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Artificial intelligence in radiology: relevance of collaborative work between radiologists and engineers for building a multidisciplinary team

Journal

CLINICAL RADIOLOGY
Volume 76, Issue 5, Pages 317-324

Publisher

W B SAUNDERS CO LTD
DOI: 10.1016/j.crad.2020.11.113

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The use of AI algorithms in radiology is increasing, with ML and DL techniques aiding radiologists in solving challenges. Prior to developing AI solutions, issues like decision-making, setting goals, team composition, and partnerships must be addressed. Communication between radiologists and data scientists is essential in the multidisciplinary team.
The use of artificial intelligence (AI) algorithms in the field of radiology is becoming more common. Several studies have demonstrated the potential utility of machine learning (ML) and deep learning (DL) techniques as aids for radiologists to solve specific radiological challenges. The decision-making process, the establishment of specific clinical or radiological targets, the profile of the different professionals involved in the development of AI solutions, and the relation with partnerships and stakeholders are only some of the main issues that have to be faced and solved prior to starting the development of radiological AI solutions. Among all the players in this multidisciplinary team, the communication between radiologists and data scientists is essential for a successful collaborative work. There are specific skills that are inherent to radiological and medical training that are critical for identifying anatomical or clinical targets as well as for segmenting or labelling lesions. These skills would then have to be transferred, explained, and taught to the data science experts to facilitate their comprehension and integration into ML or DL algorithms. On the other hand, there is a wide range of complex software packages, deep neural-network architectures, and data transfer processes for which radiologists need the expertise of software engineers and data scientists in order to select the optimal manner to analyse and post-process this amount of data. This paper offers a summary of the top five challenges faced by radiologists and data scientists including tips and tricks to build a successful AI team. (C) 2020 The Royal College of Radiologists. Published by Elsevier Ltd. All rights reserved.

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