Instructions to use multimolecule/deepstarr with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- MultiMolecule
How to use multimolecule/deepstarr with MultiMolecule:
pip install multimolecule
from multimolecule import AutoModel, AutoTokenizer tokenizer = AutoTokenizer.from_pretrained("multimolecule/deepstarr") model = AutoModel.from_pretrained("multimolecule/deepstarr") inputs = tokenizer("ACTCCCCTGCCCTCAACAAGATGTTTTGCCAACTGGCCAAGACCTGCCCTGTGCAGCTGTGGGTTGATTCCACACCCCCGCCCGGCACCCGCGTCCGCGCCATGGCCATCTACAAGCAGTCACAGCACATGACGGAGGTTGTGAGGCGCTGCCCCCACCATGAGCGCTGCTCAGATAGCGATGG", return_tensors="pt") outputs = model(**inputs) embeddings = outputs.last_hidden_state - Notebooks
- Google Colab
- Kaggle
| datasets: | |
| - multimolecule/deepstarr | |
| library_name: multimolecule | |
| license: agpl-3.0 | |
| pipeline: regulatory-activity | |
| pipeline_tag: other | |
| tags: | |
| - Biology | |
| - DNA | |
| - dna | |
| widget: | |
| - example_title: tumor protein p53 | |
| pipeline_tag: regulatory-activity | |
| sequence_type: DNA | |
| task: regulatory-activity | |
| text: ACTCCCCTGCCCTCAACAAGATGTTTTGCCAACTGGCCAAGACCTGCCCTGTGCAGCTGTGGGTTGATTCCACACCCCCGCCCGGCACCCGCGTCCGCGCCATGGCCATCTACAAGCAGTCACAGCACATGACGGAGGTTGTGAGGCGCTGCCCCCACCATGAGCGCTGCTCAGATAGCGATGG | |
| - example_title: BRCA1 DNA repair associated | |
| pipeline_tag: regulatory-activity | |
| sequence_type: DNA | |
| task: regulatory-activity | |
| text: TCATTGGAACAGAAAGAAATGGATTTATCTGCTCTTCGCGTTGAAGAAGTACAAAATGTCATTAATGCTATGCAGAAAATCTTAGAGTGTCCCATCTGG | |
| - example_title: hemoglobin subunit beta | |
| pipeline_tag: regulatory-activity | |
| sequence_type: DNA | |
| task: regulatory-activity | |
| text: CATTTGCTTCTGACACAACTGTGTTCACTAGCAACCTCAAACAGACACCATGGTGCATCTGACTCCTGAGGAGAAGTCTGCCGTTACTGCCCTGTGGGGCAAGGTGAACGTGGATGAAGTTGGTGGTGAGGCCCTGGGCAGG | |
| - example_title: CF transmembrane conductance regulator | |
| pipeline_tag: regulatory-activity | |
| sequence_type: DNA | |
| task: regulatory-activity | |
| text: ACTTCACTTCTAATGGTGATTATGGGAGAACTGGAGCCTTCAGAGGGTAAAATTAAGCACAGTGGAAGAATTTCATTCTGTTCTCAGTTTTCCTGGATTATGCCTGGCACCATTAAAGAAAATATCATCTTTGGTGTTTCCTATGATGAATATAGATACAGAAGCGTCATCAAAGCATGCCAACTAGAAGAG | |
| - example_title: telomerase reverse transcriptase | |
| pipeline_tag: regulatory-activity | |
| sequence_type: DNA | |
| task: regulatory-activity | |
| text: CGCGGGGGTGGCCGGGGCCAGGGCTTCCCACGTGCGCAGCAGGACGCAGCGCTGCCTGAAACTCGCGCCGCGAGGAGAGGGCGGGGCCGCGGAAAGGAAGGGGAGGGGCTGGGAGGGCCCGGAGGGGGCTGGGCCGGGGACCCGGGAGGGGTCGGGACGGGGCGGGGTCCGCGCGGAGGAGGCGGAGCTGGAAGGTGAAGGGGCAGGACGGGTGCCCGGGTCCCCAGTCCCTCCGCCACGTGGGAAGCGCGGTCCTGGGCGTCTGTGCCCGCGAATCCACTGGGAGCCCGGCCTGGCCCCGACAGCGCAGCTGCTCCGGGCGGACCCGGGG | |
| - example_title: KRAS proto-oncogene | |
| pipeline_tag: regulatory-activity | |
| sequence_type: DNA | |
| task: regulatory-activity | |
| text: GCCTGCTGAAAATGACTGAATATAAACTTGTGGTAGTTGGAGCTGGTGGCGTAGGCAAGAGTGCCTTGACGATACAGCTAATTCAGAATCATTTTGTGGACGAATATGATCCAACAATAGAG | |
| - example_title: prion protein (Kanno blood group) | |
| pipeline_tag: regulatory-activity | |
| sequence_type: cDNA | |
| task: regulatory-activity | |
| text: ATGGCGAACCTTGGCTGCTGGATGCTGGTTCTCTTTGTGGCCACATGGAGTGACCTGGGCCTCTGC | |
| - example_title: interleukin 10 | |
| pipeline_tag: regulatory-activity | |
| sequence_type: cDNA | |
| task: regulatory-activity | |
| text: ATGCACAGCTCAGCACTGCTCTGTTGCCTGGTCCTCCTGACTGGGGTGAGGGCC | |
| - example_title: Zaire ebolavirus | |
| pipeline_tag: regulatory-activity | |
| sequence_type: cDNA | |
| task: regulatory-activity | |
| text: AATGTTCAAACACTTTGTGAAGCTCTGTTAGCTGATGGTCTTGCTAAAGCATTTCCTAGCAATATGATGGTAGTCACAGAGCGTGAGCAAAAAGAAAGCTTATTGCATCAAGCATCATGGCACCACACAAGTGATGATTTTGGTGAGCATGCCACAGTTAGAGGGAGTAGCTTTGTAACTGATTTAGAGAAATACAATCTTGCATTTAGATATGAGTTTACAGCACCTTTTATAGAATATTGTAACCGTTGCTATGGTGTTAAGAATGTTTTTAATTGGATGCATTATACAATCCCACAGTGTTAT | |
| - example_title: SARS coronavirus | |
| pipeline_tag: regulatory-activity | |
| sequence_type: cDNA | |
| task: regulatory-activity | |
| text: ATGTTTATTTTCTTATTATTTCTTACTCTCACTAGTGGTAGTGACCTTGACCGGTGCACCACTTTTGATGATGTTCAAGCTCCTAATTACACTCAACATACTTCATCTATGAGGGGGGTTTACTATCCTGATGAAATTTTTAGATCAGACACTCTTTATTTAACTCAGGATTTATTTCTTCCATTTTATTCTAATGTTACAGGGTTTCATACTATTAATCATACGTTTGACAACCCTGTCATACCTTTTAAGGATGGTATTTATTTTGCTGCCACAGAGAAATCAAATGTTGTCCGTGGTTGGGTTTTTGGTTCTACCATGAACAACAAGTCACAGTCGGTGATTATTATTAACAATTCTACTAATGTTGTTATACGAGCATGTAACTTTGAATTGTGTGACAACCCTTTCTTTGCTGTTTCTAAACCCATGGGTACACAGACACATACTATGATATTCGATAATGCATTTAAATGCACTTTCGAGTACATATCT | |
| - example_title: insulin | |
| pipeline_tag: regulatory-activity | |
| sequence_type: cDNA | |
| task: regulatory-activity | |
| text: ATGGCCCTGTGGATGCGCCTCCTGCCCCTGCTGGCGCTGCTGGCCCTCTGGGGACCTGACCCAGCCGCAGCCTTTGTGAACCAACACCTGTGCGGCTCACACCTGGTGGAAGCTCTCTACCTAGTGTGCGGGGAACGAGGCTTCTTCTACACACCCAAGACCCGCCGGGAGGCAGAGGACCTGCAGGTGGGGCAGGTGGAGCTGGGCGGGGGCCCTGGTGCAGGCAGCCTGCAGCCCTTGGCCCTGGAGGGGTCCCTGCAGAAGCGTGGCATTGTGGAACAATGCTGTACCAGCATCTGCTCCCTCTACCAGCTGGAGAACTACTGCAACTAG | |
| - example_title: cyclin dependent kinase inhibitor 2A | |
| pipeline_tag: regulatory-activity | |
| sequence_type: cDNA | |
| task: regulatory-activity | |
| text: ATGGAGCCGGCGGCGGGGAGCAGCATGGAGCCTTCGGCTGACTGGCTGGCCACGGCCGCGGCCCGGGGTCGGGTAGAGGAGGTGCGGGCGCTGCTGGAGGCGGGGGCGCTGCCCAACGCACCGAATAGTTACGGTCGGAGGCCGATCCAGGTCATGATGATGGGCAGCGCCCGAGTGGCGGAGCTGCTGCTGCTCCACGGCGCGGAGCCCAACTGCGCCGACCCCGCCACTCTCACCCGACCCGTGCACGACGCTGCCCGGGAGGGCTTCCTGGACACGCTGGTGGTGCTGCACCGGGCCGGGGCGCGGCTGGACGTGCGCGATGCCTGGGGCCGTCTGCCCGTGGACCTGGCTGAGGAGCTGGGCCATCGCGATGTCGCACGGTACCTGCGCGCGGCTGCGGGGGGCACCAGAGGCAGTAACCATGCCCGCATAGATGCCGCGGAAGGTCCCTCAGACATCCCCGATTGA | |
| - example_title: human papillomavirus type 16 E6 | |
| pipeline_tag: regulatory-activity | |
| sequence_type: cDNA | |
| task: regulatory-activity | |
| text: ATGCACCAAAAGAGAACTGCAATGTTTCAGGACCCACAGGAGCGACCCAGAAAGTTACCACAGTTATGCACAGAGCTGCAAACAACTATACATGATATAATATTAGAATGTGTGTACTGCAAGCAACAGTTACTGCGACGTGAGGTATATGACTTTGCTTTTCGGGATTTATGCATAGTATATAGAGATGGGAATCCATATGCTGTATGTGATAAATGTTTAAAGTTTTATTCTAAAATTAGTGAGTATAGACATTATTGTTATAGTTTGTATGGAACAACATTAGAACAGCAATACAACAAACCGTTGTGTGATTTGTTAATTAGGTGTATTAACTGTCAAAAGCCACTGTGTCCTGAAGAAAAGCAAAGACATCTGGACAAAAAGCAAAGATTCCATAATATAAGGGGTCGGTGGACCGGTCGATGTATGTCTTGTTGCAGATCATCAAGAACACGTAGAGAAACCCAGCTGTAA | |
| # DeepSTARR | |
| Convolutional neural network for predicting enhancer activity directly from DNA sequence. | |
| ## Disclaimer | |
| This is an UNOFFICIAL implementation of [DeepSTARR predicts enhancer activity from DNA sequence and enables the de novo design of synthetic enhancers](https://doi.org/10.1038/s41588-022-01048-5) by Bernardo P. de Almeida, Franziska Reiter, et al. | |
| The OFFICIAL repository of DeepSTARR is at [bernardo-de-almeida/DeepSTARR](https://github.com/bernardo-de-almeida/DeepSTARR). | |
| > [!TIP] | |
| > The MultiMolecule team has confirmed that the provided model and checkpoints are producing the same intermediate representations as the original implementation. | |
| **The team releasing DeepSTARR did not write this model card for this model so this model card has been written by the MultiMolecule team.** | |
| ## Model Details | |
| DeepSTARR is a convolutional neural network (CNN) trained to quantitatively predict enhancer activity from 249 bp DNA sequences. The model was trained on genome-wide STARR-seq data from _Drosophila melanogaster_ S2 cells and predicts two regression outputs: developmental and housekeeping enhancer activity. The architecture consists of four convolutional blocks (Conv1D + BatchNorm + ReLU + MaxPool) followed by two fully-connected layers. Please refer to the [Training Details](#training-details) section for more information on the training process. | |
| ### Model Specification | |
| | Num Conv Layers | Num FC Layers | Hidden Size | Num Parameters (M) | FLOPs (M) | MACs (M) | Max Num Tokens | | |
| | --------------- | ------------- | ----------- | ------------------ | --------- | -------- | -------------- | | |
| | 4 | 2 | 256 | 0.62 | 21.03 | 10.26 | 249 | | |
| ### Links | |
| - **Code**: [multimolecule.deepstarr](https://github.com/DLS5-Omics/multimolecule/tree/master/multimolecule/models/deepstarr) | |
| - **Data**: Drosophila S2 UMI-STARR-seq enhancer-activity data | |
| - **Paper**: [DeepSTARR predicts enhancer activity from DNA sequence and enables the de novo design of synthetic enhancers](https://doi.org/10.1038/s41588-022-01048-5) | |
| - **Developed by**: Bernardo P. de Almeida, Franziska Reiter, Michaela Pagani, Alexander Stark | |
| - **Model type**: Four-block 1D CNN over 249 bp DNA for developmental and housekeeping enhancer-activity regression | |
| - **Original Repository**: [bernardo-de-almeida/DeepSTARR](https://github.com/bernardo-de-almeida/DeepSTARR) | |
| ## Usage | |
| The model file depends on the [`multimolecule`](https://multimolecule.danling.org) library. You can install it using pip: | |
| ```bash | |
| pip install multimolecule | |
| ``` | |
| ### Direct Use | |
| #### Enhancer Activity Prediction | |
| You can use this model directly to predict the developmental and housekeeping enhancer activity of a 249 bp DNA sequence: | |
| ```python | |
| >>> import torch | |
| >>> from multimolecule import DnaTokenizer, DeepStarrForSequencePrediction | |
| >>> tokenizer = DnaTokenizer.from_pretrained("multimolecule/deepstarr") | |
| >>> model = DeepStarrForSequencePrediction.from_pretrained("multimolecule/deepstarr") | |
| >>> sequence = "ACGT" * 62 + "A" | |
| >>> output = model(**tokenizer(sequence, return_tensors="pt")) | |
| >>> output.logits.shape | |
| torch.Size([1, 2]) | |
| ``` | |
| ### Interface | |
| - **Input length**: fixed 249 bp DNA window | |
| - **Output**: 2 regression outputs (developmental and housekeeping enhancer activity, log2 enrichment over input) | |
| ## Training Details | |
| DeepSTARR was trained to predict quantitative enhancer activity from DNA sequence. | |
| ### Training Data | |
| DeepSTARR was trained on genome-wide UMI-STARR-seq data from _Drosophila melanogaster_ S2 cells, measuring enhancer activity under two transcriptional programs: a developmental program (driven by a developmental core promoter) and a housekeeping program (driven by a housekeeping core promoter). | |
| Each training example is a 249 bp genomic sequence with two continuous activity values (developmental and housekeeping, log2 enrichment over input). | |
| Chromosomes were split into training, validation, and test sets to avoid sequence leakage. | |
| ### Training Procedure | |
| #### Pre-training | |
| The model was trained to minimize a mean-squared-error loss between predicted and measured enhancer activities. | |
| - Optimizer: Adam | |
| - Learning rate: 2e-3 | |
| - Loss: Mean Squared Error | |
| - Early stopping on validation loss | |
| ## Citation | |
| ```bibtex | |
| @article{deAlmeida2022deepstarr, | |
| author = {de Almeida, Bernardo P. and Reiter, Franziska and Pagani, Michaela and Stark, Alexander}, | |
| journal = {Nature Genetics}, | |
| month = may, | |
| number = 5, | |
| pages = {613--624}, | |
| publisher = {Springer Science and Business Media LLC}, | |
| title = {{DeepSTARR} predicts enhancer activity from {DNA} sequence and enables the de novo design of synthetic enhancers}, | |
| volume = 54, | |
| year = 2022, | |
| doi = {10.1038/s41588-022-01048-5} | |
| } | |
| ``` | |
| > [!NOTE] | |
| > The artifacts distributed in this repository are part of the MultiMolecule project. | |
| > If MultiMolecule supports your research, please cite the MultiMolecule project as follows: | |
| ```bibtex | |
| @software{chen_2024_12638419, | |
| author = {Chen, Zhiyuan and Zhu, Sophia Y.}, | |
| title = {MultiMolecule}, | |
| doi = {10.5281/zenodo.12638419}, | |
| publisher = {Zenodo}, | |
| url = {https://doi.org/10.5281/zenodo.12638419}, | |
| year = 2024, | |
| month = may, | |
| day = 4 | |
| } | |
| ``` | |
| ## Contact | |
| Please use GitHub issues of [MultiMolecule](https://github.com/DLS5-Omics/multimolecule/issues) for any questions or comments on the model card. | |
| Please contact the authors of the [DeepSTARR paper](https://doi.org/10.1038/s41588-022-01048-5) for questions or comments on the paper/model. | |
| ## License | |
| This model implementation is licensed under the [GNU Affero General Public License](license.md). | |
| For additional terms and clarifications, please refer to our [License FAQ](license-faq.md). | |
| ```spdx | |
| SPDX-License-Identifier: AGPL-3.0-or-later | |
| ``` |