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1 Models and methods for summarizing GeneChip probe set data.

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Presentation on theme: "1 Models and methods for summarizing GeneChip probe set data."— Presentation transcript:

1 1 Models and methods for summarizing GeneChip probe set data

2 2 Some Gene Expression Analysis Tasks Detection of gene expression – presence calls. Differential expression detection – comparative calls. Measurement of gene expression.

3 3 Objective: To compute probe set summaries which are good indicators of gene expression from background corrected, normalized, prefect match probe intensities for a set of arrays: PM * ijk i=1,…,I, J=1,…,J, k=1,…K Where i denotes probes in probe sets, j denotes arrays and k denotes probe sets.

4 4 Affymetrix spike-in data set used for illustration - 14 genes spiked in at different concentrations into a common pool of pancreas cRNA

5 5 Affy comment on non-responding probes: Affymetrix: “Certain probe pairs for 407_at and 36889_at do not work well. It is recommended that these two probe sets be excluded for final statistical tally.”

6 6 To log or not to log? In addition to providing good expression values, we would like the model to be easy to understand and analyse – Would like to fit a standard linear model: Homogeneity of variance Additivity Normality

7 7 Homogeneity of variance Look at association between the variance and the mean of the intensities – plot IQR of PM * across 59 replicates against the median of PM * across 59 replicates for probe sets spanning the range of intensities. Repeat for log 2 (PM * ).

8 8 Intensity scale – ALL

9 9 Log Intensity scale – ALL

10 10 Additivity Look at log-log plots of PM * vs concentrations for 14 spike-in fragments

11 11 PM.bgc.norm vs Conc log-log plot grp 1

12 12 PM.bgc.norm vs Conc log-log plot grp 2

13 13 Suggested additive model Log-log plots of PM * vs concentrations suggest the following model: log 2 (PM * ij ) = p i + c j +  ij (1) With p i a probe affinity effect, c j the log 2 scale expression level for chip j, and  ij an iid error term. For identifiability we fit with constraint  i p i =0.

14 14 Normality We can examine residuals from a least squares fit to model specified in (1) to verify the adequacy of the model in terms of additivity of effects and stability of variance. The shape of the distribution of the residuals can also be compared with a Gaussian distribution to see how far off we are from this ideal.

15 15 Res vs chip effects - grp 1

16 16 Res vs chip effects - grp 2

17 17 Figure – qqnorm residuals form additive fit

18 18 Res qqnorm - grp 1

19 19 Res qqnorm - grp 2

20 20 Analyzing the untransformed PM * values On the untransformed scale, one can fit a multiplicative model (Li-Wong): PM * ij =  i ·  j +  ij (2) The model is fitted by least squares by iteratively fitting the  s and the  s, regarding the other set as known. Fitting steps are interleaved with diagnostic checks used to exclude points from subsequent fits.

21 21 PM vs logConc - grp 1

22 22 Res vs chip effects - grp 1

23 23 qq - grp 1

24 24 Why robust? Bad probes – probe outliers Bad chips – chip outliers Image artifacts – individual outliers We would like a fitting procedure which yields good estimates in the presence of various types of outliers – individual points, probes, and chips.

25 25 Robust estimation Huber, Hampel, Rousseeuw Gross errors, round off errors, wrong model. Distinction between approach based on identification and exclusion of outliers and the modeling approach.

26 26 M estimators A general class of robust estimators are obtained as solutions to: min   i  (Y i -X i  ) Where  is a symmetric function. Or solving the following system:  i  (Y i -X i  )· X i =0

27 27 Robust fit by IRLS for each probe set Starting with robust fit, at each iteration: S = mad(r ij )·c – robust estimate of scale of  u ij = r ij /S – rescaled residuals w ij =  (|u ij |)/|u ij | – weights used in next LS fit. Theoretical considerations can lead to specification of . In practice, one selects  function with desirable characteristics.

28 28 Example  functions

29 29 Options for fitting models to probe sets Recall model log 2 (PM * ij ) = p i + c j +  ij (1) Can fit by: Least squares Least absolute deviation (  (x)=|x|) IRLS using various  functions Can also get a single chip robust probe set summary.

30 30 Robust fit example A

31 31 Actual vs fitted

32 32 Starting weights

33 33 Ending weights

34 34 Robust analysis of multi way tables Tukey & co – median polish. Tukey – one degree of freedom test – additivity or not – no partial judgement. Gentleman and Wilks – effect of one or two outliers on residuals. C. Daniel ** – estimate which cells are affected by interactions, and estimate the interactions in a set of cells.

35 35 Modified weights Standard IRLS procedures determines weights from each cell of the two way table individually. We can also look at residuals across cells in a row (column), to determine a weighting adjustment for the entire row (column): rw i =  (|u| i )/|u| i, cw j =  (|u| j )/|u| j And get a composite weight for each cell” ww ij = rw i · w ij www ij = cw j · rw i · w ij

36 36 Heuristic derivation of weights Consider the model with interactions: log 2 (PM * ij ) = p i + c j +  ij +  ij Can think of T ij = |r ij |/S as a test statistic for H 0 :  ij = 0 vs H 1 :  ij  0 and w ij =  (T ij )/ T ij as a transformation of this test statistic into a weight. Similarly, one could use T i = |r i |/S =mad i /mad to test H 0 :  ij = 0, j=1,…J vs H 1 :  ij  0 for some j and map this statistic into a weight.

37 37 See how it does Look initial (individual) weights & fit vs adjusted weights and fit and then to convergence. Also look at probe weights in all spike-in probe sets. Column weights

38 38 Starting weights

39 39 Ending weights

40 40 Robust fit – composite weights

41 41 Probe Weights

42 42 Low-weight Probes - 1

43 43 Low-weight Probes - 2

44 44 Low-weight Probes - 3

45 45 Chip Weights

46 46 Note on multi chip context Note that the residual variance in the model without probe effects, the single chip analysis set-up, is ~ 6x the residual variance in the model with probe effects. Ie. log 2 (PM * ij ) = p i + c j +  ij Vs. log 2 (PM * ij ) = c j +  ij

47 47 Compare fits on sample probe sets

48 48 Affy Probe Data Analysis – X hybridizing probe sets

49 49 X-Hybe probe 3

50 50 X-Hybe probe 3 – PM vs Phi, Theta

51 51 X-Hybe probe 4

52 52 X-Hybe probe 4 - PM vs Phi, Theta

53 53 X-Hybe probe 5

54 54 X-Hybe probe 5 – PM vs Phi, Theta

55 55 Affy Probe Data Analysis – Spike-n probe sets

56 56 Fit to spike 12

57 57 Fit to spike 7

58 58 Fit to spike 1

59 59 Fit to spike 2

60 60 Fit to spike 3

61 61 Fit to spike 4

62 62 Fit to spike 5

63 63 What have we gained? Look at residuals from fit across large number of probe sets to show benefits of IRLS over median polish.

64 64 boxplot Residuals from 1000 probe sets

65 65 boxplot estimated chip effects for 1000 probe sets

66 66 IQR chip effects for 1000 probe sets

67 67 What have we gained? In order to have a high enough breakdown point to ignore 6 out of 16 probes, and improve on the median polish estimate, we pay a high price in variability. Q. Can we find a better weighting scheme? Or show MP is optimal?

68 68 References 1.Irizarry, R. et.al (2003) Summaries of Affymetrix GeneChip probe level data, Nucleic Acids Research, 2003, Vol. 31, No. 4 e15 2.Irizarry, R. et. al. (2003) Exploration, normalization, and summaries of high density oligonucleotide array probe level data. Biostatistics, in press. 3.C. Li and W.H. Wong, Model-based analysis of oligonucleotide arrays: Expression index computation and outlier detection, Proceedings of the National Academy of Science U S A, 2001, Vol 98, pp 31-36.

69 69 References - Robustness 1.P. J. Rousseeuw and A. M.Leroy, Robust Regression and Outlier Detection, John Wiley & Sons, 1987 2.P. J. Huber, Robust Statistics, John Wiley & Sons, 1981. 3.F. R. Hampel, E. M. Ronchetti, P. J. Rousseeuw, W. A. Stahel, Robust Statistics: The approach based on influence functions, John Wiley & Sons, 1986.

70 70 References – Robustness in multiway tables 4.J. D. Emerson, D. C. Hoaglin, Analysis of two-way tables by medians, in Understanding robust and exploratory data analysis, publisher=John Wiley \& Sons, Inc., edited by D. C. Hoaglin and F. Mosteller and J. W. Tukey, 1983. 5.N. Cook, Three-way analyses, in Exploring data tables, trends, and shapes, ed. D. C. Hoaglin and F. Mosteller and J. W. Tukey, 1985. 6.J. W. Tukey, One degree of freedom for non-additivity. Biometrics, 1949, 5, 232-242.

71 71 References – Robustness in multiway tables 7. C. Daniel, Patterns in residuals in the two-way layout, Technometrics, 1978,20(4), 385-395. 8.J. F. Gentleman and M. B. Wilk, Detecting outliers in a two-way table: I. Statistical behavior of residuals, Tehnometrics, 1975, 17(1), 1-14. 9.J. F. Gentleman and M. B. Wilk, Detecting outliers: II. Supplementing the dierect analysis of residuals, Biometrics, 1975, 31, 387-410.


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