论文标题
两流比较椎骨裂缝诊断的比较和对比度网络
Two-Stream Compare and Contrast Network for Vertebral Compression Fracture Diagnosis
论文作者
论文摘要
与创伤和骨质疏松症(良性VCF)或由转移性癌症(恶性VCF)引起的椎骨压缩骨折(VCF)区分椎骨压缩骨折(VCF)至关重要。到目前为止,自动VCFS诊断以两步的方式解决,即首先识别VCF,然后将其分类为良性或恶性。在本文中,我们探索了VCFS诊断为三类分类问题的模型,即正常椎骨,良性VCF和恶性VCF。但是,VCF识别和分类需要非常不同的特征,并且这两个任务的特征都具有高级别的差异和高层间相似性。此外,数据集是极其平衡的。为了应对上述挑战,我们提出了一个新型的两流比较和对比度网络(TSCCN),以进行VCFS诊断。该网络由两个流组成,这是一个识别流,该流通过比较和对比,可以通过比较和对比来识别VCF,以及一个分类流,该分类流比较了阶层和阶层之间的类别和对比,以学习精细颗粒分类的特征。这两个流是通过可学习的重量控制模块集成的,该模块可适应性地设置其贡献。 TSCCN在由239名VCFS患者组成的数据集上进行评估,并分别达到92.56 \%和96.29 \%的平均灵敏度和特异性。
Differentiating Vertebral Compression Fractures (VCFs) associated with trauma and osteoporosis (benign VCFs) or those caused by metastatic cancer (malignant VCFs) are critically important for treatment decisions. So far, automatic VCFs diagnosis is solved in a two-step manner, i.e. first identify VCFs and then classify it into benign or malignant. In this paper, we explore to model VCFs diagnosis as a three-class classification problem, i.e. normal vertebrae, benign VCFs, and malignant VCFs. However, VCFs recognition and classification require very different features, and both tasks are characterized by high intra-class variation and high inter-class similarity. Moreover, the dataset is extremely class-imbalanced. To address the above challenges, we propose a novel Two-Stream Compare and Contrast Network (TSCCN) for VCFs diagnosis. This network consists of two streams, a recognition stream which learns to identify VCFs through comparing and contrasting between adjacent vertebra, and a classification stream which compares and contrasts between intra-class and inter-class to learn features for fine-grained classification. The two streams are integrated via a learnable weight control module which adaptively sets their contribution. The TSCCN is evaluated on a dataset consisting of 239 VCFs patients and achieves the average sensitivity and specificity of 92.56\% and 96.29\%, respectively.