| Literature DB >> 29033905 |
Yu Cao1, Séamus Fanning1, Sinéad Proos2, Kieran Jordan3, Shabarinath Srikumar1.
Abstract
The development of next generation sequencing (NGS) techniques has enabled researchers to study and understand the world of microorganisms from broader and deeper perspectives. The contemporary advances in DNA sequencing technologies have not only enabled finer characterization of bacterial genomes but also provided deeper taxonomic identification of complex microbiomes which in its genomic essence is the combined genetic material of the microorganisms inhabiting an environment, whether the environment be a particular body econiche (e.g., human intestinal contents) or a food manufacturing facility econiche (e.g., floor drain). To date, 16S rDNA sequencing, metagenomics and metatranscriptomics are the three basic sequencing strategies used in the taxonomic identification and characterization of food-related microbiomes. These sequencing strategies have used different NGS platforms for DNA and RNA sequence identification. Traditionally, 16S rDNA sequencing has played a key role in understanding the taxonomic composition of a food-related microbiome. Recently, metagenomic approaches have resulted in improved understanding of a microbiome by providing a species-level/strain-level characterization. Further, metatranscriptomic approaches have contributed to the functional characterization of the complex interactions between different microbial communities within a single microbiome. Many studies have highlighted the use of NGS techniques in investigating the microbiome of fermented foods. However, the utilization of NGS techniques in studying the microbiome of non-fermented foods are limited. This review provides a brief overview of the advances in DNA sequencing chemistries as the technology progressed from first, next and third generations and highlights how NGS provided a deeper understanding of food-related microbiomes with special focus on non-fermented foods.Entities:
Keywords: 16S rDNA; food microbiome; metagenomics; metatranscriptomics; next generation sequencing
Year: 2017 PMID: 29033905 PMCID: PMC5627019 DOI: 10.3389/fmicb.2017.01829
Source DB: PubMed Journal: Front Microbiol ISSN: 1664-302X Impact factor: 5.640
Figure 1(A) The total number of publications utilizing NGS technology investigating the microbiome associated with fermented and non-fermented food between 2011 and June 2017. (B) The proportion of different sequencing strategies used in the publications mentioned in (A). (C) The number of publications utilizing NGS strategies to investigate fermented and non-fermented food. (D) The percentage of publications utilizing NGS approaches in investigating fermented and non-fermented foods.
A comprehensive list of publications using next generations sequencing approaches to study the environmental microbiome along the food production chain.
| Artisan cheese factory and cheese samples | United States | 16S rDNA sequencing (V4); qPCR | Illumina MiSeq | Facility-specific “house” microbiota play an important role in shaping site-specific characteristics in products | Bokulich and Mills, |
| Wine factory equipment surface | United States | 16S rDNA sequencing (V4) | Illumina MiSeq | Winery surface microbiomes have no obvious link with spoilage microbes in wine under normal operating conditions | Bokulich et al., |
| Carcass, processing environment and beefsteaks | Italy | 16S rDNA sequencing (V1-V3) | Roche 454 GS Junior | 4°C aerobic storage led to dramatic decrease in beef microbial complexity; spoilage-associated bacteria originated from carcasses and carried through the production chain to the products | De Filippis et al., |
| Brewery plant environment and beer product | United States | 16S rDNA sequencing (V4, for bacteria); Fungal internal transcribed spacer (1 loci, for fungi); T-RFLP; Droplet digital PCR) | Illumina MiSeq | Most microbes found in the brewery environment originated from raw ingredients; beer-spoilage and hop-resistance genes were found throughout the brewery, but little beer spoilage occurred | Bokulich et al., |
| Sausage processing environment and product | Finland | 16S rDNA sequencing (V1-V3) | Roche 454 Titanium FLX | Abundant mesophilic psychrotrophs were prevalent throughout sausage production chain microbiomes, and with different characteristic patterns of contamination for different genera | Hultman et al., |
| Ready-to-eat meal plant environment and product | Not mentioned | 16S rDNA sequencing (V1-V3) | Roche 454 GS Junior | Pothakos et al., | |
| Cheese factory environment and cheese product | Italy | 16S rDNA sequencing (V1-V3, for bacteria); 26S rDNA sequencing (D1-D2, for fungi) | Roche 454 GS Junior | Coexistence of lactic acid bacteria and possible spoilage-associated bacteria was found in core microbiota of cheese factory environment and cheese samples | Stellato et al., |
| Powdered Infant Formula plant environment | Ireland | 16S rDNA sequencing (V3-V4); Flow cytometry | Illumina MiSeq | Bacteria present in low, medium and high care area of a powdered infant formula plant environment were mostly associated with soil, water, and humans, respectively | Anvarian et al., |
| Environment samples alone beef production chain | United States | Shotgun metagenomics sequencing | Illumina HiSeq 2000 | No antimicrobial resistant determinants (ARD) were identified in final beef products, indicating slaughter interventions may reduce ARD transmission risk | Noyes et al., |
| Dairy farm agroecosystems | United States | Shotgun metagenomics sequencing | Ion Torrent Personal Genome Machine | The most abundant antimicrobial resistant genes in dairy agroecosystems were grouped under multidrug transporters | Pitta et al., |
| Butchery meat and environment samples | Italy | 16S rDNA sequencing (V1-V3) | Roche 454 GS Junior platform | The type of retail (large- or small-scale distribution) had no apparent effect on initial fresh meat contamination | Stellato et al., |
| Environment samples along beef production chain | United States | Shotgun metagenomics sequencing | Illumina HiSeq 2000 | Usage of standard antimicrobial interventions in beef processing system significantly reduced the diversity of remaining microbiomes | Yang et al., |
A comprehensive list of publications using next generations sequencing approaches used in characterizing the microbiome of raw food products.
| Broiler filet strips | Finland | 16S rDNA sequencing (V1-V3); T-RFLP | Roche 454 GS FLX | Marination process led to increased lactic acid bacteria in broiler meat microbiome, resulting in enhanced CO2 production and acidification | Nieminen et al., |
| Broiler filet strips | Finland | 16S rDNA sequencing (V1-V3); Shotgun metagenomics sequencing | Roche 454 GS FLX; Roche 454 GS FLX; | Marination altered broiler fillet strips' microbial community by favoring the spoilage associated bacteria | Nieminen et al., |
| Spoiled retail foodstuffs | Belgium | 16S rDNA sequencing (V1-V3) | Roche 454 GS Junior | Characterization of psychrotrophic lactic acid bacteria that cause unexpected food spoilage cases in Belgian retail food | Pothakos et al., |
| Store bought meat | United States | Shotgun metagenomics sequencing | Illumina Miseq | Primary characterization of viruses commonly found in US store-bought meats | Zhang et al., |
| Beef burger | Italy | 16S rRNA sequencing (V1-V3); PCR-DGGE | Roche 454 GS Junior | Nisin-based antimicrobial packaging reduced the abundance of microbes that produce compounds of specific metabolic pathways related to spoilage | Ferrocino et al., |
| Raw pork sausage | France | 16S rDNA sequencing (V1-V3); qPCR | Roche 454 GS FLX++ Titanium | Salt reduction, particularly when combined with CO2-enriched packaging, resulted in faster spoilage of raw sausages by lowering the overall bacterial diversity | Fougy et al., |
| Raw milk | Finland | 16S rDNA sequencing (V1-V2); | Illumina MiSeq | Bacterial diversity is better preserved in bovine raw milk by additional flushing with N2 gas compared to cold storage at 6°C alone | Gschwendtner et al., |
| Raw milk | United States | 16S rDNA sequencing (V4); qPCR | Illumina MiSeq | raw milk microbial community structure can be influenced during low-temperature, short-term storage | Kable et al., |
| porcine musculature | Austria | 16S rDNA sequencing (V1-V2); qPCR | Roche 454 GS-FLX Titanium | Pork sample microbiota was dominated by psychrophilic spoilers; | Mann et al., |
| Raw milk | Australia | 16S rDNA sequencing (V5-V8) | Roche 454 | Spoilage bacteria growth was delayed by at least 7 days in CO2 treated raw milk sample | Lo et al., |
| Bulk tank milk | United States | 16S rDNA sequencing (V4); qPCR; Flow cytometry | Illumina MiSeq | Spoilage and spore-forming bacteria were ubiquitous in all dairy farms | Rodrigues et al., |
| Common carp filets | China | 16S rDNA sequencing (V3-V4) | Illumina HiSeq 2500 | Use of cinnamon essential oil extended vacuum-packaged common carp fillets shelf-life by approximately 2 days based on sensory and other analysis, but showed no significant differences in dominant microbiota composition compared with non-treated samples at the end of shelf-life | Zhang et al., |
A comprehensive list of publications using next generations sequencing approaches in characterizing the microbiome of ready to eat food.
| Bagged leaf vegetables | United States | 16s rDNA sequencing; | Roche 454 GS-FLX Titanium | No significant differences found on microbial compositions between organic and conventionally grown, surface-sterilized and non-sterilized leaf vegetables | Jackson et al., |
| Store-bought fruits and vegetables | United States | 16S rDNA sequencing | Roche 454 | Microbial communities of certain type product are more similar than different types, but Significant difference identified between conventional and organic product within the same type | Leff and Fierer, |
| Field grown lettuce | United States | 16S rDNA sequencing (V5-V9); qPCR | Roche 454 GS-FLX Titanium | Lettuce phyllosphere microbiome are affected by seasonal, irrigation, and biological factors | Williams et al., |
| Carrots | United Kingdom | Metatranscriptomics qPCR | Illumina MiSeq | Carrot yellow leaf virus are strongly associated with carrot internal necrosis | Adams et al., |
| Basil leaves | Belgium | 16S rRNA sequencing (V1-V3); PCR-DGGE | Roche 454 GS-FLX Titanium | Spoilage of commercially grown basil leaves was caused by tissue injuries and visual defects rather than by specific bacterial growth | Ceuppens et al., |
| Cilantro | United States | 16S rRNA sequencing (V1-V3); Shotgun metagenomics sequencing (with pre-enrichment) | Illumina MiSeq; Illumina MiSeq | A 24 h non-selective enrichment identified | Jarvis et al., |
| Bagged spinach | United States | Shotgun metagenomics sequencing (with pre-enrichment) | Illumina MiSeq | Eight h pre-enrichment and sequencing depth identified' spiked Shiga toxin-producing | Leonard et al., |
| field-grown and retail lettuce | United States | Shotgun metagenomics sequencing; Metatranscriptomics | Illumina HiSeq 2500; Illumina HiSeq 2500 | Virome of iceberg lettuce from fields and produce distribution center were dominated by plant pathogenic viruses but human and animal viruses were also identified | Aw et al., |
| Oregano | United States | Shotgun metagenomics sequencing (with pre-enrichment) | Illumina MiSeq | Addition of corn oil during pre-enrichment of oregano samples led to increased overall abundance of Gram negative microorganism and a ≥50% recovery rate of | Beaubrun et al., |
| Bagged spinach | United States | Shotgun metagenomics sequencing (with pre-enrichment) | Illumina MiSeq | Shotgun metagenomics sequencing identified Shiga toxin-producing | Leonard et al., |
| Cheese | Ireland | 16S rDNA sequencing (V4-V5); Shotgun metagenomics sequencing; qPCR | Roche 454 GS-FLX; Illumina HiSeq 2000 | Carotenoid-producing bacteria, genus | Quigley et al., |