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Development of a Class for Biologial Structures Elucidation

Description of the Project

For this project the goal was to practice Python Object Oriented Programing in a biological context.

The bio_seq class is able to identify the type of sequence, either DNA or RNA, check whether the sequence has the proper bases and retieve this info. However, we are randomly generating a DNA or RNA string of 100 base pairs to test this class, so there can be no error message.

Moreover, regarding nucleotides, there are functions to count the nucleotide frequency which is showed as a dictionary as well as GC content which is known as an important feature to be aware of. Examples

Nucleotide Frequency: {'A': 30, 'U': 26, 'C': 23, 'G': 21}

GC%: 44%

Also, transcript of a DNA sequence can be generated as well as the reverse complementary which are then used for reading possible ORF and lastly, obtaing the hypothetical protein sequence.

I am working with modules, this means that I have three files, one for the biologial structures (dictionaries), one for functions where I import the structures and a third one which is used to import the functions and run them. Here is an example of how it look like when I run the code.

Example of call:

from bio_seq import bio_seq

test_dna = bio_seq()
test_dna.generate_rnd_seq(100, "RNA")

print(f'\n{test_dna.get_seq_info()}')

print(f'\nNucleotide Frequency: {test_dna.countNucFrequency()}')
print(f'\nGC%: {test_dna.gc_content()}%')
print(f'\nGC% in subseq: {test_dna.gc_content_subseq()}%')
print(f'\nAminoacids: {test_dna.translate_seq()}')
for rf in test_dna.gen_reading_frames():
    print(f'\n[ORF]: {rf}')

print(f'\nProteins: {test_dna.all_proteins_from_ORF()}')

Class bio_seq

Important aspect

It is needed to previously import:

from bio_structs import *
import random
from collections import Counter

Functions

class bio_seq:
    """DNA sequence class. Default value: ATCG, DNA, No label"""

    def __init__(self, seq="ATCG", seq_type="DNA", label="No Label"):
        """ Sequence initialization, validation"""
        self.seq = seq.upper()
        self.label = label
        self.seq_type = seq_type
        self.is_valid = self.__validateSeq()
        assert self.is_valid, f"Provided data does not seem to be correct {self.seq_type} sequence"
        # assert is the best way to test if something went correct, otherwise it will stop the execution

    def __validateSeq(self):
        """Check sequences to make sure if it is either a DNA or RNA string, retunrs true or false"""
        return set(Nucleotide_base[self.seq_type]).issubset(self.seq)

    def get_seq_biotype(self):
        """Returns sequence type"""
        return self.seq_type

    def get_seq_info(self):
        """Returns 4 strings. Full sequence information"""
        return f"[Label]: {self.label}\n[Sequence]: {self.seq}\n[Biotype]: {self.seq_type}\n[Length]: {len(self.seq)}"

    def generate_rnd_seq(self, length=10, seq_type="DNA"):
        """Generates a random DNA sequence, provided the length"""
        seq = ''.join([random.choice(Nucleotide_base[seq_type])
                       for nuc in range(length)])
        self.__init__(seq, seq_type, "Randomly generated sequence")
        # so, if we want to use a previous created variable, it's going to be checked

    def countNucFrequency(self):
        """Return frequency of the nucleotides in a DNA string, as a dictiorary"""
        return dict(Counter(self.seq))

    def transcription(self):
        """Swapping thymine with uracil and return a RNA string from a DNA string"""
        if self.seq_type == "DNA":
            return self.seq.replace("T", "U")
        return "Not a DNA sequence"

    def reverse_complement(self):
        """
        Swapping adenine with thymine and guanine with cytosine.
        Reversing newly generated string
        """
        if self.seq_type == "DNA":
            mapping = str.maketrans('ATCG', 'TAGC')
        else:
            mapping = str.maketrans('AUCG', 'UAGC')
        return self.seq.translate(mapping)[::-1]

    def gc_content(self):
        """GC content in a DNA/RNA seq. Usefull if we wannawant to check
        if a helix is thightly close (three bonds) or there's a interesting pattern"""
        return round(self.seq.count('C') + self.seq.count('G')/len(self.seq) * 100)

    def gc_content_subseq(self, k=5):
        """GC content in DNA/RNA sub-sequence length k"""
        res = []
        for i in range(0, len(self.seq) - k + 1, k):
            subseq = self.seq[i:i + k]
            res.append(round(subseq.count('C') +
                             subseq.count('G')/len(subseq) * 100))
        return res

    def translate_seq(self, init_pos=0):
        """Translates a DNA sequence into an amino acid sequence"""
        if self.seq_type == "DNA":
            return [DNA_Codons[self.seq[pos:pos+3]] for pos in range(init_pos, len(self.seq)-2, 3)]
        elif self.seq_type == "RNA":
            return [RNA_Codons[self.seq[pos:pos+3]] for pos in range(init_pos, len(self.seq)-2, 3)]

    def codon_usage(self, aminoacid):
        """Provides the frequency of each codon encoding a given aminoacid in a DNA sequence"""
        tmpList = []
        if self.seq_type == "DNA":
            for i in range(0, len(self.seq) - 2, 3):
                if DNA_Codons[self.seq[i:i + 3]] == aminoacid:
                    tmpList.append(self.seq[i:i + 3])
        elif self.seq_type == "RNA":
            for i in range(0, len(self.seq) - 2, 3):
                if RNA_Codons[self.seq[i:i + 3]] == aminoacid:
                    tmpList.append(self.seq[i:i + 3])

        freqDict = dict(Counter(tmpList))
        # 'dict(Counter)'creates a dictionary with key:value where value is the frequence our key appears
        totalWight = sum(freqDict.values())
        for self.seq in freqDict:
            freqDict[self.seq] = round(freqDict[self.seq] / totalWight, 2)
        return freqDict

    def gen_reading_frames(self):
        """Generate the six reading frames of a DNA sequence in aa, including reverse complement"""
        frames = []
        frames.append(self.translate_seq(0))
        frames.append(self.translate_seq(1))
        frames.append(self.translate_seq(2))
        tmp_seq = bio_seq(self.reverse_complement(), self.seq_type)
        frames.append(tmp_seq.translate_seq(0))
        frames.append(tmp_seq.translate_seq(1))
        frames.append(tmp_seq.translate_seq(2))
        del tmp_seq
        # so we can save some memory
        return frames

    def proteins_from_orf(self, aa_seq):
        """Compute all possible proteins in an aminoacid seq and return a list of possible proteins"""
        current_prot = []
        proteins = []

        for aa in aa_seq:
            if aa == "_":
                # STOP accumulating aa if '_' - STOP was found
                if current_prot:
                    for p in current_prot:
                        proteins.append(p)
                    current_prot = []
            else:
                # START accumulating aa if 'M' - START was found
                if aa == "M":
                    current_prot.append("")
                for i in range(len(current_prot)):
                    current_prot[i] += aa
        return proteins

    def all_proteins_from_ORF(self, startReadPos=0, endReadPos=0, ordered=False):
        """Compute all possible proteins for all ORF, which could be a specific range or from the entire seq"""
        if endReadPos > startReadPos:
            tmp_seq = bio_seq(self.seq[startReadPos:endReadPos], self.seq_type)
            orf = tmp_seq.gen_reading_frames()
            # specifying the range
        else:
            orf = self.gen_reading_frames()
            # from the entire seq

        res = []
        for rf in orf:
            prots = self.proteins_from_orf(rf)
            for p in prots:
                res.append(p)

        if ordered:
            return sorted(res, key=len, reverse=True)

        return res

Final Remarks

This was an exciting project where I learned how to identify the key aspects to build up a class as well as to practice the nomenclature. Furthermore, some stricking functions from Python which makes me being more concerned about ho much I still have to learn!

Despite this project has helped me to advance in my Python skill, since there is a library known as "BioPython" with all this functions and much more, I have decided to not continue working on what is already done and I am focusing now my path toward the astonishing potencial that Python is showing for data analysis.

Howerver, I strongly encourage to those who are keen on learning about Python for Life Sciences to check rebelCoder youtube channel, where I found this project, and you can find it by clicking the link below.

rebelCoder Youtube Channel