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Artificial intelligence in multiparametric prostate cancer imaging with focus on deep-learning methods

机译:多马型前列腺癌成像的人工智能,重点在深学习方法

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摘要

Prostate cancer represents today the most typical example of a pathology whose diagnosis requires multiparametric imaging, a strategy where multiple imaging techniques are combined to reach an acceptable diagnostic performance. However, the reviewing, weighing and coupling of multiple images not only places additional burden on the radiologist, it also complicates the reviewing process. Prostate cancer imaging has therefore been an important target for the development of computer-aided diagnostic (CAD) tools. In this survey, we discuss the advances in CAD for prostate cancer over the last decades with special attention to the deep-learning techniques that have been designed in the last few years. Moreover, we elaborate and compare the methods employed to deliver the CAD output to the operator for further medical decision making. (C) 2020 Elsevier B.V. All rights reserved.
机译:前列腺癌代表今天的病理学的最典型的例子,其诊断需要多分析成像,这是多种成像技术被组合以达到可接受的诊断性能的策略。 然而,多种图像的审查,称重和耦合不仅将额外的放射科学家造成额外的负担,也使审查过程复杂化。 因此,前列腺癌成像是计算机辅助诊断(CAD)工具的重要目标。 在本调查中,我们在过去几十年中讨论了前列腺癌的CAD的进展,特别注意了在过去几年中设计的深度学习技术。 此外,我们详细说明并比较所采用的方法将CAD输出传送到运营商以获得进一步的医疗决策。 (c)2020 Elsevier B.V.保留所有权利。

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