--- title: "scanMiRApp: shiny app and related convenience functions" author: - name: Pierre-Luc Germain affiliation: - D-HEST Institute for Neuroscience, ETH - Lab of Statistical Bioinformatics, UZH - name: Michael Soutschek affiliation: Lab of Systems Neuroscience, D-HEST Institute for Neuroscience, ETH - name: Fridolin Groß affiliation: Lab of Systems Neuroscience, D-HEST Institute for Neuroscience, ETH package: scanMiRApp output: BiocStyle::html_document abstract: | Covers the creation of ScanMiRAnno objects, setting up the shiny app, and using the wrappers. vignette: | %\VignetteIndexEntry{scanMiRApp} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- `ScanMiRApp` offers a `r CRANpkg("shiny")` interface to the `scanMiR` package, as well as convenience function to simplify its use with common annotations. # ScanMiRAnno objects Both the shiny app and the convenience functions rely on objects of the class `ScanMiRAnno`, which contain the different pieces of annotation relating to a species and genome build. Annotations for human (GRCh38), mouse (GRCm38) and rat (Rnor_6) can be obtained as follows: ```{r} library(scanMiRApp) # anno <- ScanMiRAnno("Rnor_6") # for this vignette, we'll work with a lightweight fake annotation: anno <- ScanMiRAnno("fake") anno ``` You can also build your own `ScanMiRAnno` object by providing the function with the different components (minimally, a `r Biocpkg("BSgenome")` and an `r Biocpkg("ensembldb")` object - see `?ScanMiRAnno` for more information). For minimal functioning with the shiny app, the `models` slot additionally needs to be populated with a `KdModelList` (see the corresponding vignette of the `scanMiR` package for more information). In addition, `ScanMiRAnno` objects can contain pre-compiled scans and aggregations, which are especially meant to speed up the shiny application. These should be saved as [IndexedFst](IndexedFST.html) files and should be respectively indexed by transcript and by miRNA, and stored in the `scan` and `aggregated` slot of the object.

# Convenience functions ## Obtaining the UTR sequence of a transcript The transcript (or UTR) sequence for any (set of) transcript(s) in the annotation can be obtained with: ```{r} seq <- getTranscriptSequence("ENSTFAKE0000056456", anno) seq ``` ## Plotting sites on the UTR sequence of a transcript Binding sites of a given miRNA on a transcript can be visualized with: ```{r} plotSitesOnUTR(tx="ENSTFAKE0000056456", annotation=anno, miRNA="hsa-miR-155-5p") ``` This will fetch the sequence, perform the scan, and plot the results. ## Running a full-transcriptome scan The `runFullScan` function can be used to launch a the scan for all miRNAs on all protein-coding transcripts (or their UTRs) of a genome. These scans can then be used to speed up the shiny app (see below). They can simply be launched as: ```{r} m <- runFullScan(anno) m ``` Multi-threading can be enabled through the `ncores` argument. See `?runFullScan` for more options. ## Detecting enriched miRNA-target pairs The `enrichedMirTxPairs` identifies miRNA-target enrichments (which could indicate sponge- or cargo-like behaviors) by means of a binomial model estimating the probability of the given number of binding sites for a given pair given the total number of bindings sites for the miRNA (across all transcripts) and transcript (across all miRNAs) in question. The output is a data.frame indicating, for each pair passing some lenient filtering, the transcript, miRNA, the number of 7mer/8mer sites, and the binomial log(p-value) of the combination. We strongly recommend further filtering this list by expression of the transcript in the system of interest, otherwise some transcripts with very low expression (and hence biologically irrelevant) might come up as strongly enriched.

# Shiny app The features of the shiny app are organized into two main components: * transcript (or sequence) -centered features are available in the _search in gene/sequence_ tab. These for instance allow to scan custom sequences or selected transcript sequences for miRNA binding sites, visualize them on the transcript, and visualize the sequence pairing of specific matches. * the miRNA-centered features are available in the _miRNA-based_ tab. It shows the general binding specificity of a given miRNA. If the `scanMiRAnno` object contained aggregated data (see below), the tab also shows the top predicted targets for the miRNAs. ## Setting up the application A `ScanMiRAnno` object is the minimal input for the shiny app, and multiple such objects can be provided in the form of a named list: ```{r, eval=FALSE} scanMiRApp( list( nameOfAnnotation=anno ) ) ``` Launched with this object, the app will not have access to any pre-compiled scans or to aggregated data. This means that scans will be performed on the fly, which also means that they will be slower. In addition, it means that the top targets based on aggregated repression estimates (in the _miRNA-based_ tab) will not be available. To provide this additional information, you first need to prepare the objects as [IndexedFst](IndexedFST.html) files. Assuming you've saved (or downloaded) the scans as `scan.rds` and the aggregated data as `aggregated.rds`, you can re-save them as `IndexedFst` (here in the folder `out_path`) and add them to the `anno` object as follows: ```{r, eval=FALSE} # not run anno <- ScanMiRAnno("Rnor_6") saveIndexedFst(readRDS("scan.rds"), "seqnames", file.prefix="out_path/scan") saveIndexedFst(readRDS("aggregated.rds"), "miRNA", file.prefix="out_path/aggregated") anno$scan <- loadIndexedFst("out_path/scan") anno$aggregated <- loadIndexedFst("out_path/aggregated") # then launch the app scanMiRApp(list(Rnor_6=anno)) ``` The same could be done for multiple ScanMiRAnno objects. If `scanMiRApp` is launched without any `annotation` argument, it will generate anno objects for the three base species (without any pre-compiled data). ## Multi-threading Multithreading can be enabled in the shiny app by calling `scanMiRApp()` (or the underlying `scanMiRserver()`) with the `BP` argument, e.g.: ``` scanMiRApp(..., BP=BiocParallel::MulticoreParam(ncores)) ``` where `ncores` is the number of threads to use. This will enable multi-threading for the scanning functions, which makes a big difference when scanning for many miRNAs at a time. In addition, multi-threading can be used to read the `IndexedFst` files, which is enabled by the `nthreads` of the `loadIndexedFst` function. However, since reading is quite fast already with a single core, improvements there are typically fairly marginal. ## Caching By default, the app has a caching system which means that if a user wants to launch the same scan with the same parameters twice, the results will be re-used instead of re-computed. The cache has a maximum size (by default 10MB) per user, beyond which older cache items will be removed. The cache size can be manipulated through the `maxCacheSize` argument. # Session info {.unnumbered} ```{r sessionInfo, echo=FALSE} sessionInfo() ```