工作流程
无线电技术
计算机科学
人工智能
神经影像学
分割
机器学习
鉴定(生物学)
医学影像学
个性化医疗
大数据
数据科学
医学物理学
医学
数据挖掘
生物信息学
数据库
植物
精神科
生物
作者
Philipp Lohmann,Norbert Galldiks,Martin Köcher,Alexander Heinzel,Christian Filß,Carina Stegmayr,Felix M. Mottaghy,Gereon R. Fink,N. Jon Shah,Karl‐Josef Langen
出处
期刊:Methods
[Elsevier BV]
日期:2020-06-06
卷期号:188: 112-121
被引量:122
标识
DOI:10.1016/j.ymeth.2020.06.003
摘要
Over the last years, the amount, variety, and complexity of neuroimaging data acquired in patients with brain tumors for routine clinical purposes and the resulting number of imaging parameters have substantially increased. Consequently, a timely and cost-effective evaluation of imaging data is hardly feasible without the support of methods from the field of artificial intelligence (AI). AI can facilitate and shorten various time-consuming steps in the image processing workflow, e.g., tumor segmentation, thereby optimizing productivity. Besides, the automated and computer-based analysis of imaging data may help to increase data comparability as it is independent of the experience level of the evaluating clinician. Importantly, AI offers the potential to extract new features from the routinely acquired neuroimages of brain tumor patients. In combination with patient data such as survival, molecular markers, or genomics, mathematical models can be generated that allow, for example, the prediction of treatment response or prognosis, as well as the noninvasive assessment of molecular markers. The subdiscipline of AI dealing with the computation, identification, and extraction of image features, as well as the generation of prognostic or predictive mathematical models, is termed radiomics. This review article summarizes the basics, the current workflow, and methods used in radiomics with a focus on feature-based radiomics in neuro-oncology and provides selected examples of its clinical application.
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