Hunan Engineering Research Center of Water Security Technology and Application, Key Laboratory of Building Safety and Energy Efficiency, Ministry of Education, Hunan University, Changsha 410082, China.
Aropha Inc., Bedford, Ohio 44146, United States.
Environ Sci Technol. 2024 Jul 2;58(26):11504-11513. doi: 10.1021/acs.est.4c01763. Epub 2024 Jun 15.
Knowing odor sensory attributes of odorants lies at the core of odor tracking when addressing waterborne odor issues. However, experimental determination covering tens of thousands of odorants in authentic water is not pragmatic due to the complexity of odorant identification and odor evaluation. In this study, we propose the first machine learning (ML) model to predict odor perception/threshold aiming at odorants in water, which can use either molecular structure or MS spectra as input features. We demonstrate that model performance using MS spectra is nearly as good as that using unequivocal structures, both with outstanding accuracy. We particularly show the model's robustness in predicting odor sensory attributes of unidentified chemicals by using the experimentally obtained MS spectra from nontarget analysis on authentic water samples. Interpreting the developed models, we identify the intricate interaction of functional groups as the predominant influence factor on odor sensory attributes. We also highlight the important roles of carbon chain length, molecular weight, etc., in the inherent olfactory mechanisms. These findings streamline the odor sensory attribute prediction and are crucial advancements toward credible tracking and efficient control of off-odors in water.
当涉及到解决水异味问题时,了解气味物质的气味感官属性是进行气味追踪的核心。然而,由于气味物质识别和气味评价的复杂性,对真实水中数以万计的气味物质进行实验测定是不切实际的。在本研究中,我们提出了第一个用于预测水中气味物质感知/阈值的机器学习 (ML) 模型,该模型可以使用分子结构或 MS 谱作为输入特征。我们证明了使用 MS 谱的模型性能几乎与使用明确结构的模型性能一样好,两者都具有出色的准确性。我们特别展示了该模型在预测真实水样中非目标分析中获得的未知化学物质的气味感官属性方面的稳健性。通过解释所开发的模型,我们确定了官能团的复杂相互作用是影响气味感官属性的主要因素。我们还强调了碳链长度、分子量等在内在嗅觉机制中的重要作用。这些发现简化了气味感官属性预测,是对水中异味进行可信追踪和有效控制的重要进展。