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# Time-course analysis web-app

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## Runnning instance
Access the running instance of the app on [shinyapps.io](https://macdobry.shinyapps.io/tcourse-inspector/ "TimeCourse Inspector")

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## Running the app on the server
The app can be deployed on RStudio/Shiny server. Follow instruction [here](https://shiny.rstudio.com/deploy/ "Shiny - Hosting").
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## Running the app locally
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Alternatively, after downloading the code, the app can run within RStudio. Open `server.R` or `ui.R` file, then click "Run App" button with green triangle in the upper right corner of the window with code open.
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Following packages need to be installed in order to run the app locally:

* shiny
* shinyjs
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* shinyBS
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* shinycssloaders
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* data.table
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* DT
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* ggplot2
* gplots
* plotly
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* scales
* grid
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* dendextend
* RColorBrewer
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* ggthemes
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* sparcl
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* dtw
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* factoextra
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* imputeTS
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* MASS
* robust
* pracma
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* Hmisc
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Install packages using `install.packages('name_of_the_package_from_the_list_above')` command in RStudio command line.

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```
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install.packages(c("shiny", "shinyjs", "shinyBS", "shinycssloaders",
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					"data.table", "DT",
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					"ggplot2", "gplots", "plotly", "scales", "grid",
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					"dendextend", "RColorBrewer", "ggthemes",
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					"sparcl", "dtw", "factoextra",
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					"imputeTS", "MASS", "robust", "pracma", "Hmisc")) 
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```

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## Input file
The app recognises CSV (comma-separated values) files: data columns separated by a comma, floating point numbers using a dot (full-stop).
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The data file has to be in a so called long format, where individual time-courses (tracks) are arranged one after another. Note a wide-format where individual tracks are arranged in neighbouring columns is NOT supported!

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The app recognizes CSV (comma-separated values) files where data columns are separated by a comma, and floating point numbers use a dot (full-stop). Data should be arranged in a long format, where time-series (tracks) are arranged one after another. The wide format where individual tracks are arranged in neighboring columns is not supported.

The first row should include column headers. The input CSV file should contain at least these three columns:

* Identifier of a time series, i.e. a track label
* Time points
* Time-varying variable

| ID | Time | Meas1 |
|----|------|-------|
| 1  |  1   | 3.3   |
| 1  |  2   | 2.1   |
| 1  |  4   | 4.3   |
|----|------|-------|
| 2  |  1   | 2.8   |
| 2  |  2   | 1.9   |
| 2  |  3   | 1.7   |
| 2  |  4   | 2.2   |

In case of multi-variate time series, additional columns with variables can be added in the input. Then, GUI allows for choosing a single or a combination of two variables to display.

Time series can be grouped by introducing a grouping column:

| Group | ID | Time | Meas1 |
|-------|----|------|-------|
| gr1   | 1  |  1   | 3.3   |
| gr1   | 1  |  2   | 2.1   |
| gr1   | 1  |  4   | 4.3   |
|-------|----|------|-------|
| gr1   | 2  |  1   | 2.8   |
| gr1   | 2  |  2   | 1.9   |
| gr1   | 2  |  3   | 1.7   |
| gr1   | 2  |  4   | 2.2   |
|-------|----|------|-------|
| gr2   | 1  |  1   | 5.1   |
| gr2   | 1  |  2   | 5.4   |
| gr2   | 1  |  3   | 5.3   |

Introduction of grouping allows for the analysis and displaying data per group.

## Unique track IDs

For the analysis, track labels need to be unique across the entire dataset. If the track label column is not unique in the uploaded dataset, there's an option in the UI to create a unique track ID. Check the *Create unique track label* box on and choose grouping columns that will be added to the existing non-unique track label. 

In the example above, the `ID` column is not unique across the dataset (ID=1 is repeated in group `gr1` and `gr2`), therefore the unique track label has to consist of columns `Group` and `ID`. The resulting track label will be `gr1_1`, `gr2_1`, etc.


## Modules
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The app opens with a default window that allows to plot population averages, individual time series, and power spectral density. 
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The following features of time series analysis are available in the app:
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- Perform simple **math calculations** on an individual variable (inversion 1/X), or on two variables (division, sum, multiplication, subtraction).
- **Trim** the time axis of the data.
- **Normalise** to the average of data points in a selected interval. Time series can be normalised with respect to the entire dataset, a group, or a single time series. The latter would normalise every time course to the mean of its own selected interval.
- **Remove outlier time points** by removing a percentage of data from the top, bottom, or both tails of pooled data points. Gaps in time series due to outlier removal can be then linearly interpolated or tracks can be removed entirely from the set. The UI allows for selecting the size of gaps above which the track is removed.
- **Highlight** individual time series by selecting a unique series identifier.
- Calculate area under individual time series and visualise as a dot-, violin-, or a box-plot. The UI allows for selection of the time series range used for **AUC** calculation.
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- Display a dot-, violin-, box-, or a line-plot for selected time points.
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- Display a scatter-plot to identify **correlations** between two time points. 
- Perform **hierarchical and sparse-hierarchical clustering** of individual time series. In these modules, the dendrogram can be cut at a chosen level to help visualising clusters. Addiitonally available are plots with cluster averages, individual times series per cluster, and contribution of time series from different groupings to clusters.