This vignette aims to give an introduction on how to use the
iimi
package for plant virus diagnostics and how to
visualize the coverage profile for the sample mapping. We also included
a tutorial on creating unreliable regions.
First, let’s install necessary packages. You may skip this step if you have installed the packages before.
# install iimi
install.packages(c("iimi", "dplyr"))
# install Biostrings
if (!require("BiocManager", quietly = TRUE))
install.packages("BiocManager")
::install("Biostrings") BiocManager
We will load necessary packages and data before we start any analysis.
library(iimi)
library(Biostrings)
library(dplyr)
# this is the extracted DNAStringSet data from the Virtool virus database GitHub. It contains both version 1.4.0 and version 1.5.0
<-
get_url "https://github.com/virtool/iimi/blob/main/data/virus_segments.rda?raw=true"
load(url(get_url))
We provide three example coverage profiles to demonstrate how to use
iimi
. These files are sourced from the dataset used in the
VirHunter paper (Sukhorukov et al. 2022),
which we also utilized for external validation in our manuscript (Ning et al. 2024). You can download these files
directly from the Recherche Data Gouv website (Candresse, Marais-Colombel, and Brault 2022).
We recommend storing all BAM files in a single folder for ease of
access.
To get started creating coverage profiles and feature-extracted data
frames, the process involves four steps: (1) Downloading the raw data in
FASTQ format from the link above (2) Use Bowtie2 to map the FASTQ files
(paired-end or single-end) against the official Virtool
virus data base (ver. 1.4.0) to get SAM outputs (3) Convert SAM to
indexed and sorted BAM using Samtools (4) Generate coverage profiles and
feature-extracted data frames using iimi
functions
(tutorials in the next section)
We recommend Bowtie2 or minimap2 since we have tried both and they
yield similar result with minimap2 having a slight decrease. We let both
software to report all alignments (-a
mode for Bowtie2,
--secondary=yes
for minimap2). You can also use other
mapping tools.
Next, we provide a short tutorial to guide you through using
iimi
functions to make predictions on the real data.
Let’s convert the indexed and sorted BAM file(s) into coverage profiles and feature-extracted data frame from the previous section.
We will use the coverage profiles to visualize the mapping information. The feature-extracted data frame will be used in the model training and testing process.
Note that both training and testing data need to go through the conversion step.
In our example, we stored the conversion for both the testing and training datasets in the same object. You can do the conversion separately for your data.
Important: the example code does not work unless the path to the folder that stores your BAM files is provided.
If you already have coverage profiles in run-length encoding (RLE) format, go to section 2.2.
<- list.files(
path_to_bamfiles path = "path/to/your/BAM/files/folder",
pattern = "bam$",
full.names = TRUE,
include.dirs = TRUE
)
You may skip this step if you already have converted them to RLE format.
<- convert_bam_to_rle(bam_file = "path_to_bamfiles") example_cov
This section explains how to convert the RLE format to feature-extracted dataframes, with options for handling unreliable regions.
By default, the package uses provided unreliable regions and enables
mappability profiling and filtering to eliminate false peaks. This is
the recommended approach for most users. * To use the default settings,
no additional code is required. * To disable this feature, set
unreliable_region_enabled = FALSE
when calling
convert_rle_to_df()
.
If you wish to use your own unreliable regions, refer to section 3.3
for instructions on creating custom unreliable regions and input your
custom unreliable regions using the unreliable_region_df
parameter in convert_rle_to_df()
.
Note: Customization of unreliable regions must be done before
calling convert_rle_to_df()
. Most users can skip this step
and use the provided unreliable regions.
# Using default settings (recommended)
<- convert_rle_to_df(example_cov)
df
# Disabling unreliable region processing
<-
df convert_rle_to_df(example_cov, unreliable_region_enabled = FALSE)
# Using custom unreliable regions
# Refer to section 3.3 for details
<- create_custom_unreliable_regions()
custom_regions <-
df convert_rle_to_df(example_cov, unreliable_region_df = custom_regions)
To make predictions, use the converted mapping result of the
sample(s) that you wish to detect as the input, newdata
.
Make sure you have converted the indexed and sorted BAM files into
feature-extracted data frame from the section above.
After preparing your test sample, you can choose to test the data
using our provided training model or the model you trained using
train_iimi()
. The tutorial of training your own model is
provided in the next section.
Note: if you wish to customize unreliable regions, please go to 3.3.
If you wish to use provided training model, only input your data to
newdata
and choose a method of your wish using
predict_iimi()
.
There are three methods that you may choose from: xgb
,
en
, and rf
, which stand for pre-trained
XGBoost, elastic net, and random forest models. The example below uses
the pre-trained XGBoost model.
<- predict_iimi(newdata = df, method = "xgb") prediction_default
The detection of your plant sample(s) is finished. The prediction is
TRUE
if virus infected the sample, FALSE
if
virus did not infect the sample.
If you would like to train your own model and use this model to test your data, you can use the codes below to train a new model with your own data.
Ideally, the number of the samples used to train the model should be
bigger than 100. However, we are only providing a tutorial on how to use
the train_iimi()
function, only two samples are used to
train the model since example_cov()
only contains three
in-house data’s coverage information.
Now, we need to prepare our training data. We are using a 80/20 random split to split the three samples. This means that two samples are used as the training data, and one sample is used as the testing data. If you are training your own data, the training data is the data that you want to train the model on; the testing data is the data that you would like to have a prediction on.
Here are some definitions/explanation of the objects to input in
train_iimi()
:
train_x
: the feature-extracted data frame of plant
samples that you would like to train iimi
model on. Make
sure that you have mapped the samples to the virus database and
converted the mapping result to sorted and indexes BAM files.
train_y
: the known truth or labels for your
train_x
data. Please label the data to make sure that it
has a detection label for virus segments as well.
test_x
: the feature-extracted data frame of plant
samples that you would like to predict using your trained
iimi
model. Make sure that you have mapped the samples to
the virus database and converted the mapping result to sorted and
indexes BAM files.
# preparing the train and test data
# spliting into 80-20 train and test data set with the three plant samples
set.seed(123)
<- sample(levels(as.factor(df$sample_id)),
train_names length(unique(df$sample_id)) * 0.8)
# trian data
= df[df$sample_id %in% train_names,]
train_x # test data
= df[df$sample_id %in% train_names == F,]
test_x
# preparing labels
= c()
train_y for (ii in 1:nrow(train_x)) {
= append(train_y, example_diag[train_x$seg_id[ii],
train_y $sample_id[ii]])
train_x }
Then, we plug in the variables into the train_iimi
function with the default XGBoost model to train your custom model.
<- train_iimi(train_x = train_x, train_y = train_y) fit
Now, we have a trained model using the toy data.
Then, the process to detect which viruses infect the plant sample(s) is the same as previously described, except we are using a customized trained model.
<-
prediction_customized predict_iimi(newdata = test_x,
trained_model = fit)
The detection of the plant sample(s) is finished. The interpretation is the same as above.
Note: if you would like to create your own unreliable regions, please customize them first, then extract features to build a data frame from section 2.2.2. using customized unreliable regions.
If you would like to create your own unreliable regions besides from
using your own training model, you may use
create_mappability_profile()
and
high_nucleotide_regions()
. Both functions’ output is a data
frame with the start and end position of the unmappable region, the
virus that the region is on, and the category that it belongs to.
# An example of the provided unreliable regions
%>% group_by(Categories) %>% sample_n(2) unreliable_regions
## # A tibble: 8 × 6
## # Groups: Categories [4]
## Start End `Virus segment` Categories `1_4_0` `1_5_0`
## <dbl> <dbl> <fct> <fct> <lgl> <lgl>
## 1 35360 35465 6as0dk9c A% > 45% TRUE TRUE
## 2 19 158 t4er406c A% > 45% TRUE TRUE
## 3 52 179 j3gc98g1 CG% > 60% FALSE TRUE
## 4 819 944 xkwztnid CG% > 60% FALSE TRUE
## 5 1 394 937ob21p Unmappable region (host) TRUE TRUE
## 6 8837 8915 wrta20tr Unmappable region (host) FALSE TRUE
## 7 2772 2846 fe75665p Unmappable region (virus) FALSE TRUE
## 8 2330 3124 v4t9nq3k Unmappable region (virus) FALSE TRUE
Unreliable regions contains (1) mappability profile (2) high nucleotide content regions.
Mappability profile is a profile of areas on a virus genome that can be mapped to (1) other viruses or (2) host genome. We choose Arabidopsis Thaliana as our host genome.
High nucleotide content regions is a profile of areas on a virus genome that has (1) high GC content and/or (2) high A nucleotide percentage.
Including these two profiles into iimi
ensures that
there are no false peaks like the ones described in the previous
section.
Here is a short tutorial to make mappability profile.
Split each of the virus segment from the virus database into a sliding window series with window size of your choice and with step size 1. The default value for window size is 75. You may choose any window size you want.
Map one virus segment with each other, until you finish mapping it to all virus segments in the virus database. Also map the virus segment with a host genome of your choice. We chose to use Arabidopsis Thaliana.
Sort and index the resulted BAM files from the mapping step.
Assemble the mappability profile:
# if you would like to keep unmappable regions that can be mapped to other
# viruses or the host genome separate into two data frames, you may use the
# following code:
# input your own path that you would want to store regions on a virus that can
# be mapped to another virus
# you can customize the name of this type of mappability profile
<-
mappability_profile_virus create_mappability_profile("path/to/bam/files/folder/virus", category = "Unmappable region (virus)", virus_info = virus_segments)
# input your own path that you would want to store regions on a virus that can
# be mapped to the host genome
# you can customize the name of this type of mappability profile
<-
mappability_profile_host create_mappability_profile("path/to/bam/files/folder/host", category = "Unmappable region (host)", virus_info = virus_segments)
# if you would like to keep everything in the same data frame, you may use the
# following code:
<-
mappability_profile create_mappability_profile("path/to/bam/files/folder/of/both/types/", category = "Unmappable region", virus_info = virus_segments)
Creating the high nucleotide content regions is much easier than the
mappability profile. We only need to use
create_high_nucleotide_content()
function.
Here is an example:
<-
high_nucleotide_regions create_high_nucleotide_content(gc = 0.6, a = 0.45, virus_info = virus_segments)
The default threshold for GC content is 60% and is 45% for A%. The thresholds are customizable.
Now, we can combine these two regions into the final unreliable regions. You can use them to convert your training and testing data to feature-extracted data frames. Please refer to section 2.2.2. to see how to do so.
Next, we can visualize the coverage profile by using the
plot_cov()
function.
plot_cov()
: plots the coverage profile of the plant
sample and the percentage of A nucleotides and GC content for a sliding
window of k-mer with the step as
<- par(mfrow = c(1, 2))
oldpar
## if you wish to plot all segments of one sample, you can try:
# plot_cov(covs = example_cov["S1"])
## if you wish to plot all segments from all samples, you can try:
# plot_cov(covs = example_cov)
## if you wish to plot certain segments from one sample, you can try:
= c("82np2784", "m0kacxse")
segs = list()
covs_selected $`305S` <-
covs_selected$`305S`[segs]
example_cov
## if you have many segments that you would want to plot, you can try the following code with the numbers changed
## to find the index of your desired segments:
# covs_selected$`305S` <-
# example_cov$`305S`[names(example_cov$`305S`)[c(8, 15)]]
par(mar = c(2, 4, 1, 1))
layout(matrix(c(1, 1, 2, 3, 3, 4), nrow = 3))
plot_cov(covs = covs_selected, virus_info = virus_segments)
par(oldpar)
This gives us a general idea of what the potential viruses are.