Advancing clinical MRI exams with artificial intelligence: Japan's contributions and future prospects
- PMID: 39548049
- PMCID: PMC11868336
- DOI: 10.1007/s11604-024-01689-y
Advancing clinical MRI exams with artificial intelligence: Japan's contributions and future prospects
Abstract
In this narrative review, we review the applications of artificial intelligence (AI) into clinical magnetic resonance imaging (MRI) exams, with a particular focus on Japan's contributions to this field. In the first part of the review, we introduce the various applications of AI in optimizing different aspects of the MRI process, including scan protocols, patient preparation, image acquisition, image reconstruction, and postprocessing techniques. Additionally, we examine AI's growing influence in clinical decision-making, particularly in areas such as segmentation, radiation therapy planning, and reporting assistance. By emphasizing studies conducted in Japan, we highlight the nation's contributions to the advancement of AI in MRI. In the latter part of the review, we highlight the characteristics that make Japan a unique environment for the development and implementation of AI in MRI examinations. Japan's healthcare landscape is distinguished by several key factors that collectively create a fertile ground for AI research and development. Notably, Japan boasts one of the highest densities of MRI scanners per capita globally, ensuring widespread access to the exam. Japan's national health insurance system plays a pivotal role by providing MRI scans to all citizens irrespective of socioeconomic status, which facilitates the collection of inclusive and unbiased imaging data across a diverse population. Japan's extensive health screening programs, coupled with collaborative research initiatives like the Japan Medical Imaging Database (J-MID), enable the aggregation and sharing of large, high-quality datasets. With its technological expertise and healthcare infrastructure, Japan is well-positioned to make meaningful contributions to the MRI-AI domain. The collaborative efforts of researchers, clinicians, and technology experts, including those in Japan, will continue to advance the future of AI in clinical MRI, potentially leading to improvements in patient care and healthcare efficiency.
Keywords: Artificial intelligence; Healthcare; Magnetic resonance imaging; Medicine; Review.
© 2024. The Author(s).
Conflict of interest statement
Declarations. Conflict of interest: Yusuke Matsui received a grant and lecturer fee from Canon Medical Systems outside the submitted work. Kenji Hirata received a grant from GE HealthCare Japan outside the submitted work. The other authors declare that they have no conflicts of interest.
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