Predicting molecular subtype and survival of rhabdomyosarcoma patients using deep learning of H&E images: A report from the Children's Oncology Group Journal Article


Authors: Milewski, D.; Jung, H.; Brown, G. T.; Liu, Y.; Somerville, B.; Lisle, C.; Ladanyi, M.; Rudzinski, E. R.; Choo-Wosoba, H.; Barkauskas, D. A.; Lo, T.; Hall, D.; Linardic, C. M.; Wei, J. S.; Chou, H. C.; Skapek, S. X.; Venkatramani, R.; Bode, P. K.; Steinberg, S. M.; Zaki, G.; Kuznetsov, I. B.; Hawkins, D. S.; Shern, J. F.; Collins, J.; Khan, J.
Article Title: Predicting molecular subtype and survival of rhabdomyosarcoma patients using deep learning of H&E images: A report from the Children's Oncology Group
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. ©2022 The Authors; Published by the American Association for Cancer Research.
Keywords: child; young adult; genetics; prospective study; prospective studies; eosin; hematoxylin; rhabdomyosarcoma; eosine yellowish-(ys); paired box transcription factor; paired box transcription factors; rhabdomyosarcoma, alveolar; humans; human; deep learning
Journal Title: Clinical Cancer Research
Volume: 29
Issue: 2
ISSN: 1078-0432
Publisher: American Association for Cancer Research  
Date Published: 2023-01-15
Start Page: 364
End Page: 378
Language: English
DOI: 10.1158/1078-0432.Ccr-22-1663
PUBMED: 36346688
PROVIDER: scopus
PMCID: PMC9843436
DOI/URL:
Notes: The MSK Cancer Center Support Grant (P30 CA008748) is acknowledged in the PDF -- Source: Scopus
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  1. Marc Ladanyi
    1326 Ladanyi