ColiFormer-Data / README.md
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Add ColiFormer training and evaluation dataset
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metadata
title: ColiFormer Training and Evaluation Dataset
license: mit
tags:
  - biology
  - codon-optimization
  - e-coli
  - protein-synthesis
  - bioinformatics
  - synthetic-biology
size_categories:
  - 10K<n<100K
task_categories:
  - text-generation
  - sequence-modeling
language:
  - en
pretty_name: E. coli Codon Optimization Dataset for ColiFormer

ColiFormer Training and Evaluation Dataset

This dataset contains the training and evaluation data used for the ColiFormer model - a specialized codon optimization transformer fine-tuned for Escherichia coli sequences. The model achieves 6.2% better CAI (Codon Adaptation Index) scores compared to the base CodonTransformer model.

πŸ”— Related Resources

πŸ“ Dataset Contents

Core Dataset Files

1. finetune_set.json (9.0MB)

Training data for fine-tuning the ColiFormer model

  • Format: JSONL with codon-tokenized sequences
  • Size: ~4,300 high-CAI E. coli gene sequences
  • Fields:
    • idx: Sequence identifier
    • codons: Codon-tokenized DNA sequence (format: AMINO_CODON)
    • organism: Organism ID (51 = Escherichia coli general)
  • Usage: Fine-tuning CodonTransformer for E. coli-specific optimization

2. test_set.json (103KB)

Evaluation dataset for model testing

  • Format: JSON array of test sequences
  • Size: 100 sequences
  • Fields:
    • codons: DNA sequence for evaluation
    • organism: Organism ID (51)
  • Usage: Performance evaluation and benchmarking

Reference Data for Metrics Calculation

3. ecoli_processed_genes.csv (55MB)

Comprehensive E. coli gene dataset with CAI annotations

  • Size: ~50,000 validated E. coli gene sequences
  • Fields:
    • gene_id: Gene identifier from NCBI
    • dna_sequence: Complete coding DNA sequence
    • protein_sequence: Translated amino acid sequence
    • cai_score: Calculated Codon Adaptation Index
    • is_high_cai: Boolean flag for high-CAI sequences (used for filtering training data)
  • Usage: CAI weight calculation, reference sequences for evaluation metrics

4. CAI.csv (45MB)

Raw CAI scores and sequences

  • Fields:
    • gene_id: Gene identifier
    • cai_score: CAI score
    • dna_sequence: DNA sequence
  • Usage: Original CAI calculation data

5. Database 3_4300 gene.csv (4.9MB)

High-CAI gene subset

  • Size: 4,300 high-quality E. coli genes
  • Fields:
    • dna_sequence: High-CAI DNA sequences
  • Usage: Identifying high-quality sequences for training

6. organism_tai_weights.json

Organism-specific tRNA Adaptation Index (tAI) weights

  • Format: JSON with organism-specific tAI coefficients
  • Coverage: Multiple organisms including E. coli
  • Usage: Calculating tAI scores for evaluation metrics

πŸ“Š Metrics and Evaluation

The dataset enables calculation of multiple codon optimization metrics:

Primary Metrics

  • CAI (Codon Adaptation Index): Measures codon usage bias relative to highly expressed genes
  • tAI (tRNA Adaptation Index): Reflects tRNA availability for translation
  • GC Content: Nucleotide composition analysis

Secondary Metrics

  • Restriction Sites: Count of restriction enzyme recognition sites
  • Negative Cis Elements: Regulatory sequence analysis
  • Homopolymer Runs: Repetitive sequence detection
  • ENC (Effective Number of Codons): Codon usage diversity
  • CPB (Codon Pair Bias): Codon pair preferences
  • SCUO (Synonymous Codon Usage Order): Codon usage ordering

πŸ”¬ Model Performance

ColiFormer vs Base Model Results

  • CAI Improvement: +6.2% average improvement
  • Training Data: 4,300 high-CAI E. coli sequences
  • Architecture: BigBird Transformer with Adaptive Learning Methods (ALM)
  • Specialization: Optimized specifically for E. coli codon usage patterns

Benchmarking

The dataset includes comprehensive evaluation protocols comparing:

  1. Fine-tuned ColiFormer: E. coli-specialized model
  2. Base CodonTransformer: General-purpose model
  3. Naive HFC: High-frequency codon baseline

🧬 Data Processing Pipeline

1. Data Collection

  • Source: NCBI E. coli genome annotations
  • Quality filtering: Valid ORFs, proper start/stop codons
  • CAI calculation using relative adaptiveness

2. Training Set Creation

  • Filter for is_high_cai == True sequences
  • Remove duplicates based on DNA sequence
  • Format conversion to codon-tokenized representation

3. Test Set Creation

  • Sample 100 sequences from lower-CAI pool
  • Ensure diversity and representative coverage
  • Format for evaluation pipeline

πŸ“ˆ Usage Examples

Loading the Dataset

from datasets import load_dataset

# Load the complete dataset
dataset = load_dataset("saketh11/ColiFormer-Data")

# Load specific files
import pandas as pd
import json

# Training data
with open("finetune_set.json", "r") as f:
    finetune_data = [json.loads(line) for line in f]

# Reference sequences for CAI calculation
processed_genes = pd.read_csv("ecoli_processed_genes.csv")
reference_sequences = processed_genes['dna_sequence'].tolist()

# Calculate CAI weights
from CAI import relative_adaptiveness
cai_weights = relative_adaptiveness(sequences=reference_sequences)

Calculating Metrics

from CAI import CAI
import json

# Load tAI weights
with open("organism_tai_weights.json", "r") as f:
    tai_weights = json.load(f)["Escherichia coli general"]

# Calculate metrics for a sequence
dna_sequence = "ATGAAAGAACTG..."  # Your sequence
cai_score = CAI(dna_sequence, weights=cai_weights)
tai_score = calculate_tAI(dna_sequence, tai_weights)

πŸ“š Citation

If you use this dataset in your research, please cite:

@article{coliformer2024,
  title={ColiFormer: Enhanced E. coli Codon Optimization with Adaptive Learning Methods},
  author={Your Name},
  journal={bioRxiv},
  year={2024},
  note={Fine-tuned model achieving 6.2\% CAI improvement over base CodonTransformer}
}

@article{codontransformer2023,
  title={CodonTransformer: The Global Codon Optimization Benchmark},
  author={Adibvafa Fallahpour and Bartosz Grzybowski and Seyed Pooya Alavizadeh and Ali Emami},
  journal={bioRxiv},
  year={2023},
  doi={10.1101/2023.09.09.556981}
}

πŸ”„ Data Updates

This dataset represents the training and evaluation data used for the initial ColiFormer model. Future updates may include:

  • Additional E. coli strains and conditions
  • Extended metric calculations
  • Comparative analysis with other organisms
  • Integration with experimental validation data

βš–οΈ License

This dataset is released under the MIT License. See LICENSE file for details.

🀝 Contributing

For questions, issues, or contributions related to this dataset, please contact the maintainers or open an issue in the associated model repository.


Keywords: codon optimization, E. coli, synthetic biology, protein expression, CAI, tAI, transformer model, bioinformatics