SlideShare a Scribd company logo
WHAT'S IN A NAME?
Better vocabulary = better bioinformatics???

From flickr user giantginkgo
# Author: Keith Bradnam, Genome Center, UC Davis
# This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike
3.0 Unported License.
http://biomickwatson.wordpress.com

Most of the interesting 'stuff' that I discover about bioinformatics and genomics comes from
a) twitter, b) blogs, and c) papers (in that order). Mick Watson has fun and engaging blog
about bioinformatics and today he raised an important point: the lack of standardization in
scientific databases leads to frustration (and frustration leads to...suffering).
http://biomickwatson.wordpress.com

These are some terms that appear in the same database. You can code solutions for some of
this variation (e.g. British/American English differences or presence/absence of underscore vs
space character), but who wants to waste time doing that? Shouldn't these databases be
using controlled vocabularies?
This infamous paper from 2004 reveals how easy it is to introduce errors into biological
databases.
First highlighted column = actual gene name.
Second highlighted column = what Excel will automatically assume you mean.
RIKEN ID: 2310009E13

Happens for other identifiers as well. This RIKEN ID will change if it ever ends up in Excel...
RIKEN ID: 2.31E+13

...now it appears as a number in scientific notation.
The paper shows that these 'dates-as-gene-names' ended up propagating to other
databases.
I searched today for '2-Sep' at GenBank and this was the only hit. It's possible that this is an
intended gene-name variant, but Septin 2 is usually referred to as sep2/sept2/sep-2 etc. So
this is possibly another Excel-based error.
Sometimes people make assumptions that gene names are unique to a specific function.
DEC1 (one of the Excel-ified gene names mentioned in the earlier paper) can mean one thing
to people working on many vertebrate species...
...but something else if you work on fruit flies. Dangerous to make any assumptions when it
comes to gene names.
Consider one worm gene...

Here is one Caenorhabiditis elegans gene (abu-11) in WormBase. There is the official gene
name, a sequence name, 'other' names, the WormBase gene ID, plus other identifiers for
external databases which also describe the gene (there's also a protein ID, not shown here).
In C. elegans, gene names have a central naming authority (the CGC) but genes often get
renamed. Just look at these pqn genes which have been renamed or merged with other
genes.
This is the current view of the twk-43 gene in C. elegans (aka F32H5.7[abc]).
WormBase allows you to see the history behind genes. This gene started out as just F32H5.2,
a gene with no splice isoforms.
Then at some point it was split into 3 genes...
...before being converted into the current one gene (with four splice isoforms). Genes are
split and merged and renamed all the time. Relying on the common gene name (e.g. twk-43)
or the sequence identifier (F32H5.7) can get you into trouble.
SOLUTIONS

What can be done to help with these sorts of problems?
Use ontologies and understand what those ontologies do.
Three main parts to a Gene Ontology term (GO term):
1) The name
2) The accession
3) The definition (which can change)
A fourth major part of a GO term is that it has ancestors and children. A single term is 'part
of' other terms and also 'is' examples of other terms. E.g. a nuclear outer membrane *is* a
nuclear membrane and is *part of* the cell.
Most model organism databases are loaded up with GO terms. E.g. you can search GO terms
from the 'front door' of FlyBase.
In WormBase, the same GO term search takes you directly to a gene page.
Scroll down on that gene page and we see the specified GO term...but what is an 'evidence
code', and what does 'IDA' mean?
Sadly the majority of people who use GO terms (as part of 'DAVID' analyses etc.) have no
knowledge of evidence codes
All GO terms should be connected to genes (or other database entries) with evidence codes.
Gives you an idea of how robust the assignment is. Databases like WormBase have curators
that scan papers (by eye, but also with software) to find suitable GO terms that can be added
to genes on the basis of experiments described in the paper.
Most of the GO terms you will ever see have this evidence code. It is among the weakest of all
evidence (avoid any evidence which is 'non-traceable author statement'). It could simply
mean that a human protein (with some known information) was BLASTed against a yeast
genome and the resulting yeast match acquired the human meta-information as GO terms.
IEA codes should be treated with some suspicion.
48.2% of GO annotations
— in one of the best annotated eukaryotic animal genomes —
are generated automatically
The Gene Ontology website shows how many GO terms are attached to genes in different
organisms. Even in C. elegans (with >15 years of gene annotation), about half of the GO
terms are all in the IEA category.
Gene Ontology is not the only game in town. Sequence Ontology (SO) is widely used and a
subset of SO terms are used in GFF files to describe features (or at least they should be!).
GO and SO are part of OBO (Open Biological Ontologies: http://www.obofoundry.org).There
may be a community developing an ontology for your field of interest. This site lists them all.
Some get very specific.
SUMMARY
Use ontologies whenever possible
Don't assume that identifiers in existing databases are
the correct (or only) identifiers
Be careful when inflicting new database identifiers on
to the world!

On the last point, check whether your identifiers (even if they end up buried in supplementary
material somewhere) don't conflict with other databases out there. Long and boring
identifiers are usually the most stable and more easily parsed by scripts (although they are
the least human-friendly). But no spaces or asterisks in identifiers please!
This talk is KORF_labtalk_00000315

More Related Content

PDF
Thoughts on the feasibility of an Assemblathon 3 contest
PDF
The art of good science writing
PDF
Genome Assembly: the art of trying to make one BIG thing from millions of ver...
PPTX
2014 ucl
PPTX
2014 villefranche
PPTX
2014 naples
PDF
Basics of Genome Assembly
PDF
Genome assembly: then and now — v1.1
Thoughts on the feasibility of an Assemblathon 3 contest
The art of good science writing
Genome Assembly: the art of trying to make one BIG thing from millions of ver...
2014 ucl
2014 villefranche
2014 naples
Basics of Genome Assembly
Genome assembly: then and now — v1.1

What's hot (20)

PDF
Genome assembly: then and now — v1.2
PDF
Genome assembly: then and now — with notes — v1.1
PDF
Genome Assembly 2018
PDF
2013 stamps-assembly-methods.pptx
PPTX
2014 bangkok-talk
PDF
Bio IGCSE- Genetic Engineering.
PPTX
2012 oslo-talk
PPTX
2013 duke-talk
PDF
De novo genome assembly - T.Seemann - IMB winter school 2016 - brisbane, au ...
PDF
Lets Make a Mammoth
PDF
Apollo - A webinar for the Phascolarctos cinereus research community
PPTX
2014 sage-talk
PPTX
Microbiome studies using 16S ribosomal DNA PCR: some cautionary tales.
PDF
Comparative Genomics and Visualisation - Part 2
PPTX
How to sequence a large eukaryotic genome
PPTX
Future of metagenomics
PDF
Genome Curation using Apollo
PPTX
Plant Pathogen Genome Data: My Life In Sequences
PDF
Long read sequencing - WEHI bioinformatics seminar - tue 16 june 2015
PPT
Genome assembly: then and now — v1.2
Genome assembly: then and now — with notes — v1.1
Genome Assembly 2018
2013 stamps-assembly-methods.pptx
2014 bangkok-talk
Bio IGCSE- Genetic Engineering.
2012 oslo-talk
2013 duke-talk
De novo genome assembly - T.Seemann - IMB winter school 2016 - brisbane, au ...
Lets Make a Mammoth
Apollo - A webinar for the Phascolarctos cinereus research community
2014 sage-talk
Microbiome studies using 16S ribosomal DNA PCR: some cautionary tales.
Comparative Genomics and Visualisation - Part 2
How to sequence a large eukaryotic genome
Future of metagenomics
Genome Curation using Apollo
Plant Pathogen Genome Data: My Life In Sequences
Long read sequencing - WEHI bioinformatics seminar - tue 16 june 2015
Ad

Viewers also liked (7)

PDF
10 tips for adding polish to presentations
PDF
This bioinformatics lesson is brought to you by the letter 'W'
PDF
Polish that presentation! 25 tips to bring clarity to your slides
PPTX
Master Thesis Presentation
PDF
Genome assembly: the art of trying to make one big thing from millions of ver...
PDF
13 questions you might have about galaxy
PPTX
Assembly: before and after
10 tips for adding polish to presentations
This bioinformatics lesson is brought to you by the letter 'W'
Polish that presentation! 25 tips to bring clarity to your slides
Master Thesis Presentation
Genome assembly: the art of trying to make one big thing from millions of ver...
13 questions you might have about galaxy
Assembly: before and after
Ad

Similar to What's in a name? Better vocabularies = better bioinformatics? (20)

PPT
The seven-deadly-sins-of-bioinformatics3960
PPT
The Seven Deadly Sins of Bioinformatics
PPTX
Computing on the shoulders of giants
PPTX
Chibucos annot go_final
PPT
Gene Ontology Project
PDF
BITS: Overview of important biological databases beyond sequences
PPT
Bioinformatica 06-10-2011-t2-databases
PDF
bioinformatics enabling knowledge generation from agricultural omics data
PPTX
How to analyse large data sets
PPT
Bioinformatics MiRON
PPT
hts ...kafna
PPTX
bioinformatics presentation in the master presentation
PPTX
Light Intro to the Gene Ontology
PDF
Bioinformatics
PPTX
Cool Informatics Tools and Services for Biomedical Research
PPTX
Ewan Birney Biocuration 2013
PPTX
2016 bergen-sars
PDF
University of Manchester Symposium 2012: Extraction and Representation of in ...
PPTX
Ontologies: Necessary, but not sufficient
The seven-deadly-sins-of-bioinformatics3960
The Seven Deadly Sins of Bioinformatics
Computing on the shoulders of giants
Chibucos annot go_final
Gene Ontology Project
BITS: Overview of important biological databases beyond sequences
Bioinformatica 06-10-2011-t2-databases
bioinformatics enabling knowledge generation from agricultural omics data
How to analyse large data sets
Bioinformatics MiRON
hts ...kafna
bioinformatics presentation in the master presentation
Light Intro to the Gene Ontology
Bioinformatics
Cool Informatics Tools and Services for Biomedical Research
Ewan Birney Biocuration 2013
2016 bergen-sars
University of Manchester Symposium 2012: Extraction and Representation of in ...
Ontologies: Necessary, but not sufficient

More from Keith Bradnam (9)

PDF
This bioinformatics lesson is brought to you by the letter 'T'
PDF
This bioinformatics lesson is brought to you by the letter 'D'
PDF
Genome assembly: then and now (with notes) — v1.2
PDF
Genome assembly: then and now — v1.0
PPTX
Database talk for Bits & Bites meeting
PPTX
Benchmarking short-read mapping programs
PDF
Thoughts on the recent announcements by Oxford Nanopore Technologies
PDF
When is a genome finished?
PDF
Twitter 101 - an introduction to Twitter
This bioinformatics lesson is brought to you by the letter 'T'
This bioinformatics lesson is brought to you by the letter 'D'
Genome assembly: then and now (with notes) — v1.2
Genome assembly: then and now — v1.0
Database talk for Bits & Bites meeting
Benchmarking short-read mapping programs
Thoughts on the recent announcements by Oxford Nanopore Technologies
When is a genome finished?
Twitter 101 - an introduction to Twitter

Recently uploaded (20)

PDF
Pre independence Education in Inndia.pdf
PPTX
master seminar digital applications in india
PDF
Basic Mud Logging Guide for educational purpose
PDF
3rd Neelam Sanjeevareddy Memorial Lecture.pdf
PDF
Classroom Observation Tools for Teachers
PDF
Microbial disease of the cardiovascular and lymphatic systems
PDF
Abdominal Access Techniques with Prof. Dr. R K Mishra
PDF
01-Introduction-to-Information-Management.pdf
PDF
FourierSeries-QuestionsWithAnswers(Part-A).pdf
PDF
The Lost Whites of Pakistan by Jahanzaib Mughal.pdf
PDF
ANTIBIOTICS.pptx.pdf………………… xxxxxxxxxxxxx
PDF
Module 4: Burden of Disease Tutorial Slides S2 2025
PPTX
Final Presentation General Medicine 03-08-2024.pptx
PDF
BÀI TẬP BỔ TRỢ 4 KỸ NĂNG TIẾNG ANH 9 GLOBAL SUCCESS - CẢ NĂM - BÁM SÁT FORM Đ...
PDF
102 student loan defaulters named and shamed – Is someone you know on the list?
PDF
O5-L3 Freight Transport Ops (International) V1.pdf
PDF
RMMM.pdf make it easy to upload and study
PPTX
Lesson notes of climatology university.
PDF
Computing-Curriculum for Schools in Ghana
PDF
STATICS OF THE RIGID BODIES Hibbelers.pdf
Pre independence Education in Inndia.pdf
master seminar digital applications in india
Basic Mud Logging Guide for educational purpose
3rd Neelam Sanjeevareddy Memorial Lecture.pdf
Classroom Observation Tools for Teachers
Microbial disease of the cardiovascular and lymphatic systems
Abdominal Access Techniques with Prof. Dr. R K Mishra
01-Introduction-to-Information-Management.pdf
FourierSeries-QuestionsWithAnswers(Part-A).pdf
The Lost Whites of Pakistan by Jahanzaib Mughal.pdf
ANTIBIOTICS.pptx.pdf………………… xxxxxxxxxxxxx
Module 4: Burden of Disease Tutorial Slides S2 2025
Final Presentation General Medicine 03-08-2024.pptx
BÀI TẬP BỔ TRỢ 4 KỸ NĂNG TIẾNG ANH 9 GLOBAL SUCCESS - CẢ NĂM - BÁM SÁT FORM Đ...
102 student loan defaulters named and shamed – Is someone you know on the list?
O5-L3 Freight Transport Ops (International) V1.pdf
RMMM.pdf make it easy to upload and study
Lesson notes of climatology university.
Computing-Curriculum for Schools in Ghana
STATICS OF THE RIGID BODIES Hibbelers.pdf

What's in a name? Better vocabularies = better bioinformatics?

  • 1. WHAT'S IN A NAME? Better vocabulary = better bioinformatics??? From flickr user giantginkgo # Author: Keith Bradnam, Genome Center, UC Davis # This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 3.0 Unported License.
  • 2. http://biomickwatson.wordpress.com Most of the interesting 'stuff' that I discover about bioinformatics and genomics comes from a) twitter, b) blogs, and c) papers (in that order). Mick Watson has fun and engaging blog about bioinformatics and today he raised an important point: the lack of standardization in scientific databases leads to frustration (and frustration leads to...suffering).
  • 3. http://biomickwatson.wordpress.com These are some terms that appear in the same database. You can code solutions for some of this variation (e.g. British/American English differences or presence/absence of underscore vs space character), but who wants to waste time doing that? Shouldn't these databases be using controlled vocabularies?
  • 4. This infamous paper from 2004 reveals how easy it is to introduce errors into biological databases.
  • 5. First highlighted column = actual gene name. Second highlighted column = what Excel will automatically assume you mean.
  • 6. RIKEN ID: 2310009E13 Happens for other identifiers as well. This RIKEN ID will change if it ever ends up in Excel...
  • 7. RIKEN ID: 2.31E+13 ...now it appears as a number in scientific notation.
  • 8. The paper shows that these 'dates-as-gene-names' ended up propagating to other databases.
  • 9. I searched today for '2-Sep' at GenBank and this was the only hit. It's possible that this is an intended gene-name variant, but Septin 2 is usually referred to as sep2/sept2/sep-2 etc. So this is possibly another Excel-based error.
  • 10. Sometimes people make assumptions that gene names are unique to a specific function. DEC1 (one of the Excel-ified gene names mentioned in the earlier paper) can mean one thing to people working on many vertebrate species...
  • 11. ...but something else if you work on fruit flies. Dangerous to make any assumptions when it comes to gene names.
  • 12. Consider one worm gene... Here is one Caenorhabiditis elegans gene (abu-11) in WormBase. There is the official gene name, a sequence name, 'other' names, the WormBase gene ID, plus other identifiers for external databases which also describe the gene (there's also a protein ID, not shown here).
  • 13. In C. elegans, gene names have a central naming authority (the CGC) but genes often get renamed. Just look at these pqn genes which have been renamed or merged with other genes.
  • 14. This is the current view of the twk-43 gene in C. elegans (aka F32H5.7[abc]).
  • 15. WormBase allows you to see the history behind genes. This gene started out as just F32H5.2, a gene with no splice isoforms.
  • 16. Then at some point it was split into 3 genes...
  • 17. ...before being converted into the current one gene (with four splice isoforms). Genes are split and merged and renamed all the time. Relying on the common gene name (e.g. twk-43) or the sequence identifier (F32H5.7) can get you into trouble.
  • 18. SOLUTIONS What can be done to help with these sorts of problems?
  • 19. Use ontologies and understand what those ontologies do.
  • 20. Three main parts to a Gene Ontology term (GO term): 1) The name 2) The accession 3) The definition (which can change)
  • 21. A fourth major part of a GO term is that it has ancestors and children. A single term is 'part of' other terms and also 'is' examples of other terms. E.g. a nuclear outer membrane *is* a nuclear membrane and is *part of* the cell.
  • 22. Most model organism databases are loaded up with GO terms. E.g. you can search GO terms from the 'front door' of FlyBase.
  • 23. In WormBase, the same GO term search takes you directly to a gene page.
  • 24. Scroll down on that gene page and we see the specified GO term...but what is an 'evidence code', and what does 'IDA' mean? Sadly the majority of people who use GO terms (as part of 'DAVID' analyses etc.) have no knowledge of evidence codes
  • 25. All GO terms should be connected to genes (or other database entries) with evidence codes. Gives you an idea of how robust the assignment is. Databases like WormBase have curators that scan papers (by eye, but also with software) to find suitable GO terms that can be added to genes on the basis of experiments described in the paper.
  • 26. Most of the GO terms you will ever see have this evidence code. It is among the weakest of all evidence (avoid any evidence which is 'non-traceable author statement'). It could simply mean that a human protein (with some known information) was BLASTed against a yeast genome and the resulting yeast match acquired the human meta-information as GO terms. IEA codes should be treated with some suspicion.
  • 27. 48.2% of GO annotations — in one of the best annotated eukaryotic animal genomes — are generated automatically The Gene Ontology website shows how many GO terms are attached to genes in different organisms. Even in C. elegans (with >15 years of gene annotation), about half of the GO terms are all in the IEA category.
  • 28. Gene Ontology is not the only game in town. Sequence Ontology (SO) is widely used and a subset of SO terms are used in GFF files to describe features (or at least they should be!).
  • 29. GO and SO are part of OBO (Open Biological Ontologies: http://www.obofoundry.org).There may be a community developing an ontology for your field of interest. This site lists them all.
  • 30. Some get very specific.
  • 32. Use ontologies whenever possible Don't assume that identifiers in existing databases are the correct (or only) identifiers Be careful when inflicting new database identifiers on to the world! On the last point, check whether your identifiers (even if they end up buried in supplementary material somewhere) don't conflict with other databases out there. Long and boring identifiers are usually the most stable and more easily parsed by scripts (although they are the least human-friendly). But no spaces or asterisks in identifiers please! This talk is KORF_labtalk_00000315