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Data from Predicting Molecular Subtype and Survival of Rhabdomyosarcoma Patients Using Deep Learning of H&E Images: A Report from the Children's Oncology Group

Authors :
Javed Khan
Jack Collins
Jack F. Shern
Douglas S. Hawkins
Igor B. Kuznetsov
George Zaki
Seth M. Steinberg
Peter K. Bode
Rajkumar Venkatramani
Stephen X. Skapek
Hsien-Chao Chou
Jun S. Wei
Corinne M. Linardic
David Hall
Tammy Lo
Donald A. Barkauskas
Hyoyoung Choo-Wosoba
Erin R. Rudzinski
Marc Ladanyi
Curtis Lisle
Ben Somerville
Yanling Liu
G. Thomas Brown
Hyun Jung
David Milewski
Publication Year :
2023
Publisher :
American Association for Cancer Research (AACR), 2023.

Abstract

Purpose:Rhabdomyosarcoma (RMS) is an aggressive soft-tissue sarcoma, which primarily occurs in children and young adults. We previously reported specific genomic alterations in RMS, which strongly correlated with survival; however, predicting these mutations or high-risk disease at diagnosis remains a significant challenge. In this study, we utilized convolutional neural networks (CNN) to learn histologic features associated with driver mutations and outcome using hematoxylin and eosin (H&E) images of RMS.Experimental Design:Digital whole slide H&E images were collected from clinically annotated diagnostic tumor samples from 321 patients with RMS enrolled in Children's Oncology Group (COG) trials (1998–2017). Patches were extracted and fed into deep learning CNNs to learn features associated with mutations and relative event-free survival risk. The performance of the trained models was evaluated against independent test sample data (n = 136) or holdout test data.Results:The trained CNN could accurately classify alveolar RMS, a high-risk subtype associated with PAX3/7-FOXO1 fusion genes, with an ROC of 0.85 on an independent test dataset. CNN models trained on mutationally-annotated samples identified tumors with RAS pathway with a ROC of 0.67, and high-risk mutations in MYOD1 or TP53 with a ROC of 0.97 and 0.63, respectively. Remarkably, CNN models were superior in predicting event-free and overall survival compared with current molecular-clinical risk stratification.Conclusions:This study demonstrates that high-risk features, including those associated with certain mutations, can be readily identified at diagnosis using deep learning. CNNs are a powerful tool for diagnostic and prognostic prediction of rhabdomyosarcoma, which will be tested in prospective COG clinical trials.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....00bcf079f42542f7089f7496d192174a
Full Text :
https://doi.org/10.1158/1078-0432.c.6532878.v1