TOAST is an R package designed for the analyses of high-throughput data from complex, heterogeneous tissues. It is designed for the analyses of high-throughput data from 
  heterogeneous tissues,
  which is a mixture of different cell types.  
TOAST offers functions for detecting cell-type specific differential expression (csDE) or differential methylation (csDM) for microarray data, and improving reference-free deconvolution based on cross-cell type differential analysis. TOAST implements a rigorous staitstical framework, based on linear model, which provides great flexibility for csDE/csDM detection and superior computationl performance.
In this readme file, we briefly present how to install TOAST package through GitHub. For detailed usage of TOAST, please refer to the vignette file.
To install this package, start R (version "3.6") and enter:
```{r install, message=FALSE, warning=FALSE} if (!requireNamespace("BiocManager", quietly = TRUE)) install.packages("BiocManager")
BiocManager::install(version='devel')
BiocManager::install("TOAST")
To view the package vignette in HTML format, run the following lines in R
```{r vig, message=FALSE, warning=FALSE}
library(TOAST)
vignette("TOAST")
The content in this README file is essentially the same as the package vignette.
Any TOAST questions should be posted to the GitHub Issue section of TOAST homepage at https://github.com/ziyili20/TOAST/issues.
Here we show the key steps for a cell 
type-specific different analysis. This 
code chunk assumes you have an expression
or DNA methylation matrix called Y_raw,
a data frame of sample information called
design, and a table of cellular composition
information (i.e. mixing proportions) 
called prop. Instead of a data matrix, 
Y_raw could also be a SummarizedExperiment object. If the cellular composition
is not available, our vignette file 
provides discussions about how to obtain mixing 
proportions using reference-free deconvolution 
or reference-based deconvolution.
```{r quick_start, eval = FALSE} Design_out <- makeDesign(design, Prop) fitted_model <- fitModel(Design_out, Y_raw) fitted_model$all_coefs # list all phenotype names fitted_model$all_cell_types # list all cell type names
res_table <- csTest(fitted_model, coef = "age", cell_type = "Neuron", contrast_matrix = NULL) head(res_table)
**For detailed usage of TOAST, please refer to the vignette file through**
```{r vignette}
vignette("TOAST")
# or
browseVignettes("TOAST")
      
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