Verma R P, Matthews E J
a Office of Cosmetics and Colors, Center for Food Safety and Applied Nutrition , US Food and Drug Administration , 5100 Paint Branch Parkway, College Park, MD 20740 , USA.
SAR QSAR Environ Res. 2015;26(5):383-95. doi: 10.1080/1062936X.2015.1039578. Epub 2015 May 13.
This report describes development of an in silico, expert rule-based method for the classification of chemicals into irritants or non-irritants to eye, as defined by the Draize test. This method was developed to screen data-poor cosmetic ingredient chemicals for eye irritancy potential, which is based upon exclusion rules of five physicochemical properties - molecular weight (MW), hydrophobicity (log P), number of hydrogen bond donors (HBD), number of hydrogen bond acceptors (HBA) and polarizability (Pol). These rules were developed using the ADMET Predictor software and a dataset of 917 eye irritant chemicals. The dataset was divided into 826 (90%) chemicals used for training set and 91 (10%) chemicals used for external validation set (every 10th chemical sorted by molecular weight). The sensitivity of these rules for the training and validation sets was 72.3% and 71.4%, respectively. These rules were also validated for their specificity using an external validation set of 2011 non-irritant chemicals to the eye. The specificity for this validation set was revealed as 77.3%. This method facilitates rapid screening and prioritization of data poor chemicals that are unlikely to be tested for eye irritancy in the Draize test.
本报告描述了一种基于计算机和专家规则的方法的开发,该方法可根据德赖兹试验的定义,将化学品分类为对眼睛有刺激性或无刺激性的物质。开发此方法是为了筛选数据匮乏的化妆品成分化学品的眼刺激性潜力,该方法基于五种物理化学性质的排除规则——分子量(MW)、疏水性(log P)、氢键供体数量(HBD)、氢键受体数量(HBA)和极化率(Pol)。这些规则是使用ADMET Predictor软件和917种眼刺激性化学品的数据集开发的。该数据集分为用于训练集的826种(90%)化学品和用于外部验证集的91种(10%)化学品(按分子量排序的每第10种化学品)。这些规则对训练集和验证集的敏感性分别为72.3%和71.4%。还使用2011种对眼睛无刺激性的化学品的外部验证集对这些规则的特异性进行了验证。该验证集的特异性为77.3%。此方法有助于对数据匮乏的化学品进行快速筛选和优先级排序,这些化学品不太可能在德赖兹试验中进行眼刺激性测试。