AI in Radiology: From Theory into Practice

AuthorErik Ranschaerten
Issued Date2019-11-30en
AbstractBackground: Radiology is at the forefront of the revolution in medical imaging, which is mainly based on the progress made in machine learning and deep learning. New tools are being developed and made commercially available for implementation in radiology practice. AI solutions can intervene in different parts of the entire radiological workflow, and thus are likely to have a significant impact on the way that radiology services are being offered. Objectives: By listening to this lecture, the audience is expected to: Outline: In this presentation, a brief historical overview is provided of the progress that has been made in the past few years in the field of artificial intelligence. The basic principles of machine learning and deep learning are explained. Radiology is at the forefront of these developments, with the ability to provide a huge resource of data. The way these new AI-based applications can be applied is explained, accompanying with advantages, disadvantages, and risks. Advice is provided on how to use these tools in clinical practice.en
DOIhttps://doi.org/10.5812/iranjradiol.99303en
PublisherBrieflandsen
TitleAI in Radiology: From Theory into Practiceen
TypeAbstracten

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