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ISSN: 1689-832X
Journal of Contemporary Brachytherapy
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3/2024
vol. 16
 
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Original paper

Pre-treatment T2-weighted magnetic resonance radiomics for prediction of loco-regional recurrence after image-guided adaptive brachytherapy for locally advanced cervical cancer

Pittaya Dankulchai
1
,
Natthakorn Thanamitsomboon
1
,
Wiwatchai Sittiwong
1
,
Nont Kosaisawe
2
,
Kullathorn Thephamongkhol
1
,
Wisawa Phongprapun
1
,
Tissana Prasartseree
1

  1. Division of Radiation Oncology, Department of Radiology, Faculty of Medicine Siriraj Hospital, Mahidol University, Bangkok, Thailand
  2. Department of Molecular and Cellular Biology, University of California Davis, Davis, USA
J Contemp Brachytherapy 2024; 16, 3: 193–201
Online publish date: 2024/06/28
Article file
- Pre-treatment.pdf  [0.26 MB]
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