Preuss Kiersten, Thach Nate, Liang Xiaoying, Baine Michael, Chen Justin, Zhang Chi, Du Huijing, Yu Hongfeng, Lin Chi, Hollingsworth Michael A, Zheng Dandan
Department of Radiation Oncology, University of Nebraska Medical Center, Omaha, NE 68198, USA.
Department of Nutrition and Health Sciences, University of Nebraska Lincoln, Lincoln, NE 68588, USA.
Cancers (Basel). 2022 Mar 24;14(7):1654. doi: 10.3390/cancers14071654.
As the most lethal major cancer, pancreatic cancer is a global healthcare challenge. Personalized medicine utilizing cutting-edge multi-omics data holds potential for major breakthroughs in tackling this critical problem. Radiomics and deep learning, two trendy quantitative imaging methods that take advantage of data science and modern medical imaging, have shown increasing promise in advancing the precision management of pancreatic cancer via diagnosing of precursor diseases, early detection, accurate diagnosis, and treatment personalization and optimization. Radiomics employs manually-crafted features, while deep learning applies computer-generated automatic features. These two methods aim to mine hidden information in medical images that is missed by conventional radiology and gain insights by systematically comparing the quantitative image information across different patients in order to characterize unique imaging phenotypes. Both methods have been studied and applied in various pancreatic cancer clinical applications. In this review, we begin with an introduction to the clinical problems and the technology. After providing technical overviews of the two methods, this review focuses on the current progress of clinical applications in precancerous lesion diagnosis, pancreatic cancer detection and diagnosis, prognosis prediction, treatment stratification, and radiogenomics. The limitations of current studies and methods are discussed, along with future directions. With better standardization and optimization of the workflow from image acquisition to analysis and with larger and especially prospective high-quality datasets, radiomics and deep learning methods could show real hope in the battle against pancreatic cancer through big data-based high-precision personalization.
作为最致命的主要癌症,胰腺癌是一项全球性的医疗挑战。利用前沿多组学数据的个性化医疗在解决这一关键问题上具有取得重大突破的潜力。放射组学和深度学习是两种利用数据科学和现代医学成像的热门定量成像方法,在通过前驱疾病诊断、早期检测、准确诊断以及治疗个性化和优化来推进胰腺癌的精准管理方面已显示出越来越大的前景。放射组学采用人工构建的特征,而深度学习应用计算机生成的自动特征。这两种方法旨在挖掘传统放射学所遗漏的医学图像中的隐藏信息,并通过系统比较不同患者的定量图像信息来获得见解,以表征独特的成像表型。这两种方法均已在各种胰腺癌临床应用中得到研究和应用。在本综述中,我们首先介绍临床问题和技术。在对这两种方法进行技术概述之后,本综述重点关注在癌前病变诊断、胰腺癌检测与诊断、预后预测、治疗分层以及放射基因组学等临床应用方面的当前进展。讨论了当前研究和方法的局限性以及未来方向。随着从图像采集到分析的工作流程得到更好的标准化和优化,以及拥有更大且尤其是前瞻性的高质量数据集,放射组学和深度学习方法有望通过基于大数据的高精度个性化在对抗胰腺癌的斗争中展现真正的希望。