--- license: mit task_categories: - tabular-classification - tabular-regression language: - en tags: - HTS pretty_name: Assay-Interfering-Compounds Finder size_categories: - 1M- The assay-interfering-compounds finder consists of 17 different datasets. The datasets are uploaded after molecular sanitization using RDKit and MolVS. citation: >- @article{Boldini2024, title = {Machine Learning Assisted Hit Prioritization for High Throughput Screening in Drug Discovery}, ISSN = {2374-7951}, url = {http://dx.doi.org/10.1021/acscentsci.3c01517}, DOI = {10.1021/acscentsci.3c01517}, journal = {ACS Central Science}, publisher = {American Chemical Society (ACS)}, author = {Boldini, Davide and Friedrich, Lukas and Kuhn, Daniel and Sieber, Stephan A.}, year = {2024}, month = mar } config_names: - Boldini2024 configs: - config_name: Boldini2024 data_files: - GPCR_sanitized.csv - GPCR2_sanitized.csv - GPCR3_sanitized.csv - channel_atp_sanitized.csv - cysteine_protease_sanitized.csv - IonChannel_sanitized.csv - IonChannel2_sanitized.csv - IonChannel3_sanitized.csv - kinase_sanitized.csv - serine_sanitized.csv - splicing_sanitized.csv - transcrption_sanitized.csv - transcription2_sanitized.csv - transcription3_sanitized.csv - transporter_sanitized.csv - ubiquitin_sanitized.csv - zinc_finger_sanitized.csv dataset_info: - config_name: GPCR_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: GPCR2_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: GPCR3_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: channel_atp_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: cysteine_protease_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: IonChannel_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: IonChannel2_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: IonChannel3_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: kinase_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: serine_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: splicing_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: transcription_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: transcription2_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: transcription3_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: transporter_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: ubiquitin_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 - config_name: zinc_finger_sanitized features: - name: "new SMILES" dtype: string - name: "Primary" dtype: int64 - name: "Score" dtype: float64 - name: "Confirmatory" dtype: float64 --- # Boldini2024 (Assay-Interfering-Compounds Finder) 17 Datasets that are used to employ Minimum Variance Sampling Analysis (MVS-A) to find Assay Interfering Compounds (AIC) in High Throughput Screening data. In this study, they present the first data-driven approach to simultaneously detect assay interferents and prioritize true bioactive compounds. Their method enables false positive and true positive detection without relying on prior screens or assay interference mechanisms, making it applicable to any high throughput screening campaign. The datasets uploaded to our Hugging Face repository have been sanitized using RDKit and MolVS. If you want to try these processes with the original dataset, please follow the instructions in the [Processing Script.py]() file in the maomlab/Boldini2024. # Citation ACS Cent. Sci. 2024, 10, 4, 823–832 Publication Date:March 15, 2024 https://doi.org/10.1021/acscentsci.3c01517