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DenseCall2
DenseCall2: De Novo Base-Calling of DNA Modifications Using Nanopore Sequencing
Contents
DenseCall2 is an updated base-caller built on an optimized Conformer architecture for nanopore signal processing, enabling simultaneous base-calling and modification detection.
Requirements
Hardware
- RAM: 2 GB minimum; 16 GB or more recommended
- CPU: 4 cores minimum, ≥ 2.3 GHz per core
- GPU: NVIDIA RTX 4090 or newer (required for DenseCall2)
Benchmarks were collected on an ASUSTeK SVR TS700-E9-RS8 workstation
(Xeon Silver 4214 @ 2.20 GHz, 64 GB RAM, RTX 4090 24 GB).
Software
Supported Operating Systems
- Linux: Ubuntu 22.04 or newer
- Windows and macOS are not yet supported
Python
- Version 3.10 or higher is required
Install on Ubuntu with:sudo apt update sudo apt install python3 python3-pip
Installation
DenseCall2
First, set up a new environment and install the necessary Python packages using conda and pip:
# Create a new conda environment
conda create -n densecall python=3.10 -y
conda activate densecall
# Upgrade pip
pip install --upgrade pip
# Download and install
git clone https://github.com/LuChenLab/DENSECALL2.git
cd DENSECALL2
pip install -r requirements.txt
pip install flash-attn==2.8.3 --no-build-isolation --no-cache-dir
python setup.py develop
DenseCall2 is compatible with the basecaller of ont-bonito, allowing our trained models to be used for the basecalling process. Install ont-bonito as follows:
cd ont-bonito-0.7.3
python setup.py develop
Basecalling of FAST5/Pod5 Files
After installing DenseCall2, download the pre-trained models for human-specific models from Pre-trained Basecalling Models. Available models include dna_r9.4.1_hac_m5C@v1.0.tar.gz for r9.4.1 data and dna_r10.4.1_hac_m5C@v1.0.tar.gz for r10.4.1 data.
DenseCall2 provides a method for transforming .fast5 files into .fastq format or .sam format. Follow the commands below to perform basecalling:
# Activate the DenseCall2 conda environment
conda activate densecall2
# Navigate to the directory where you want to download the models
cd /path/to/Densecall2/densecall/models/
# Download and extract the models
# Note: Ensure you have already downloaded the .tar.gz files to this directory
tar -xzvf dna_r9.4.1_hac_m5C@v1.0.tar.gz
# Perform basecalling on the .fast5 files to generate .fastq files
densecall basecaller dna_r9.4.1_hac_m5C@v1.0 /path/to/fast5_data/ --mod --chunksize 12000 --overlap 600 --reference chr22.mmi --recursive --alignment-threads 12 > mod.sam
If you are using the tool solely for standard basecalling, you can omit the --mod flag.
densecall basecaller dna_r9.4.1_hac_m5C@v1.0 /path/to/fast5_data/ --chunksize 12000 --overlap 600 > mod.fastq
Usage Notes
-
Modified-base calling
Add--modtogether with--referenceand ensure the output file has a.samextension.
DenseCall2 will perform Viterbi decoding and append MM/ML tags to the SAM output. -
Standard base calling
Omit--modand set the output extension to.fastqor.fq.
DenseCall2 will use beam-search decoding.
Training Your Own Basecalling Model (Optional)
densecall train - train a DenseCall2 model
To train a model using your own reads, first get a trained model from Remora.
remora model download
densecall basecaller dna_r10.4.1_e8.2_400bps_hac@v3.5.2 ./chr1_fast5 --batchsize 64 --chunksize 5000 --overlap 100 \
--reference chr1.mmi --recursive --save-ctc --min-accuracy-save-ctc 0.9 \
--alphabet NACZGT \
--modified-codes Z \
--modified-base-model /path/to/dna_r10.4.1_e8.2_400bps_hac_v3.5.1_5mc_CG_v2.pt \
--max-reads 100000 > r10_train_data/test.sam
Training a new model from scratch:
densecall train test --directory r10_train_data/ -f --batch 64 --epochs 30 \
--no-quantile-grad-clip --lr 0.002 --alphabet NACZGT \
--config conformer.toml --new --compile
Knowledge distilation
To train a model using knowledge distilation, add the --teacher flag to the training command.
densecall train r10_student --directory r10_train_data/ -f --batch 64 --epochs 20 --grad-accum-split 2 --no-quantile-grad-clip --lr 0.002 --alphabet NACZGT --config conformer_fast.toml --new --compile --teacher r10_teacher/
All training calls use Automatic Mixed Precision to speed up training.
Downstream Analysis
The results were analyzed using the ONT tool modkit, which processes BAM files containing MM/ML tags to generate comprehensive statistical reports. This study specifically employed modkit's "validate" and "pileup" functions.
Citing
A pre-print will be uploaded soon.
License
GNU General Public License v3.0
Acknowledgement
We thank Bonito for making its source code available. DenseCall2 was built on Bonito’s framework: the save-CTC module, the training pipeline and the conversion of Conformer-based basecall outputs to base sequences have all been modified from Bonito’s original implementation. Bonito’s licence can be found here.
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