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Introduction to Microarray Gene Expression

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Title: Introduction to Microarray Gene Expression


1
Introduction to Microarray Gene Expression
  • Shyamal D. PeddadaBiostatistics Branch
  • National Inst. Environmental
  • Health Sciences (NIH)Research Triangle Park, NC

2
Outline of the four talks
  • A general overview of microarray data
  • Some important terminology and background
  • Various platforms
  • Sources of variation
  • Normalization of data
  • Analysis of gene expression data - Nominal
    explanatory variables
  • Two types of explanatory variables
  • Scientific questions of interest
  • A brief discussion on false discovery rate (FDR)
    analysis
  • Some existing methods of analysis.

3
Outline of the four talks
  • Analysis of ordered gene expression data
  • Common experimental designs
  • Some existing statistical methods
  • An example
  • Demonstration of ORIOGEN
  • Some open research problems
  • Analysis of data from cell-cycle experiments
  • Some background on cell-cycle experiments
  • Modeling the data
  • Data from multiple experiments
  • Some open research problem

4
Talk 1 An overview of microarray data
5
To perform statistical analysis of any given data
  • It is important to understand all sources of (i)
    bias, (ii) variability.
  • Some basic understanding of the underlying
    technology!
  • Understand the sampling/experimental design

6
Some Important Terminology and Background
7
Central Dogma of Molecular Biology
8
Some background terminologyDNA and RNA
  • DNA (Deoxyribonucleic acid) - Contains genetic
    code or instructions for the development and
    function living organisms. It is double stranded.
  • Four Nucleotides (building blocks of DNA)
  • Adenine (A), Guanine (G),
  • Thymine (T), Cytosine (C)
  • Base pairs (A, T) (G, C)
  • E.g. 5 ---AAATGCAT---3
  • 3 ---TTTACGTA---5

9
Some background terminologyDNA and RNA
  • RNA (Ribonucleic acid) - transcribed (or copied)
    from DNA. It is single stranded. (Complimentary
    copy of one of the strands of DNA)
  • RNA polymerase - An enzyme that helps in the
    transcription of DNA to form RNA.
  • Four Nucleotides (building blocks of DNA)
  • Adenine (A), Guanine (G),
  • Uracil (U), Cytosine (C)
  • Base pairs (A, U) (G, C)

10
Some background terminologyTypes of RNA
  • Types of RNA - (transfer) tRNA,
  • (ribosomal) rRNA, etc.
  • mRNA - messenger RNA. Carries information from
    DNA to ribosomes where protein synthesis takes
    place (less stable than DNA).

11
Some background terminology Oligos
  • Oligonucleotide - a short segment of DNA
    consisting of a few base pairs. In short it is
    commonly called Oligo.
  • mer - unit of measurement for an Oligo. It is
    the number of base pairs. So 30 base pair Oligo
    would be 30-mer long.

12
Some background terminology Probes
  • cDNA - complimentary DNA. DNA sequence that is
    complimentary to the given mRNA.
  • Obtained using an enzyme called reverse
    transcriptase.
  • Probes - a short segment of DNA (about 100-mer
    or longer) used to detect DNA or RNA that
    compliments the sequence present in the probe.

13
Some background terminologyBlots - Origins of
Microarrays
  • Southern blot (Edwin Southern, 1975 J. Molec.
    Biol.)
  • A method used to identify the presence of a DNA
    sequence in a sample of DNA.
  • Western blot (immunoblot)
  • to identify a specific protein from a tissue
    extract.

14
Some background terminology
  • Southwestern blot
  • to identify and characterize DNA-binding
    proteins.
  • Northern blot
  • A method used to study the gene expression from a
    sample of mRNA.

15
Microarrays
16
Northern blot Vs Microarray
Microarray Northern blot
Rate of expression analysis Thousands of genes at a time (High throughput) Few genes at a time
Automation Automation possible Manual
Scope Allows to explore relationships among several 100s of genes at the same time Limited
17
What is a Microarray?
  • Sequences from thousands of different genes are
    immobilized, or attached, at fixed locations.
  • Spotted, or actually synthesized directly onto
    the support.

18
Microarray Technology
  • Two color dye array (Spotted array)
  • Spotted cDNA microarrays
  • Spotted oligo microarrays
  • Single dye array
  • In situ oligo microarrays

19
Microarray Technology
20
Spotted Microarrays
21
Spotted DNA Microarray
  • Slides carrying spots of target DNA are
    hybridized to fluorescently labeled cDNA from
    experimental and control cells and the arrays are
    imaged at two or more wavelengths
  • Expression profiling involves the hybridization
    of fluorescently labeled cDNA, prepared from
    cellular mRNA, to microarrays carrying thousands
    of unique sequences.

22
Spotted DNA Microarray
  • Spotted DNA array is typically home made so you
    need to think about
  • cDNA or Oligo
  • Location of the Oligo in a given gene
  • Oligo length - number of bp?

23
Spotted DNA Microarray
  • Gene expression
  • Y lt 0 gene is over expressed in green labeled
    sample compared to red-labeled sample
  • Y 0 gene is equally expressed in both samples
  • Y gt 0 gene is over expressed in red-labeled
    sample compared to green labeled sample

24
Single Dye Microarrays
25
Major Commercial Platforms
  • More than 50 companies are currently offering
    various DNA microarray platforms, reagents and
    software
  • Affymetrix dominated the marker for many years

Agilent has one and two-color microarray platform
26
Affymetrix GeneChip
  • Each gene is represented by 11 to 20 oligos of
    25-mers
  • Probe An oligo of 25-mer
  • Probe Pair a PM and MM pair
  • Perfect match (PM) A 25-mer complementary to a
    reference sequence of interest (part of the gene)
  • Mismatch (MM) same as PM with a single base
    change for the middle (13th) base (G lt-gt C, A lt-gt
    T)
  • Probe set a collection of probe-pairs (11 to 20)
    related to a fraction of gene

27
Affymetrix call for the presence of a signal
  • Affymetrix detection algorithm uses probe pair
    intensities to obtain detection p-value
  • Using this p-value they decide whether the signal
  • is
  • present, marginal or absent

28
Affy call
  • Detection of p-value
  • Calculate Kendalls tau T for each probe pair
  • T (PM-MM) / (PMMM)
  • Determine the statistical significance of the
    gene by computing the p-value.

29
Affy call
Ref Affymetrix Technical Manual
30
Affymetrix Vs Illumina
Ref Pan Du Simon Lin
31
(No Transcript)
32
Which Platform to Choose?
  • Every platform has its unique feature
  • Choose platform based on
  • Nature of the study
  • Amount of available RNA
  • Cost
  • Platform comparison in MAQC study

33
MAQC Project
  • Objective To generate a set of quality control
    tools for microarray research community
  • 137 participants representing 51 organizations
  • Gene expression from two distinct RNA samples
    (total 4 samples)
  • Sample A Universal Human Reference
    RNA(UHRR)100
  • Sample B Human Brain Reference RNA(HBRR) 100
  • Sample C 75 UHRR 25 HBRR
  • Sample D 25 UHRR 75 HBRR

34
Microarray Data Analysis
35
Why Normalize Data?
  • To calibrate/adjust data so as to reduce or
    eliminate the effects arising from variation in
    technology and other sources rather than due to
    true biological differences between test groups.

36
Sources of bias/variation
  • Tissue or cell lines
  • mRNA
  • It can degrade over time - so there is a
    potential batch effect if portions of experiment
    are performed at different times
  • Purity and quantity
  • Dye color effect (spotted arrays)
  • Variation due to technology - is substantially
    reduced with improved technology
  • Etc.

37
A useful graphical representation of data
  • Data matrix
  • Let

38
A useful graphical representation of data
  • Let its spectral decomposition be given by
  • where

39
A useful graphical representation of data
  • Then
  • Plot

40
Common Normalization Methods
  • Internal Control Normalization
  • Global Normalization
  • Linear Normalization (Spotted arrays)
  • Non-linear Normalization Method (Spotted arrays)
    - LOWESS curve.
  • ANOVA
  • COMBAT (for batch effect)

41
Internal control normalization(Housekeeping
gene(s))
  • Expression of each gene is measured relative to
    the average of house keeping genes.
  • Basic assumption Expression of housekeeping
    genes does not change.
  • Disadvantage
  • House keeping genes may be highly expressed
    sometimes. Unexpected regulation of house keeping
    gene(s) leads to misinterpretation

42
Global Normalization
  • Basic assumption
  • Mean/Median expression ratio of all monitored
    mRNAs is constant across a chip.
  • Regression of
  • In simple terms the log ratios are corrected by a
    common mean or median
  • This method can also be applied to single Dye data

43
Linear Normalization(for spotted arrays)
  • Basic assumption
  • Mean/Median expression ratio of all monitored
    mRNAs depends upon the average intensity
  • Regression of

44
Non-Linear Normalization(for spotted arrays)
  • Basic assumption
  • Mean/Median expression ratio of all monitored
    mRNAs depends upon the average intensity
  • Regression of
  • Where is estimated by the
    robust scatter plot
  • smoother LOWESS (Locally WEighted Scatterplot
    Smoothing)

45
Analysis of Variance (ANOVA)
  • Standard Analysis of Variance model
  • Response variable - Gene expression
  • Explanatory variables
  • Dye color
  • Batch
  • Other potential effects?
  • Advantage Statistically significant
  • genes can be identified while controlling for the
  • various experimental conditions/factors.

46
Some important experimental designs
  • Pooled Samples versus Separate samples
  • Sometimes there may not be sufficient biological
    sample/specimen from a given animal. In such
    cases biological samples are pooled from several
    identical animals to form a sample.

47
An example of a pooling design(for each
treatment group)
  • Subjects Pool Observations

  • (Microarray chips)

48
The pooling design
  • Subjects Pool Observations

  • (Microarray chips)
  • 9 3 6
  • (3 per pool)
  • More generally
  • n p m
  • (rn/p per pool)

49
The standard design
  • Subjects Pool Observations

  • (Microarray chips)
  • 9 9 9
  • (r1)
  • More generally
  • n pn mn
  • (r1)

50
Some issues
  • What are the underlying parameters?
  • Effect of pooling on power.
  • The basic assumption. Validity of the assumption.

51
Parameters
  • Total variation in the expression of a gene can
    be decomposed in to
  • Biological variation
  • Technical variation
  • Biological samples (n)
  • Number of pools (p)
  • Biological samples per pool (rn/p)
  • Observed number of samples (e.g. microarrays) (m)

52
Some comments about pooling
  • Variance of the estimated mean expression of a
    gene depends on
  • number of pools (p)
  • number of bio samples per pool (r)
  • number of arrays (m)
  • biological variation
  • Technical variation.
  • Pooling works well when the biological variation
    in the gene
  • expression is substantially larger than the
    technical variation.

53
Power comparisons
  • Bio Micro Pool size Power
  • 5/group 5/group 1 (Standard design) 0.81
  • 6/group 6/group 1 (Standard design) 0.95
  • 6/group 3/group 2 (i.e 3 pools/group)
    0.30
  • 8/group 4/group 2 (i.e. 4 pools/group)
    0.80
  • 10/group 5/group 2 (i.e. 5 pools/group)
    0.98
  • Zhang and Gant (2005)

54
Power comparisons
  • Conditions of the simulation study
  • Biological variation is 4 times the technical
    variation.
  • False positive rate is 0.001.
  • Detect 2-fold expression.
  • Data are normally distributed.

55
A fundamental assumption
  • Biological averaging
  • Suppose an experiment consists of pooling r
    samples. Then
  • the expression of a gene in the pooled sample is
    assumed to
  • be the average of the genes expression in the
    r samples.
  • This assumption need not be true especially if
    the expression
  • values are transformed non-linearly.

56
Some important experimental designs
  • Reference designs (Spotted array)
  • Each treatment sample is hybridized against a
    common reference control.
  • Loop designs (Spotted array)
  • Suppose we have a control and three experimental
    groups A, B and C. Then hybridize Control and A,
    A with B, B with C and C with A.

57
Data Analysis - Preliminaries
  • Normalization
  • Transformation of data (usual methods)
  • Perhaps first fit ANOVA and plot the residuals
  • Log transformation
  • Square root
  • More generally, Box-Cox family of transformations
  • Identify potential outliers in the data (again,
    perhaps use the residuals)

58
Data Analysis
  • Method of Analysis depends upon the scientific
    question of interest.
  • In the next three lectures we describe several
    general methods and illustrate some using real
    data!
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