High-resolution longitudinal screening with magnetic resonance imaging in a murine brain cancer model.

نویسندگان

  • Nicholas A Bock
  • Gelareh Zadeh
  • Lori M Davidson
  • Baoping Qian
  • John G Sled
  • Abhijit Guha
  • R Mark Henkelman
چکیده

One of the main limitations of intracranial models of diseases is our present inability to monitor and evaluate the intracranial compartment noninvasively over time. Therefore, there is a growing need for imaging modalities that provide thorough neuropathological evaluations of xenograft and transgenic models of intracranial pathology. In this study, we have established protocols for multiple-mouse magnetic resonance imaging (MRI) to follow the growth and behavior of intracranial xenografts of gliomas longitudinally. We successfully obtained weekly images on 16 mice for a total of 5 weeks on a 7-T multiple-mouse MRI. T2- and T1-weighted imaging with gadolinium enhancement of vascularity was used to detect tumor margins, tumor size, and growth. These experiments, using 3D whole brain images obtained in four mice at once, demonstrate the feasibility of obtaining repeat radiological images in intracranial tumor models and suggest that MRI should be incorporated as a research modality for the investigation of intracranial pathobiology.

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عنوان ژورنال:
  • Neoplasia

دوره 5 6  شماره 

صفحات  -

تاریخ انتشار 2003