Title: Databases for Microarrays
1Databases for Microarrays
- Vidhya Jagannathan
- SIB, Lausanne
2Overview
- Microarray data in a nutshell
- Why databases?
- What data to represent?
- What is a database?
- Different data models
- E-R modelling
- Microarray Databases
- Standards being developed
3Microarray Experiment
4Microarray Data in a Nutshell
- Lots of data to be managed before and after the
experiment. - Data to be stored before the experiment .
- Description of the array and the sample.
- Direct access to all the cDNA and gene sequences,
annotations, and physical DNA resources. - Data to be stored after the experiment
- Raw Data - scanned images.
- Gene Expression Matrix - Relative expression
levels observed on various sites on the array. - Hence we can see that database software capable
of dealing with larger volumes of numeric and
image data is required.
5Why Databases?
- Tailored to datatype
- Tailored to the Scientists
- Intuitive ways to query the data
- Diagrams, forms, point and click, text etc.
- Support for efficient answering of queries.
- Query optimisation, indexes, compact physical
storage.
6Data Representation
- Goal Represent data in an intuitive and
convenient manner - Without unnecessary replication of information
- Making it easy to write queries to find required
information - Supporting efficient retrieval of required
information
7What is a Database?
- A database is an organised collection of pieces
of structured electronic information. - Example 1 Libraires use a database system to
keep track of library inventory and loans. - Example 2 All airlines use database system to
manage their flights and reservations. - The collection of records kept for a common
purpose such as these is known as a database. - The records of the database normally reside on a
hard disk and the records are retrieved into
computer memory only when they are accessed. - So the reasons are obvious why we need to discuss
about a Microarray database.
8Data Models
- Describes a container for data and methods to
store and retrieve data from that container. - Abstract math algorithms and concepts.
- Cannot touch a data model.
- Very useful
9Types of Data Models
- Ad-hoc file formats (not really data models!)
- Relational data model
- Object-relational data model
- Object-oriented data model
- XML (Extensible Markup Language)
10Ad-hoc File Formats
- The various 'ad-hoc' file formats in use for
microarray data are - Flat file formats.
- Spread sheet formats.
- Not the least - Even MS-Word documents !!!
- Very rudimentary method to store data .
- Sometimes contains redundant information.
- Extremely inefficient for retrieval of particular
subsets of the results.
11Relational Data Model
- Most prevalent and used in many databases
developed today.
- The collection of related information is
represented as a set of tables.
- Data value is stored in the intersection of row
and column
- Column values are of the same kind. A Simple
data validation.
- Rows are unique. So no data redundancy and every
row is meaningful and can be identified by the
unique key.
- Utilises Structured Query Language (SQL) for data
storage, retrival and manipulation.
12Example
Table
Row or Record
Field or Column
13Example
14Advantages of Relational Model
- Allows information to be broken up into logical
units and stored in tables. - Allows combining data from different tables in
different ways to derive useful information. - Great for queries involving information from
multiple original sources. - Can easily gather related information.
- e.g. information about a particular gene from
multiple datasets/experiments
15Object Oriented Model
- Object Oriented Model allows real world data to
be represented as objects. - Objects encapsulate the data and provide methods
to access or manipulate it. - Objects with specific structure and set of
methods are said to belong to the object class. - Allows new classes to be created by extending
the description of the parent class. - Child classes inherit the data and methods of the
parent class.
16Example
OODBMS
17Example - ArrayExpress
18Database Design Entity-Relationship Concept
Relationship
Entity A
Entity B
Examples
19Entities
- are real world objects
- ex gene
- contain attributes
- ex gene_id, sequence
- are drawn as rectangle boxes that holds the name
of the entity and attribute in two different
notations as there is no standard!
Gene
notation 2
notation 1
20Relationship
- Relationships provide connections between two or
more entities - ex Which genes were used in which experiment
- When two entities are involved in a relationship,
it is known as binary relationship. - When three entities are invoved in a
relationship, it is called as ternary
relationship. - When more than three entities are involved in a
relationship, it is usually broken in to one or
more binary or ternary relationships. - are drawn as a line linking the involved entities
as
used_in
Gene
Experiment
21Example E-R Diagram
Expt-Exptr
Expt-Sample
Multivalued attribute
Notation
Expt-Array
Many-to-one
22Object relational data model
- Improved relational model by adding some features
from object data models. - Information is represented as in relational
models but column values not restricted to one
mutliple values are allowed. - Example (sample table in previous slides)
sampe-id organism celltype drug_id
d1 d2
s001 ecoli c123 ac1 nm ac3 nm
s002 ecoli c123 ac1 nm ac3 nm
23Queries, queries, queries!!
- Given a collection of microarray generated gene
expression data, what kind of questions the users
wish to pose. - Constructing an extensive list of possible
interesting queries and data mining problems that
has to be supported by the database will
facilitate the design process.
24Queries, queries, queries!!
- Query to the data
- Which genes are linked ?
- Which genes are expressed similarly to my gene
XYZ? - Which genes have a changed the expression in a
second condition ? - Which genes are co-expressed in differing
conditions ? - classification (of tumors, diseased tissues
etc.) which patterns are characteristic for a
certain class of samples, which genes are
involved?
25More Queries !!!
- Queries that add a link in additional knowledge
- functional classification of genes Are changes
clustered in particular classes? - metabolic pathway information Is a certain
pathway/route in a pathway affected? - disease information clinical follow up
correlation to expression patterns. - phenotype information for mutants Are there
correlations between particular phenotypes and
expression patterns?
26More Queries !!!
- in what region is the interesting gene located in
the genome? - is there synteny in this region with other
species? - is there a known trait that maps to this region?
27Query Language
- Language in which user requests information from
the database. - SQL
- Data definition helps you implement your model
and data manipulation helps you modify and
retrive data - Advantages
- Can specify query declaratively and let database
system figure out best way of finding answers - Supports queries of medium complexity
- Specialized languages
- SQL language statements are not abstract but very
close to spoken language.
28Basic SQL Queries
- Find the image for experiment number 1345
- select image from experiment where
experiment-id 1345 - Find the experiment-id and image of all
experiments involving e-coli - select experiment-id, image from experiment,
sample where experiment.sample-id
sample.sample-id and sample.organism e.coli - All combinations of rows from the relations in
the from clause are considered, and those that
satisfy the where conditions are output
29Interfacing
- SQL queries are carried out on terminal screen
which is not very useful and user friendly for an
end user, so applications are created to
interface more friendly staments with the SQL
statements - A web form is a typical example of interface for
SQL - Applications for data loading.
- More complex queries (e.g. data mining such as
classification and clustering) are very
imporatant part of the Microarray Analyis
Protocol - It is very important to interface the various
applications we use to analyse the retrieved data
with database.
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31Gene Expression Databases Require Integration
- There are many different types of data presenting
numerous relationships. - There are a number of Databases with lots of
information. - Experiments need to be compared because the
experiments are very difficult to perform and
very expensive. - Solution Make all the databases talk the same
language. - XML was the choice of data interchange format.
32Why XML?
- Why XML ? XML provides the method for defining
the meaning or semantics of data. - Example A XML file of the earlier table we
defined
ltgene_featuresgt ltgene_idgtGBVN32lt/gene_idgt
ltcontig_idgtNT_010651lt/contig_idgt
ltcontig_startgt2354807lt/contig_startgt
ltcontig_endgt2360778lt/contig_endgt
ltcontig_strandgtComplementlt/contig_strandgt lt/gene_f
eaturesgt
33Mapping XML to Relational Database
- The Data Structure in XML is defined in Document
Type Descrciptor as follows - lt!ELEMENT gene_id (PCDATA)gt
- lt!ELEMENT contig_id (PCDATA)gt
- lt!ELEMENT contig_start (PCDATA)gt
- lt!ELEMENT contig_end (PCDATA)gt
- lt!ELEMENT contig_sequence (PCDATA)gt
- This kind of DTD also helps us to have control
over the vocabulary used. - SQL
- create table gene (
- gene_id varchar(5) primary key,
- contig_id varchar(10) not null,
- contig_start integer not null,
- contig_end integer not null,
- contig_sequence text not null)
- So the DTD can be directly mapped into a
relational database.
34MAGE-ML As Data Interchage Format
Expression Data
Converter (program)
MAGE-ML
Databases
35Existing Microarray Databases
- Several gene expression databases existBoth
commercial and non-commercial. - Most focus on either a particular technolgy or a
particular organism or both. - Commercial databases
- Rosetta Inpharmatics and Genelogic, the specifics
of their internal structure is not available for
internal scrutiny due to their proprietary
nature. - Some non-commercial efforts to design more
general databases merit particular mention. - We will discuss few of the most promising ones
- ArrayExpress - EBI
- The Gene expression Omnibus (GEO) - NLM
- The Standford microarray Database
- ExpressDB - Harvard
- Genex - NCGR
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37ArrayExpress
- Public repository of microarray based gene
expression data. - Implemented in Oracle at EBI.
- Contains
- several curated gene expression datasets
- possible introduction of an image server to
archive raw image data associated with the
experiments. - Accepts submissions in MAGE-ML format via a
web-based data annotation/submission tool called
MIAMExpress. - A demo version of MIAMExpress is available at
http//industry.ebi.ac.uk/parkinso/subtool/subtyp
e.html - Provides a simple web-based query interface and
is directly linked to the Expression Profiler
data analysis tool which allows expression data
clustering and other types of data exploration
directly through the web.
38Gene Express Omnibus
- The Gene Expression Omnibus ia a gene expression
database hosted at the National library of
Medicine - It supports four basic data elements
- Platform ( the physical reagents used to generate
the data) - Sample (information about the mRNA being used)
- Submitter ( the person and organisation
submitting the data) - Series ( the relationship among the samples).
- It allows download of entire datasets, it has not
ability to query the relationships - Data are entered as tab delimited ASCII
records,with a number of columns that depend on
the kind of array selected. - Supports Serial Analysis of Gene Expression
(SAGE) data.
39Stanford Microarray Database
- Contains the largest amount of data.
- Uses relational database to answer queries.
- Associated with numerious clustering and analysis
features. - Users can access the data in SMD from the web
interface of the package. - Disadvantage
- It supports only Cy3/Cy5 glass slide data
- It is designed to exclusively use an oracle
database - Has been recently released outside without
anykind of support !!
40MaxdSQL
- Minor changes to the ArrayExpress object data
model allowed it to be instantiated as a
relational database, and MaxdSQL is the resulting
implementation. - MaxdSQL supports both Spotted and Affymetrix data
and not SAGE data. - MaxdSQL is associated with the maxdView, a java
suite of analysis and visualisation tools.This
tool also provides an environment for developing
tools and intergrating existing software. - MaxdLoad is the data-loading application software.
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42GeneX
- Open source database and integrated tool set
released by NCGR http//www.ncgr.org. - Open source - provides a basic infrastructure
upon which others can build. - Stores numeric values for a spot measurement
(primary or raw data), ratio and averaged data
across array measurements. - Includes a web interface to the database that
allow users to retrieve - Entire datasets, subsets
- Guided queries for processing by a particular
analysis routine - Download data in both tab delimited form and
GeneXML format ( more descriptions later)
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44ExpressDB
- ExpressDB is a relational database containing
yeast and E.coli RNA expression data. - It has been conceived as an example on how to
manage that kind of data. - It allows web-querying or SQL-querying.
- It is linked to an integrated database for
functional genomics called Biomolecule
Interaction Growth and Expression Database
(BIGED). - BIGED is intended to support and integrate RNA
expression data with other kinds of functional
genomics data
45Survey of existing microarray systems
This survey is based on the article published
in BRIEFINGS IN BIOINFORMATICS, Vol 2, No 2, pp
143-158, May 2001 A comparison of
microarray databases
46The Microarray Gene Expression Database Group
(MGED)
- History and Future
- Founded at a meeting in November, 1999 in
Cambridge, UK. - In May 2000 and March 2001 development of
recommendations for microarray data annotations
(MAIME, MAML). - MGED 2nd meeting
- establishment of a steering committee consisting
of representatives of many of the worlds leading
microarray laboratories and companies - MGED 4th meeting in 2002
- MAIME 1.0 will be published
- MAML/GEML and object models will be accepted by
the OMG - concrete ontology and data normalization
recommendations will be published. - information can be obtained from
http//www.mged.org
47The Microarray Gene Expression Database Group
(MGED)
- Goals
- Facilitate the adoption of standards for
DNA-array experiment annotation and data
representation. - Introduce standard experimental controls and data
normalization methods. - Establish gene expression data repositories.
- Allow comparision of gene expression data from
different sources.
48MGED Working Groups
- Goals
- MIAME Experiment description and data
representation standards - Alvis Brazma - MAGE Introduce standard experimental controls
and data normalization methods - Paul Spellman.
This group includes the MAGE-OM and MAGE-ML
development. - OWG Microarray data standards, annotations,
ontologies and databases - Chris Stoeckert - NWG Standards for normalization of microarray
data and cross-platform comparison - Gavin
Sherlock
49References
- URL
- Tutorial on Information Management for Genome
Level Bioinformatics, Paton and Goble, at VLDB
2001 http//www.dia.uniroma3.it/vldbproc/tutEur
opea - European Molecular Biology Network
http//www.embnet.org/ - Univ. Manchester site (with relational version of
Microarray data representation, and links to
other sites) - http//www.bioinf.man.ac.uk
- Database textbook with absolutely no
bioinformatics coverage - For Microarray Data
- http//linkage.rockefeller.edu/wli/microarray/