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locust-comparative-genomics/
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Load R libraries (install first from CRAN or Bioconductor)
library("knitr")
library("rmdformats")
library("tidyverse")
library("DT") # for making interactive search table
library("plotly") # for interactive plots
library("ggthemes") # for theme_calc
library("ggplot2")
library("reshape2")
library("plotly")
## Global options
options(max.print="10000")
knitr::opts_chunk$set(
echo = TRUE,
message = FALSE,
warning = FALSE,
cache = FALSE,
comment = FALSE,
prompt = FALSE,
tidy = TRUE
)
opts_knit$set(width=75)
The Behavioral Plasticity Research Institute (BPRI) successfully generated high-quality, chromosome-length genomes for six species of grasshoppers and locusts within the Schistocerca genus. To achieve this, the genome assembly team utilized a hybrid approach, combining long-read sequencing with HiFi PacBio technology and short-read sequencing with Hi-C. Following the finalization of the genome assemblies, the annotation process was conducted by the Eukaryotic Annotation Pipeline for RefSeq by NCBI.
We will use the RefSeq assemblies that have received accession
numbers starting with “GFC” and the associated annotation .gtf and .gff
files.
Schistocerca
gregaria
Schistocerca
piceifrons
Schistocerca
cancellata
Schistocerca
americana
Schistocerca
serialis cubense
Schistocerca
nitens
Here is an an example of how to download the genome assembly for Schistocerca piceifrons from NCBI RefSeq:
## Downloading the genome sequence, primary assembly fasta file with RefSeq contig accessions
wget https://ftp.ncbi.nlm.nih.gov/genomes/all/GCF/021/461/385/GCF_021461385.2_iqSchPice1.1/GCF_021461385.2_iqSchPice1.1_genomic.fna.gz
## Downloading the comprehensive annotation file in .gtf format
wget https://ftp.ncbi.nlm.nih.gov/genomes/all/GCF/021/461/385/GCF_021461385.2_iqSchPice1.1/GCF_021461385.2_iqSchPice1.1_genomic.gtf.gz
The reads that can be mapped on these sequences can be either from public sequences with accession on NCBI (DDBJ or other database) or can be generated de novo and yet to be released.
We conducted a search in the NCBI database for RNA SRA associated with the Acrididae, Schistocerca genus and found 199 accessions were available (last update: 25 January 2024). We selected only comparables SRA which were obtained from head and thorax, separately from last instar nymph, females, 3 days after molting.
All RNA-seq data for species including S. americana, S. piceifrons, S. serialis cubense, S. cancellata, S. nitens were originally generated for the BioProject PRJNA633949 at the Song Laboratory of Insect Systematics and Evolution at Texas A&M University and under the same conditions (Foquet et al. 2021).
Using the Run Selector from NCBI, we can easily download a metadata table that allows us to visualize how the accessions are distributed per species. We will use this metadata table for analysis of the RNAseq data from the previously published dataset.
We compile a list of accessions from the “Run” category for
each species and then use SRA-toolkit from NCBI. First, we
create an empty directory named ncbi to download each SRA.
This is where SRA Toolkit will dump the prefetched SRA
files in the .sra format.
ml purge
ml GCC/10.2.0 OpenMPI/4.0.5 SRA-Toolkit/2.10.9
vdb-config --interactive
Once in the vdb-config interactive mode, select cache,
choose, then use [ .. ], to enter
/home/USERNAME/PATH/ncbi one directory at a time
prefetch --option-file SraAccList.txt
cat SraAccList.txt | xargs fasterq-dump --split-3 --outdir "/your-directory/for-fastq"
Clean-up the ncbi directory and move the fastq.gz file
(rename if wanted).
another option
for x in *.sra ; do fasterq-dump --split-files $x ; mv *.fastq ../../paired_end_piceifrons/; done
We sequenced new whole transcriptomes from the desert locust S. gregaria under two different density conditions. While these new transcriptomes originated from specimens reared in similar conditions, we made slight changes in the RNA extraction, library preparation and sequencing processes. Specifically, we used the Illumina Stranded Total RNA with RiboZero depletion kit and sequenced on a NovaSeq SP flow cell at TxGen, aiming for a targeted yield of 40 millions reads per library.
For the sequencing of many transcriptomes at the same time, it is common practice to run pooled libraries across multiples lanes, depending on the required read count. To handle this, I used the following loop to merge several files from different lanes:
#!/bin/bash
# add the print $3 for TxGen reads as it is for samples S
for i in $(ls -1 *R1*.gz | awk -F '_' '{print $1"_"$2"_"$3}' | sort | uniq)
do echo $i
echo "Merging R1 ${i}"
cat "$i"_L00*_R1_001.fastq.gz > "$i"_MERGE_R1_001.fastq.gz
echo "Merging R2 ${i}"
cat "$i"_L00*_R2_001.fastq.gz > "$i"_MERGE_R2_001.fastq.gz
done;
We need to create a .csv file containing as much
information as possible for each sample/file name (e.g., Sample_ID,
Species, Sex, RearingCondition). An interactive and searchable table
with this type of information is available below and can even be
downloaded directly.
We can download most of the metadata from NCBI, but as often it is
case, the table is incomplete. I had to look through Biosample,
BioProject description as well as associated articles or grants if
available to complete data especially regarding:
- phase - rearing condition - developmental stage and age - sex -
tissues collected - origin of the RNAseq data from single or pooled
specimens
NB: Throughout our analysis, we will complete this metadata file by adding other stats related to sequencing and mapping.
# Load our SRA metadata table
setwd("/Users/alphamanae/Documents/GitHub/locust-comparative-genomics")
metaseq <- read_table("data/metadata/RNAseq_headthorax_METADATA2024.txt", col_names = TRUE,
guess_max = 5000)
## Create an interactive search table
metaseq %>%
datatable(extensions = "Buttons", options = list(dom = "Blfrtip", buttons = c("copy",
"csv", "excel"), lengthMenu = list(c(10, 20, 50, 100, 200, -1), c(10, 20,
50, 100, 200, "All"))))
We explore quickly how many bulk tissue transcriptomes are available per species, per rearing condition.
# Create a new variable combining Species and RearingCondition
metaseq_modif <- metaseq %>%
mutate(Species_Rearing = paste(Species, RearingCondition, sep = "_"))
# Group and count the data by Species_Rearing and Tissue
plot_data <- metaseq_modif %>%
group_by(Species_Rearing, Tissue, Species) %>%
summarize(Count = n())
# Define colors for each unique Species
species_colors <- c(Schistocerca_gregaria = "orange", Schistocerca_piceifrons = "red",
Schistocerca_cancellata = "purple", Schistocerca_americana = "forestgreen", Schistocerca_serialis_cubense = "yellow",
Schistocerca_nitens = "blue")
# Create the plot with combined variable
gg <- ggplot(plot_data, aes(x = Species_Rearing, y = Tissue, size = Count, fill = Species)) +
geom_point(shape = 21) + labs(x = "Species_Rearing", y = "Tissue", title = "Bubble Chart of Tissue Counts for Species+RearingCondition") +
theme_minimal() + theme(axis.text.x = element_text(angle = 45, hjust = 1)) +
scale_fill_manual(values = species_colors) + scale_size_continuous(range = c(5,
20))
# Convert the ggplot object to a plotly object for interactivity
interactive_plot <- ggplotly(gg)
# Display the interactive plot
interactive_plot
sessionInfo()
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