Biol425 2019
Course Schedule (All Wednesdays)
January 31st. Course overview & Unix tools
- Course Overview. Lecture slides:
- Learning Goals: (1) Understand the "Omics" files; (2) Review/Learn Unix tools
- In-Class Tutorial: Unix file filters
- Without changing directory, long-list genome, transcriptome, and proteome files using
ls
- Without changing directory, view genome, transcriptome, and proteome files using
less -S
- Using
grep
, find out the size of Borrelia burgdorferi B31 genome in terms of the number of replicons ("GBB.1con" file) - Using
sort
, sort the replicons by (a) contig id (3rd field, numerically); and (b) replicon type (4th field) - Using
cut
, show only the (a) contig id (3rd field); (b) replicon type (4th field) - Using
tr
, (a) replace "_" with "|"; (b) remove ">" - Using
sed
, (a) replace "Borrelia" with abbreviation "B."; (b) remove "plasmid" from all lines - Using
paste -s
, extract all contig ids and concatenate them with ";" - Using a combination of
cut and uniq
, count how many circular plasmids ("cp") and how many linear plasmids ("lp")
- In-Class Challenges
- Using the "GBB.seq" file, find out the number of genes on each plasmid
grep ">" ../../bio425/data/GBB.seq | cut -c1-4| sort | uniq -c
- Using the "ge.dat" file, find out (a) the number of genes; (b) the number of cell lines; (c) the expression values of three genes: ERBB2, ESR1, and PGR
grep -v "Description" ../../bio425/data/ge.dat | wc -l; or: grep -vc "Description" ../../bio425/data/ge.dat
grep "Description" ../../bio425/data/ge.dat | tr '\t' '\n'| grep -v "Desc" | wc -l
grep -Pw "ERBB2|PGR|ESR1" ../../bio425/data/ge.dat
Reading Material
Lecture slides:
Unix 1a: Unix 1a
Unix 1b: Unix 1b
Unix 2: Unix 2
Unix 3: Unix 3
Assignment #1 - (Due Wednesday 2/07/2018, at 10am - Submit Responses on Blackboard as document with all command line outputs) | |
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Unix Text Filters (10 pts) Show both commands and outputs for the following questions: |
Tip1: piping to the wc command (read the help for it !) allows you to do line counts Tip2: read the help for head command (what does the -n operator do?). If you specify head to get 1000 lines for example, you can then use tail command to get the last 10 of those 1000
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February 7 and 14 Genomics (1): Gene-Finding
- Learning goals: (1) Running UNIX programs; (2) Parse text with Perl anonymous hash
- Lecture slides:
- In-Class Tutorials
- Identify ORFs in a prokaryote genome
- Go to NCBI ORF Finder page
- Paste in the GenBank Accession: AE000791.1 and click "orfFind"
- Change minimum length for ORFs to "300" and click "Redraw". How many genes are predicted? What is the reading frame for each ORF? Coordinates? Coding direction?
- Click "Six Frames" to show positions of stop codons (magenta) and start codons (cyan)
- Gene finder using GLIMMER
- Locate the GLIMMER executables:
ls /data/biocs/b/bio425/bin/
- Locate Borrelia genome files:
ls /data/biocs/b/bio425/data/GBB.1con-splitted/
- Predict ORFs:
../../bio425/bin/long-orfs ../../bio425/data/GBB.1con-splitted/Borrelia_burgdorferi_4041_cp9_plasmid_C.fas cp9.coord
[Note the two arguments: one input file and the other output filename] - Open output file with
cat cp9.coord
. Compare results with those from NCBI ORF Finder. - Extract lines with coordinates"
grep "^[0-9]" cp9.coord > cp9.coord2
- Extract sequences into a FASTA file:
../../bio425/bin/extract ../../bio425/data/GBB.1con-splitted/Borrelia_burgdorferi_4041_cp9_plasmid_C.fas cp9.coord2 > cp9.fas
[Note two input files and standard output, which is then redirected (i.e., saved) into a new file]
- Locate the GLIMMER executables:
- bioseq
- Add
bp-utils
into $PATH by editing the .bash_profile file and runsource .bash_profile
- Run
bioseq
with these options:-l, -n, -c, -r, -t1, -t, -t6, and -s
- In-Class Challenge: use
bioseq
to extract and translate the 1st (+1 frame) and 5th (-1 frame) genes.
- Add
cp ../../bio425/data/GBB.1con-splitted/Borrelia_burgdorferi_4041_cp9_plasmid_C.fas cp9.plasmid.fas # copy plasmid sequence
bioseq -s'163,1272' cp9.plasmid.fas | bioseq -t1 # extract first predicted ORF (+1 frame)
bioseq -s'3853,4377' cp9.plasmid.fas | bioseq -r | bioseq -t1 # extract 5th ORF (since it is -1 frame, need to rev-com before translation
Assignment #2 (Due Wednesday 2/20/2019, at 10am - Submit Responses on Blackboard) |
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UNIX Exercises and Reading Material (10 pts)
Note: Show all commands and outputs.To log off, type "exit" twice (first log out of the "cslab" host, 2nd time log off the "eniac" host). |
February 20 & 27. Genomics (2): BASH & BLAST
- Lecture Slides:
- Learning goal: (1) BASH scripting; (2) Homology searching with NCBI blast
- In-Class exercises
- Build workflow with BASH scripts
#!/usr/bin/bash
bioseq -s"163,1272" cp9.plasmid.fas > gene-0001.nuc;
bioseq -t1 gene-0001.nuc > gene-0001.pep;
exit;
Save the above as "extract-gene-v1.bash". Make it executable with chomd +x extract-gene-v1.bash
. Run it with ./extract-gene-v1.bash
- Improvement 1. make it work for other genes (by using variables)
#!/usr/bin/bash
id=$1;
begin=$2;
end=$3;
bioseq -s"$begin,$end" cp9.plasmid.fas > gene-$id.nuc;
bioseq -t1 gene-$1.nuc > gene-$id.pep;
exit;
Save the above as "extract-gene-v2.bash". Make it executable with chomd +x extract-gene-v2.bash
. Run it with ./extract-gene-v2.bash 0001 163 1272
(Note three arguments). Question: How to modify the code to make it work for genes encoded on the reverse strand?
- Improvement 2. make it work for both positive and negative genes (by using an "if" statement)
#!/usr/bin/bash
id=$1;
begin=$2;
end=$3;
strand=$4;
bioseq -s"$begin,$end" cp9.plasmid.fas > gene-$id.nuc;
if [ $strand -gt 0 ]; then
bioseq -t1 gene-$1.nuc > gene-$id.pep;
else
bioseq -r gene-$1.nuc > gene-$id.rev;
bioseq -t1 gene-$1.rev > gene-$id.pep;
fi;
exit;
- Improvement 3. Make it read "cp9.coord" as an input file, by using a "while" loop:
#!/usr/bin/bash
cat $1 | grep "^[0-9]" | while read line; do
id=$(echo $line | cut -f1 -d' '); # run commands and save result to a variable
x1=$(echo $line | cut -f2 -d' ');
x2=$(echo $line | cut -f3 -d' ');
strand=$(echo $line | cut -f4 -d' ');
if [ $strand -lt 0 ]; then
bioseq -s"$x2,$x1" cp9.plasmid.fas > gene-$id.nuc;
bioseq -r gene-$id.nuc > gene-$id.rev;
bioseq -t1 gene-$id.rev;
else
bioseq -s"$x1,$x2" cp9.plasmid.fas > gene-$id.nuc;
bioseq -t1 gene-$id.nuc;
fi;
done;
exit;
- Run Stand-alone BLAST:
- Add blast binaries to your $PATH in ".bash_profile": export PATH=$PATH:/data/biocs/b/bio425/ncbi-blast-2.2.30+/bin/
- BLAST tutorial 1. A single unknown sequence against a reference genome
cp ../../bio425/data/GBB.pep ~/. # Copy the reference genome
cp ../../bio425/data/unknown.pep ~/. # Copy the query sequence
makeblastdb -in GBB.pep -dbtype prot -parse_seqids -out ref # make a database of reference genome
blastp -query unknown.pep -db ref # Run simple protein blast
blastp -query unknown.pep -db ref -evalue 1e-5 # filter by E values
blastp -query unknown.pep -db ref -evalue 1e-5 -outfmt 6 # concise output
blastp -query unknown.pep -db ref -evalue 1e-5 -outfmt 6 | cut -f2 > homologs-in-ref.txt # save a list of homologs
blastdbcmd -db ref -entry_batch homologs-in-ref.txt > homologs.pep # extract homolog sequences
- In-Class challenges
Assignment #3 (Due Wednesday 3/6/2019, at 10am - Submit Responses on Blackboard) |
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Assignment (10 pts) IMPORTANT: Log on your eniac account and then ssh into a "cslab" host (e.g., ssh cslab5). Perform the following tasks without changing directory (i.e., stay in your home directory).
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March 6. Genomics (3). Genome BLAST & BioPerl
- Lecture Slides:
- Learning goals: Homology, BLAST, & Object-oriented programming with Perl
- BLAST tutorial 1. A single unknown sequence against a reference genome.
- Run Stand-alone BLAST:
- Add blast binaries to your $PATH in ".bash_profile": export PATH=$PATH:/data/biocs/b/bio425/ncbi-blast-2.2.30+/bin/
cp ../../bio425/data/GBB.pep ~/. # Copy the reference genome
cp ../../bio425/data/unknown.pep ~/. # Copy the query sequence
makeblastdb -in GBB.pep -dbtype prot -parse_seqids -out ref # make a database of reference genome
blastp -query unknown.pep -db ref # Run simple protein blast
blastp -query unknown.pep -db ref -evalue 1e-5 # filter by E values
blastp -query unknown.pep -db ref -evalue 1e-5 -outfmt 6 # concise output
blastp -query unknown.pep -db ref -evalue 1e-5 -outfmt 6 | cut -f2 > homologs-in-ref.txt # save a list of homologs
blastdbcmd -db ref -entry_batch homologs-in-ref.txt > homologs.pep # extract homolog sequences
- BLAST tutorial 2.
- Find homologs within the new genome itself
cp ../../bio425/data/N40.pep ~/. # Copy the unknown genome
makeblastdb -in N40.pep -dbtype prot -parse_seqids -out N40 # make a database of the new genome
blastp -query unknown.pep -db N40 -evalue 1e-5 -outfmt 6 | cut -f2 > homologs-in-N40.txt # find homologs in the new genome
blastdbcmd -db N40 -entry_batch homologs-in-N40.txt >> homologs.pep # append to homolog sequences
- BLAST tutorial 3.
- Multiple alignment & build a phylogeny
../../bio425/bin/muscle -in homologs.pep -out homologs.aln # align sequences
cat homologs.aln | tr ':' '_' > homologs2.aln
../../bio425/bin/FastTree homologs2.aln > homologs.tree # build a gene tree
../../bio425/figtree & # view tree (works only in the lab; install your own copy if working remotely)
Assignment #4 (Due Wednesday 3/13/2019, at 10am - Submit Responses on Blackboard) |
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BLAST exercise (5 pts)
Run BLASTp to identify all homologs of BBA18 in the reference genome ("ref").
Perl exercise' (5 pts)
Do not hard-code the values of the hash within the code only the keys (id, start, stop, frame, score), the script must parse the data for the values from the file! Tip: read elements of line into array, then construct anonymous hash (with $ not %) hashes using values from the elements of the array, and then push the anonymous hash to the @genes array. Remember you will need an intermediate array which will hold the information for the elements of each line, and will be "reloaded with each line. Use the following skeleton code : #!/usr/bin/perl
use strict;
use warnings;
use Data::Dumper; # print complex data structure
# ----------------------------------------
# Author : WGQ
# Date : February 30, 2015
# Description : Read coord file
# Input : A coord file
# Output : Coordinates and read frame for each gene
# ----------------------------------------
my @genes; # declare the array
while(<>) { # this means that as long as lines come from the pipe we keep going
my $line = $_; # a line that come from the pipe (we go line by line)
next unless $line =~ /^\d+/; # skip lines except those reporting genes
<Your code: split the $line on white spaces and save into variables>
<Your code: construct anonymous hash and push into @genes>
}
print Dumper(\@genes);
exit; |
March 13 & March 21: Genomics + Object-oriented Perl (Continued)
- Lecture Slides:
- Lecture Slides:
- Reading material:
- Perl References 1
- Perl References and Bio::Seq module
- Perl Overview
- Learning goal: (1) Object-Oriented Perl; (2) BioPerl
- In-Class Exercises
Construct and dump a Bio::Seq object
#!/usr/bin/perl -w
use strict;
use lib '/data/biocs/b/bio425/bioperl-live';
use Bio::Seq;
use Data::Dumper;
my $seq_obj = Bio::Seq->new( -id => "ospC", -seq =>"tgtaataattcaggaaaaga" );
print Dumper($seq_obj);
exit;
Apply Bio::Seq methods:
my $seq_rev=$seq_obj->revcom()->seq(); # reverse-complement & get sequence string
my $eq_length=$seq_obj->length();
my $seq_id=$seq_obj->display_id();
my $seq_string=$seq_obj->seq(); # get sequence string
my $seq_translate=$seq_obj->translate()->seq(); # translate & get sequence string
my $subseq1 = $seq_obj->subseq(1,10); # subseq() returns a string
my $subseq2= $seq_obj->trunc(1,10)->seq(); # trunc() returns a truncated Bio::Seq object
- Challenge 1: Write a BioPerl-based script called "bioperl-exercise.pl". Start by constructing a Bio::Seq object using the "mystery_seq1.fas" sequence. Apply the
trunc()
method to obtain a coding segment from base #308 to #751. Reverse-complement and then translate the segment. Output the translated protein sequence.
#!/usr/bin/perl -w
use strict;
use lib '/data/biocs/b/bio425/bioperl-live';
use Bio::Seq;
my $seq_obj = Bio::Seq->new( -id => "mystery_seq", -seq =>"tgtaataattcaggaaaaga.............." );
print $seq_obj->trunc(308, 751)->revcom()->translate()->seq(), "\n";
exit;
- Challenge 2. Re-write the above code using Bio::SeqIO to read the "mystery_seq1.fas" sequence and output the protein sequence.
#!/usr/bin/perl -w
use strict;
use lib '/data/biocs/b/bio425/bioperl-live';
use Bio::SeqIO;
die "$0 <fasta_file>\n" unless @ARGV == 1;
my $file = shift @ARGV;
my $input = Bio::Seq->new( -file => $file, -format =>"fasta" );
my $seq_obj = $input->next_seq();
print $seq_obj->trunc(308, 751)->revcom()->translate()->seq(), "\n";
exit;
Assignment #5 (Due Wednesday 3/27/2019, at 10am - Submit Responses on Blackboard) |
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BioPerl exercises (10 pts) Perl exercise 1 (if you have submitted this before, please resubmit your earlier answer and note that is a resubmission) (5 pts)
Do not hard-code the values of the hash within the code only the keys (id, start, stop, frame, score), the script must parse the data for the values from the file! Tip: read elements of line into array, then construct anonymous hash (with $ not %) hashes using values from the elements of the array, and then push the anonymous hash to the @genes array. Remember you will need an intermediate array which will hold the information for the elements of each line, and will be "reloaded with each line. Use the following skeleton code : #!/usr/bin/perl
use strict;
use warnings;
use Data::Dumper; # print complex data structure
# ----------------------------------------
# Author : WGQ
# Date : February 30, 2015
# Description : Read coord file
# Input : A coord file
# Output : Coordinates and read frame for each gene
# ----------------------------------------
my @genes; # declare the array
while(<>) { # this means that as long as lines come from the pipe we keep going
my $line = $_; # a line that come from the pipe (we go line by line)
next unless $line =~ /^\d+/; # skip lines except those reporting genes
<Your code: split the $line on white spaces and save into variables>
<Your code: construct anonymous hash and push into @genes>
}
print Dumper(\@genes);
exit;
#!/usr/bin/perl
use strict;
use warnings;
use lib '/data/biocs/b/bio425/bioperl-live';
use Bio::SeqIO;
# ----------------------------------------
# File : extract.pl
# Author : WGQ
# Date : March 5, 2015
# Description : Emulate glimmer EXTRACT program
# Input : A FASTA file with 1 DNA seq and coord file from LONG-ORF
# Output : A FASTA file with translated protein sequences
# ----------------------------------------
die "Usage: $0 <FASTA_file> <coord_file>\n" unless @ARGV > 0;
my ($fasta_file, $coord_file) = @ARGV;
my $fasta_input = Bio::SeqIO->new(<your code>); # create a file handle to read sequences from a file
my $output = Bio::SeqIO->new(-file=>">$fasta_file".".out", -format=>'fasta'); # create a file handle to output sequences into a file
my $seq_obj = $input->next_seq(); # get sequence object from FASTA file
# Read COORD file & extract sequences
open COORD, "<" . $coord_file;
while (<COORD>) {
my $line = $_;
chomp $line;
next unless $line =~ /^\d+/; # skip lines except
my ($seq_id, $cor1, $cor2, $strand, $score) = split /\s+/, $line; # split line on white spaces
if (<your code: if strand is positive>) {
<your code: use trunc function to get sub-sequence as an object>
} else {
<your code: use the trunc() function to get sub-sequence as an object>
<your code: use the revcom() function to reverse-complement the seq object>
}
<your code: use translate() function to obtain protein sequence as an abject, "$pro_obj">
$output->write_seq($pro_obj);
}
close COORD;
exit;
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March 27: Course Material Covered Thus Far- Practice and Review Towards Midterm
- Review slides:
- BioPerl Lecture videos
- Perl Doc 1
- Perl Doc 2
- Perl Doc 3
- Perl Doc 4
- Practice Tests
- Browse & Filter "Big Data" files with UNIX filters
- Genome file
- List all FASTA files in the "../../bio425/data" directory:
ls ../../bio425/data/*.fas
- Count number of sequences in a FASTA file: "../../bio425/data/GBB.pep":
grep -c ">" ../../bio425/data/GBB.pep
- Count number of sequences in all FASTA file in this directory:
grep -c ">" ../../bio425/data/*.fas
- Remove directory names from the above output:
grep ">" ../../bio425/data/*.fas | sed 's/^.\+data\///'
orgrep ">" ../../bio425/data/*.fas| cut -f5 -d'/'
- List all FASTA files in the "../../bio425/data" directory:
- GenBank file
- Show top 10 lines in "../../bio425/data/mdm2.gb":
head ../../bio425/data/mdm2.gb
- Show bottom 10 lines:
tail ../../bio425/data/mdm2.gb
- Extract all lines containing nucleotides:
cat ../../bio425/data/mdm2.gb | grep -P "^\s+\d+[atcg\s]+$"
- Show top 10 lines in "../../bio425/data/mdm2.gb":
- Transcriptome file: a microarray data set
- Count the number of lines in "../../bio425/data/ge.dat":
wc -l ../../bio425/data/ge.dat
- Count the number of genes:
cut -f1 ../../bio425/data/ge.dat | grep -vc "Desc"
- Count the number of cells:
head -1 ../../bio425/data/ge.dat | tr '\t' '\n' | grep -vc "Desc"
- Count the number of lines in "../../bio425/data/ge.dat":
- Transcriptome file: an RNA-SEQ output file
- Count the nubmer of lines in "../../bio425/data/gene_exp.diff":
wc -l ../../bio425/data/gene_exp.diff
- Show head:
head ../../bio425/data/gene_exp.diff
- Show tail:
tail ../../bio425/data/gene_exp.diff
- Count nubmer of "OK" gene pairs (valid comparisons):
grep -c "OK" ../../bio425/data/gene_exp.diff
- Count nubmer of significantly different genes:
grep -c "yes$" ../../bio425/data/gene_exp.diff
- Sort by "log2(fold_change)":
grep "yes$" ../../bio425/data/gene_exp.diff | cut -f1,10 | sort -k2 -n
- Count the nubmer of lines in "../../bio425/data/gene_exp.diff":
- A proteomics dataset: SILAC
- Count the number of line in "../../bio425/data/Jill-silac-batch-1.dat":
wc -l ../../bio425/data/Jill-silac-batch-1.dat
- Show top:
head ../../bio425/data/Jill-silac-batch-1.dat
- Show bottom:
wc -l ../../bio425/data/Jill-silac-batch-1.dat
- Show results for P53 genes:
grep -w "TP53" ../../bio425/data/Jill-silac-batch-1.dat
- Sort by "log_a_b_ratio":
sort -k5 -n ../../bio425/data/Jill-silac-batch-1.dat
- Show ranking of P53:
sort -k5 -n -r ../../bio425/data/Jill-silac-batch-1.dat | cat -n | grep -w "TP53"
- Count the number of line in "../../bio425/data/Jill-silac-batch-1.dat":
- Genome file
Important information for solving the homework !
BioPerl Lecture videos
Assignment #6 - (Due Wednesday 4/3/2019, at 10am - Submit Responses on Blackboard) |
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Unix Text Filters (5 pts) Show both commands and outputs for the following questions:
Perl exercises (5 pts)
!/usr/bin/perl
use strict;
use warnings;
use lib '/data/biocs/b/bio425/bioperl-live';
use Bio::SeqIO;
# ----------------------------------------
# File : extract.pl
# Author : WGQ
# Date : March 5, 2015
# Description : Emulate glimmer EXTRACT program
# Input : A FASTA file with 1 DNA seq and coord file from LONG-ORF
# Output : A FASTA file with translated protein sequences
# ----------------------------------------
die "Usage: $0 <FASTA_file> <coord_file>\n" unless @ARGV > 0;
my ($fasta_file, $coord_file) = @ARGV;
my $fasta_input = Bio::SeqIO->new(<your code>); # create a file handle to read sequences from a file
my $output = Bio::SeqIO->new(-file=>">$fasta_file".".out", -format=>'fasta'); # create a file handle to output sequences into a file
my $seq_obj = $input->next_seq(); # get sequence object from FASTA file
# Read COORD file & extract sequences
open COORD, "<" . $coord_file;
while (<COORD>) {
my $line = $_;
chomp $line;
next unless $line =~ /^\d+/; # skip lines except
my ($seq_id, $cor1, $cor2, $strand, $score) = split /\s+/, $line; # split line on white spaces
if (<your code: if strand is positive>) {
<your code: use trunc function to get sub-sequence as an object>
} else {
<your code: use the trunc() function to get sub-sequence as an object>
<your code: use the revcom() function to reverse-complement the seq object>
}
<your code: use translate() function to obtain protein sequence as an abject, "$pro_obj">
$output->write_seq($pro_obj);
}
close COORD;
exit;
#!/usr/bin/perl -w
use strict;
use lib '/data/biocs/b/bio425/bioperl-live';
use Bio::Tools::SeqStats;
use Bio::SeqIO;
use Data::Dumper;
die "Usage: $0 <fasta>\n" unless @ARGV == 1;
my $filename = shift @ARGV;
my $in = Bio::SeqIO->new(-file=>$filename, -format=>'fasta');
my $seqobj = $in->next_seq();
my $seq_stats = Bio::Tools::SeqStats->new($seqobj);
my $monomers = $seq_stats->count_monomers();
my $codons = $seq_stats->count_codons();
print Dumper($monomers, $codons);
exit;
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April 18 Population Analysis
- Learning goals: (1) SNP analysis (single-locus), (2) haplotype analysis (multiple loci)
- Lecture slides:
- Lecture slides:
- Lecture Videos Explaining Midterm Perl Code
Tutorial 1. Extract SNP sites
#!/usr/bin/perl
# Author: WGQ
# Description: Examine each alignment site as a SNP or constant
# Input: a DNA alignment
# Output: a haplotypes alignemnt
use strict;
use warnings;
use Data::Dumper;
# Part I. Read file and store NTs in a hash (use Bio::AlignIO to read an alignment is better)
my %seqs; # declare a hash as sequence container
my $length;
while (<>) { # read file line by line
my $line = $_;
chomp $line;
next unless $line =~ /^seq/; # skip lines unless it starts with "seq"
my ($id, $seq) = split /\s+/, $line; # split on white spaces
$seqs{$id} = [ (split //, $seq) ]; # id as key, an array of nts as value
$length = length($seq);
}
my %is_snp; # declare a hash to store status of alignment columns
# Part II. Go through each site and report status
for (my $pos = 0; $pos < $length; $pos++) {
my %seen_nt; # declare a hash to get counts of each nt at a aligned position
foreach my $id (keys %seqs) { # collect and count all nts at an aligned site
my $nt = $seqs{$id}->[$pos];
$seen_nt{$nt}++;
}
my @key_nts = keys %seen_nt;
if (@key_nts > 1) { # a SNP site has more than two nucelotdies
$is_snp{$pos} = 1;
} else { # a constant site
$is_snp{$pos} = 0;
}
}
# Part III. Print haplotypes (i.e., nucleotides at SNP sites for each chromosome)
foreach my $id (keys %seqs) { # for each chromosome
print $id, "\t";
for (my $pos = 0; $pos < $length; $pos++) { # for each site
next unless $is_snp{$pos}; # skip constant site
print $seqs{$id}->[$pos]; # print nt at a SNP site
}
print "\n";
}
exit;
Tutorial 2. Hardy-Weinberg Equilibrium: Calculate expected genotype frequencies
Assignment #7 (Due 4/25/2018, at 10am - Submit Responses on Blackboard) |
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April 25: BioPerl Part 2
Assignment #8 (Due Wednesday 5/2/2018, at 10am - Submit Responses on Blackboard) |
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May 2 Regular Expressions
- Learning goals: Perl Regular Expressions and Pattern Matching
- Lecture slides: Lecture Slides
Assignment #9 (Due Wednesday 5/09/2018, at 10am - Submit Responses on Blackboard) |
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May 9: Q&A on everything covered in the course - material review before FINAL
- PLEASE FILL IN TEACHER EVALUATIONS: Teacher's evaluation
- Review slides 1:
- Review slides 1:
- Review slides 1:
- PLEASE FILL TEACHER EVALUATIONS :
- Teacher's evaluation
FINAL WILL POSTED HERE AND WILL BE DUE Wednesday 5/16/2018.
Wednesday, May 16 at 10am - FINAL EXAM DUE - UPLOAD ON BLACKBOARD
General Information
Course Description
- Background: Biomedical research is becoming a high-throughput science. As a result, information technology plays an increasingly important role in biomedical discovery. Bioinformatics is a new interdisciplinary field formed between molecular biology and computer science.
- Contents: This course will introduce both bioinformatics theories and practices. Topics include: database searching, sequence alignment, molecular phylogenetics, structure prediction, and microarray analysis. The course is held in a UNIX-based instructional lab specifically configured for bioinformatics applications.
- Problem-based Learning (PBL): For each session, students will work in groups to solve a set of bioinformatics problems. Instructor will serve as the facilitator rather than a lecturer. Evaluation of student performance include both active participation in the classroom work as well as quality of assignments (see #Grading Policy).
- Learning Goals: After competing the course, students should be able to perform most common bioinformatics analysis in a biomedical research setting. Specifically, students will be able to
- Approach biological questions evolutionarily ("Tree-thinking")
- Evaluate and interpret computational results statistically ("Statistical-thinking")
- Formulate informatics questions quantitatively and precisely ("Abstraction")
- Design efficient procedures to solve problems ("Algorithm-thinking")
- Manipulate high-volume textual data using UNIX tools, Perl/BioPerl, R, and Relational Database ("Data Visualization")
- Pre-requisites: This 3-credit course is designed for upper-level undergraduates and graduate students. Prior experiences in the UNIX Operating System and at least one programming language are required. Hunter pre-requisites are CSCI132 (Practical Unix and Perl Programming) and BIOL300 (Biochemistry) or BIOL302 (Molecular Genetics), or permission by the instructor. Warning: This is a programming-based bioinformatics course. Working knowledge of UNIX and Perl is required for successful completion of the course.
- Academic Honesty: Hunter College regards acts of academic dishonesty (e.g., plagiarism, cheating on examinations, obtaining unfair advantage, and falsification of records and official documents) as serious offenses against the values of intellectual honesty. The College is committed to enforcing the CUNY Policy on Academic Integrity and will pursue cases of academic dishonesty according to the Hunter College Academic Integrity Procedures.
Grading Policy
- Treat assignments as take-home exams. Student performance will be evaluated by weekly assignments and projects. While these are take-home projects and students are allowed to work in groups and answers to some of the questions are provided in the back of the textbook, students are expected to compose the final short answers, computer commands, and code independently. There are virtually an unlimited number of ways to solve a computational problem, as are ways and personal styles to implement an algorithm. Writings and blocks of codes that are virtually exact copies between individual students will be investigated as possible cases of plagiarism (e.g., copies from the Internet, text book, or each other). In such a case, the instructor will hold closed-door exams for involved individuals. Zero credits will be given to ALL involved individuals if the instructor considers there is enough evidence for plagiarism. To avoid being investigated for plagiarism, Do NOT copy from others or let others copy your work.
- Submit assignments on the Blackboard Email attachments will NOT be accepted. Assignments will not be allowed past the due date and time and will be graded as zero. Each assignment will be graded based on timeliness (10%), whether executable or having major errors (50%), algorithm efficiency (10%), and readability in programming styles (30%, see #Assignment Expectations).
- The grading scheme
- Assignments (100 pts): 10 exercises.
- Mid-term (50 pts).
- Final Project (50 pts)
- Classroom performance (50 pts): Active engagement in classroom exercises and discussions
- Attendance (50 pts): 1 unexcused absences = 40; 2 absences = 30; More than 2 = 0.
Assignment Expectations
- Use a programming editor (e.g., vi, emacs, sublime) so you could have features like automatic syntax highlighting, indentation, and matching of quotes and parenthesis.
- All PERL code must begin with "use strict; and use warnings;" statements. For each assignment, unless otherwise stated, I would like the full text of the source code. Since you cannot print using the text editor in the lab (even if you are connected from home), you must copy and paste the code into a word processor or a local text editor. If you are using a word processor, change the font to a fixed-width/monospace font. On Windows, this is usually Courier.
- Also, unless otherwise stated, both the input and the output of the program must be submitted as well. This should also be in fixed-width font, and you should label it in such a way so that I know it is the program's input/output. This is so that I know that you've run the program, what data you have used, and what the program produced. If you are working from the lab, one option is to email the code to yourself, change the font, and then print it somewhere else as there is no printer in the lab.
- Recommended Style
- Bad Style
Useful Links
Unix Tutorials
- Oreilly Book for the virtues of command-line tools: Data Science at Command Line by Jeroen Janssens
- A very nice UNIX tutorial (you will only need up to, and including, tutorial 4).
- FOSSWire's Unix/Linux command reference (PDF). Of use to you: "File commands", "SSH", "Searching" and "Shortcuts".
Perl Help
- Professor Stewart Weiss has taught CSCI132, a UNIX and Perl class. His slides go into much greater detail and are an invaluable resource. They can be found on his course page here.
- Perl documentation at perldoc.perl.org. Besides that, running the perldoc command before either a function (with the -f option ie, perldoc -f substr) or a perl module (ie, perldoc Bio::Seq) can get you similar results without having to leave the terminal.
Regular Expression
Bioperl
- BioPerl's HOWTOs page.
- BioPerl-live developer documentation. (We use bioperl-live in class.)
- Yozen's tutorial on installing bioperl-live on your own Mac OS X machine. (Let me know if there are any issues!).
- A small table showing some methods for BioPerl modules with usage and return values.
SQL
- SQL Primer, written by Yozen.