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人工智能在肿瘤影像学中的挑战与机遇。

Challenges and opportunities for artificial intelligence in oncological imaging.

机构信息

Department of Medical Imaging, Sunnybrook Health Sciences Centre, University of Toronto, Canada.

Department of Radiology, Stanford University, CA, USA.

出版信息

Clin Radiol. 2021 Oct;76(10):728-736. doi: 10.1016/j.crad.2021.03.009. Epub 2021 Apr 24.

Abstract

Imaging plays a key role in oncology, including the diagnosis and detection of cancer, determining clinical management, assessing treatment response, and complications of treatment or disease. The current use of clinical oncology is predominantly qualitative in nature with some relatively crude size-based measurements of tumours for assessment of disease progression or treatment response; however, it is increasingly understood that there may be significantly more information about oncological disease that can be obtained from imaging that is not currently utilized. Artificial intelligence (AI) has the potential to harness quantitative techniques to improve oncological imaging. These may include improving the efficiency or accuracy of traditional roles of imaging such as diagnosis or detection. These may also include new roles for imaging such as risk-stratifying patients for different types of therapy or determining biological tumour subtypes. This review article outlines several major areas in oncological imaging where there may be opportunities for AI technology. These include (1) screening and detection of cancer, (2) diagnosis and risk stratification, (3) tumour segmentation, (4) precision oncology, and (5) predicting prognosis and assessing treatment response. This review will also address some of the potential barriers to AI research in oncological imaging.

摘要

成像在肿瘤学中起着关键作用,包括癌症的诊断和检测、确定临床管理、评估治疗反应以及治疗或疾病的并发症。目前,临床肿瘤学的应用主要是定性的,对肿瘤进行一些相对粗略的基于大小的测量,以评估疾病进展或治疗反应;然而,人们越来越认识到,从成像中可能可以获得更多目前未被利用的关于肿瘤疾病的信息。人工智能 (AI) 有可能利用定量技术来改善肿瘤成像。这些可能包括提高成像的传统作用(如诊断或检测)的效率或准确性。这些也可能包括成像的新作用,例如为不同类型的治疗或确定生物肿瘤亚型对患者进行风险分层。本文综述了肿瘤成像中可能存在人工智能技术机会的几个主要领域。这些包括 (1) 癌症的筛查和检测,(2) 诊断和风险分层,(3) 肿瘤分割,(4) 精准肿瘤学,以及 (5) 预测预后和评估治疗反应。本文还将讨论肿瘤成像中人工智能研究的一些潜在障碍。

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本文引用的文献

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