Risk assessment for complex chemical exposure in aquatic systems: the problem of estimating interactive effects.

J S Gray
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Abstract

The traditional, but little used, way of assessing effects of the interaction between known chemicals is to use factorial experimental designs. Such designs allow one to test for less than additive (antagonistic) and greater than additive (synergistic) effects. Whilst synergism can be demonstrated in such experiments the concentrations at which synergistic effects occur are extremely high and are unlikely to occur in nature. Recently developed techniques allow one to measure directly the effects of combined stressors in the field. These biological effect techniques range from tests on individual organisms to tests on communities. At the biochemical level the tests can indicate that the organism has been exposed to certain groups of chemicals (for example cytochrome P-450 enzymes responding to PAHs or metallothioneins responding to heavy metals). At the community level of organisation there are highly sensitive statistical techniques that indicate clearly the combined effect of stressors. The effects of oil exploration and production on benthic communities in the North Sea can be linked to concentrations of chemicals. However, such relationships are correlative and do not necessarily indicate cause and effect. Experiments are needed to test the hypotheses generated concerning the interactive effects of chemicals on the benthic species. The statistical analyses do, however, show which species have been affected and their relative sensitivity to chemical and physical disturbances. Such species are preferable to the traditional "laboratory weeds" usually utilised. A strategy for risk assessment is needed that combines an experimental protocol for making predictions, from laboratory experiments, of likely effects to be found in the field. This should be combined with field monitoring that allows one to detect changes that were not predicted. At present most monitoring designs cannot adequately detect trends. This is due to concentration on Type-I statistical errors rather than properly considering Type-II errors. By concentrating on Type-II errors one can design monitoring programmes that are able to detect trends with a given degree of precision. There are also strong ethical grounds for a change to giving more emphasis to Type-II errors.

水生系统中复杂化学品暴露的风险评估:估计相互作用效应的问题。
传统但很少使用的评估已知化学物质之间相互作用影响的方法是使用析因实验设计。这样的设计允许测试小于加性(拮抗)和大于加性(协同)的效应。虽然在这种实验中可以证明协同作用,但发生协同效应的浓度非常高,不太可能在自然界中发生。最近发展的技术允许人们在现场直接测量综合压力源的影响。这些生物效应技术的范围从对个体生物的试验到对群落的试验。在生化水平上,这些测试可以表明生物体已经暴露于某些化学物质(例如,细胞色素P-450酶对多环烃有反应,金属硫蛋白对重金属有反应)。在组织的社区一级,有高度敏感的统计技术,可以清楚地指出压力源的综合影响。石油勘探和生产对北海底栖生物群落的影响可能与化学物质的浓度有关。然而,这种关系是相关的,并不一定表明因果关系。需要进行实验来检验有关化学物质对底栖生物相互作用的假设。然而,统计分析确实显示了哪些物种受到了影响,以及它们对化学和物理干扰的相对敏感性。这些品种比通常使用的传统“实验室杂草”更可取。需要一种风险评估策略,结合一种实验方案,根据实验室实验对可能在实地发现的影响进行预测。这应该与现场监测相结合,使人们能够发现没有预测到的变化。目前,大多数监测设计不能充分发现趋势。这是由于专注于第一类统计错误,而没有适当考虑第二类错误。通过集中注意第二类错误,可以设计监测方案,使其能够以一定的精度发现趋势。同时,也有强有力的伦理依据支持改变对二类错误的重视程度。
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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