Radiomics and deep learning have shown high popularity in automatic glioma grading. Radiomics can extract hand-crafted features that quantitatively describe the expert knowledge of glioma grades, and deep learning is powerful in extracting a large number of high-throughput features that facilitate the final classification. However, the performance of existing methods can still be improved as their complementary strengths have not been sufficiently investigated and integrated. Furthermore, lesion maps are usually needed for the final prediction at the testing phase, which is very troublesome. In this paper, we propose an expert knowledge-guided geometric representation learning (ENROL) framework . Geometric manifolds of hand-crafted features and learned features are constructed to mine the implicit relationship between deep learning and radiomics, and therefore to dig mutual consent and essential representation for the glioma grades. With a specially designed manifold discrepancy measurement, the grading model can exploit the input image data and expert knowledge more effectively in the training phase and get rid of the requirement of lesion segmentation maps at the testing phase. The proposed framework is flexible regarding deep learning architectures to be utilized. Three different architectures have been evaluated and five models have been compared, which show that our framework can always generate promising results.
翻译:放射学和深层学习在自动显微镜等级中显示出很高的受欢迎程度。放射学可以提取手工制作的特征,从数量上描述对显微镜等级的专家知识,深层学习在提取大量有助于最后分类的高通量特征方面非常有力;然而,现有方法的性能仍然可以改进,因为它们的互补优势没有得到充分的调查和整合;此外,在测试阶段进行最后预测通常需要损害图,这是非常麻烦的。在本文中,我们提议了一个专家知识引导的几何代表性学习框架。手工制作的特征和学到的特征的几何方形模型的构造,是为了挖掘深层学习和射电学之间的隐含关系,从而找到对显微镜等级的相互同意和基本代表。在专门设计的多重差异测量中,定级模型可以在培训阶段更有效地利用输入图像数据和专家知识,在测试阶段消除对色分解图的要求。在深层学习结构方面,拟议的框架是灵活的。三个不同的模型已经进行了评估,五个模型能够显示我们很有希望的成果。