A proposed workflow to robustly analyze bacterial transcripts in RNAseq data from Extracellular Vesicles
Creators
Description
The microbiota has been unequivocally linked to various diseases, yet the mechanisms underlying these associations remain incompletely understood. One potential contributor to this relationship is the extracellular vesicles produced by bacteria (bEVs). However, the detection of these bEVs is challenging. Therefore, we propose a novel workflow to identify bacterial RNA present in circulating extracellular vesicles using Total EV RNA-seq data. As a proof of concept, we applied this workflow to a dataset from individuals with multiple sclerosis (MS).
We analyzed Total EV RNA-seq data from blood samples of healthy controls and individuals with MS, encompassing both the Relapsing-Remitting (RR) and Secondary Progressive (SP) phases of the disease. Our workflow incorporates multiple reference mapping steps against the host genome, followed by a consensus selection of bacterial genera based on various taxonomic profiling tools. This consensus approach utilizes a flagging system to exclude species with low abundance or high variability across profilers. Additionally, including biological samples from known cultured species and generating artificial reads constitute two key aspects of this workflow to validate the high specificity of the approach.
Our findings demonstrate that bacterial RNA can indeed be detected in Total EV RNA-seq from blood samples, suggesting that this workflow can be a powerful tool for reanalyzing RNA-seq data from EV studies. Additionally, we identified promising bacterial candidates with differential expression between the RR and SP phases of MS. This approach provides valuable insights into the potential role of bEVs in the microbiota-host communication. Finally, this approach is translatable to other experiments using total RNA, where the lack of a robust pipeline can lead to an increased false positive detection of microbial species.
The workflow is available at the following repository: https://github.com/NanoNeuro/EV_taxprofiling
Files
Files
(24.5 GB)
Additional details
Funding
- European Committee for Treatment and Research in Multiple Sclerosis
- Postdoctoral Research Fellowship Programme
- Basque Government
- POS_2020_1_0008
- Instituto de Salud Carlos III
- Sara Borrell
- Basque Government
- PREDOC BERRI
- Basque Government
- IKR Nanoneuro
- Instituto de Salud Carlos III
- PI23/00903
- Instituto de Salud Carlos III
- PI20/00327
Software
- Repository URL
- https://github.com/NanoNeuro/EV_taxprofiling
- Programming language
- Python, Shell