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ESTIMATING HAZARDOUS CONCENTRATIONS BY AN INFORMATIVE BAYESIAN APPROACH

机译:用信息贝叶斯方法估算危险浓度

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The species sensitivity distribution (SSD) approach is recommended for assessing chemical risk. In practice, however, it can be used only for the few substances for which large-scale ecotoxicological results are available. Indeed, the statistical frequentist approaches used for building SSDs and for deriving hazardous concentrations (HC5) inherently require extensive data to guarantee goodness-of-fit. An alternative Bayesian approach to estimating HC5 from small data sets was developed. In contrast to the noninformative Bayesian approaches that have been tested to date, the authors' method used informative priors related to the expected species sensitivity variance. This method was tested on actual ecotoxicological data for 21 well-informed substances. A cross-validation compared the HC5 values calculated using frequentist approaches with the results of our Bayesian approach, using both complete and truncated data samples. The authors' informative Bayesian approach was compared with noninformative Bayesian methods published in the past, including those incorporating loss functions. The authors found that even for the truncated sample the HC5 values derived from the informative Bayesian approach were generally close to those obtained using the frequentist approach, which requires more data. In addition, the probability of overestimating an HC5 is rather limited. More robust HC5 estimates can be practically obtained from additional data without impairing regulatory protection levels, which will encourage collecting new ecotoxicological data. In conclusion, the Bayesian informative approach was shown to be relatively robust and could be a good surrogate approach for deriving HC5 values from small data sets. Environ. Toxicol. Chem.
机译:建议使用物种敏感度分布(SSD)方法评估化学风险。然而,实际上,它只能用于少数具有大规模生态毒理学结果的物质。确实,用于构建SSD和推导危险浓度(HC5)的统计惯常方法固有地需要大量数据来保证拟合优度。开发了一种从小数据集中估算HC5的贝叶斯方法。与迄今为止已经测试过的非信息贝叶斯方法相反,作者的方法使用了与预期物种敏感性方差有关的信息先验。对该方法进行了实际的21种信息充分的物质的生态毒理学数据测试。交叉验证将使用频繁方法计算的HC5值与使用完整和截断数据样本的贝叶斯方法的结果进行了比较。将作者的信息贝叶斯方法与过去发布的非信息贝叶斯方法进行了比较,包括那些包含损失函数的方法。作者发现,即使对于截断的样本,从信息性贝叶斯方法得出的HC5值通常也与使用频繁方法获得的HC5值接近,这需要更多数据。此外,高估HC5的可能性非常有限。实际上,可以从其他数据中获得更可靠的HC5估算值,而不会损害监管保护水平,这将鼓励收集新的生态毒理学数据。总之,事实证明,贝叶斯信息方法相对健壮,可以作为从小数据集中推算HC5值的良好替代方法。环境。毒药。化学

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