Data-based review of QSARs for predicting genotoxicity: the state of the art

被引:33
作者
Benigni, Romualdo [1 ]
Bossa, Cecilia [2 ]
机构
[1] Alpha Pretox, Via Giovanni Pascoli 1, I-00184 Rome, Italy
[2] Ist Super Sanita, Dept Hlth & Environm, Viale Regina Elena 299, I-00161 Rome, Italy
关键词
IN-SILICO SYSTEMS; MUTAGENICITY PREDICTION; MODELS; IDENTIFICATION; COMBINATION; VALIDATION; TOXICOLOGY;
D O I
10.1093/mutage/gey028
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
With the aim of providing faster, more economical, animal-free tools to predict toxicity, quantitative structure-activity relationships (QSAR) approaches are increasingly applied to the chemical risk assessmentin particular genotoxicity and carcinogenicity. The more recent period of time has witnessed refinements of the predictive systems, with the collection of larger training sets and continued fine-tuning, together with an increased interest for the use of QSAR by regulatory authorities. This literature review provides an updated snapshot of the present state of the art in the evaluation of QSAR methods as applied to genotoxicity. Overall, the abilities of software tools to predict Ames test mutagenicity were comparable with previously published evaluations, with sensitivity ranging 0.72-0.96, and specificity ranging 0.65-0.86 in applications to public data sets. These values compare quite fairly with the intrinsic variability of the Ames test. A preliminary analysis indicated a consistency with the results of the Japan Division of Genetics and Mutagenesis, National Institute of Health Sciences of Japan (DGM/NIHS) Ames/QSAR international collaborative project. Applications to a variety of external test sets pointed to the need of further improvements of the coverage/representation of the whole chemical space. Combinations of tools showed that sensitivity is usually increased at the expense of a decrease in specificity, whereas the supervision by expert judgement generated more equilibrated results. This points to the existence of a large area of context-dependent expert knowledge, which has not been formalised yet and has the potential to substantially improve the prediction systems. The overall evidence suggests that (Q)SARs for the Ames test have sufficient reliability for use in prioritisation processes as well as to support regulatory decisions in combination with other evidence. The use of highly sensitive genotoxicity QSARs in tiered integrations with other tools is suggested as a mean to shortlist chemicals for which no further testing is necessary.
引用
收藏
页码:17 / 23
页数:7
相关论文
共 29 条
[1]   Principles and procedures for implementation of ICH M7 recommended (Q)SAR analyses [J].
Amberg, Alexander ;
Beilke, Lisa ;
Bercu, Joel ;
Bower, Dave ;
Brigo, Alessandro ;
Cross, Kevin P. ;
Custer, Laura ;
Dobo, Krista ;
Dowdy, Eric ;
Ford, Kevin A. ;
Glowienke, Susanne ;
Van Gompel, Jacky ;
Harvey, James ;
Hasselgren, Catrin ;
Honma, Masamitsu ;
Jolly, Robert ;
Kemper, Raymond ;
Kenyon, Michelle ;
Kruhlak, Naomi ;
Leavitt, Penny ;
Miller, Scott ;
Muster, Wolfgang ;
Nicolette, John ;
Plaper, Andreja ;
Powley, Mark ;
Quigley, Donald P. ;
Reddy, M. Vijayaraj ;
Spirkl, Hans-Peter ;
Stavitskaya, Lidiya ;
Teasdale, Andrew ;
Weiner, Sandy ;
Welch, Dennie S. ;
White, Angela ;
Wichard, Joerg ;
Myatt, Glenn J. .
REGULATORY TOXICOLOGY AND PHARMACOLOGY, 2016, 77 :13-24
[2]  
[Anonymous], 2015, Students, Computers and Learning [Internet], P1, DOI [DOI 10.1787/9789264239555EN, 10.1787/9789264239555en%5Cnhttp://www.oecd-ilibrary.org/education/students-computers-andlearning_9789264239555-en]
[3]   Mutagenicity assessment strategy for pharmaceutical intermediates to aid limit setting for occupational exposure [J].
Araya, Selene ;
Loysin-Barle, Ester ;
Glowienke, Susanne .
REGULATORY TOXICOLOGY AND PHARMACOLOGY, 2015, 73 (02) :515-520
[4]   Comparison of In Silico Models for Prediction of Mutagenicity [J].
Bakhtyari, Nazanin G. ;
Raitano, Giuseppa ;
Benfenati, Emilio ;
Martin, Todd ;
Young, Douglas .
JOURNAL OF ENVIRONMENTAL SCIENCE AND HEALTH PART C-ENVIRONMENTAL CARCINOGENESIS & ECOTOXICOLOGY REVIEWS, 2013, 31 (01) :45-66
[5]   Evaluation of a statistics-based Ames mutagenicity QSAR model and interpretation of the results obtained [J].
Barber, Chris ;
Cayley, Alex ;
Hanser, Thierry ;
Harding, Alex ;
Heghes, Crina ;
Vessey, Jonathan D. ;
Werner, Stephane ;
Weiner, Sandy K. ;
Wichard, Joerg ;
Giddings, Amanda ;
Glowienke, Susanne ;
Parenty, Alexis ;
Brigo, Alessandro ;
Spirkl, Hans-Peter ;
Amberg, Alexander ;
Kemper, Ray ;
Greene, Nigel .
REGULATORY TOXICOLOGY AND PHARMACOLOGY, 2016, 76 :7-20
[6]   Nongenotoxic Carcinogenicity of Chemicals: Mechanisms of Action and Early Recognition through a New Set of Structural Alerts [J].
Benigni, Romualdo ;
Bossa, Cecilia ;
Tcheremenskaia, Olga .
CHEMICAL REVIEWS, 2013, 113 (05) :2940-2957
[7]   Mechanisms of Chemical Carcinogenicity and Mutagenicity: A Review with Implications for Predictive Toxicology [J].
Benigni, Romualdo ;
Bossa, Cecilia .
CHEMICAL REVIEWS, 2011, 111 (04) :2507-2536
[8]   Predictive toxicology: Benchmarking molecular descriptors and statistical methods [J].
Feng, J ;
Lurati, L ;
Ouyang, H ;
Robinson, T ;
Wang, YY ;
Yuan, SL ;
Young, SS .
JOURNAL OF CHEMICAL INFORMATION AND COMPUTER SCIENCES, 2003, 43 (05) :1463-1470
[9]  
Franke R., 2003, Quantitative structure-activity relationship (QSAR) models of mutagens and carcinogens, P1
[10]   A practical application of two in silico systems for identification of potentially mutagenic impurities [J].
Greene, Nigel ;
Dobo, Krista L. ;
Kenyon, Michelle O. ;
Cheung, Jennifer ;
Munzner, Jennifer ;
Sobol, Zhanna ;
Sluggett, Gregory ;
Zelesky, Todd ;
Sutter, Andreas ;
Wichard, Joerg .
REGULATORY TOXICOLOGY AND PHARMACOLOGY, 2015, 72 (02) :335-349