| Literature DB >> 28725217 |
Jessica D Forbes1,2, Natalie C Knox1, Jennifer Ronholm3,4, Franco Pagotto5,6, Aleisha Reimer1.
Abstract
A trend towards the abandonment of obtaining pure culture isolates in frontline laboratories is at a crossroads with the ability of public health agencies to perform their basic mandate of foodborne disease surveillance and response. The implementation of culture-independent diagnostic tests (CIDTs) including nucleic acid and antigen-based assays for acute gastroenteritis is leaving public health agencies without laboratory evidence to link clinical cases to each other and to food or environmental substances. This limits the efficacy of public health epidemiology and surveillance as well as outbreak detection and investigation. Foodborne outbreaks have the potential to remain undetected or have insufficient evidence to support source attribution and may inadvertently increase the incidence of foodborne diseases. Next-generation sequencing of pure culture isolates in clinical microbiology laboratories has the potential to revolutionize the fields of food safety and public health. Metagenomics and other 'omics' disciplines could provide the solution to a cultureless future in clinical microbiology, food safety and public health. Data mining of information obtained from metagenomics assays can be particularly useful for the identification of clinical causative agents or foodborne contamination, detection of AMR and/or virulence factors, in addition to providing high-resolution subtyping data. Thus, metagenomics assays may provide a universal test for clinical diagnostics, foodborne pathogen detection, subtyping and investigation. This information has the potential to reform the field of enteric disease diagnostics and surveillance and also infectious diseases as a whole. The aim of this review will be to present the current state of CIDTs in diagnostic and public health laboratories as they relate to foodborne illness and food safety. Moreover, we will also discuss the diagnostic and subtyping utility and concomitant bias limitations of metagenomics and comparable detection techniques in clinical microbiology, food and public health laboratories. Early advances in the discipline of metagenomics, however, have indicated noteworthy challenges. Through forthcoming improvements in sequencing technology and analytical pipelines among others, we anticipate that within the next decade, detection and characterization of pathogens via metagenomics-based workflows will be implemented in routine usage in diagnostic and public health laboratories.Entities:
Keywords: antimicrobial resistance; culture-independent diagnostic test; food safety; metagenomics; molecular epidemiology; next-generation sequencing; public health; targeted-amplicon
Year: 2017 PMID: 28725217 PMCID: PMC5495826 DOI: 10.3389/fmicb.2017.01069
Source DB: PubMed Journal: Front Microbiol ISSN: 1664-302X Impact factor: 5.640
Summary of the advantages and disadvantages to each high-throughput sequencing approach for unbiased detection.
| Targeted-amplicon sequencing | Shotgun metagenomics sequencing | |||
|---|---|---|---|---|
| Advantages | Disadvantages | Advantages | Disadvantages | |
| Microbial target(s) of interest | • Target is specific to a particular microbial group (e.g., 16S rRNA common for bacteria, archaea, 18S rRNA for eukaryotes, ITS for fungi, RdRP for RNA viruses). | Requires | •Can sequence all DNA in a given sample (e.g., bacteria, archaea, eukaryotes, parasites, and viruses). | Virome assays require complex sample and nucleic acid work-ups. |
| Abundance profiling | Can use relative abundance changes to compare microbiomes across different samples or treatments. | Universal target chosen may be present in varying copy numbers across different taxa (e.g., 16S rRNA). PCR amplification bias, primer bias and errors. | Universal markers can be inferred from metagenomics datasets. | • High abundance of host DNA can make it challenging to sequence low abundance microbial DNA. |
| • Can capture abundance of rare taxa provided that sequencing depth is sufficient. | • Absolute abundance difficult to impute. | • Low abundance taxa difficult to identify. Can be difficult to accurately bin each sequence to a genome. | ||
| Taxonomic assignment | • Relatively easy to taxonomically classify sequences using a variety of validated tools and curated databases. | • Databases can be self-limiting and have the potential to exclude novel microbes. | • Plethora of software using phylogenetically informative gene markers. | • High proportion of taxonomically uninformative sequences are discarded. |
| • Universal targets within microbial groups can give variable taxonomic classifications. | • Availability and access to comprehensive and curated databases across all microbial groups limited. | |||
| • Taxonomic resolution variable – species level identification should be interpreted with caution. | ||||
| Cost | •Low cost | • Can be carried out on most bench-top sequencers and sequencing platforms. | • Can be cost prohibitive depending on the sequencing depth, sample type, and microbe(s) of interest. | |
| • Can be carried out on most bench-top sequencers and sequencing platforms. | • If high host DNA is expected or interest is in the low-abundance microbes or rare taxa, use of a higher throughput sequencer (Illumina HiSeq), may be required. | |||
| Computational requirements | • Most analysis steps can be carried out on a modern desktop. | • Large datasets (high sample number and/or sequencing coverage) may require access to a high performance computing cluster dependent on analytical pipeline chosen. | • Cloud computing services are available for metagenomics data analysis for those without access to a high performance computing cluster. | High performance computing environment absolutely necessary. |
| • Cloud computing – potentially cost-prohibitive and might not have all available pipelines and/or software. | ||||
| • Data privacy and sensitivity may prohibit the use of commercial cloud computing services. | ||||
| Technical expertise | • Moderate to high technical expertise is required depending on the analytical pipeline chosen. | • High technical expertise required. | ||
Overview of appropriate usage for each unbiased high-throughput sequencing approach.
| Study goals/purpose | Suggested sequencing approach |
|---|---|
| Characterization of a particular microbial group (excluding viruses) in sample(s) | High-throughput targeted-amplicon sequencing; utilize shotgun metagenomics sequencing if interested in high taxonomic resolution above genus level. |
| Characterization of all microbial DNA in sample(s) | Metagenomics shotgun sequencing. |
| Pathogen detection | Dependent on the sample: If the etiological agent is suspected to be of viral origin a shotgun metagenomics approach is warranted. If the sample type contains a high host DNA load (e.g., blood) should consider a targeted-amplicon or deep shotgun metagenomics sequencing approach. The latter may be cost prohibitive and require access to a high-throughput sequencer (e.g., Illumina HiSeq). Low biomass samples (e.g., BAL/CSF), might require a targeted-amplicon sequencing approach initially. Shotgun metagenomics sequencing may not be able to sequence the infectious agent adequately (e.g., only a few sequences produced which may only yield a confounding signal). |
| Functional profiling | Functional profiles can be inferred with a targeted-amplicon sequencing approach, however, results should be interpreted with caution due to the limitations of inferring gene function with universal targets. A shotgun metagenomics approach would yield more appropriate and reliable conclusions. |
| SNV or clonal isolate detection studies | Shotgun metagenomics sequencing. |
| Novel microbial identification and characterization | Targeted-amplicon sequencing relies on curated databases of known microbes and may not be able to adequately analyze novel microbes in an unbiased technique. Shotgun metagenomics would be recommended. |