Abstract

Bacteria are an active and diverse component of pelagic communities. The identification of main factors governing microbial diversity and spatial distribution requires advanced mathematical analyses. Here, the bacterial community composition was analysed, along with a depth profile, in the open Adriatic Sea using amplicon sequencing of bacterial 16S rRNA and the Neural gas algorithm. The performed analysis classified the sample into four best matching units representing heterogenic patterns of the bacterial community composition. The observed parameters were more differentiated by depth than by area, with temperature and identified salinity as important environmental variables. The highest diversity was observed at the deep chlorophyll maximum, while bacterial abundance and production peaked in the upper layers. The most of the identified genera belonged to Proteobacteria, with uncultured AEGEAN-169 and SAR116 lineages being dominant Alphaproteobacteria, and OM60 (NOR5) and SAR86 being dominant Gammaproteobacteria. Marine Synechococcus and Cyanobium-related species were predominant in the shallow layer, while Prochlorococcus MIT 9313 formed a higher portion below 50 m depth. Bacteroidota were represented mostly by uncultured lineages (NS4, NS5 and NS9 marine lineages). In contrast, Actinobacteriota were dominated by a candidatus genus Ca. Actinomarina. A large contribution of Nitrospinae was evident at the deepest investigated layer. Our results document that neural network analysis of environmental data may provide a novel insight into factors affecting picoplankton in the open sea environment.

Highlights

  • Bacteria are an active and diverse component of pelagic communities

  • In our previous work we focused on the role of heterotrophic bacteria, picoautotrophs and aerobic anoxygenic phototrophic (AAP) bacteria in the production and transfer of biomass and energy through the microbial food web in the coastal and open Adriatic S­ ea[10,11,12,13,14,15,16]

  • Our results clearly showed that depth was the key factor differentiating bacterial community composition in all investigated areas: Jabuka Pit, Palagruža Sill and South Adriatic Pit

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Summary

Introduction

Bacteria are an active and diverse component of pelagic communities. The identification of main factors governing microbial diversity and spatial distribution requires advanced mathematical analyses. The bacterial community composition was analysed, along with a depth profile, in the open Adriatic Sea using amplicon sequencing of bacterial 16S rRNA and the Neural gas algorithm. Our results document that neural network analysis of environmental data may provide a novel insight into factors affecting picoplankton in the open sea environment. We propose that the picoplankton community display a heterogenic response to changes associated with different environmental factors in the open sea areas of the central and southern Adriatic Sea, throughout the stratified water column. To test this hypothesis, we used a Neural gas algorithm to identify bacterial community response in terms of abundance and community composition. The Neural gas algorithm, without the use of prior knowledge about the topological structure of data, quantified the manifold by distributing neural units homogenously over the input s­ pace[26]

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