TY - JOUR
T1 - The new era of artificial intelligence in neuroradiology
T2 - current research and promising tools
AU - Macruz, Fabíola Bezerra de Carvalho
AU - Dias, Ana Luiza Mandetta Pettengil
AU - Andrade, Celi Santos
AU - Nucci, Mariana Penteado
AU - Rimkus, Carolina de Medeiros
AU - Lucato, Leandro Tavares
AU - Rocha, Antônio José da
AU - Kitamura, Felipe Campos
N1 - Publisher Copyright: © 2024. The Author(s).
PY - 2024
Y1 - 2024
N2 - Radiology has a number of characteristics that make it an especially suitable medical discipline for early artificial intelligence (AI) adoption. These include having a well-established digital workflow, standardized protocols for image storage, and numerous well-defined interpretive activities. The more than 200 commercial radiologic AI-based products recently approved by the Food and Drug Administration (FDA) to assist radiologists in a number of narrow image-analysis tasks such as image enhancement, workflow triage, and quantification, corroborate this observation. However, in order to leverage AI to boost efficacy and efficiency, and to overcome substantial obstacles to widespread successful clinical use of these products, radiologists should become familiarized with the emerging applications in their particular areas of expertise. In light of this, in this article we survey the existing literature on the application of AI-based techniques in neuroradiology, focusing on conditions such as vascular diseases, epilepsy, and demyelinating and neurodegenerative conditions. We also introduce some of the algorithms behind the applications, briefly discuss a few of the challenges of generalization in the use of AI models in neuroradiology, and skate over the most relevant commercially available solutions adopted in clinical practice. If well designed, AI algorithms have the potential to radically improve radiology, strengthening image analysis, enhancing the value of quantitative imaging techniques, and mitigating diagnostic errors.
AB - Radiology has a number of characteristics that make it an especially suitable medical discipline for early artificial intelligence (AI) adoption. These include having a well-established digital workflow, standardized protocols for image storage, and numerous well-defined interpretive activities. The more than 200 commercial radiologic AI-based products recently approved by the Food and Drug Administration (FDA) to assist radiologists in a number of narrow image-analysis tasks such as image enhancement, workflow triage, and quantification, corroborate this observation. However, in order to leverage AI to boost efficacy and efficiency, and to overcome substantial obstacles to widespread successful clinical use of these products, radiologists should become familiarized with the emerging applications in their particular areas of expertise. In light of this, in this article we survey the existing literature on the application of AI-based techniques in neuroradiology, focusing on conditions such as vascular diseases, epilepsy, and demyelinating and neurodegenerative conditions. We also introduce some of the algorithms behind the applications, briefly discuss a few of the challenges of generalization in the use of AI models in neuroradiology, and skate over the most relevant commercially available solutions adopted in clinical practice. If well designed, AI algorithms have the potential to radically improve radiology, strengthening image analysis, enhancing the value of quantitative imaging techniques, and mitigating diagnostic errors.
KW - Artificial Intelligence
KW - Deep Learning
KW - Machine Learning
KW - Neuroradiology
UR - http://www.scopus.com/inward/record.url?scp=85190185735&partnerID=8YFLogxK
U2 - 10.1055/s-0044-1779486
DO - 10.1055/s-0044-1779486
M3 - Review article
C2 - 38565188
SN - 0004-282X
VL - 82
JO - Arquivos de neuro-psiquiatria
JF - Arquivos de neuro-psiquiatria
IS - 6
M1 - s00441779486
ER -