Tang Lei
Department of Radiology, Key Laboratory of Carcinogenesis and Translational Research(Ministry of Education), Peking University Cancer Hospital and Institute, Beijing 100142, China Email:
Zhonghua Wei Chang Wai Ke Za Zhi. 2018 Oct 25;21(10):1106-1112.
Following the increased demand of personalized medicine to precise radiology in advanced gastric cancer, there is particular need for objective and powerful surrogate to help the gastro-radiology to break through the bottleneck of imaging resolution and the defect of subjective diagnosis, which can further improve the efficacy of staging and response evaluation. On the basis of the existing imaging resolution, the radiomics can perform massive data mining through texture analysis and big data, using artificial intelligence deep learning and other algorithms to screen and integrate images and clinical features for modeling and diagnosis, which may further improve the efficacy of staging and response evaluation theoretically. In this paper, we focused on gastro-radiology and radiomics, and reviewed five dimensions progressively: (1) As the first choice for staging and response evaluation, CT application is limited by radiologists' ability to excavate image features and information integration, which needs more powerful image processing method. (2) Radiomics texture analysis can provide massive objective image information that can not be identified by the radiologists' naked eye. It is more detailed and provides quantitative evaluation of the characteristics of tumors better than the radiologists' subjective vision analysis, which can dig potential microscopic information. In the recent two years, the research on the application has been progressing rapidly, covering almost all the solid tumors, and solving the various clinical focuses using entropy, skewness, heterogeneity and other texture analysis indicators. (3) The research progress of radiomics in gastric cancer from the following three directions was summarized: differential diagnosis and biological behavior analysis, staging, and response prediction and evaluation. The current research confirmed the high efficiency of radiomics and texture analysis in differentiating different types, stages and responders of gastric cancer, which can act at least as an important supplement for the subjective evaluation of the radiologists.(4) The congenital defects of radiomics and the current problems on research were summarized, in order to avoid misuse and pitfalls. (5) The radiologists need not to worry about being replaced in the expectation of the future AI radiomics; on the contrary, AI radiomics will be a good assistant. The radiologist should actively take part in the MDT and cooperate with multi-center colleagues to promote the development of large data radiomics in gastric cancer.
随着个性化医疗对晚期胃癌精准放射学需求的增加,特别需要客观且强大的替代指标来帮助胃肠放射学突破成像分辨率的瓶颈和主观诊断的缺陷,从而进一步提高分期和疗效评估的效能。在现有成像分辨率的基础上,放射组学可通过纹理分析和大数据进行海量数据挖掘,利用人工智能深度学习等算法筛选并整合图像和临床特征以进行建模和诊断,这在理论上可能进一步提高分期和疗效评估的效能。在本文中,我们聚焦于胃肠放射学和放射组学,并逐步探讨了五个方面:(1)作为分期和疗效评估的首选,CT的应用受放射科医生挖掘图像特征和信息整合能力的限制,需要更强大的图像处理方法。(2)放射组学纹理分析能够提供大量放射科医生肉眼无法识别的客观图像信息。它更为详尽,比放射科医生的主观视觉分析能更好地对肿瘤特征进行定量评估,能够挖掘潜在的微观信息。近两年,其应用研究进展迅速,几乎涵盖了所有实体肿瘤,并利用熵、偏度、异质性等纹理分析指标解决了各种临床关注点。(3)从以下三个方向总结了放射组学在胃癌中的研究进展:鉴别诊断与生物学行为分析、分期以及疗效预测与评估。当前研究证实了放射组学和纹理分析在鉴别胃癌不同类型、分期和反应者方面的高效性,其至少可作为放射科医生主观评估的重要补充。(4)总结了放射组学的先天性缺陷及当前研究存在的问题,以避免误用和陷阱。(5)在对未来人工智能放射组学的展望中,放射科医生无需担心会被取代;相反,人工智能放射组学将是一个很好的助手。放射科医生应积极参与多学科团队协作,并与多中心的同事合作,以推动胃癌大数据放射组学的发展。