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vignettes/Non-targeted_metabolomics_feature_prioritization.Rmd

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---
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title: "Non-targeted metabolomics feature prioritization"
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author: "Anton Klåvus, Vilhelm Suksi"
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date: "`r Sys.Date()`"
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output:
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BiocStyle::html_document:
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toc: true
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toc_depth: 2
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vignette: >
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%\VignetteIndexEntry{Non-targeted metabolomics feature prioritization}
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%\VignetteEngine{knitr::rmarkdown}
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%\VignetteEncoding{UTF-8}
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bibliography: references.bib
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biblio-style: apalike
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---
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The statistics functionality in `notameStats` aims to identify interesting
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features across study groups. See the project example vignette in the notame
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package and [notame website reference index](https://hanhineva-lab.github.io/
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notame/reference/index.html) for listing of functions. Similar functionality is
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available in several packages.
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Unless otherwise stated, all functions return separate data frames or other
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objects with the results. These can be then added to the object feature data
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using ```join_rowData(object, results)```. The reason for not adding these to
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the objects automatically is that most of the functions return excess
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information that is not always worth saving. We encourage you to choose which
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information is important to you.
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```{r setup, include = FALSE}
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knitr::opts_chunk$set(
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comment = "##",
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message = FALSE
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)
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```
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# Installation
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To install `notameStats`, install `BiocManager` first, if it is not installed.
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Afterwards use the `install` function from `BiocManager` and load `notameStats`.
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```{r install, eval=FALSE}
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if (!requireNamespace("BiocManager", quietly = TRUE))
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install.packages("BiocManager")
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BiocManager::install("notameStats")
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```
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```{r, message = FALSE}
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library(notame)
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library(notameViz)
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library(notameStats)
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ppath <- tempdir()
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init_log(log_file = file.path(ppath, "log.txt"))
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data(hilic_neg_sample, package = "notame")
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data(toy_notame_set, package = "notame")
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```
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# Univariate functions
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## Summary statistics and effect sizes
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It is straightforward to provide summary statistics and effect sizes for all
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features:
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```{r}
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toy_notame_set <- mark_nas(toy_notame_set, value = 0)
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# Impute missing values, required especially for multivariate methods
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toy_notame_set <- notame::impute_rf(toy_notame_set)
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# sum_stats <- summary_statistics(toy_notame_set, grouping_cols = "Group")
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# toy_notame_set <- notame::join_rowData(toy_notame_set, sum_stats)
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#
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# d_results <- cohens_d(toy_notame_set, group = "Group")
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# toy_notame_set <- notame::join_rowData(toy_notame_set, d_results)
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#
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# fc <- fold_change(toy_notame_set, group = "Group")
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# toy_notame_set <- notame::join_rowData(toy_notame_set, fc)
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colnames(rowData(toy_notame_set))
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```

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