Unexplored diversity and strain-level structure of the skin microbiome associated with psoriasis

Adrian Tett(University of Trento), Edoardo Pasolli(University of Trento), Stefania Farina, Duy Tin Truong(University of Trento), Francesco Asnicar(University of Trento), Moreno Zolfo(University of Trento), Francesco Beghini(University of Trento), Federica Armanini(University of Trento), Olivier Jousson(University of Trento), Veronica De Sanctis(University of Trento), Roberto Bertorelli(University of Trento), Giampiero Girolomoni(University of Verona), Mario Cristofolini, Nicola Segata(University of Trento)
npj Biofilms and Microbiomes
June 14, 2017
Cited by 222Open Access
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Abstract

Abstract Psoriasis is an immune-mediated inflammatory skin disease that has been associated with cutaneous microbial dysbiosis by culture-dependent investigations and rRNA community profiling. We applied, for the first time, high-resolution shotgun metagenomics to characterise the microbiome of psoriatic and unaffected skin from 28 individuals. We demonstrate psoriatic ear sites have a decreased diversity and psoriasis is associated with an increase in Staphylococcus , but overall the microbiomes of psoriatic and unaffected sites display few discriminative features at the species level. Finer strain-level analysis reveals strain heterogeneity colonisation and functional variability providing the intriguing hypothesis of psoriatic niche-specific strain adaptation or selection. Furthermore, we accessed the poorly characterised, but abundant, clades with limited sequence information in public databases, including uncharacterised Malassezia spp. These results highlight the skins hidden diversity and suggests strain-level variations could be key determinants of the psoriatic microbiome. This illustrates the need for high-resolution analyses, particularly when identifying therapeutic targets. This work provides a baseline for microbiome studies in relation to the pathogenesis of psoriasis.


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