Toward regulatory acceptance and improving the prediction confidence of in silico approaches: a case study of genotoxicity

被引:9
作者
Tcheremenskaia, Olga [1 ]
Benigni, Romualdo [2 ]
机构
[1] Ist Super Sanita ISS, Environm & Hlth Dept, Rome, Italy
[2] Alpha Pretox, Rome, Italy
关键词
Genotoxicity; in silico; (Q)SAR; read-across; AOP; IATA; uncertainties; mutagenicity; weight-of-evidence; regulatory framework; ADVERSE OUTCOME PATHWAY; EXPERT KNOWLEDGE; SALMONELLA MUTAGENICITY; QSAR MODEL; IDENTIFICATION; CHEMICALS; SYSTEMS; CARCINOGENICITY; PERSPECTIVES; MANAGEMENT;
D O I
10.1080/17425255.2021.1938540
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Introduction: Genotoxicity is an imperative component of the human health safety assessment of chemicals. Its secure forecast is of the utmost importance for all health prevention strategies and regulations. Areas covered: We surveyed several types of alternative, animal-free approaches ((quantitative) structure-activity relationship (Q)SAR, read-across, Adverse Outcome Pathway, Integrated Approaches to Testing and Assessment) for genotoxicity prediction within the needs of regulatory frameworks, putting special emphasis on data quality and uncertainties issues. Expert opinion: (Q)SAR models and read-across approaches for in vitro bacterial mutagenicity have sufficient reliability for use in prioritization processes, and as support in regulatory decisions in combination with other types of evidence. (Q)SARs and read-across methodologies for other genotoxicity endpoints need further improvements and should be applied with caution. It appears that there is still large room for improvement of genotoxicity prediction methods. Availability of well-curated high-quality databases, covering a broader chemical space, is one of the most important needs. Integration of in silico predictions with expert knowledge, weight-of-evidence-based assessment, and mechanistic understanding of genotoxicity pathways are other key points to be addressed for the generation of more accurate and trustable results.
引用
收藏
页码:987 / 1005
页数:19
相关论文
共 97 条
[91]   How Adverse Outcome Pathways Can Aid the Development and Use of Computational Prediction Models for Regulatory Toxicology [J].
Wittwehr, Clemens ;
Aladjov, Hristo ;
Ankley, Gerald ;
Byrne, Hugh J. ;
de Knecht, Joop ;
Heinzle, Elmar ;
Klambauer, Guenter ;
Landesmann, Brigitte ;
Luijten, Mirjam ;
MacKay, Cameron ;
Maxwell, Gavin ;
Meek, M. E. ;
Paini, Alicia ;
Perkins, Edward ;
Sobanski, Tomasz ;
Villeneuve, Dan ;
Waters, Katrina M. ;
Whelan, Maurice .
TOXICOLOGICAL SCIENCES, 2017, 155 (02) :326-336
[92]  
Worth, 2010, EUR24427EN JRC
[93]   A framework for using structural, reactivity, metabolic and physicochemical similarity to evaluate the suitability of analogs for SAR-based toxicological assessments [J].
Wu, Shengde ;
Blackburn, Karen ;
Amburgey, Jack ;
Jaworska, Joanna ;
Federle, Thomas .
REGULATORY TOXICOLOGY AND PHARMACOLOGY, 2010, 56 (01) :67-81
[94]   New Publicly Available Chemical Query Language, CSRML, To Support Chemotype Representations for Application to Data Mining and Modeling [J].
Yang, Chihae ;
Tarkhov, Aleksey ;
Marusczyk, Joerg ;
Bienfait, Bruno ;
Gasteiger, Johann ;
Kleinoeder, Thomas ;
Magdziarz, Tomasz ;
Sacher, Oliver ;
Schwab, Christof H. ;
Schwoebel, Johannes ;
Terfloth, Lothar ;
Arvidson, Kirk ;
Richard, Ann ;
Worth, Andrew ;
Rothman, James .
JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2015, 55 (03) :510-528
[95]   Development of the adverse outcome pathway "alkylation of DNA in male premeiotic germ cells leading to heritable mutations" using the OECD's users' handbook supplement [J].
Yauk, Carole L. ;
Lambert, Iain B. ;
Meek, M. E. ;
Douglas, George R. ;
Marchetti, Francesco .
ENVIRONMENTAL AND MOLECULAR MUTAGENESIS, 2015, 56 (09) :724-750
[96]   Development of improved QSAR models for predicting the outcome of the in vivo micronucleus genetic toxicity assay [J].
Yoo, Jae Wook ;
Kruhlak, Naomi L. ;
Landry, Curran ;
Cross, Kevin P. ;
Sedykh, Alexander ;
Stavitskaya, Lidiya .
REGULATORY TOXICOLOGY AND PHARMACOLOGY, 2020, 113
[97]  
Zhou, 2018, COMPUT TOXICOL, V6, P16, DOI DOI 10.1016/j.comtox.2018.03.001