A k-NN algorithm for predicting the oral sub-chronic toxicity in the rat.

ALTEX Pub Date : 2014-01-01 Epub Date: 2014-07-10 DOI:10.14573/altex.1405091
Domenico Gadaleta, Fabiola Pizzo, Anna Lombardo, Angelo Carotti, Sylvia E Escher, Orazio Nicolotti, Emilio Benfenati
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引用次数: 18

Abstract

Repeated dose toxicity is of the utmost importance to characterize the toxicological profile of a chemical after repeated administration. Its evaluation refers to the Lowest-Observed-(Adverse)-Effect-Level (LO(A)EL) explicitly requested in several regulatory contexts, such as REACH and EC Regulation 1223/2009 on cosmetic products. So far in vivo tests have been the sole viable option to assess repeated dose toxicity. We report a customized k-Nearest Neighbors approach for predicting sub-chronic oral toxicity in rats. A training set of 254 chemicals was used to derive models whose robustness was challenged through leave-one-out cross-validation. Their predictive power was evaluated on an external dataset comprising 179 chemicals. Despite the intrinsically heterogeneous nature of the data, our models give promising results, with q²≥0.632 and external r²≥0.543. The confidence in prediction was ensured by implementing restrictive user-adjustable rules excluding suspicious chemicals irrespective of the goodness in their prediction. Comparison with the very few LO(A)EL predictive models in the literature indicates that the results of the present analysis can be valuable in prioritizing the safety assessment of chemicals and thus making safe decisions and justifying waiving animal tests according to current regulations concerning chemical safety.

预测大鼠口腔亚慢性毒性的k-NN算法。
重复剂量毒性是描述一种化学品在重复给药后的毒理学特征的最重要的因素。其评估是指在几个监管环境中明确要求的最低观察(不良)效应水平(LO(A)EL),例如REACH和EC法规1223/2009中关于化妆品的规定。到目前为止,体内试验是评估重复剂量毒性的唯一可行选择。我们报告了一种用于预测大鼠亚慢性口腔毒性的定制k近邻方法。使用254种化学物质的训练集来推导模型,其鲁棒性通过留一交叉验证受到挑战。在包含179种化学物质的外部数据集上评估了它们的预测能力。尽管数据本质上是异构的,但我们的模型给出了有希望的结果,q²≥0.632,外部r²≥0.543。通过实施限制性的用户可调节规则来确保预测的信心,排除可疑化学品,而不管其预测的好坏。与文献中很少的LO(A)EL预测模型进行比较表明,本分析的结果对于确定化学品安全评估的优先顺序,从而做出安全决策和根据现行化学品安全法规证明放弃动物试验是有价值的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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