The existence of completely aligned and paired multi-modal neuroimaging data has proved its effectiveness in diagnosis of brain diseases. However, collecting the full set of well-aligned and paired data is expensive or even impractical, since the practical difficulties may include high cost, long time acquisition, image corruption, and privacy issues. A realistic solution is to explore either an unsupervised learning or a semi-supervised learning to synthesize the absent neuroimaging data. In this paper, we are the first one to comprehensively approach cross-modality neuroimage synthesis task from different perspectives, which include the level of the supervision (especially for weakly-supervised and unsupervised), loss function, evaluation metrics, the range of modality synthesis, datasets (aligned, private and public) and the synthesis-based downstream tasks. To begin with, we highlight several opening challenges for cross-modality neuroimage sysnthesis. Then we summarize the architecture of cross-modality synthesis under various of supervision level. In addition, we provide in-depth analysis of how cross-modality neuroimage synthesis can improve the performance of different downstream tasks. Finally, we re-evaluate the open challenges and point out the future directions for the remaining challenges. All resources are available at https://github.com/M-3LAB/awesome-multimodal-brain-image-systhesis
翻译:完全匹配和配对的多模式神经成像数据的存在证明它在诊断大脑疾病方面的有效性。然而,收集整套完整、完善和配对的数据是昂贵甚至不切实际的,因为实际困难可能包括高成本、长期获取、图像腐败和隐私问题。一个现实的解决办法是探索一种不受监督的学习或半监督的学习,以综合缺乏的神经成像数据。在本文件中,我们是第一个从不同角度全面处理跨模式神经成像合成任务的系统,其中包括监督水平(特别是监督薄弱和不受监督的系统)、损失功能、评估指标、模式合成、数据集(调整、私营和公共部门)的范围以及基于合成的下游任务。首先,我们强调交叉现代神经成像系统系统系统存在的若干挑战。然后,我们总结了不同监督层面的跨模式合成结构。此外,我们深入分析了跨模式神经成像系统/不受监督的合成系统、损失功能、评价指标、模式合成、模式组合、数据集(调整、私营和公共部门)和基于合成的下游任务的范围。最后,我们强调跨模式神经成型神经成型神经成像系统/跨模式的挑战是如何改进未来挑战的。