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Data Curation can Improve the Prediction Accuracy of Metabolic Intrinsic Clearance

机译:数据策策可以提高代谢内在间隙的预测准确性

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A key consideration at the screening stages of drug discovery is in vitro metabolic stability, often measured in human liver microsomes. Computational prediction models can be built using a large quantity of experimental data available from public databases, but these databases typically contain data measured using various protocols in different laboratories, raising the issue of data quality. In this study, we retrieved the intrinsic clearance (CLint) measurements from an open database and performed extensive manual curation. Then, chemical descriptors were calculated using freely available software, and prediction models were built using machine learning algorithms. The models trained on the curated data showed better performance than those trained on the non-curated data and achieved performance comparable to previously published models, showing the importance of manual curation in data preparation. The curated data were made available, to make our models fully reproducible.
机译:在药物发现的筛选阶段的关键考虑是体外代谢稳定性,通常在人肝微粒体中测量。 计算预测模型可以使用公共数据库中提供的大量实验数据构建,但这些数据库通常包含在不同实验室中使用各种协议测量的数据,提高数据质量问题。 在这项研究中,我们从开放数据库中检索了内在的清除(克林)测量并进行了广泛的手动策策。 然后,使用自由可用的软件计算化学描述符,使用机器学习算法建立预测模型。 在策策数据上培训的模型显示出比在非策策数据上培训的模型,并实现了与先前已发表的模型相当的性能,显示了在数据准备中的手工策委的重要性。 策划数据是可用的,使我们的模型完全可再现。

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