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A sparse QSRR model for predicting retention indices of essential oils based on robust screening approach

机译:一种稀疏的QSRR模型,用于预测基于鲁棒筛查方法的精油保留指标

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摘要

A robust screening approach and a sparse quantitative structure-retention relationship (QSRR) model for predicting retention indices (RIs) of 169 constituents of essential oils is proposed. The proposed approach is represented in two steps. First, dimension reduction was performed using the proposed modified robust sure independence screening (MR-SIS) method. Second, prediction of RIs was made using the proposed robust sparse QSRR with smoothly clipped absolute deviation (SCAD) penalty (RSQSRR). The RSQSRR model was internally and externally validated based on and the applicability domain. The validation results indicate that the model is robust and not due to chance correlation. The descriptor selection and prediction performance of the RSQSRR for training dataset outperform the other two used modelling methods. The RSQSRR shows the highest and the lowest. For the test dataset, the RSQSRR shows a high external validation value compared with the other methods, indicating its higher predictive ability. In conclusion, the results reveal that the proposed RSQSRR is an efficient approach for modelling high dimensional QSRRs and the method is useful for the estimation of RIs of essential oils that have not been experimentally tested.
机译:提出了一种鲁棒的筛选方法和用于预测用于预测索引(RIS)的精油169种成分的保留指数(RIS)的稀疏定量结构保持关系(QSRR)模型。所提出的方法是以两步代表的。首先,使用所提出的修改的稳健独立筛选(MR-SIS)方法进行尺寸减少。其次,使用所提出的强大稀疏QSRR预测RIS,具有平滑剪裁的绝对偏差(SCAD)惩罚(RSQSRR)。 RSQSRR模型基于和适用性域内部和外部验证。验证结果表明该模型是强大的,而不是由于机会相关性。用于训练数据集的RSQSRR的描述符选择和预测性能优于其他两个使用的建模方法。 RSQSRR显示最高和最低。对于测试数据集,与其他方法相比,RSQSRR显示了高外部验证值,表明其预测能力更高。总之,结果表明,所提出的RSQSRR是对高维QSRR的建模有效的方法,该方法可用于估计未经经验测试的精油的RIS。

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