G3: Genes, Genomes, Genetics (Apr 2021)

Application of a bioinformatic pipeline to RNA-seq data identifies novel virus-like sequence in human blood

  • Marko Melnick,
  • Patrick Gonzales,
  • Thomas J LaRocca,
  • Yuping Song,
  • Joanne Wuu,
  • Michael Benatar,
  • Björn Oskarsson,
  • Leonard Petrucelli,
  • Robin D Dowell,
  • Christopher D Link,
  • Mercedes Prudencio

DOI
https://doi.org/10.1093/g3journal/jkab141
Journal volume & issue
Vol. 11, no. 9

Abstract

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AbstractNumerous reports have suggested that infectious agents could play a role in neurodegenerative diseases, but specific etiological agents have not been convincingly demonstrated. To search for candidate agents in an unbiased fashion, we have developed a bioinformatic pipeline that identifies microbial sequences in mammalian RNA-seq data, including sequences with no significant nucleotide similarity hits in GenBank. Effectiveness of the pipeline was tested using publicly available RNA-seq data and in a reconstruction experiment using synthetic data. We then applied this pipeline to a novel RNA-seq dataset generated from a cohort of 120 samples from amyotrophic lateral sclerosis patients and controls, and identified sequences corresponding to known bacteria and viruses, as well as novel virus-like sequences. The presence of these novel virus-like sequences, which were identified in subsets of both patients and controls, were confirmed by quantitative RT-PCR. We believe this pipeline will be a useful tool for the identification of potential etiological agents in the many RNA-seq datasets currently being generated.