结合群贡献法和半监督学习建立预测水污染物羟基自由基速率常数的机器学习模型

IF 11.3 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL
Zhao Liu, Lanyu Shang, Kuan Huang, Zhenrui Yue, Alan Y. Han, Dong Wang, Huichun Zhang
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引用次数: 0

摘要

机器学习是预测许多有机化合物与羟基自由基(HO-)反应速率常数的有效工具。以前报道的模型已经取得了相对较好的性能,但由于数据稀少(1400 条记录),适用范围(AD)受到很大限制。为了解决这个问题,我们整理了一个更大的实验数据集(原始数据集),其中包含 2358 条动力学记录。然后,我们采用了分组贡献法(GCM)和半监督学习(SSL)策略来添加新的数据点,旨在有效扩展模型的 AD,同时提高模型性能。结果表明,GCM 提高了模型对 AD 外化学品的性能,而 SSL 则扩大了模型的 AD。在纳入 147,168 个新数据点后,最终模型在测试集上的 R2 = 0.77、均方根误差 = 0.32 和均方根误差 = 0.24。重要的是,与仅基于原始数据集开发的模型相比,AD 扩大了 117%,最终模型可可靠地应用于 DSSTox 数据库中的 56 万多种化学物质。进一步的模型解释结果表明,该模型是在正确 "理解 "关键取代基和反应位点对 HO- 的影响的基础上进行预测的。这项研究提供了一种增强数据集的有效方法,这对提高 ML 模型性能和扩大 AD 非常重要。最终模型已通过免费在线预测器广泛提供。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Combining Group Contribution Method and Semisupervised Learning to Build Machine Learning Models for Predicting Hydroxyl Radical Rate Constants of Water Contaminants

Combining Group Contribution Method and Semisupervised Learning to Build Machine Learning Models for Predicting Hydroxyl Radical Rate Constants of Water Contaminants
Machine learning is an effective tool for predicting reaction rate constants for many organic compounds with the hydroxyl radical (HO). Previously reported models have achieved relatively good performance, but due to scarce data (<1400 records), the applicability domain (AD) has been significantly limited. To address this limitation, we curated a much larger experimental data set (Primary data set), which contains 2358 kinetic records. We then employed both the group contribution method (GCM) and a semisupervised learning (SSL) strategy to add new data points, aiming to effectively expand the model’s AD while improving model performance. The results indicated that GCM improved the model’s performance for chemicals outside the AD, while SSL expanded the model’s AD. The final model, after incorporating 147,168 new data points, achieved an R2 = 0.77, root-mean-square-error = 0.32, and mean-absolute-error = 0.24 on the test set. Importantly, the AD was expanded by 117% compared to the model developed solely based on the Primary data set, and the final model can be reliably applied to more than 560,000 chemicals from the DSSTox database. Further model interpretation results indicated that the model made predictions based on a correct “understanding” of the impact of key substituents and reactive sites toward HO. This research provides an effective method for augmenting data sets, which is important in improving ML model performance and expanding AD. The final model has been made widely accessible through a free online predictor.
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来源期刊
环境科学与技术
环境科学与技术 环境科学-工程:环境
CiteScore
17.50
自引率
9.60%
发文量
12359
审稿时长
2.8 months
期刊介绍: Environmental Science & Technology (ES&T) is a co-sponsored academic and technical magazine by the Hubei Provincial Environmental Protection Bureau and the Hubei Provincial Academy of Environmental Sciences. Environmental Science & Technology (ES&T) holds the status of Chinese core journals, scientific papers source journals of China, Chinese Science Citation Database source journals, and Chinese Academic Journal Comprehensive Evaluation Database source journals. This publication focuses on the academic field of environmental protection, featuring articles related to environmental protection and technical advancements.
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