Getting Started with the santaR package

Arnaud Wolfer

2019-10-03

Interactive package for Short AsyNchronous Time-series Analysis (SANTA), implemented in R and Shiny

Installation

Install the package from CRAN with:

install.packages("santaR")

Overview

Longitudinal studies in Systems Biology face multiple challenges that are not suitably addressed by current time-series statistical methods, it is difficult to simultaneously account for with a high number of variables:

To address these challenges, santaR (Short AsyNchronous Time-series Analysis) provides a Functional Data Analysis (FDA) approach -where the fundamental units of analysis are curves representing each individual across time-, in a graphical and automated pipeline for robust analysis of short time-series studies.

Analytes levels are descriptive of the underlying biological state and evolve smoothly through time. For a single analyte, the time trajectory of each individual is described with a smooth curve estimated by smoothing splines. For a group of individuals, a curve representing the group mean trajectory is also calculated. These individual and group mean curves become the new observational unit for subsequent data analysis, that is, the estimation of the intra-class variability and the identification of trajectories significantly altered between groups.

Designed initially for metabolomic, santaR is also suited for other Systems Biology disciplines. Implemented in R and Shiny, santaR is developed as a complete and easy-to-use statistical software package, which enables command line and GUI analysis, with fast and parallel automated analysis and reporting. Comprehensive plotting options as well as automated summaries allow clear identification of significantly altered analytes for non-specialist users.

Getting Started

To get started santaR’s graphical user interface implements all the functions for short asynchronous time-series analysis:

library(santaR)

santaR_start_GUI(browser = TRUE)
#  To exit press ESC in the command line

The GUI is to be prefered to understand the methodology, select the best parameters on a subset of the data before running the command line, or to visually explore results.

If a very high number of variables is to be processed, santaR’s command line functions are more efficient, as they can be integrated in scripts and the reporting automated.

Further Reading

The following tutorials detail the use of santaR: