--- license: mit language: - en tags: - chemistry - medicinal chemistry pretty_name: AggregatorAdvisor size_categories: - 10K- AggregatorAdvisor identifies molecules that are known to aggregate or may aggregate in biochemical assays based on the chemical similarity to known aggregators, and physical properties. In the default affinity range of 100 nM to 10 μM, if calculated LogP > 3 and Tc ≥ 85%, the user is informed that this compound should be investigated as an aggregator. If either calculated LogP > 3 or Tc > 85%, the user is warned that one of these two contributing criteria are in effect and that controls should be run. If neither of these is true, this is reported, and the user is counseled that controls are always advised. The train and test datasets were created after sanitizing and splitting the original dataset in the paper below. citation: |- @article {Irwin2015, title = {An Aggregation Advisor for Ligand Discovery}, volume = {58}, ISSN = {1520-4804}, url = {http://dx.doi.org/10.1021/acs.jmedchem.5b01105}, DOI = {10.1021/acs.jmedchem.5b01105}, number = {17}, journal = {Journal of Medicinal Chemistry}, publisher = {American Chemical Society (ACS)}, author = {Irwin, John J. and Duan, Da and Torosyan, Hayarpi and Doak, Allison K. and Ziebart, Kristin T. and Sterling, Teague and Tumanian, Gurgen and Shoichet, Brian K.}, year = {2015}, month = aug, pages = {7076–7087} } config_names: - AggregatorAdvisor configs: - config_name: AggregatorAdvisor data_files: - split: test path: AggregatorAdvisor/test.csv - split: train path: AggregatorAdvisor/train.csv dataset_info: - config_name: AggregatorAdvisor features: - name: new SMILES dtype: string - name: substance_id dtype: string - name: aggref_index dtype: int64 - name: logP dtype: float64 - name: reference dtype: string splits: - name: train num_bytes: 404768 num_examples: 10116 - name: test num_bytes: 101288 num_examples: 2529 --- # Aggregator Advisor The train and test datasets uploaded to our Hugging Face repository have been sanitized and split from the original dataset, which contains 12645 compounds. 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. The [raw_data.csv](https://huggingface.co/datasets/maomlab/AggregatorAdvisor/blob/main/raw_data.csv) is the original dataset from the paper, and the files in [AggregatorAdvisor](https://huggingface.co/datasets/maomlab/AggregatorAdvisor/tree/main/AggregatorAdvisor) are the sanitized version files that we made. ## Quickstart Usage ### Load a dataset in python Each subset can be loaded into python using the Huggingface [datasets](https://huggingface.co/docs/datasets/index) library. First, from the command line install the `datasets` library $ pip install datasets then, from within python load the datasets library >>> import datasets and load one of the `AggregatorAdvisor` datasets, e.g., >>> AggregatorAdvisor = datasets.load_dataset("maomlab/AggregatorAdvisor", name = "AggregatorAdvisor") Downloading readme: 100%|██████████| 4.70k/4.70k [00:00<00:00, 277kB/s] Downloading data: 100%|██████████| 530k/530k [00:00<00:00, 303kB/s] Downloading data: 100%|██████████| 2.16M/2.16M [00:00<00:00, 12.1MB/s] Generating test split: 100%|██████████| 2529/2529 [00:00<00:00, 29924.07 examples/s] Generating train split: 100%|██████████| 10116/10116 [00:00<00:00, 95081.99 examples/s] and inspecting the loaded dataset >>> AggregatorAdvisor DatasetDict({ test: Dataset({ features: ['new SMILES', 'substance_id', 'aggref_index', 'logP', 'reference'], num_rows: 2529 }) train: Dataset({ features: ['new SMILES', 'substance_id', 'aggref_index', 'logP', 'reference'], num_rows: 10116 }) }) ### Use a dataset to train a model One way to use the dataset is through the [MolFlux](https://exscientia.github.io/molflux/) package developed by Exscientia. First, from the command line, install `MolFlux` library with `catboost` and `rdkit` support pip install 'molflux[catboost,rdkit]' then load, featurize, split, fit, and evaluate the catboost model import json from datasets import load_dataset from molflux.datasets import featurise_dataset from molflux.features import load_from_dicts as load_representations_from_dicts from molflux.splits import load_from_dict as load_split_from_dict from molflux.modelzoo import load_from_dict as load_model_from_dict from molflux.metrics import load_suite Split and evaluate the catboost model split_dataset = load_dataset('maomlab/AggregatorAdvisor', name = 'AggregatorAdvisor') split_featurised_dataset = featurise_dataset( split_dataset, column = "new SMILES", representations = load_representations_from_dicts([{"name": "morgan"}, {"name": "maccs_rdkit"}])) model = load_model_from_dict({ "name": "cat_boost_regressor", "config": { "x_features": ['new SMILES::morgan', 'new SMILES::maccs_rdkit'], "y_features": ['logP']}}) model.train(split_featurised_dataset["train"]) preds = model.predict(split_featurised_dataset["test"]) regression_suite = load_suite("regression") scores = regression_suite.compute( references=split_featurised_dataset["test"]['logP'], predictions=preds["cat_boost_regressor::logP"]) ### Data splits 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. ## Citation J. Med. Chem. 2015, 58, 17, 7076–7087 Publication Date:August 21, 2015 https://doi.org/10.1021/acs.jmedchem.5b01105