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Excited to share our latest work using synthetic image generation for common #DBS targeting sequences! From a single MP2RAGE acquisition, we can create T1, FGATIR, EDGE, GM nulled, etc. & also optimize image contrast. #neurotwitter #NeuroRad

19,642 Aufrufe • vor 2 Jahren •via X (Twitter)

7 Kommentare

Profilbild von Erik Middlebrooks, MD
Erik Middlebrooks, MDvor 2 Jahren

This has revolutionized our workflow with shorter scan times for equal or better image quality. Also beneficial for #7T with ability to adjust contrast post-acquisition to account for B1+ variations. @SeizureSurgeon @VishalPatel_MD @ElenaGreco_11

Profilbild von Andreas Horn
Andreas Hornvor 2 Jahren

Amazing!

Profilbild von A. K
A. Kvor 2 Jahren

This is pretty dope Dr. Middlerooks!

Profilbild von Danny JJ Wang
Danny JJ Wangvor 2 Jahren

Congrats Erik ingenious idea! Is the software available?

Profilbild von Erik Middlebrooks, MD
Erik Middlebrooks, MDvor 2 Jahren

Sure! Will email you

Profilbild von Bryan Neth, MD, PhD
Bryan Neth, MD, PhDvor 2 Jahren

This is great! @TerryBurnsLab

Profilbild von STLPNTING
STLPNTINGvor 2 Jahren

I really wish my doctors would refer me to there I have a CSF leak and I just keep getting pushed off as if I'm nothing. I'm 32 and have a 4 and 5 yr old and we are expecting December 3rd our 3rd child. If anyone can help get me into Mayo it would be a blessing.

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