Despite technological and medical advances, the detection, interpretation, and treatment of cancer based on imaging data continue to pose significant challenges. These include inter-observer variability, class imbalance, dataset shifts, inter- and intra-tumour heterogeneity, malignancy determination, and treatment effect uncertainty. Given the recent advancements in Generative Adversarial Networks (GANs), data synthesis, and adversarial training, we assess the potential of these technologies to address a number of key challenges of cancer imaging. We categorise these challenges into (a) data scarcity and imbalance, (b) data access and privacy, (c) data annotation and segmentation, (d) cancer detection and diagnosis, and (e) tumour profiling, treatment planning and monitoring. Based on our analysis of 164 publications that apply adversarial training techniques in the context of cancer imaging, we highlight multiple underexplored solutions with research potential. We further contribute the Synthesis Study Trustworthiness Test (SynTRUST), a meta-analysis framework for assessing the validation rigour of medical image synthesis studies. SynTRUST is based on 26 concrete measures of thoroughness, reproducibility, usefulness, scalability, and tenability. Based on SynTRUST, we analyse 16 of the most promising cancer imaging challenge solutions and observe a high validation rigour in general, but also several desirable improvements. With this work, we strive to bridge the gap between the needs of the clinical cancer imaging community and the current and prospective research on data synthesis and adversarial networks in the artificial intelligence community.
翻译:尽管技术和医学进步,根据成像数据检测、判读和治疗癌症的工作继续构成重大挑战,其中包括观察者之间的变异、阶级不平衡、数据集变化、癌症的检测和诊断以及肿瘤剖析、治疗规划和监测。根据我们对在癌症成像中应用对抗性培训技术的164种出版物的分析,我们强调研究潜力方面的多种探索不足的解决办法。我们进一步协助综合研究可靠性测试(SynTRust),这是用于评估医学成像研究的核实程度的可靠综合分析框架。合成信任以26种具体的措施为基础,即彻底性、准确性、准确性、准确性、准确性、准确性,以及我们16种癌症的可靠性分析。