A deep learning approach reveals unexplored landscape of viral expression in cancer.
Abdurrahman ElbasirYing YeDaniel E SchäfferXue HaoJayamanna WickramasingheKonstantinos TsingasPaul M LiebermanQi LongQuaid D MorrisRugang ZhangAlejandro A SchäfferNoam AuslanderPublished in: Nature communications (2023)
About 15% of human cancer cases are attributed to viral infections. To date, virus expression in tumor tissues has been mostly studied by aligning tumor RNA sequencing reads to databases of known viruses. To allow identification of divergent viruses and rapid characterization of the tumor virome, we develop viRNAtrap, an alignment-free pipeline to identify viral reads and assemble viral contigs. We utilize viRNAtrap, which is based on a deep learning model trained to discriminate viral RNAseq reads, to explore viral expression in cancers and apply it to 14 cancer types from The Cancer Genome Atlas (TCGA). Using viRNAtrap, we uncover expression of unexpected and divergent viruses that have not previously been implicated in cancer and disclose human endogenous viruses whose expression is associated with poor overall survival. The viRNAtrap pipeline provides a way forward to study viral infections associated with different clinical conditions.
Keyphrases
- papillary thyroid
- poor prognosis
- sars cov
- deep learning
- squamous cell
- endothelial cells
- single cell
- lymph node metastasis
- machine learning
- childhood cancer
- long non coding rna
- artificial intelligence
- young adults
- convolutional neural network
- body composition
- genome wide
- pluripotent stem cells
- genetic diversity
- loop mediated isothermal amplification