Dawson S V
Environ Health Perspect. 1983 Oct;52:247-53. doi: 10.1289/ehp.8352247.
Uncertainties in the collection and assessment of scientific information make ambient air quality standard setting difficult. Uncertainties occur in the estimation of the medical parameters under test due to the inherent random variability encountered in sampling the parameters. The most common method of dealing with random variability is statistical significance testing. The main caution offered in regard to that analysis is to avoid calling a nonsignificant result negative, unless the circumstances are such that the smallest effect which indicates likely harm to health could have been detected with sufficiently high probability. Uncertainties also play a crucial role in evaluating the implications that even statistically significant test results have for human health. A signal-detection model, developed to explain expert performance in evaluating the results of such diagnostic tests as X-rays, is presented as an analogy for the situation facing experts who are evaluating the implications of health data that is being considered for use in setting a standard. If criteria are too strict for accepting data as evidence of harm to health, then it is argued that, as a consequence, the decision process will not have sufficient ability to discriminate against false-negative results. False-negative results are those that incorrectly conclude there is no threat when, in fact, a particular level of pollutant is actually a threat to health.
科学信息收集与评估中的不确定性使得制定环境空气质量标准变得困难。由于在对参数进行采样时会遇到固有的随机变异性,因此在测试医学参数的估计中会出现不确定性。处理随机变异性最常用的方法是统计显著性检验。关于该分析给出的主要警示是,除非在特定情况下能够以足够高的概率检测到表明可能对健康造成危害的最小影响,否则避免将不显著的结果称为阴性结果。不确定性在评估即使具有统计显著性的测试结果对人类健康的影响时也起着关键作用。提出了一种信号检测模型,该模型用于解释专家在评估诸如X光等诊断测试结果时的表现,以此类比评估正考虑用于制定标准的健康数据影响的专家所面临的情况。如果接受数据作为健康危害证据的标准过于严格,那么有人认为,结果是决策过程将没有足够的能力区分假阴性结果。假阴性结果是指那些在实际上特定水平的污染物对健康构成威胁时却错误地得出没有威胁结论的结果。