As an effective way to integrate the information contained in multiple medical images under different modalities, medical image synthesis and fusion have emerged in various clinical applications such as disease diagnosis and treatment planning. In this paper, an invertible and variable augmented network (iVAN) is proposed for medical image synthesis and fusion. In iVAN, the channel number of the network input and output is the same through variable augmentation technology, and data relevance is enhanced, which is conducive to the generation of characterization information. Meanwhile, the invertible network is used to achieve the bidirectional inference processes. Due to the invertible and variable augmentation schemes, iVAN can not only be applied to the mappings of multi-input to one-output and multi-input to multi-output, but also be applied to one-input to multi-output. Experimental results demonstrated that the proposed method can obtain competitive or superior performance in comparison to representative medical image synthesis and fusion methods.
翻译:作为在不同模式下整合多种医疗图像所含信息的有效方式,医学图像合成和聚合在疾病诊断和治疗规划等各种临床应用中出现,在本文中,为医学图像合成和聚合提议了一个不可逆和可变的扩大网络(iVAN),在iVAN中,通过可变增强技术,网络输入和输出的频道数与频道数相同,数据相关性也得到加强,有利于生成定性信息。同时,通过可视网络实现双向推断过程。由于不可逆和可变的增强计划,iVAN不仅可以应用于对一输出和多输出的多输出的多投入图谱,还可以用于对多输出的一输入。实验结果表明,拟议的方法在与具有代表性的医学图像合成和聚合方法相比,可以取得竞争性或优异的性表现。