| Literature DB >> 30333051 |
Ashkaan K Fahimipour1, Erica M Hartmann2,3, Andrew Siemens2, Jeff Kline2,4, David A Levin5, Hannah Wilson2, Clarisse M Betancourt-Román2, G Z Brown2,4, Mark Fretz2,4, Dale Northcutt2,4, Kyla N Siemens2, Curtis Huttenhower6, Jessica L Green2,7, Kevin Van Den Wymelenberg2,4.
Abstract
BACKGROUND: Microbial communities associated with indoor dust abound in the built environment. The transmission of sunlight through windows is a key building design consideration, but the effects of light exposure on dust communities remain unclear. We report results of an experiment and computational models designed to assess the effects of light exposure and wavelengths on the structure of the dust microbiome. Specifically, we placed household dust in replicate model "rooms" with windows that transmitted visible, ultraviolet, or no light and measured taxonomic compositions, absolute abundances, and viabilities of the resulting bacterial communities.Entities:
Keywords: Built environment; Daylight; Dust; Microbiome
Mesh:
Substances:
Year: 2018 PMID: 30333051 PMCID: PMC6193304 DOI: 10.1186/s40168-018-0559-4
Source DB: PubMed Journal: Microbiome ISSN: 2049-2618 Impact factor: 14.650
Fig. 1Schematic of experimental system and light treatments. a Diagram of a microcosm showing the floor plate, the box comprising the walls and roof, and the window opening and glazing. The floor of the box shows a simulation of the total visible light exposure during the study period in a real-world space of the same proportions. The color scale indicates the percentage of total time (during daylight hours) each point receives at least 300 lx—an illumination target level common for office-type spaces. For representation purposes only, these values were calculated using RADIANCE daylight simulation software [81]. These values are within the range of typical values found in daylit buildings. Thick outlines and circles on the grid mark the locations of the six replicate dust communities within each microcosm. b Transmittance (%) of different light wavelengths through the visible (gold) and ultraviolet (blue) light treatment glass pane across the range of UV and visible light wavelengths. Both glass treatments permitted the transmittance of some near-infrared (dark red bands) and infrared (black bands) light wavelengths
Fig. 2Effects of light on dust community β-diversity and microbial abundance. a t-distributed stochastic neighbor embedding (t-SNE; [52]) visualization of pairwise Canberra distances, calculated using log101+x-transformed RSV absolute abundances. Ellipses delineate treatment groups and represent one standard deviation from the group centroid. Points represent bacterial communities that are colored by their corresponding lighting regime: dark are gray, visible are gold, and ultraviolet are blue. The size of each point is scaled proportionately to the qPCR-based estimates of absolute bacterial abundances. Dark and light shades of each color indicate whether the sample represents the total or viable community respectively. b Boxplots of qPCR-based estimates of log10-transformed absolute abundance per milligram dust. The left and righthand boxes for each factor level correspond to the total and living bacterial abundances respectively. Colors are the same as in panel a
Results of pairwise PERMANOVA analyses of Canberra distance between treatment groups
| Contrast | Total/living |
| adj. |
|---|---|---|---|
| Dark-visible | Total | 0.111 | 0.002 |
| Dark-UV | Total | 0.11 | 0.002 |
| Visible-UV | Total | 0.032 | 0.043 |
| Dark-visible | Living | 0.072 | 0.002 |
| Dark-UV | Living | 0.066 | 0.002 |
| Visible-UV | Living | 0.031 | 0.099 |
RSV features were weighted by their log101+x-transformed absolute abundances. The Contrast column indicates the pair of factor levels to which the statistics refer, and Total/living designates whether analysis was of the total (i.e., no PMA treatment) or living (i.e., PMA treated) components of the communities. Model results are provided in the R2 and Benjamini-Hochberg adjusted P values columns
Fig. 3Responses of microbial taxa to light exposures. a Split violin plots summarizing results of microbial source tracking [56] analysis. The predicted sources of bacterial genera detected in experimental samples are summarized as log10A/B ratios, where A and B are the predicted proportions of genera originating from outdoor air and human skin respectively (69% of community genera on average). Values near 1 indicate that communities became more “outdoor air-like” (i.e., contain a plurality of outdoor air-sourced bacterial genera), while values near − 1 indicate that communities became more “human skin-like” by the experiment’s conclusion. White boxes denote group medians and first and third quartiles. b–d Boxplots of log101+x-transformed absolute abundances of the largest clades discriminating communities under each lighting treatment. These taxa are marked in bold in the rows of panel e. Colors and shades are the same as in Fig. 1. e Heatmap showing absolute abundances of viable discriminant taxa, detected using phylogenetic sLDA [59]. RSVs are aggregated based on the highest level of taxonomic classification. Warmer colors correspond to higher abundances; white tiles indicate those taxa were not detected in particular samples (columns). Columns are individual viable dust communities, where treatment group is indicated by the colored markers on the x-axis. Dark, visible, and ultraviolet-associated taxa are identified by colored circles near taxonomic labels and demarcated by black blocks. Matrix seriation was accomplished using principal components analysis
Fig. 4Simulations predict sampling artefacts following losses of abundant taxa. The relationship between a microorganism’s simulated absolute abundance in a community (x-axis), and its apparent log10-fold change in estimated abundance following the simulated loss of a small number of dominant taxa (y-axis). Predictions from 104 iterations of the simulation procedure are summarized using 2D hexagonal bins; darker colors indicate higher frequency bins. Positive values on the y-axis indicate that abundances are underestimated in the presence of highly abundant RSVs, leading to an apparent positive increase in measured abundances following the loss of these RSVs. A common expected sampling artefact, whereby the loss of highly abundant RSVs, drives an apparent increase in the abundance of rare taxa is visible