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Introduction to the design of cDNA microarray experiments

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Introduction to the design of cDNA microarray experiments Statistics 246, Spring 2002 Week 9, Lecture 1 Yee Hwa Yang Some aspects of design Layout of the array Which ... – PowerPoint PPT presentation

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Title: Introduction to the design of cDNA microarray experiments


1
Introduction to the design of cDNA microarray
experiments
  • Statistics 246, Spring 2002
  • Week 9, Lecture 1
  • Yee Hwa Yang

2
Some aspects of design
  • Layout of the array
  • Which cDNA sequence to print?
  • Library
  • Controls
  • Spatial position
  • Allocation of samples to the slides
  • Different design layout
  • A vs B Treatment vs control
  • Multiple treatments
  • Time series
  • Factorial
  • Replication
  • number of hybridizations
  • use of dye swap in replication
  • Different types replicates (e.g pooled vs
    unpooled material (samples))
  • Other considerations
  • Physical limitations the number of slides and
    the amount of material
  • Extensibility - linking

3
Issues that affect design of array experiments
  • Scientific
  • Aim of the experiment
  • Specific questions and priorities between them.
  • How will the experiments answer the questions
    posed?
  • Practical (Logistic)
  • Types of mRNA samples
  • reference, control, treatment 1, etc.
  • Amount of material.
  • Count the amount of mRNA involved in one channel
    of a hybridization as one unit.
  • Number of slides available for experiment.
  • Other Information
  • The experimental process prior to hybridization
  • sample isolation, mRNA extraction,
    amplification , labelling.
  • Controls planned
  • positive, negative, ratio, etc.
  • Verification method
  • Northern, RT-PCR, in situ hybridization, etc.

4
Graphical representation
5
Natural design choice
C
  • Case 1 Meaningful biological control (C)
  • Samples Liver tissue from four mice treated by
    cholesterol modifying drugs.
  • Question 1 Genes that respond differently
    between the T and the C.
  • Question 2 Genes that responded similarly across
    two or more treatments relative to control.
  • Case 2 Use of universal reference.
  • Samples Different tumor samples.
  • Question To discover tumor subtypes.

6
Direct vs Indirect
  • Two samples
  • e.g. KO vs. WT or mutant vs. WT

Indirect
Direct
T
Ref
T
C
C
average (log (T/C))
log (T / Ref) log (C / Ref )
?2 /2
2?2
7
One-way layout one factor, k levels
I) Common Reference II) Common reference III ) Direct comparison

Number of Slides N 3 N6 N3
Ave. variance 2 0.67
Units of material A B C 1 A B C 2 A B C 2
Ave. variance 1 0.67
All pair-wise comparisons are of equal importance
8
Dye-swap
A
A
C
B
C
B
Design B2
Design B1
  • - Design B1 and B2 have the same average variance
  • - The direction of arrows potentially affects the
    bias
  • of the estimate but not the variance
  • For k 3, efficiency ratio (Design A1 / Design
    B) 3
  • In general, efficiency ratio (2k) / (k-1)

9
Design how we sliced up the bulb
A
D
P
L
V
M
10
Multiple direct comparisons between different
samples (no common reference) Different ways of
estimating the same contrast e.g. A compared to
P Direct log(A/P) Indirect log(A/M)
log((M/P) or log(A/D)
log(D/P) or log(A/L)
log((P/L)
D
A
M
L
P
V
How do we combine these?
11
Linear model analysis
Define a matrix X so that E(Y)Xb a log(A),
plog(P), dlog(D), vlog(V), mlog(M), llog(L)
12
Time Series
T2
T4
T5
T6
T7
T3
T1
Ref
  • Possible designs
  • All sample vs common pooled reference
  • All sample vs time 0
  • Direct hybridization between times.

Pooled reference
Compare to T1
t vs t1
t vs t2
t vs t3
13
Design choices in time series Design choices in time series t vs t1 t vs t1 t vs t1 t vs t2 t vs t2
Design choices in time series Design choices in time series T1T2 T2T3 T3T4 T1T3 T2T4 T1T4 Ave
N3 A) T1 as common reference 1 2 2 1 2 1 1.5
N3 B) Direct Hybridization 1 1 1 2 2 3 1.67
N4 C) Common reference 2 2 2 2 2 2 2
N4 D) T1 as common ref more .67 .67 1.67 .67 1.67 1 1.06
N4 E) Direct hybridization choice 1 .75 .75 .75 1 1 .75 .83
N4 F) Direct Hybridization choice 2 1 .75 1 .75 .75 .75 .83
14
2 by 2 factorial two factors, each with two
levels
  • Example 1 Suppose we wish to study the joint
    effect of two drugs, A and B.
  • 4 possible treatment combinations
  • C No treatment
  • A drug A only.
  • B drug B only.
  • A.B both drug A and B.
  • Example 2 Our interest in comparing two strain
    of mice (mutant and wild-type) at two different
    times, postnatal and adult.
  • 4 possible samples
  • C WT at postnatal
  • A WT at adult (effect of time only)
  • B MT at postnatal (effect of the mutation only)
  • A.B MT at adult (effect of both time and the
    mutation).

15
Factorial design
m
ma
Different ways of estimating parameters. e.g. B
effect. 1 (m b) - (m) b 2 - 5 ((m
a) - (m)) -((m a)-(m b)) (a) - (a b)
b
2
A
C
4
1
3
5
6
B
AB
mb
mabab
16
Factorial design
m
ma
mabab
mb
17
2 x 2 factorial
Indirect A balance of direct and indirect A balance of direct and indirect A balance of direct and indirect
I) II) III) IV)
Slides N 6 N 6 N 6 N 6
Main effect A 0.5 0.67 0.5 NA
Main effect B 0.5 0.43 0.5 0.3
Interaction A.B 1.5 0.67 1 0.67
Table entry variance
18
Linear model analysis
Define a matrix X so that E(Y)Xb Use least
squares estimate for a, b, ab
19
y1 log (A / C) a
y2 log (B / C) b
y3 log (AB / C) a b ab
  • Common reference approach
  • Estimate (ab) with y3 - y2 - y1

20
2 x 2 factorial
Indirect A balance of direct and indirect A balance of direct and indirect A balance of direct and indirect
I) II) III) IV)
Slides N 6 N 6 N 6 N 6
Main effect A 0.5 0.67 0.5 NA
Main effect B 0.5 0.43 0.5 0.3
Interaction A.B 1.5 0.67 1 0.67
Table entry variance
21
More general n by m factorial experiment
  • 2 factors, one with n levels and the other with m
    levels
  • OE experiment (2 by 2)
  • interested in difference between zones, age
    and also zone.age interaction.
  • Further experiment (2 by 3)
  • only interested in genes where difference
    between treatment and controls changes with
    time.

treatment
control
control
treatment
0 12 24
0 12 24
22
WT.P21 ? a1 a2
WT.P11 ? a1
WT P1 ?
2
5
7
4
1
MT.P21 ? (a1 a2) b (a1 a2)b
MT.P1 ? b
MT.P11 ? a1ba1.b
3
6
23
Replication
  • Why replicate slides
  • Provides a better estimate of the log-ratios
  • Essential to estimate the variance of log-ratios
  • Different types of replicates
  • Technical replicates
  • Within slide vs between slides
  • Biological replicates

24
Sample size
Apo A1 Data Set
25
Technical replication - labelling
  • 3 sets of self self hybridization (cerebellum
    vs cerebellum)
  • Data 1 and Data 2 were labeled together and
    hybridized on two slides separately.
  • Data 3 were labeled separately.

Data 3
Data 2
Data 1
Data 1
26
(No Transcript)
27
  • Technical replication - amplification
  • Olfactory bulb experiment
  • 3 sets of Anterior vs Dorsal performed on
    different days
  • 10 and 12 were from the same RNA isolation and
    amplification
  • 12 and 18 were from different dissections and
    amplifications
  • All 3 data sets were labeled separately before
    hybridization

28
T1
T2
Replicate Design 1
amplification
1 2 3 4
T1
amplification
Replicate Design 2
amplification
T2
1 2 3 4
amplification
Amplified samples
Original samples
29
M1 Lc.MT.P1 ?
M2 Lc.WT.P11 ? ?1
M3 Lc.WT.P21 ? (?1 ?2)
M4 Lc.MT.P1 ? ?
M5 Lc.MT.P11 ? ?1 ? ?1 ?
M6 Lc.MT.P21 ? (?1 ?2) ? (?1 ?2)?
  • Common reference approach
  • Estimate (?1.?) with M5 M4 - M2 M1
  • Estimate (?1 ?2).? with M6 M4 M3 M1
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