Journal Article DZNE-2025-01306

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Proof of concept: Portable ultra-low-field MRI for the assessment of brain tumors

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2025
Oxford Univ. Press Oxford

Neuro-oncology practice AOP, npaf101 () [10.1093/nop/npaf101]

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Abstract: BackgroundHigh-field (HF) MRI is a standard diagnostic tool for brain cancer, but its high cost and technical demands limit accessibility in low- and middle-income countries. Recent advancements in ultra-low field (ULF) MRI technology, including the development of portable scanners, offer a promising solution to these challenges. This study evaluates the diagnostic capabilities of ULF-MRI in detecting brain cancer and compares radiological evaluation using ULF- with HF-MRI.MethodsConsecutive patients with suspected or confirmed brain tumors undergoing routine 3T HF-MRI at the University Hospital Bonn were recruited for this study and underwent ULF-MRI. Eligible patients were at least 18 years old and had MRI-abnormalities in the HF-MRI. The 0.064 Tesla Swoop portable MR Imaging System was utilized. HF-MRI and ULF-MRI scans were independently evaluated by two experienced neuroradiologists and results were compared.ResultsThirteen patients were recruited, of whom 11 (85%) were diagnosed with brain tumors. In 11/11 (100%) patients with brain tumors, ULF-MRI identified tumor lesions corresponding to the findings of HF-MRI. In 7/11 (63.6%) identification of all tumor lesions could be achieved. Three of four further relevant imaging findings in HF-MRI (e.g. acute hydrocephalus or concomitant ischemia) were also found in in ULF-MRI.ConclusionThis single-center study demonstrates that ULF-MRI is a practical tool in neuro-oncology, which may particularly be helpful in resource-limited settings. Further research is required to define the role of ULF-MRI alongside existing imaging modalities for brain cancer diagnosis and management.

Classification:

Contributing Institute(s):
  1. Neonatal Neuroscience (AG Sabir)
  2. Clinical Neuroimaging (AG Radbruch)
  3. Clinical Research Platform (CRP) (Clinical Research Platform (CRP))
Research Program(s):
  1. 352 - Disease Mechanisms (POF4-352) (POF4-352)
  2. 353 - Clinical and Health Care Research (POF4-353) (POF4-353)

Database coverage:
Medline ; Clarivate Analytics Master Journal List ; Ebsco Academic Search ; Emerging Sources Citation Index ; IF < 5 ; JCR ; SCOPUS ; Web of Science Core Collection
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Institute Collections > BN DZNE > BN DZNE-Clinical Research Platform (CRP)
Document types > Articles > Journal Article
Institute Collections > BN DZNE > BN DZNE-AG Radbruch
Institute Collections > BN DZNE > BN DZNE-AG Sabir
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 Record created 2025-12-01, last modified 2025-12-01



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