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首页> 外文期刊>Clinical chemistry and laboratory medicine: CCLM >Partitioning reference values of several Gaussian subpopulations with unequal prevalence--a procedure with computer program support.
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Partitioning reference values of several Gaussian subpopulations with unequal prevalence--a procedure with computer program support.

机译:用不相等的流行度对几个高斯亚群的参考值进行分区-这是具有计算机程序支持的过程。

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摘要

BACKGROUND: To be able to interpret laboratory values, it is essential to develop population-based reference intervals. A crucial consideration is whether a reference interval should be divided into subpopulations or not, so-called partitioning. There are established methods for deciding whether partitioning should be done or not. However, these methods are only applicable when partitioning into two subpopulations is considered. The primary aim of this study was to suggest a procedure that was also valid for several subpopulations. The method assumes that these subpopulations are Gaussian. Furthermore, a secondary aim was to provide a tailor-made computer program to support calculations. METHODS: The fundamental idea is to partition reference intervals if the proportions of the distributions of the subpopulations outside the combined reference limit deviate from the nominal value of 0.025. This is made possible by finding the combined reference interval using an equation solver algorithm. RESULTS: It was found that an equation solver algorithm could easily identify the combined reference interval when combining two or more subpopulations, even if these subpopulations had unequal prevalences. It was also found that this could be done even if the ratio between samples does not reflect the ratio between prevalences. Using this algorithm, it was possible to study whether the proportion outside the combined reference limits in any of several subpopulations deviated from the nominal 0.025 by such a magnitude that partitioning was recommended. When similar figures to those found in earlier studies with other methods were tested, the procedure showed consistent results with these methods. The procedure was also found to be applicable when several subpopulations were considered. As a practical result of the study, a tailor-made computer program was developed and is now provided over the Internet. CONCLUSIONS: The suggested procedure could serve as an alternative or complement to existing methods. The procedure provides calculations of the combined reference interval, even if sample fractions do not reflect prevalence fractions. The important advantage with the suggested procedure is the generalisation to the situation when several Gaussian subpopulations, possibly with unequal prevalences, are considered. Finally, since a tailor-made computer program is provided, the procedure is simple to use.
机译:背景:为了能够解释实验室值,建立基于人群的参考间隔至关重要。一个关键的考虑因素是参考区间是否应该划分为亚群,即所谓的分区。存在确定是否应该进行分区的确定方法。但是,这些方法仅在考虑划分为两个子群体时适用。这项研究的主要目的是提出一种对几个亚群也有效的方法。该方法假定这些子群体是高斯族。此外,第二个目的是提供一个量身定制的计算机程序来支持计算。方法:基本思想是,如果组合参考范围之外的子种群分布比例偏离名义值0.025,则对参考区间进​​行划分。通过使用方程求解器算法找到组合的参考间隔,可以做到这一点。结果:发现,当组合两个或多个子种群时,即使这些子种群的患病率不相等,方程求解器算法也可以轻松识别出组合的参考区间。还发现即使样品之间的比例不能反映患病率之间的比例也可以做到这一点。使用此算法,有可能研究几个子种群中任何一个的组合参考限制之外的比例是否偏离标称值0.025如此大的程度,建议进行分区。当测试与其他方法早期研究中发现的相似数据时,该程序显示出与这些方法一致的结果。当考虑到几个亚群时,该程序也适用。作为研究的实际结果,开发了量身定制的计算机程序,现在可以通过Internet提供该程序。结论:建议的程序可以替代或补充现有方法。即使样品分数不反映患病率,该程序也可提供组合参考区间的计算。所建议的过程的重要优点是可以概括考虑多个高斯亚群(可能具有不相等的患病率)的情况。最后,由于提供了量身定制的计算机程序,因此该过程易于使用。

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