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Meeting ReportPhysics, Instrumentation & Data Sciences - Data Sciences

Impact of training dataset size on technical performance of a deep learning model for detection and quantification of lymphomatous disease on 18F-FDG PET/CT

Georgia Ionescu, Russell FROOD, Andrew SCARSBROOK and Julien Willaime
Journal of Nuclear Medicine June 2023, 64 (supplement 1) P1069;
Georgia Ionescu
1Mirada Medical Ltd.
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Russell FROOD
2LEEDS TEACHING HOSPITALS NHS TRUST
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Andrew SCARSBROOK
2LEEDS TEACHING HOSPITALS NHS TRUST
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Julien Willaime
1Mirada Medical Ltd.
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Article Information

vol. 64 no. supplement 1 P1069

Published By 
Society of Nuclear Medicine
Print ISSN 
0161-5505
Online ISSN 
2159-662X
History 
  • Published online August 28, 2023.

Copyright & Usage 
© 2023

Author Information

  1. Georgia Ionescu1,
  2. Russell FROOD2,
  3. Andrew SCARSBROOK2 and
  4. Julien Willaime1
  1. 1Mirada Medical Ltd.
  2. 2LEEDS TEACHING HOSPITALS NHS TRUST

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Journal of Nuclear Medicine
Vol. 64, Issue supplement 1
June 1, 2023
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Impact of training dataset size on technical performance of a deep learning model for detection and quantification of lymphomatous disease on 18F-FDG PET/CT
Georgia Ionescu, Russell FROOD, Andrew SCARSBROOK, Julien Willaime
Journal of Nuclear Medicine Jun 2023, 64 (supplement 1) P1069;

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Impact of training dataset size on technical performance of a deep learning model for detection and quantification of lymphomatous disease on 18F-FDG PET/CT
Georgia Ionescu, Russell FROOD, Andrew SCARSBROOK, Julien Willaime
Journal of Nuclear Medicine Jun 2023, 64 (supplement 1) P1069;
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