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README.md
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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.
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The datasets uploaded to our Hugging Face repository have been sanitized using RDKit and MolVS.
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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.
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# Citation
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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.
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The datasets uploaded to our Hugging Face repository have been sanitized using RDKit and MolVS.
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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/Boldini2024/blob/main/Boldini2024%20Preprocessing.py) file in the maomlab/Boldini2024.
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# Citation
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