2.1 Running the analysis 1TK
2.2 Plotting genes of interest 1TK
2.3 [Imputing values for missing time points 1TK](
3.1 Running the analysis 2TK
3.2 Plotting genes of interest 2TK
3.3 [Imputing values for missing time points 2TK](
ImpulseDE detects differentially expressed (DE) genes in high-throughput time course experiments. It accepts two different kinds of inputs: whether a single time course dataset (1TK) or a dataset containing a case as well as a control time course for each time point measured (2TK). For the first scenario, it identifies genes being differentially expressed across time points. For the second scenario, ImpulseDE reports genes being differentially expressed between both conditions. ImpulseDE follows a five-step workflow:
Step Explanation
Clustering The genes are clustered into a limited number of groups
using k-means. In default modus, ImpulseDE prints the
plots for each cluster.
Fit to clusters ImpulseDE is based on the impulse model proposed by Chechik and Koller, which reflects a two-step behavior of genes within a cell responding to environmental changes [@chechikkoller2009]. This model is fitted to the mean expression profiles of the clusters.
Fit to genes The best parameter sets obtained from the clusters are then used to fit an impulse model to each gene.
Fit to random data The impulse model is fitted to a randomized dataset (bootstrap), which is essential to detect differentially expressed genes [@storey2005].
Detection of Detection of differentially expressed genes utilizing the differentially fits to the real and randomized data sets. FDR-correction expressed genes is performed to obtain adjusted p-values [@bh1995].
ImpulseDE requires an expression table (only numbers) as well as an annotation table (characters allowed). The requirements for the two tables are the following:
Feature Explanation
Expression table Genes have to be in rows and samples in columns. Both rows and columns should have unique identifiers.
Annotation table Must have two columns, one carrying the timestamps as numeric numbers and the other one carrying the condition information. In the case of two time courses, two conditions are required. More than two conditions are allowed to be specified, but then two conditions (one case and one control conditions) have to be specified by the user for each run separately. The samples (row names) do not have to have the same order as in the expression table (column names), but the sample identifiers must be identical. Additional columns are allowed but will be ignored later on.
Missing values Are not supported. Genes having missing values for at least one sample will be excluded from the analysis.
Time points Since the parametric model contains six parameters, the dataset should contain at least six time points.
Normalization Gene expression data should be properly normalized and filtering including log2-transformation and filtered to avoid spending time on fitting the model to non-informative genes (e.g. not expressed or not variable genes). No impulse model will be fitted to genes having a coefficient of variation less than 0.025; instead, the mean across all samples is returned as the "fit".
The first four input parameters have to be specified by the user. Those are the
names of the two input tables (expression_table and annotation_table) as
well as the two column names carrying the time (colname_time) and condition
(colname_condition) information within the annotation table. Additional
parameters can be set to specify the time course scenario as well as fitting
and parallelization parameters.
In the default modus, ImpulseDE expects a single time course scenario
without any control data (control_timecourse = FALSE and control_name =
NULL). In the case of two time courses, the control_timecourse parameter has
to be set to TRUE and for control_name the name of the control within
colname_condition has to be specified. If more than two conditions are
present within the annotation table, case_name has to be set in
addition to run ImpulseDE for the desired case condition.
Regarding the fitting, as default ImpulseDE will run 100 iterations
(n_iter = 100) to optimize the model parameters, generate 50.000 random data
points (n_randoms = 50.000) to estimate bootstrapped p-values for DE analysis,
and determines DE genes using an FDR-adjusted p-value cutoff (q-value) of 1%
(Q_value = 0.01). Furthermore, in default modus it will split the run into 4
processes (n_process = 4). If parallelization is not possible on the device or
is not admired, n_process should be set to 1.
ImpulseDE returns a list consisting of three sublists: impulse_fit_results, DE_results and clustering_results. The first contains the fitted impulse model parameters, sum of squared fitting errors as well as the calculated impulse values for all time points. The second provides the names of the genes being called as differentially expressed according to a specified cutoff together with the adjusted p-values (DE_genes) as well as the adjusted p-values, flags and results of additional tests for all genes (pvals_and_flags). The third speciFIes the clusters, to which the genes were assigned to as well as the mean expression values for the clusters.
In the case of a single time course experiment, ImpulseDE will detect differentially expressed genes over time. A fitting dataset is provided within the R package longitudinal, where T cells were stimulated with PMA and ionomicin and harvested at 10 different time points [@rangel2004]. The dataset contains 10 measurements per time point for 58 genes:
# (Install package longitudinal) and load it library(longitudinal) # attach T cell data data(tcell) # check dimension of data matrix of interest dim(tcell.10)
In order to be able to apply ImpulseDE on this dataset, tcell.10 has to be transposed using t() during the call since genes need to be in rows and samples in columns. Additionally, it is necessary to create a proper annotation table:
# generate annotation table with columns "Time" and "Condition" annot <- as.data.frame(cbind("Time" = sort(rep(get.time.repeats(tcell.10)$time,10)), "Condition" = "activated"), stringsAsFactors = FALSE) # Time columns must be numeric annot$Time <- as.numeric(annot$Time) # rownames of annotation table must appear in data table rownames(annot) = rownames(tcell.10) head(annot)
It is important that the Time column contains numeric values and that the Condition column is not a factor. Since the dataset contains only a sinlge time course and therefore only one condition, the Condition column contains only one unique value, activated.
ImpulseDE provides a single function, impulse_DE, which runs all the analysis steps automatically and prints the current status on the screen. To run ImpulseDE with all default options, only four variables need to be set for the single time course scenario: expression_table, annotation_table, colname_time and colname_condition. However, for demonstration purposes the number of iterations, randomizations as well as the number of used processors will be reduced. For real datasets, it not recommended to reduce n_iter as well as n_randoms. Additionally, the analysis will be limited to the first 20 genes:
# load package library(ImpulseDE) # start analysis impulse_results <- impulse_DE(t(tcell.10)[1:20,], annot, "Time", "Condition", n_iter = 10, n_randoms = 10, n_process = 1, new_device = FALSE)
(Note: new_device is set to FALSE in all plot functions here to avoid the generation of emtpy pages within the vignette. Usually, it is recommend to keep this option TRUE, which will open a new device for each plot. Otherwise, all earlier plots will be overwritten.)
Plotting a custom list of genes can be done by using the function plot_impulse. For this the fitting results are needed, which can be taken from the generated result object impulse_results. As an example, some genes being called as differentially expressed are plotted.
genes = c("SIVA","CD69","ZNFN1A1","JUND","ITGAM","SMN1","PCNA") plot_impulse(gene_IDs = genes, data_table = t(tcell.10), data_annotation = annot, imp_fit_genes = impulse_results$impulse_fit_results, file_name_part = "four_NV_genes", new_device = FALSE)
For example, JUND and CD69 show very typical impulse-like expression patterns, which cleary change significantly over time.
To impute values for an uncovered time point for a specific gene, the following command can be used:
# impute expression value for time point 60 for gene "JUND" (imp_results <- calc_impulse(impulse_results$impulse_fit_results$impulse_parameters_case[ "JUND",1:6], 60))
In the case of a two time course experiment, ImpulseDE will detect differentially expressed genes between both conditions. In order to generate two time courses out of the T cell data set, the replicates will be splitted and to the second half some random numbers are added:
# split dataset into two halfs case_data <- t(tcell.10)[,seq(1,ncol(t(tcell.10)),2)] control_data <- t(tcell.10)[,seq(2,ncol(t(tcell.10)),2)] # add some random values to "control_data" to make data different control_data <- control_data + t(apply(control_data,1,function(x) runif(length(x),0,0.5)*sample(c(-1,1),length(x), replace = TRUE) + sample(c(seq(-2,2,0.5)),1))) tcell_2tk <- cbind(case_data, control_data)
At last, a proper annotation table has to be generated:
annot_2tk <- annot[colnames(tcell_2tk),] annot_2tk[51:100,"Condition"] = "control" head(annot_2tk) tail(annot_2tk)
In contrast to the single time course scenario, six variables need to be set: expression_table, annotation_table, colname_time, colname_condition, control_timecourse and control_name. Here again, for demonstration purposes the number of itertions, randomizations as well as the number of used processors will be reduced. For real datasets, it not recommended to reduce n_iter as well as n_randoms. Again, the analysis will be reduced to the first 20 genes:
# load package library(ImpulseDE) # start analysis impulse_results <- impulse_DE(tcell_2tk[1:20,], annot_2tk, "Time", "Condition", TRUE, "control", n_iter = 10, n_randoms = 10, n_process = 1, new_device = FALSE)
As an example, some genes being called as differentially expressed are plotted as well:
genes = c("SIVA","ZNFN1A1","IL4R","MAP2K4","ITGAM","SMN1","CASP8","E2F4","PCNA") plot_impulse(gene_IDs = genes, data_table = tcell_2tk, data_annotation = annot_2tk, imp_fit_genes = impulse_results$impulse_fit_results, control_timecourse = TRUE, control_name = "control", file_name_part = "four_NV_genes_2tk", new_device = FALSE)
To impute values for an uncovered time point for a specific gene, calc_impulse has to be applied to both datasets separately:
# impute expression value for time point 60 for gene "JUND" # case data (imp_results <- calc_impulse(impulse_results$impulse_fit_results$impulse_parameters_case[ "JUND",1:6], 60)) # control data (imp_results <- calc_impulse(impulse_results$impulse_fit_results$impulse_parameters_control[ "JUND",1:6], 60))
references:
- id: chechikkoller2009
title: Timing of Gene Expression Responses to Environmental Changes.
author:
- family: Chechik
given: Gal
- family: Koller
given: Daphne
container-title: Journal of Computational Biology
volume: 16
URL: http://online.liebertpub.com/doi/abs/10.1089/cmb.2008.13TT
DOI: 10.1089/cmb.2008.13TT
issue: 2
page: 279-290
type: article-journal
issued:
year: 2009
month: 2
- id: storey2005
title: Significance analysis of time course microarray experiments.
author:
- family: Storey
given: John D.
- family: Xiao
given: Wenzhong
- family: Leek
given: Jeffrey T.
- family: Tompkins
given: Ronald G.
- family: Davis
given: Ronald W.
container-title: Proceedings of the National Academy of Sciences
volume: 102
URL: http://www.pnas.org/content/102/36/12837.full
DOI: 10.1073/pnas.0504609102
issue: 36
page: 12837-12842
type: article-journal
issued:
year: 2005
month: 2
- id: bh1995
title: >
Controlling the False Discovery Rate: A Practical and Powerful
Approach to Multiple Testing.
author:
- family: Benjamini
given: Yoav
- family: Hochberg
given: Yosef
container-title: >
Journal of the Royal Statistical Society Series B
(Methodological)
volume: 57
URL: http://www.jstor.org/stable/2346101
DOI: 10.2307/2346101
issue: 1
page: 289-300
type: article-journal
issued:
year: 1995
month: 3
- id: rangel2004
title: >
Modeling T-cell activation using gene expression profiling and
state-space models.
author:
- family: Rangel
given: Claudia
- family: Angus
given: John
- family: Ghahramani
given: Zoubin
- family: Lioumi
given: Maria
- family: Sotheran
given: Elizabeth
- family: Gaiba
given: Alessia
- family: Wild
given: David L.
- family: Falciani
given: Francesco
container-title: Bioinformatics
volume: 20
URL: http://bioinformatics.oxfordjournals.org/content/20/9/1361.long
DOI: 10.1093/bioinformatics/bth093
issue: 9
page: 1361-1372
type: article-journal
issued:
year: 2004
month: 2
Any scripts or data that you put into this service are public.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.