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基于残基相互作用网络的 ABCG2 外排化合物识别的机器学习模型。

Machine learning models based on residue interaction network for ABCG2 transportable compounds recognition.

机构信息

School of Pharmacy, Lanzhou University, Lanzhou, 730000, China.

School of Information Science & Engineering, Lanzhou University, Lanzhou, 730000, China.

出版信息

Environ Pollut. 2023 Nov 15;337:122620. doi: 10.1016/j.envpol.2023.122620. Epub 2023 Sep 26.

DOI:10.1016/j.envpol.2023.122620
PMID:37769706
Abstract

As the one of the most important protein of placental transport of environmental substances, the identification of ABCG2 transport molecules is the key step for assessing the risk of placental exposure to environmental chemicals. Here, residue interaction network (RIN) was used to explore the difference of ABCG2 binding conformations between transportable and non-transportable compounds. The RIN were treated as a kind of special quantitative data of protein conformation, which not only reflected the changes of single amino acid conformation in protein, but also indicated the changes of distance and action type between amino acids. Based on the quantitative RIN, four machine learning algorithms were applied to establish the classification and recognition model for 1100 compounds with transported by ABCG2 potential. The random forest (RF) models constructed with RIN presented the best and satisfied predictive ability with an accuracy of training set of 0.97 and the test set of 0.96 respectively. In conclusion, the construction of residue interaction network provided a new perspective for the quantitative characterization of protein conformation and the establishment of prediction models for transporter molecular recognition. The ABCG2 transport molecular recognition model based on residue interaction network provides a possible way for screening environmental chemistry transported through placenta.

摘要

作为胎盘环境物质转运的最重要的蛋白之一,ABCG2 转运分子的鉴定是评估胎盘暴露于环境化学物质风险的关键步骤。在这里,残基相互作用网络(RIN)被用于探索可转运和不可转运化合物之间 ABCG2 结合构象的差异。RIN 被视为一种特殊的蛋白质构象定量数据,不仅反映了蛋白质中单氨基酸构象的变化,还表明了氨基酸之间距离和作用类型的变化。基于定量 RIN,应用了四种机器学习算法来建立具有 ABCG2 转运潜力的 1100 种化合物的分类和识别模型。使用 RIN 构建的随机森林(RF)模型表现出最佳和满意的预测能力,训练集的准确率为 0.97,测试集的准确率为 0.96。总之,残基相互作用网络的构建为蛋白质构象的定量描述和转运分子识别预测模型的建立提供了一个新的视角。基于残基相互作用网络的 ABCG2 转运分子识别模型为筛选通过胎盘转运的环境化学物质提供了一种可能的方法。

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