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--- |
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license: mit |
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language: |
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- en |
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tags: |
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- chemistry |
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- medicinal chemistry |
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pretty_name: AggregatorAdvisor |
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size_categories: |
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- 10K<n<100K |
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dataset_summary: |
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12645 compounds from 20 sources from the AggregatorAdvisor release-2022/06 |
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(https://advisor.docking.org/) that are experimentally determined to aggregate |
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thereby potentially causing false-positive outcomes in high-throughput drug screening. |
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dataset_description: >- |
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Many drug-like molecules phase-separate in aqueous solutions causing false-positives |
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in in biochemical assays often used for drug screening. The Aggregator Advisor |
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(https://advisor.docking.org/) is a web-tool hosted by the Shoichet Lab at UCSF |
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and used to assess the risk of a molecules being an aggregetor, may aggregate in |
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biochemical assays based on the chemical similarity to known aggregators, and |
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physical properties. This dataset includes the known aggregator from the |
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Aggregator Advisor 2022/06 release curated from 20 sources. Since |
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aggregation is dependent on the hydrophobicity of the compound, the predicted |
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logP is also computed for each compound. |
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citation: |- |
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@article |
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{Irwin2015, title = {An Aggregation Advisor for Ligand Discovery}, |
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volume = {58}, ISSN = {1520-4804}, |
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url = {http://dx.doi.org/10.1021/acs.jmedchem.5b01105}, |
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DOI = {10.1021/acs.jmedchem.5b01105}, |
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number = {17}, |
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journal = {Journal of Medicinal Chemistry}, |
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publisher = {American Chemical Society (ACS)}, |
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author = {Irwin, John J. and Duan, Da and Torosyan, Hayarpi and Doak, Allison K. and |
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Ziebart, Kristin T. and Sterling, Teague and Tumanian, Gurgen and Shoichet, Brian K.}, |
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year = {2015}, |
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month = aug, |
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pages = {7076–7087} |
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} |
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config_names: |
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- AggregatorAdvisor |
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configs: |
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- config_name: AggregatorAdvisor |
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data_files: |
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- split: test |
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path: AggregatorAdvisor/test.csv |
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- split: train |
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path: AggregatorAdvisor/train.csv |
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dataset_info: |
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- config_name: AggregatorAdvisor |
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features: |
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- name: SMILES |
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dtype: string |
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- name: substance_id |
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dtype: string |
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- name: aggref_index |
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dtype: int64 |
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- name: logP |
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dtype: float64 |
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- name: reference |
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dtype: string |
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splits: |
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- name: train |
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num_bytes: 404768 |
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num_examples: 10116 |
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- name: test |
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num_bytes: 101288 |
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num_examples: 2529 |
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--- |
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# Aggregator Advisor |
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The [Aggregator Advisor](https://advisor.docking.org/) is a web-tool hosted |
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by the Shoichet Lab at UCSF and used to assess the risk of a molecules being |
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an aggregetor, may aggregate in biochemical assays based on the chemical |
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similarity to known aggregators, and physical properties. The most current |
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release (2022/06) contains 12645 known aggregator molecules from 20 sources. |
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|
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The train and test datasets uploaded to our Hugging Face repository have been sanitized and split from the original dataset |
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If you want to try these processes with the original dataset, please follow the instructions in the [Processing Script.py](https://huggingface.co/datasets/maomlab/AggregatorAdvisor/blob/main/Preprocessing%20Script.py) file located in the AggregatorAdvisor. |
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The [raw_data.csv](https://huggingface.co/datasets/maomlab/AggregatorAdvisor/blob/main/raw_data.csv) is the original dataset from the paper, |
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and the files in [AggregatorAdvisor](https://huggingface.co/datasets/maomlab/AggregatorAdvisor/tree/main/AggregatorAdvisor) are the sanitized version files that we made. |
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## Quickstart Usage |
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|
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### Load a dataset in python |
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Each subset can be loaded into python using the Huggingface [datasets](https://huggingface.co/docs/datasets/index) library. |
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First, from the command line install the `datasets` library |
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$ pip install datasets |
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then, from within python load the datasets library |
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|
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>>> import datasets |
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|
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and load one of the `AggregatorAdvisor` datasets, e.g., |
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>>> AggregatorAdvisor = datasets.load_dataset("maomlab/AggregatorAdvisor", name = "AggregatorAdvisor") |
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Downloading readme: 100%|██████████| 4.70k/4.70k [00:00<00:00, 277kB/s] |
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Downloading data: 100%|██████████| 530k/530k [00:00<00:00, 303kB/s] |
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Downloading data: 100%|██████████| 2.16M/2.16M [00:00<00:00, 12.1MB/s] |
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Generating test split: 100%|██████████| 2529/2529 [00:00<00:00, 29924.07 examples/s] |
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Generating train split: 100%|██████████| 10116/10116 [00:00<00:00, 95081.99 examples/s] |
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and inspecting the loaded dataset |
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>>> AggregatorAdvisor |
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DatasetDict({ |
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test: Dataset({ |
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features: ['new SMILES', 'substance_id', 'aggref_index', 'logP', 'reference'], |
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num_rows: 2529 |
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}) |
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train: Dataset({ |
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features: ['new SMILES', 'substance_id', 'aggref_index', 'logP', 'reference'], |
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num_rows: 10116 |
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}) |
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}) |
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### Use a dataset to train a model |
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One way to use the dataset is through the [MolFlux](https://exscientia.github.io/molflux/) package developed by Exscientia. |
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First, from the command line, install `MolFlux` library with `catboost` and `rdkit` support |
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pip install 'molflux[catboost,rdkit]' |
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then load, featurize, split, fit, and evaluate the catboost model |
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import json |
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from datasets import load_dataset |
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from molflux.datasets import featurise_dataset |
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from molflux.features import load_from_dicts as load_representations_from_dicts |
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from molflux.splits import load_from_dict as load_split_from_dict |
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from molflux.modelzoo import load_from_dict as load_model_from_dict |
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from molflux.metrics import load_suite |
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Split and evaluate the catboost model |
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split_dataset = load_dataset('maomlab/AggregatorAdvisor', name = 'AggregatorAdvisor') |
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split_featurised_dataset = featurise_dataset( |
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split_dataset, |
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column = "new SMILES", |
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representations = load_representations_from_dicts([{"name": "morgan"}, {"name": "maccs_rdkit"}])) |
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model = load_model_from_dict({ |
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"name": "cat_boost_regressor", |
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"config": { |
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"x_features": ['new SMILES::morgan', 'new SMILES::maccs_rdkit'], |
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"y_features": ['logP']}}) |
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model.train(split_featurised_dataset["train"]) |
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preds = model.predict(split_featurised_dataset["test"]) |
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regression_suite = load_suite("regression") |
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scores = regression_suite.compute( |
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references=split_featurised_dataset["test"]['logP'], |
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predictions=preds["cat_boost_regressor::logP"]) |
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### Data splits |
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Here we have used the `Realistic Split` method described in [(Martin et al., 2018)](https://doi.org/10.1021/acs.jcim.7b00166) to split the AggregatorAdvisor dataset. |
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## Citation |
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If you use this dataset please cite: |
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|
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An Aggregation Advisor for Ligand Discovery |
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John J. Irwin, Da Duan, Hayarpi Torosyan, Allison K. Doak, Kristin T. Ziebart, Teague Sterling, Gurgen Tumanian, Brian K. Shoichet, |
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J. Med. Chem. 2015, 58, 17, 7076–7087 |
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DOI: https://doi.org/10.1021/acs.jmedchem.5b01105 |