Predicting cancer outcomes from histology and genomics using convolutional networks

Pooya Mobadersany(Emory University), Safoora Yousefi(Emory University), Mohamed Amgad(Emory University), David A. Gutman(Emory University), Jill S. Barnholtz‐Sloan(Case Western Reserve University), Jose Enrique Velazquez Vega(Emory University), Daniel J. Brat(Emory University), Lee Cooper(Georgia Institute of Technology)
bioRxiv (Cold Spring Harbor Laboratory)
October 3, 2017
Cited by 45Open Access
Full Text

Abstract

ABSTRACT Cancer histology reflects underlying molecular processes and disease progression, and contains rich phenotypic information that is predictive of patient outcomes. In this study, we demonstrate a computational approach for learning patient outcomes from digital pathology images using deep learning to combine the power of adaptive machine learning algorithms with traditional survival models. We illustrate how this approach can integrate information from both histology images and genomic biomarkers to predict time-to-event patient outcomes, and demonstrate performance surpassing the current clinical paradigm for predicting the survival of patients diagnosed with glioma. We also provide techniques to visualize the tissue patterns learned by these deep learning survival models, and establish a framework for addressing intratumoral heterogeneity and training data deficits.


Related Papers

No related papers found

Powered by citation graph analysis