Evaluation of TOPKAT, Toxtree, and Derek Nexus in Silico Models for Ocular Irritation and Development of a Knowledge-Based Framework To Improve the Prediction of Severe Irritation

被引:45
作者
Bhhatarai, Barun [1 ]
Wilson, Daniel M. [1 ]
Parks, Amanda K. [1 ]
Carney, Edward W. [1 ]
Spencer, Pamela J. [1 ]
机构
[1] Dow Chem Co USA, Toxicol & Environm Res & Consulting, 2020 Dow Ctr, Midland, MI 48674 USA
关键词
RABBIT EYE TEST; QSAR ANALYSIS; SKIN; CHEMICALS; ALTERNATIVES;
D O I
10.1021/acs.chemrestox.5b00531
中图分类号
R914 [药物化学];
学科分类号
100705 [微生物与生化药学];
摘要
Assessment of ocular irritation is an essential component of any risk assessment. A number of (Q)SARs and expert systems have been developed and are described in the literature. Here, we focus on three in silico models (TOPKAT, BfR. rulebase implemented in Toxtree, and Derek Nexus) and evaluate their performance using 1644 in-house and 123 European Centre for Toxicology and Ecotoxicology of Chemicals (ECETOC) compounds with existing in vivo ocular irritation classification data. Overall, the in silico models performed poorly. The best consensus predictions of severe ocular irritants were 52 and 65% for the in-house and ECETOC compounds, respectively. The prediction performance was improved by designing a knowledge-based chemical profiling framework that incorporated physicochemical properties and electrophilic reactivity mechanisms. The utility of the framework was assessed by applying it to the same test sets and three additional publicly available in vitro irritation data sets. The prediction of severe ocular irritants was improved to 73-77% if compounds were filtered on the basis of AlogP_MR (hydrophobicity with molar refractivity). The predictivity increased to 74-80% for compounds capable of preferentially undergoing hard electrophilic reactions, such as Schiff base formation and acylation. This research highlights the need for reliable ocular irritation models to be developed that take into account mechanisms of action and individual structural classes. It also demonstrates the value of profiling compounds with respect to their chemical reactivity and physicochemical properties that, in combination with existing models, results in better predictions for severe irritants.
引用
收藏
页码:810 / 822
页数:13
相关论文
共 32 条
[11]
A QUANTITATIVE STRUCTURE-ACTIVITY RELATIONSHIP (QSAR) INVESTIGATION OF A DRAIZE EYE IRRITATION DATABASE [J].
CRONIN, MTD ;
BASKETTER, DA ;
YORK, M .
TOXICOLOGY IN VITRO, 1994, 8 (01) :21-28
[12]
Draize JH, 1944, J PHARMACOL EXP THER, V82, P377
[13]
Mechanistic Category Formation for the Prediction of Respiratory Sensitization [J].
Enoch, S. J. ;
Roberts, D. W. ;
Cronin, M. T. D. .
CHEMICAL RESEARCH IN TOXICOLOGY, 2010, 23 (10) :1547-1555
[14]
ENSLEIN K, 1987, In Vitro Toxicology, V1, P129
[16]
Assessment of the eye irritating properties of chemicals by applying alternatives to the Draize rabbit eye test:: The use of QSARs and in vitro tests for the classification of eye irritation [J].
Gerner, I ;
Liebsch, M ;
Spielmann, H .
ATLA-ALTERNATIVES TO LABORATORY ANIMALS, 2005, 33 (03) :215-237
[17]
Prediction of hydrophobic (lipophilic) properties of small organic molecules using fragmental methods: An analysis of ALOGP and CLOGP methods [J].
Ghose, AK ;
Viswanadhan, VN ;
Wendoloski, JJ .
JOURNAL OF PHYSICAL CHEMISTRY A, 1998, 102 (21) :3762-3772
[18]
Herzler M., 2010, BFR DECISION SUPPORT
[19]
Weight factors in an Integrated Testing Strategy using adjusted OECD principles for (Q)SARs and extended Klimisch codes to decide on skin irritation classification [J].
Hulzebos, Etje ;
Gerner, Ingrid .
REGULATORY TOXICOLOGY AND PHARMACOLOGY, 2010, 58 (01) :131-144
[20]
Kay J.H., 1962, Journal of the Society of Cosmetic Chemists, V13, P281