医学
转移
放射科
疾病
深度学习
计算机断层摄影术
断层摄影术
癌症
临床试验
医学物理学
人工智能
机器学习
病理
内科学
计算机科学
作者
Natesh Shivakumar,Anirudh Chandrashekar,A Handa,Regent Lee
标识
DOI:10.1136/postgradmedj-2020-139620
摘要
CT is widely used for diagnosis, staging and management of cancer. The presence of metastasis has significant implications on treatment and prognosis. Deep learning (DL), a form of machine learning, where layers of programmed algorithms interpret and recognise patterns, may have a potential role in CT image analysis. This review aims to provide an overview on the use of DL in CT image analysis in the diagnostic evaluation of metastatic disease. A total of 29 studies were included which could be grouped together into three areas of research: the use of deep learning on the detection of metastatic disease from CT imaging, characterisation of lesions on CT into metastasis and prediction of the presence or development of metastasis based on the primary tumour. In conclusion, DL in CT image analysis could have a potential role in evaluating metastatic disease; however, prospective clinical trials investigating its clinical value are required.
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