38%和 6.44 ± 5.90%,采用软间隔 MKL 分类器。
实验结果表明,所提出的 DCCA-MKL 框架在区分良性肝肿瘤和恶性肝癌方面取得了最佳性能。此外,还证明了基于三相 CEUS 图像的 CAD 对于肝肿瘤是可行的,采用所提出的 DCCA-MKL 框架。