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Supplementary Table S1-S3 from Predicting Molecular Subtype and Survival of Rhabdomyosarcoma Patients Using Deep Learning of H&E Images: A Report from the Children's Oncology Group
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2025
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Abstract
<p>Supplemental Table S1. Whole slide image tissue segmentation statistics by an expert pathologist and probability prediction using a trained convolutional neural network. Supplemental Table S2. Clinical and molecular characteristics of FN-RMS samples used for training models for mutation prediction. Yellow boxes indicate genes included in defining the RAS pathway. Supplemental Table S3. Clinical information with COG risk stratification of FN-RMS samples used for training a prognostication predictive CNN.</p>
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Autoren
- David Milewski
- Hyun Jung
- G. Thomas Brown
- Yanling Liu
- Ben Somerville
- Curtis Lisle
- Marc Ladanyi
- Erin R. Rudzinski
- Hyoyoung Choo‐Wosoba
- Donald A. Barkauskas
- Tammy Lo
- David Hall
- Corinne M. Linardic
- Jun S. Wei
- Hsien-Chao Chou
- Stephen X. Skapek
- Rajkumar Venkatramani
- Peter K. Bode
- Seth M. Steinberg
- George Zaki
- Igor B. Kuznetsov
- Douglas S. Hawkins
- Jack F. Shern
- Jack Collins
- Javed Khan