Metagenomic techniques have facilitated the discovery of thousands of viruses, yet because samples are often highly biodiverse, fundamental data on the specific cellular hosts are usually missing. Numerous gastrointestinal viruses linked to human or animal diseases are affected by this, preventing research into their medical or veterinary importance. Here, we developed a computational workflow for the prediction of viral hosts from complex metagenomic datasets. We applied it to seven lineages of gastrointestinal cressdnaviruses using 1,124 metagenomic datasets, predicting hosts of four lineages. The Redondoviridae, strongly associated to human gum disease (periodontitis), were predicted to infect Entamoeba gingivalis, an oral pathogen itself involved in periodontitis. The Kirkoviridae, originally linked to fatal equine disease, were predicted to infect a variety of parabasalid protists, including Dientamoeba fragilis in humans. Two viral lineages observed in human diarrhoeal disease (CRESSV1 and CRESSV19, i.e. pecoviruses and hudisaviruses) were predicted to infect Blastocystis spp. and Endolimax nana respectively, protists responsible for millions of annual human infections. Our prediction approach is adaptable to any virus lineage and requires neither training datasets nor host genome assemblies. Two host predictions (for the Kirkoviridae and CRESSV1 lineages) could be independently confirmed as virus–host relationships using endogenous viral elements identified inside host genomes, while a further prediction (for the Redondoviridae) was strongly supported as a virus–host relationship using a case–control screening experiment of human oral plaques.
The eukaryotic protozoan Entamoeba gingivalis (E.g.) is strongly associated with inflamed periodontal pockets. Unlike other obligate anaerobic Entamoeba species, it is considered to not have a life cycle of actively dividing trophozoites and dormant cysts. Accordingly, it has been regarded as non-infectious. To investigate if E.g is capable of encystation in response to adverse environmental conditions, we cultivated clinical isolates of E.g. collected from inflamed periodontal pockets in antibiotics for 8 days. The cytomorphological and ultrastructure forms of the amoeba were investigated by transmission and scanning electron microscopy to reveal cyst formation. We observed exocysts and the encapsulated trophozoids separated by an intra-cystic space, a dense poorly vesiculated cytoplasma and polygonal surface areas of cysts. The cysts walls were composed of chitin. Cysts were conspicuously smaller compared to trophozoids and lacked pseudo- and filipodia. We did not observe multi-nucleated trophozoids after antibiotic induces encystation. Cyst formation in E.g may explain why established treatment approaches often do not stop periodontal tissue destruction during periodontitis and periimplantitis.
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