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首页> 外文期刊>Health Physics: Official Journal of the Health Physics Society >Analyzing bioassay data using Bayesian methods--a primer.
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Analyzing bioassay data using Bayesian methods--a primer.

机译:使用贝叶斯方法,分析生物测定数据

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摘要

The classical statistics approach used in health physics for the interpretation of measurements is deficient in that it does not take into account "needle in a haystack" effects, that is, correct identification of events that are rare in a population. This is often the case in health physics measurements, and the false positive fraction (the fraction of results measuring positive that are actually zero) is often very large using the prescriptions of classical statistics. Bayesian statistics provides a methodology to minimize the number of incorrect decisions (wrong calls): false positives and false negatives. We present the basic method and a heuristic discussion. Examples are given using numerically generated and real bioassay data for tritium. Various analytical models are used to fit the prior probability distribution in order to test the sensitivity to choice of model. Parametric studies show that for typical situations involving rare events the normalized Bayesian decision level k(alpha) = Lc/sigma0, where sigma0 is the measurement uncertainty for zero true amount, is in the range of 3 to 5 depending on the true positive rate. Four times sigma0 rather than approximately two times sigma0, as in classical statistics, would seem a better choice for the decision level in these situations.
机译:经典的统计方法用于健康解释的物理测量它不考虑不足“海里捞针”效应,也就是正确的识别中罕见的事件人口。物理测量,和假阳性分数(分数的测量结果实际上零)通常是非常积极的使用经典的处方统计数据。方法以减少错误的数量决定(错误的调用):假阳性假阴性。一个启发式的讨论。数值生成和真正的生物测定数据氚。合适的先验概率分布测试灵敏度的选择模型。参数研究表明,对于典型规范化情况涉及罕见事件贝叶斯决策水平k(α)= Lc / sigma0,sigma0哪里测量的不确定性零真实的金额,在3到5的范围根据真阳性。sigma0而不是约两倍sigma0,如古典统计,似乎是一个这些决策水平的更好的选择的情况。

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