Abstract

Significance Predicting the expected outcome of patients diagnosed with cancer is a critical step in treatment. Advances in genomic and imaging technologies provide physicians with vast amounts of data, yet prognostication remains largely subjective, leading to suboptimal clinical management. We developed a computational approach based on deep learning to predict the overall survival of patients diagnosed with brain tumors from microscopic images of tissue biopsies and genomic biomarkers. This method uses adaptive feedback to simultaneously learn the visual patterns and molecular biomarkers associated with patient outcomes. Our approach surpasses the prognostic accuracy of human experts using the current clinical standard for classifying brain tumors and presents an innovative approach for objective, accurate, and integrated prediction of patient outcomes.

Keywords

GenomicsNeuroimagingCancerConvolutional neural networkDeep learningMedicineArtificial intelligenceClinical significanceComputer scienceMachine learningBioinformaticsOncologyInternal medicinePathologyGenomeBiologyGene

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Publication Info

Year
2018
Type
article
Volume
115
Issue
13
Pages
E2970-E2979
Citations
987
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Closed

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Pooya Mobadersany, Safoora Yousefi, Mohamed Amgad et al. (2018). Predicting cancer outcomes from histology and genomics using convolutional networks. Proceedings of the National Academy of Sciences , 115 (13) , E2970-E2979. https://doi.org/10.1073/pnas.1717139115

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DOI
10.1073/pnas.1717139115