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Meeting ReportPoster - PhysicianPharm

Evaluation of large language models in natural language processing of PET/CT free-text reports

Tyler Bradshaw and Steve Cho
Journal of Nuclear Medicine May 2021, 62 (supplement 1) 1188;
Tyler Bradshaw
1University of Wisconsin Madison WI United States
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Steve Cho
2University of Wisconsin-Madison Madison WI United States
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Article Information

vol. 62 no. supplement 1 1188

Published By 
Society of Nuclear Medicine
Print ISSN 
0161-5505
Online ISSN 
2159-662X
History 
  • Published online May 18, 2021.

Copyright & Usage 
© 2021

Author Information

  1. Tyler Bradshaw1 and
  2. Steve Cho2
  1. 1University of Wisconsin Madison WI United States
  2. 2University of Wisconsin-Madison Madison WI United States

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Journal of Nuclear Medicine
Vol. 62, Issue supplement 1
May 1, 2021
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Evaluation of large language models in natural language processing of PET/CT free-text reports
Tyler Bradshaw, Steve Cho
Journal of Nuclear Medicine May 2021, 62 (supplement 1) 1188;

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Evaluation of large language models in natural language processing of PET/CT free-text reports
Tyler Bradshaw, Steve Cho
Journal of Nuclear Medicine May 2021, 62 (supplement 1) 1188;
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