SAM: Significance Analysis of Microarrays

SAM: Significance Analysis of Microarrays

Introduction

With the advent of DNA microarrays it is now possible to measure the expression of thousands of genes in a single hybridization experiment. The data generated is considerable and a method for sorting out what is significant and what isn’t is essential. Significance Analysis of Microarrays (SAM) is a statistical technique, established in 2001 by Tusher, Tibshirani and Chu, for determining whether changes in gene expression are statistically significant in a set of DNA microarray experiments. SAM identifies statistically significant genes by carrying out gene specific t-tests and computes a statistic dj for each gene j, which measures the strength of the relationship between gene expression and a response variable . The response variable describes and groups the data based on experimental conditions. An example of a response variable is an affected group versus a control group for a certain disease with samples from different patients (unpaired grouping). In this method, repeated permutations of the data are used to determine if the expression of any gene is significant related to the response. The use of premutation-based analysis accounts for correlations in genes and avoids parametric assumptions about the distribution of individual genes. This is an advantage over other techniques (for example ANOVA and Bonferroni), which assume equal variance and/or independence of genes .

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Basic Protocol
*Perform microarray experiments- DNA microarray with oligo and cDNA primers, SNP arrays, protein arrays, etc.
*Input Expression Analysis in Microsoft Excel- see below
*Run SAM as a Microsoft Excel Add-Ins
*Adjust the Delta tuning parameter to get a significant # of genes along with an acceptable false discovery rate (FDR)) and Assess Sample Size by calculating the mean difference in expression in the SAM Plot Controller
*List Differentially Expressed Genes (Positively and Negatively Expressed Genes)

Running SAM
*SAM is available for download online at http://www-stat.stanford.edu/~tibs/SAM/ for academic and and non-academic users after completion of a registration step.


*AM is run as an Excel Add-In, and the SAM Plot Controller allows Customization of the False Discovery Rate and Delta, while the SAM Plot and SAM Output functionality generate a List of Significant Genes, Delta Table, and Assesment of Sample Sizes

*Permutations are calculated based on the number of samples

*Block Permutations
**Blocks are batches of microarrays; for example for eight samples split into two groups (control and affected) there are 4!24 permutations for each block and the total number of permutations is (24)(24) 196. A minimum of 1000 permutations are recommended;
the number of permutations is set by the user when imputing correct values for the data set to run SAM

Response Formats
Types
**Quantitative- real-valued (such as heart rate)
**One Class- tests whether the mean gene expression differs from zero
**Two Class- two sets of measurements
***Unpaired- measurement units are different in the two groups; eg. control and treatment groups with samples from different patients
***Paired- same experimental units are measured in the two groups; eg. samples before and after treatment from the same patients
**Multiclass- more than two groups with each containing different experimental units; generalization of two class unpaired type
**Survival- data of a time until an event (for example death or relapse)
**Time Course- each experimental units is measured at more than one time point; experimental units fall into a one or two class design
**Pattern Discovery- no explicit response parameter is specified; the user specifies eigengene (principle component) of the expression data and treats it as a quantitative response

SAM Calculations
SAM calculates a test statistic for relative difference in gene expression based on permutation analysis of expression data and calculates a false discovery rate. The principle calculations of the program are illustrated below.



The so constant is chosen to minimize the coefficient of variation of di. ri is equal to the expression levels (x) for gene i under y experimental conditions.



Fold Changes (t) are specified to guarantee genes called significant change at least a pre-specified amount. This means that the absolute value of the average expression levels of a gene under each of two conditions must be greater than the fold change (t) to be called positive and less than the inverse of the fold change (t) to be called negative.

The SAM algorithm can be stated as
#Order test statistics according to magnitude
#For each permutation compute the ordered null (unaffected) scores
#Plot the ordered test statistic against the expected null scores
#Call each gene significant if the absolute value of the test statistic for that gene minus the mean test statistic for that gene is greater than a stated threshold
#Estimate the false discovery rate based on expected versus observed values

SAM Output
*Significant Gene Sets
**Positive Gene Set- higher expression of most genes in the gene set correlates with higher values of the phenotype y
**Negative Gene Set- lower expression of most genes in the gene set correlates with higher values of the phenotype y

SAM Features
*Data from Oligo or cDNA arrays, SNP array, protein arrays,etc can be utilized in SAM
*Correlates expression data to clinical parameters
*Correlates expression data with time
*Uses data permutation to estimates False Discovery Rate for multiple testing
*Reports local false discovery rate (the FDR for genes having a similar di as that gene) and miss rates
*Can work with blocked design for when treatments are applied within different batches of arrays
*Can adjust threshold determining number of gene called significant


 
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