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Measurement error biases and the validation of complex models for blood lead levels in children.

机译:测量误差偏差以及儿童血铅水平复杂模型的验证。

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摘要

Measurement error causes biases in regression fits. If one could accurately measure exposure to environmental lead media, the line obtained would differ in important ways from the line obtained when one measures exposure with error. The effects of measurement error vary from study to study. It is dangerous to take measurement error corrections derived from one study and apply them to data from entirely different studies or populations. Measurement error can falsely invalidate a correct (complex mechanistic) model. If one builds a model such as the integrated exposure uptake biokinetic model carefully, using essentially error-free lead exposure data, and applies this model in a different data set with error-prone exposures, the complex mechanistic model will almost certainly do a poor job of prediction, especially of extremes. Although mean blood lead levels from such a process may be accurately predicted, in most cases one would expect serious underestimates or overestimates of the proportion of the population whose blood lead level exceeds certain standards.
机译:测量误差会导致回归拟合出现偏差。如果可以准确地测量对环境铅介质的暴露,则获得的谱线将与在错误地测量暴露的谱线上获得的谱线有很大的不同。测量误差的影响因研究而异。进行一项研究得出的测量误差校正并将其应用于来自完全不同的研究或总体的数据是很危险的。测量错误会错误地使正确的模型(复杂的机械模型)失效。如果一个人使用基本无错误的铅暴露数据仔细构建一个模型,例如集成的暴露吸收生物动力学模型,然后将此模型应用于具有容易出错的暴露的不同数据集中,那么复杂的机械模型几乎肯定会做得不好预测,尤其是极端预测。尽管可以准确预测这一过程的平均血铅水平,但在大多数情况下,人们会期望严重低估或高估血铅水平超过某些标准的人口比例。

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