1-DAV-202 Data Management 2023/24
Previously 2-INF-185 Data Source Integration

Materials · Introduction · Rules · Contact
· Grades from marked homeworks are on the server in file /grades/userid.txt
· Please submit project proposals until Friday April 12. Topics from potential bachelor topic supervisors can be found in /tasks/temy.txt (in Slovak).
· Due to Easter holidays, Web and Bioinf1 homeworks are due on April 4, 9:00am.


HWbash

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Lecture on Perl, Lecture on command-line tools

  • In this set of tasks, use command-line tools or one-liners in Perl, awk or sed. Do not write any scripts or programs.
  • Your commands should work also for other input files with the same format (do not try to generalize them too much, but also do not use very specific properties of a particular input, such as the number of lines etc.)

Preparatory steps and submitting

# create a folder for this homework
mkdir bash
# move to the new folder
cd bash
# link input files to the current folder
ln -s /tasks/bash/human.fa /tasks/bash/dog.fa /tasks/bash/matches.tsv /tasks/bash/names.txt .
# copy protocol to the current folder
cp -i /tasks/bash/protocol.txt .
  • Now you can open protocol.txt in your favorite editor and start working
  • Command ln created symbolic links (shortcuts) to the input files, so you can use them under names such as human.fa rather than full paths such as /tasks/bash/human.fa.

When you are done, you can submit all required files as follows (substitute your username):

cp -ipv protocol.txt human.txt pairs.txt frequency.txt best.txt function.txt passwords.csv /submit/bash/your_username

# check what was submitted
ls -l /submit/bash/your_username

Introduction to tasks A-C

  • In these tasks we will again process bioinformatics data. We have two files of sequences in the FASTA format. This time the sequences represent proteins, not DNA, and therefore they use 20 different letters representing different amino acids. Lines starting with '>' contain the identifier of a protein and potentially an additional description. This is followed by the sequence of this protein, which will not be needed in this task. This data comes from the Uniprot database.
  • File /tasks/bash/dog.fa is a FASTA file conatining about 10% of randomly selected dog proteins. Each protein is identified in the FASTA file only by its ID such as A0A8I3MJS8_CANLF.
  • File /tasks/bash/human.fa is a FASTA file with all human proteins. Each ID is followed by a description of the biological function of the protein.
  • These two sets of proteins were compared by the bioinformatics tool called BLAST, which finds proteins with similar sequences. The results of BLAST are in file /tasks/bash/matches.tsv. This file contains a section for each dog protein. This section starts with several comments, i.e. lines starting with # symbol. This is followed by a table with the found matches in the TSV format, i.e., several values delimited by tab characters \t. We will be interested in the first two columns representing the IDs of the dog and human proteins, respectively.

Task A (counting proteins)

Steps (1) and (2)

  • Use files human.fa and dog.fa to find out how many proteins are in each. Each protein starts with a line starting with the > symbol, so it is sufficient to count those.
  • Beware that > symbol means redirect in bash. Therefore you have to enclose it in single quotation marks '>' so that it is taken literally.
  • For each file write a single command or a pipeline of several commands that will produce the number with the answer. Write the commands and the resulting protein counts to the appropriate sections of your protocol.

Step (3)

  • Create file human.txt which contains sequence IDs and descriptions extracted from human.fa. This file will be used in Task C.
  • Leading > should be removed. Any text after OS= in the description should be also removed.
  • This file should be sorted alphabetically.
  • The file should start as follows:
1433B_HUMAN 14-3-3 protein beta/alpha 
1433E_HUMAN 14-3-3 protein epsilon 
1433F_HUMAN 14-3-3 protein eta 
1433G_HUMAN 14-3-3 protein gamma 
1433S_HUMAN 14-3-3 protein sigma 
  • Submit file human.txt, write your commands to the protocol.

Task B (counting matches)

Step (1)

  • From file matches.tsv extract pairs of similar proteins and store them in file pairs.txt.
  • Each line of the file should contain a pair of protein IDs extracted from the first two columns of the matches.tsv file.
  • These IDs should be separated by a single space and the file should be sorted alphabetically.
  • Do not forget to omit lines with comments.
  • Each pair from the input should be listed only once in the output.
  • Commands grep, sort and uniq would be helpful. To select only some columns, you can use commands cut, awk or a Perl one-liner.
  • The file pairs.txt should have 18939 lines (verify using command wc) and it should start as follows:
A0A1Y6D565_CANLF P_HUMAN
A0A1Y6D565_CANLF S13A4_HUMAN
A0A222YTD8_CANLF S39A4_HUMAN
  • Submit file pairs.txt and write your commands to the protocol.

Step (2)

  • Find out how many proteins from dog.fa have at least one similarity found in matches.tsv. This can be done by counting distinct values in the first column of your pairs.txt file from step (1).
  • We suggest commands cut/awk/perl, sort, uniq, wc
  • The result of your commands should be an output consisting of a single number (and the end-of-line character).
  • Write your answer and commands to the protocol. What percentage is this number out of all dog proteins found in Task A(2)?

Step (3)

  • For each dog protein in the first column of pairs.txt file, count how many times it occurs in the file. The result should be a file named frequency.txt with pairs dog protein ID, count separated by space. It should be sorted by the second column (count) from highest to lowest and in case of ties by the first column alphabetically.
  • To check you answer, look at lines 999 and 1000 of the file as follows: head -n 1000 frequency.txt | tail -n 2
  • You should get the following two lines:
A0A8I3P697_CANLF 6
A0A8I3P812_CANLF 6
  • This means that dog proteins A0A8I3P697_CANLF and A0A8I3P812_CANLF 6 both occur 6 times in the first column of pairs.txt, which means 6 human proteins are similar to each.
  • Submit file frequency.txt, write your commands to the protocol. Also write to the protocol what is the highest and lowest count in the second column of your file.
  • Note: The dog proteins with zero matches are not listed in your file. Their number could be deduced from your results in step (2) and Task A(2) if needed.
  • Note2: The highest number of matches per dog protein is actually restricted by a parameter in the search algorithm to produce at most that many answers. Without this setting the number would be much higher.

Task C (joining information)

Step (1)

  • For each dog protein, the first (top) match in matches.tsv represents the strongest similarity.
  • In this step, we want to extract such strongest match for each dog protein which has at least one match.
  • The result should be a file best.txt listing the two IDs separated by a space. The file should be sorted by the second column (human protein ID).
  • The file should start as follows:
A0A8I3MVQ9_CANLF 1433E_HUMAN
A0A8I3MT06_CANLF 1433G_HUMAN
A0A8I3QRX3_CANLF 1433T_HUMAN
  • This task can be done by printing the lines that are not comments but follow a comment line starting with #.
  • In a Perl one-liner, you can create a state variable which will remember if the previous line was a comment and based on that you decide if you print the current line.
  • Instead of using Perl, you can play with grep. Option -A 1 prints the matching lines as well as one line after each match.
  • Submit file best.txt with the result and write your commands to the protocol.

Step (2):

  • Now we want to extend file best.txt with a description of each human protein.
  • Since similar proteins often have similar functions, this will allow somebody studying dog proteins to learn something about their possible functions based on similarity to well-studied human proteins.
  • To achieve this, we join together file best.txt from step 1 and human.txt created in Task A(3). Conveniently, they are both sorted by the ID of the human protein.
  • Use command join to join these files.
  • Use option -1 2 to use the second column of best.txt as a key for joining.
  • The output of join may start as follows:
1433E_HUMAN A0A8I3MVQ9_CANLF 14-3-3 protein epsilon 
1433G_HUMAN A0A8I3MT06_CANLF 14-3-3 protein gamma 
1433T_HUMAN A0A8I3QRX3_CANLF 14-3-3 protein theta 
  • Further reformat the output so that the dog ID goes first (e.g. A0A8I3MVQ9_CANLF), followed by human protein ID (e.g. 1433E_HUMAN), followed by the rest of the text.
  • Sort by dog protein ID, store in file function.txt.
  • The output should start as follows:
A0A1Y6D565_CANLF P_HUMAN P protein
A0A222YTD8_CANLF S39AA_HUMAN Zinc transporter ZIP10
A0A5F4CW23_CANLF ELA_HUMAN Apelin receptor early endogenous ligand
  • Files best.txt and function.txt should have the same number of lines.
  • Which human protein is the best match for the dog protein A0A8I3RVG4_CANLF and what is its function?
  • Submit file best.txt. Write your commands and the answer to the question above to your protocol.

Task D (passwords)

  • The file /tasks/bash/names.txt contains data about several people, one per line.
  • Each line consists of given name(s), surname and email separated by spaces.
  • Each person can have multiple given names (at least 1), but exactly one surname and one email. Email is always of the form username@uniba.sk.
  • The task is to generate file passwords.csv which contains a randomly generated password for each of these users
    • The output file has columns separated by commas ','
    • The first column contains username extracted from email address, the second column surname, the third column all given names and the fourth column the randomly generated password
  • Submit file passwords.csv with the result of your commands. Write your commands to the protocol.

Example line from input:

Pavol Orszagh Hviezdoslav hviezdoslav32@uniba.sk

Example line from output (password will differ):

hviezdoslav32,Hviezdoslav,Pavol Orszagh,3T3Pu3un

Hints:

  • Passwords can be generated using pwgen (e.g. pwgen -N 10 -1 prints 10 passwords, one per line)
  • We also recommend using perl, wc, paste (check option -d in paste)
  • In Perl, function pop may be useful for manipulating @F and function join for connecting strings with a separator.