Institute for Experimental Molecular Imaging, University Clinic and Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Forckenbeckstrasse 55, 52074 Aachen, Germany; Fraunhofer Institute for Digital Medicine MEVIS, Am Fallturm 1, 28359 Bremen, Germany.
Institute for Experimental Molecular Imaging, University Clinic and Helmholtz Institute for Biomedical Engineering, RWTH Aachen University, Forckenbeckstrasse 55, 52074 Aachen, Germany.
Methods. 2021 Apr;188:30-36. doi: 10.1016/j.ymeth.2020.06.019. Epub 2020 Jun 29.
Digitalization, especially the use of machine learning and computational intelligence, is considered to dramatically shape medical procedures in the near future. In the field of cancer diagnostics, radiomics, the extraction of multiple quantitative image features and their clustered analysis, is gaining increasing attention to obtain more detailed, reproducible, and meaningful information about the disease entity, its prognosis and the ideal therapeutic option. In this context, automation of diagnostic procedures can improve the entire pipeline, which comprises patient registration, planning and performing an imaging examination at the scanner, image reconstruction, image analysis, and feeding the diagnostic information from various sources into decision support systems. With a focus on cancer diagnostics, this review article reports and discusses how computer-assistance can be integrated into diagnostic procedures and which benefits and challenges arise from it. Besides a strong view on classical imaging modalities like x-ray, CT, MRI, ultrasound, PET, SPECT and hybrid imaging devices thereof, it is outlined how imaging data can be combined with data deriving from patient anamnesis, clinical chemistry, pathology, and different omics. In this context, the article also discusses IT infrastructures that are required to realize this integration in the clinical routine. Although there are still many challenges to comprehensively implement automated and integrated data analysis in molecular cancer imaging, the authors conclude that we are entering a new era of medical diagnostics and precision medicine.
数字化,尤其是机器学习和计算智能的应用,被认为将在不久的将来极大地改变医疗程序。在癌症诊断领域,放射组学,即提取多个定量图像特征并对其进行聚类分析,越来越受到关注,以获取有关疾病实体、其预后和理想治疗选择的更详细、可重复和有意义的信息。在这种情况下,诊断程序的自动化可以改善整个流程,包括患者登记、在扫描仪上规划和进行成像检查、图像重建、图像分析,以及将来自各种来源的诊断信息输入决策支持系统。本文重点关注癌症诊断,报告并讨论了计算机辅助如何集成到诊断程序中,以及由此带来的益处和挑战。除了对 X 射线、CT、MRI、超声、PET、SPECT 和其混合成像设备等经典成像方式有深刻的见解外,本文还概述了如何将成像数据与来自患者病史、临床化学、病理学和不同组学的数据相结合。在这方面,文章还讨论了实现临床常规中这种集成所需的 IT 基础设施。尽管在全面实施分子癌症成像的自动化和集成数据分析方面仍存在许多挑战,但作者得出结论,我们正在进入一个新的医学诊断和精准医疗时代。