机器学习能够准确预测药物代谢过程中醌的形成。

IF 3.8 3区 医学 Q2 CHEMISTRY, MEDICINAL
Hardeep Sandhu,  and , Prabha Garg*, 
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引用次数: 0

摘要

新陈代谢使药物更具亲水性,从而有助于从人体中清除药物。有时,药物可以在代谢过程中被生物活化为高反应性代谢产物或中间体。这些反应性代谢产物通常是与药物相关的毒性的原因。在药物发现的最初阶段,鉴定候选药物的反应性代谢产物非常有帮助。醌是一种软性亲电试剂,在代谢过程中作为反应中间体产生。醌类占反应性代谢产物的40%以上。在这项工作中,510个分子的可靠数据集被用于开发基于机器学习和深度学习的预测模型,以预测醌类代谢物的形成。为了表示分子,使用了二维(2D)描述符、PubChem指纹、电拓扑状态(E状态)指纹和基于代谢反应性的描述符。使用102个分子的未接触测试集,将开发的模型与现有的Xenosite网络服务器进行比较。最佳模型的准确率为86.27%,而Xenosite服务器在测试集上的准确率仅为52.94%。描述符分析表明,分子中存在大量极性部分可以防止醌类代谢物的形成。此外,芳环中氮原子的存在以及代谢组群V51、V52和V53(SMARTCyp描述符)的存在降低了醌形成的概率。最后,开发了一个基于最佳机器学习模型的工具,该工具可在http://14.139.57.41/quinonepred/.
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine Learning Enables Accurate Prediction of Quinone Formation during Drug Metabolism

Machine Learning Enables Accurate Prediction of Quinone Formation during Drug Metabolism

Machine Learning Enables Accurate Prediction of Quinone Formation during Drug Metabolism

Metabolism helps in the elimination of drugs from the human body by making them more hydrophilic. Sometimes, drugs can be bioactivated to highly reactive metabolites or intermediates during metabolism. These reactive metabolites are often responsible for the toxicities associated with the drugs. Identification of reactive metabolites of drug candidates can be very helpful in the initial stages of drug discovery. Quinones are soft electrophiles that are generated as reactive intermediates during metabolism. Quinones make up more than 40% of the reactive metabolites. In this work, a reliable data set of 510 molecules was used to develop machine learning and deep learning-based predictive models to predict the formation of quinone-type metabolites. For representing molecules, two-dimensional (2D) descriptors, PubChem fingerprints, electro-topological state (E-state) fingerprints, and metabolic reactivity-based descriptors were used. Developed models were compared to the existing Xenosite web server using the untouched test set of 102 molecules. The best model achieved an accuracy of 86.27%, while the Xenosite server could achieve an accuracy of only 52.94% on the test set. Descriptor analysis revealed that the presence of greater numbers of polar moieties in a molecule can prevent the formation of quinone-type metabolites. In addition, the presence of a nitrogen atom in an aromatic ring and the presence of metabolophores V51, V52, and V53 (SMARTCyp descriptors) decrease the probability of quinone formation. Finally, a tool based on the best machine learning models was developed, which is accessible at http://14.139.57.41/quinonepred/.

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来源期刊
CiteScore
7.90
自引率
7.30%
发文量
215
审稿时长
3.5 months
期刊介绍: Chemical Research in Toxicology publishes Articles, Rapid Reports, Chemical Profiles, Reviews, Perspectives, Letters to the Editor, and ToxWatch on a wide range of topics in Toxicology that inform a chemical and molecular understanding and capacity to predict biological outcomes on the basis of structures and processes. The overarching goal of activities reported in the Journal are to provide knowledge and innovative approaches needed to promote intelligent solutions for human safety and ecosystem preservation. The journal emphasizes insight concerning mechanisms of toxicity over phenomenological observations. It upholds rigorous chemical, physical and mathematical standards for characterization and application of modern techniques.
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