| Literature DB >> 30796243 |
Talia Kustin1, Guy Ling1, Sivan Sharabi2,3, Daniela Ram2, Nehemya Friedman2,3, Neta Zuckerman2, Efrat Dahan Bucris2, Aharona Glatman-Freedman3,4, Adi Stern5, Michal Mandelboim6,7.
Abstract
Respiratory virus infections are very common. Such infections impose an enormous economic burden and occasionally lead to death. Furthermore, every few decades, respiratory virus pandemics emerge, putting the entire world population at risk. Thus, there is an urgent need to quickly and precisely identify the infecting agent in a clinical setting. However, in many patients with influenza-like symptoms (ILS) the identity of the underlying pathogen remains unknown. In addition, it takes time and effort to individually identify the virus responsible for the ILS. Here, we present a new next-generation sequencing (NGS)-based method that enables rapid and robust identification of pathogens in a pool of clinical samples without the need for specific primers. The method is aimed at rapidly uncovering a potentially common pathogen affecting many samples with an unidentified source of disease.Entities:
Year: 2019 PMID: 30796243 PMCID: PMC6384955 DOI: 10.1038/s41598-018-37483-w
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 2Schematic presentation of the workflow of the described method.
Figure 1RSV and influenza infection throughout the winter season. The number of clinical samples infected with influenza virus or RSV in the 2013–2014 winter season in Israel. The week number and year are shown on the X axis. The 300 samples addressed in this paper are highlighted in the box.
Figure 3qRT-PCR for viruses and RNaseP. Ct results before and after Omnicleave treatment for the 3 controls tested viruses and for RNaseP.
Figure 4Viruses identified by NGS in 2013–2014 pooled clinical ILS samples. The chart includes viruses with more than 30 reads mapped to them, and read counts per virus are normalized by genome length of the virus.
Number of reads for each virus.
| Virus | Number of mapped reads |
|---|---|
| Human adenovirus C | 1904 |
| Respiratory syncytial virus | 627 |
| Cucumber green mottle mosaic virus | 258 |
| Human parainfluenza virus 1 | 161 |
| Torque teno virus | 122 |
| Torque teno mini virus | 78 |
| Influenza B virus | 78 |
| Torque teno midi virus | 12 |
| Moloney murine leukemia virus | 6 |
| Apis mellifera filamentous virus | 5 |
| Human herpesvirus 7 | 5 |
| Emiliania huxleyi virus 86 | 4 |
| Megavirus chiliensis | 3 |
| Prunus necrotic ringspot virus | 2 |
| Tomato brown rugose fruit virus | 2 |
| Tobacco mosaic virus | 2 |
| Human herpesvirus 4 | 2 |
| Bovine respiratory syncytial virus | 2 |
| Avian leukosis virus - RSA | 1 |
| Chrysodeixis chalcites nucleopolyhedrovirus | 1 |
| Fowlpox virus | 1 |
| Human papillomavirus type 5 | 1 |
| Human papillomavirus type 9 | 1 |
| Variola virus | 1 |
Number of mapped reads for each virus discovered in the next generation sequencing.
Figure 5Verification of virus and bacteria presence in each of the samples. The presence of each of the viruses identified (Fig. 4) was verified in each sample by qRT-PCR/PCR. Viruses are shown in the colored bars and bacteria are shown with the shaped symbols, the size of the symbol corresponds with the strength of detection.