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http://hdl.handle.net/1942/48215| Title: | The Current Status of AI-accelerated MRI Techniques in Clinical Use | Authors: | Haller, Sven Hedderich, Dennis Federau, Christian Weisstanner, Christian Edjlali, Myriam VAN CAUTER, Sofie Zaharchuk, Greg |
Issue Date: | 2025 | Publisher: | RADIOLOGICAL SOC NORTH AMERICA (RSNA) | Source: | Radiology, 317 (2) (Art N° e243819) | Abstract: | Artificial intelligence (AI) tools to accelerate MRI are rapidly entering clinical routine. Several techniques for MRI acceleration already exist, including compressed sensing and parallel imaging. The introduction of AI acceleration tools for MRI is therefore not fundamentally novel. However, the possibility of combining these AI tools with existing MRI acceleration techniques adds potential opportunities and complexity. This article focuses on commercially available AI tools for clinical MRI acceleration. The basic principle of AI-accelerated MRI is to shorten acquisition time-which results in noisier or lower-spatial-resolution images-then recover image quality with AI. The potential advantages of AI-accelerated MRI include increased patient comfort, shorter waiting lists, reduced motion artifacts, economic efficiencies, and environmental benefits. This article first briefly presents fundamental technical aspects of AI acceleration tools, including noise reduction and super-resolution reconstruction, summarizing available evidence. Potential errors and pitfalls, notably hallucinations (ie, invented or disappearing lesions) are serious concerns, yet they remain poorly investigated. The occurrence of hallucinations, however, is probably rare at the acceleration levels recommended for clinical practice. The downstream implications and potential challenges of AI-accelerated MRI are also discussed, including generating too many images and studies for a limited number of radiologists to interpret. Additionally, slight AI-generated modifications of image contrast could lead to systematic bias in analyses that use historical controls, such as brain volume analyses. Also, the critical question of how much acceleration is clinically useful remains unclear and needs further investigation. Finally, the logistics of implementing AI acceleration tools in routine clinical workflow are discussed, including invested time, costs, and essential medicolegal considerations. The scientific community and radiologic societies should endeavor to establish assessment criteria for this new beneficial class of MRI tools that are rapidly entering clinical practice. (c) RSNA, 2025 | Notes: | Haller, S (corresponding author), Ctr Imagerie Med Cornavin, Pl Cornavin 18, CH-1201 Geneva, Switzerland.; Haller, S (corresponding author), Uppsala Univ, Dept Surg Sci, Res Area Radiol & Nucl Med, Uppsala, Sweden.; Haller, S (corresponding author), Univ Geneva, Fac Med, Geneva, Switzerland.; Haller, S (corresponding author), Capital Med Univ, Beijing Tiantan Hosp, Dept Radiol, Beijing, Peoples R China. sven.haller@me.com |
Keywords: | Humans;Brain;Magnetic Resonance Imaging;Artificial Intelligence;Image Interpretation, Computer-Assisted | Document URI: | http://hdl.handle.net/1942/48215 | ISSN: | 0033-8419 | DOI: | 10.1148/radiol.243819 | ISI #: | 001622828900005 | Category: | A1 | Type: | Journal Contribution |
| Appears in Collections: | Research publications |
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