| Literature DB >> 34282932 |
Linda Brubaker1, Jean-Philippe F Gourdine2, Nazema Y Siddiqui3, Amanda Holland4, Thomas Halverson5, Roberto Limeria6, David Pride7,8, Lenore Ackerman9, Catherine S Forster10, Kristin M Jacobs11, Krystal J Thomas-White12, Catherine Putonti5,13, Qunfeng Dong14,15, Michael Weinstein16,17, Emily S Lukacz1, Lisa Karstens18, Alan J Wolfe5,6.
Abstract
Urobiome research has the potential to advance the understanding of a wide range of diseases, including lower urinary tract symptoms and kidney disease. Many scientific areas have benefited from early research method consensus to facilitate the greater, common good. This consensus document, developed by a group of expert investigators currently engaged in urobiome research (UROBIOME 2020 conference participants), aims to promote standardization and advances in this field by the adoption of common core research practices. We propose a standardized nomenclature as well as considerations for specimen collection, preservation, storage, and processing. Best practices for urobiome study design include our proposal for standard metadata elements as part of core metadata collection. Although it is impractical to follow fixed analytical procedures when analyzing urobiome data, we propose guidelines to document and report data originating from urobiome studies. We offer this first consensus document with every expectation of subsequent revision as our field progresses.Entities:
Keywords: consensus; guideline; human microbiome; research; statement; urinary microbiome; urobiome
Year: 2021 PMID: 34282932 PMCID: PMC8409733 DOI: 10.1128/mSystems.01371-20
Source DB: PubMed Journal: mSystems ISSN: 2379-5077 Impact factor: 6.496
FIG 1Key recommendations for urobiome research.
FIG 2Recommended terminology for urobiome samples.
Proposed elements to be included in the minimum metadata standards for reporting of urobiome research
| Element(s) | Required/desired | Description |
|---|---|---|
| Biological elements | ||
| Age | Required | Age in years or months/days if appropriate for infant/young child population |
| Sex | Required | Biological sex; gender if relevant for the study |
| Antibiotic usage | Desired | There is a lack of knowledge about postantibiotic microbiome recovery; when possible, we recommend recording of use in the prior 3 months or length of time between last antibiotic exposure and sample collection |
| Hormone status | Desired | Pubertal stage |
| Pregnant/postpartum | ||
| Menopausal status: perimenopausal, postmenopausal | ||
| Also specify if taking supplemental hormones (estrogen) and route (oral, transdermal, or vaginal, etc.) | ||
| Last menstrual period (if menstruating) | ||
| Contraception | Desired | Use of oral contraceptives, other hormonal or nonhormonal/barrier, or none |
| Body mass index | Desired | Body mass index at the time of the study visit, calculated from height and weight |
| Race, ethnicity | Desired | If possible, use standard terminology from sources such as the U.S. census and SNOMED CT |
| Surgery | Desired | Performed in the prior 3 months |
| Prior GU surgeries | ||
| Prior implanted GU materials | ||
| Birth details | Desired | Gestational age |
| Mode of delivery | ||
| NICU stay | ||
| Method of feeding | ||
| Medical history | Desired | Diabetes/prediabetes |
| Other relevant medical comorbidities | ||
| Use of steroids or immunosuppressant medications | ||
| GU anatomical abnormalities | ||
| Recurrent GU infections | ||
| Recent GU instrumentation | ||
| Urine characteristics | Desired | pH, specific gravity, leukocyte esterase, blood |
| Environmental variables | ||
| Method of collection | Required | Void, collection device (Peezy) |
| Catheter (use of Mitrofanoff | ||
| Suprapubic aspirate | ||
| Geographic location | Required | Can be discrete, including geographic coordinates, or broad, such as region or country |
| Seasonal | Desired | Month of collection |
| Dietary | Desired | Consumption of a special diet, use of fiber supplementation, yogurt consumption |
| Sexual activity | Desired | Time interval between last sexual activity and sample collection, if sexually active |
| Technical variables | ||
| Date and time of collection | Required | Used to ensure that samples stored at room temp for long periods are highlighted as such, potentially impacting the validity of results |
| Ensure that the date is generic enough to be included or use a date range | ||
| Date and time of freezing | Required | Time interval between sample collection and freezing |
| Omit if samples undergo immediate DNA extraction | ||
| Preservative | Required | If used, name |
| DNA extraction | Required | Method/kit used |
| Sequencing method | Required | e.g., Illumina, Ion Torrent, Nanopore, PacBio, Sanger, pyrosequencing; include amplicon/variable region(s) used |
| Processing details | Desired | Including, but not limited to, details of sample transfer method and extraction protocol (sterile hood or technique), etc. |
Additional recommendation for pediatric populations.
Additional recommendation for infant populations.
Required when uploading sequence data to the Sequence Read Archive (SRA) (27) or the European Nucleotide Archive (ENA) (36) public data repository.
OCP, oral contraceptive pill; GU, genitourinary; NICU, neonatal intensive care unit.
Guidelines for processing sequencing data for urobiome research
| Data processing step | Description (reference[s]) |
|---|---|
| Marker gene sequencing | |
| Grouping reads | Sequencing reads can be grouped into OTUs or ASVs; ASVs offer several advantages over OTUs, such as better accuracy and resolution, and hence are preferred ( |
| Assigning taxonomy | Algorithm: taxonomy can be assigned with taxonomic classifiers such as naive Bayes or BLCA classifiers ( |
| Database: the Silva ( | |
| Data cleaning | Chimeras: chimeras arise from PCR and should be removed using an algorithm such as ChimeraSlayer ( |
| Contaminants: since catheter-collected specimens are typically low-biomass specimens, computational strategies for bacterial contaminants, identification, and removal should be used; Decontam is currently the preferred approach in conjunction with an exptl design that includes negative controls and/or a mock microbial dilution series to evaluate performance ( | |
| Whole-genome sequencing | |
| Data cleaning | Host DNA needs to be removed using tools such as Bowtie2 with the current human reference genome ( |
| Read processing | Sequencing reads can be processed using metagenomic |
| Annotation | Taxonomic annotation: marker genes such as 16S rRNA and well-characterized functional genes can be used for genus- and species-level annotations using tools such as Metaphlan ( |
| Gene annotation: identifying relevant features of bacterial genomes can be performed using tools such as Prokka ( | |
| Metabolic pathway analysis: the metabolic functional potential of a microbial community can be modeled and explored using tools such as CarveMe ( | |
| Software pipelines for data analysis | |
| Marker genes | QIIME2 ( |
| WGS | MG-RAST ( |
| Viral | Classification of eukaryotic viruses and bacteriophage: Virmine ( |
| Classification of bacteriophage: VirSorter ( | |
OTUs, operational taxonomic units; ASVs, amplicon sequence variants; WGS, whole genome sequencing.
Minimum information for reporting bioinformatics methods in urobiome studies
| Information to be included | Description (reference) |
|---|---|
| Software | Include software package and version; if using a package such as QIIME ( |
| Databases | Include databases used and version |
| Code | Include essential custom-written code for analysis or data processing as supplemental material or link to code repository such as GitHub |
| Data | Raw sequencing data: stored in a public repository such as SRA ( |
| WGS assemblies: stored in a public repository such as GenBank | |
| Metadata: follow MIMARKS ( |
SRA, Sequence Read Archive; ENA, European Nucleotide Archive; dbGaP, Database of Genotypes and Phenotypes.