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Benchmark dose risk analysis with mixed-factor quantal data in environmental risk assessment

机译:基准剂量风险分析与环境风险评估中的混合因子量数据

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摘要

Benchmark analysis is a general risk estimation strategy for identifying the benchmark dose (BMD) past which the risk of exhibiting an adverse environmental response exceeds a fixed, target value of benchmark response. Estimation of BMD and of its lower confidence limit (BMDL) is well understood for the case of an adverse response to a single stimulus. In many environmental settings, however, one or more additional, secondary, qualitative factor(s) may collude to affect the adverse outcome, such that the risk changes with differential levels of the secondary factor. This article extends the single-dose BMD paradigm to a mixed-factor setting with a secondary qualitative factor possessing two levels. With focus on quantal-response data and using a generalized linear model with a complementary-log link function, we derive expressions for BMD and BMDL. We study the operating characteristics of six different multiplicity-adjusted approaches to calculate the BMDL, using Monte Carlo evaluations. We illustrate the calculations via an example dataset from environmental carcinogenicity testing.
机译:基准分析是识别基准剂量(BMD)过去的一般风险估算策略,其出现不利环境反应的风险超过了基准响应的固定目标值。对于对单一刺激的不良反应的情况,对BMD和其较低置信极限(BMDL)的估计很好地理解。然而,在许多环境环境中,一个或多个额外的次要的定性因子可能贡献以影响不利的结果,使得风险变化与次要因素的差异水平。本文将单剂量BMD范例扩展到混合因子设置,其具有具有两个级别的二级定性因子。专注于量子响应数据并使用具有互补日志链接功能的广义线性模型,我们推出了BMD和BMDL的表达式。我们研究了使用Monte Carlo评估来计算BMDL的六种不同多样性调整方法的操作特性。我们通过环境致癌性测试的示例数据集来说明计算。

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