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How to Generalize a Deep Learning Model to New Data Lacking Appropriate MR Inputs?  An Exploration using Ultra-low-dose Amyloid PET/MRI

Author:Kevin Chen  Matti Schürer  Jiahong Ouyang  Enhao Gong  Solveig Tiepolt  Osama Sabri  Greg Zaharchuk  Henryk Barthel  

Institution:Stanford University  University of Leipzig  

Session Type:Power Pitch  

Session Date:Wednesday, 15 May 2019  

Session Time:08:15  

Session Name:Pitch: Machine Learning Unleashed 2  

Program Number:0677  

Presentation Time:08:15   

Room Number:Power Pitch Theater A - Exhibition Hall  

Computer Number:

How to Generalize a Deep Learning Model to New Data Lacking Appropriate MR Inputs?  An Exploration using Ultra-low-dose Amyloid PET/MRI

Author:Kevin Chen  Matti Schürer  Jiahong Ouyang  Enhao Gong  Solveig Tiepolt  Osama Sabri  Greg Zaharchuk  Henryk Barthel  

Institution:Stanford University  University of Leipzig  

Session Type:Power Pitch Poster  

Session Date:Wednesday, 15 May 2019  

Session Time:09:15  

Session Name:Poster: Machine Learning Unleashed 2  

Program Number:0677  

Presentation Time:09:15   

Room Number:Power Pitch Theater A - Exhibition Hall  

Computer Number:Plasma 11  

Transfer Learning of an Ultra-low-dose Amyloid PET/MRI U-Net Across Scanner Models

Author:Kevin Chen  Matti Schürer  Jiahong Ouyang  Enhao Gong  Solveig Tiepolt  Osama Sabri  Greg Zaharchuk  Henryk Barthel  

Institution:Stanford University  University of Leipzig  

Session Type:Oral  

Session Date:Thursday, 16 May 2019  

Session Time:13:45  

Session Name:Molecular & Metabolic Imaging  

Program Number:1128  

Presentation Time:14:21   

Room Number:Room 510A-D  

Computer Number:

Ultra-low-dose Amyloid PET/MRI Reconstruction by Generative Adversarial Network

Author:Jiahong Ouyang  Kevin Chen  Enhao Gong  John Pauly  Greg Zaharchuk  

Institution:Carnegie Mellon University  Stanford University  

Session Type:Digital Poster  

Session Date:Thursday, 16 May 2019  

Session Time:09:15  

Session Name:Machine Learning for Image Reconstruction: Breakthroughs  

Program Number:4704  

Presentation Time:09:15   

Room Number:Exhibition Hall  

Computer Number:Computer 161