Bacterial mutagenicity test data: collection by the task force of the Japan pharmaceutical manufacturers association.

IF 2.7 4区 医学 Q2 GENETICS & HEREDITY
Atsushi Hakura, Takumi Awogi, Toshiyuki Shiragiku, Atsushi Ohigashi, Mika Yamamoto, Kayoko Kanasaki, Hiroaki Oka, Yasuaki Dewa, Shunsuke Ozawa, Kouji Sakamoto, Tatsuya Kato, Eiji Yamamura
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引用次数: 2

Abstract

Background: Ames test is used worldwide for detecting the bacterial mutagenicity of chemicals. In silico analyses of bacterial mutagenicity have recently gained acceptance by regulatory agencies; however, current in silico models for prediction remain to be improved. The Japan Pharmaceutical Manufacturers Association (JPMA) organized a task force in 2017 in which eight Japanese pharmaceutical companies had participated. The purpose of this task force was to disclose a piece of pharmaceutical companies' proprietary Ames test data.

Results: Ames test data for 99 chemicals of various chemical classes were collected for disclosure in this study. These chemicals are related to the manufacturing process of pharmaceutical drugs, including reagents, synthetic intermediates, and drug substances. The structure-activity (mutagenicity) relationships are discussed in relation to structural alerts for each chemical class. In addition, in silico analyses of these chemicals were conducted using a knowledge-based model of Derek Nexus (Derek) and a statistics-based model (GT1_BMUT module) of CASE Ultra. To calculate the effectiveness of these models, 89 chemicals for Derek and 54 chemicals for CASE Ultra were selected; major exclusions were the salt form of four chemicals that were tested both in the salt and free forms for both models, and 35 chemicals called "known" positives or negatives for CASE Ultra. For Derek, the sensitivity, specificity, and accuracy were 65% (15/23), 71% (47/66), and 70% (62/89), respectively. The sensitivity, specificity, and accuracy were 50% (6/12), 60% (25/42), and 57% (31/54) for CASE Ultra, respectively. The ratio of overall disagreement between the CASE Ultra "known" positives/negatives and the actual test results was 11% (4/35). In this study, 19 out of 28 mutagens (68%) were detected with TA100 and/or TA98, and 9 out of 28 mutagens (32%) were detected with either TA1535, TA1537, WP2uvrA, or their combination.

Conclusion: The Ames test data presented here will help avoid duplicated Ames testing in some cases, support duplicate testing in other cases, improve in silico models, and enhance our understanding of the mechanisms of mutagenesis.

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细菌致突变性试验数据:由日本药品制造商协会工作组收集。
背景:Ames试验在世界范围内用于检测化学药品的细菌致突变性。细菌致突变性的计算机分析最近得到了监管机构的认可;然而,目前用于预测的计算机模型仍有待改进。日本制药企业协会(JPMA)于2017年组织了一个工作组,有8家日本制药公司参加。该工作组的目的是披露一份制药公司专有的Ames测试数据。结果:本研究收集了99种不同化学类别的化学物质的Ames试验数据进行披露。这些化学品与药品的生产过程有关,包括试剂、合成中间体和原料药。结构-活性(致突变性)的关系,讨论了有关结构警报的每个化学类。此外,使用基于Derek Nexus (Derek)知识的模型和基于CASE Ultra的统计模型(GT1_BMUT模块)对这些化学物质进行了计算机分析。为了计算这些模型的有效性,Derek选择了89种化学物质,CASE Ultra选择了54种化学物质;主要排除的是四种化学物质的盐态,这四种化学物质在两种模型中都以盐态和游离态进行了测试,还有35种化学物质在CASE Ultra中被称为“已知”阳性或阴性。Derek的敏感性、特异性和准确性分别为65%(15/23)、71%(47/66)和70%(62/89)。CASE Ultra的敏感性、特异性和准确性分别为50%(6/12)、60%(25/42)和57%(31/54)。CASE Ultra“已知”阳性/阴性与实际测试结果之间的总体不一致比例为11%(4/35)。在本研究中,28个突变原中有19个(68%)被TA100和/或TA98检测到,28个突变原中有9个(32%)被TA1535、TA1537、WP2uvrA或它们的组合检测到。结论:本文提供的Ames试验数据将有助于避免某些病例的重复Ames试验,支持其他病例的重复试验,改进计算机模型,增强我们对诱变机制的理解。
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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来源期刊
Genes and Environment
Genes and Environment Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
4.00
自引率
0.00%
发文量
24
审稿时长
27 weeks
期刊介绍: Genes and Environment is an open access, peer-reviewed journal that aims to accelerate communications among global scientists working in the field of genes and environment. The journal publishes articles across a broad range of topics including environmental mutagenesis and carcinogenesis, environmental genomics and epigenetics, molecular epidemiology, genetic toxicology and regulatory sciences. Topics published in the journal include, but are not limited to, mutagenesis and anti-mutagenesis in bacteria; genotoxicity in mammalian somatic cells; genotoxicity in germ cells; replication and repair; DNA damage; metabolic activation and inactivation; water and air pollution; ROS, NO and photoactivation; pharmaceuticals and anticancer agents; radiation; endocrine disrupters; indirect mutagenesis; threshold; new techniques for environmental mutagenesis studies; DNA methylation (enzymatic); structure activity relationship; chemoprevention of cancer; regulatory science. Genetic toxicology including risk evaluation for human health, validation studies on testing methods and subjects of guidelines for regulation of chemicals are also within its scope.
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