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Expectation-Maximization Model for Substitution of Missing Values Characterizing Greenness of Organic Solvents

机译:期望最大化模型替代有机溶剂绿色特征的缺失值

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摘要

Organic solvents are ubiquitous in chemical laboratories and the Green Chemistry trend forces their detailed assessments in terms of greenness. Unfortunately, some of them are not fully characterized, especially in terms of toxicological endpoints that are time consuming and expensive to be determined. Missing values in the datasets are serious obstacles, as they prevent the full greenness characterization of chemicals. A featured method to deal with this problem is the application of Expectation-Maximization algorithm. In this study, the dataset consists of 155 solvents that are characterized by 13 variables is treated with Expectation-Maximization algorithm to predict missing data for toxicological endpoints, bioavailability, and biodegradability data. The approach may be particularly useful for substitution of missing values of environmental, health, and safety parameters of new solvents. The presented approach has high potential to deal with missing values, while assessing environmental, health, and safety parameters of other chemicals.
机译:有机溶剂在化学实验室中无处不在,绿色化学趋势迫使他们对绿色进行详细评估。不幸的是,它们中的一些还没有被完全表征,特别是在毒理学终点方面,这是耗时且确定昂贵的。数据集中的缺失值是严重的障碍,因为它们阻止了化学物质的全面绿色表征。解决此问题的一种有特色的方法是期望最大化算法的应用。在这项研究中,数据集由155种溶剂组成,这些溶剂的特征是13个变量,并使用Expectation-Maximization算法处理,以预测毒理学终点,生物利用度和生物降解性数据的缺失数据。该方法对于替代新溶剂的环境,健康和安全参数缺失值可能特别有用。在评估其他化学品的环境,健康和安全参数的同时,所提出的方法在处理缺失值方面具有很高的潜力。

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