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Reference Interval Estimation from Mixed Distributions using Truncation Points and the Kolmogorov-Smirnov Distance (kosmic)

机译:使用截断点和kolmogorov-smirnov距离的混合分布的参考间隔估计(Kosmic)

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Appropriate reference intervals are essential when using laboratory test results to guide medical decisions. Conventional approaches for the establishment of reference intervals rely on large samples from healthy and homogenous reference populations. However, this approach is associated with substantial financial and logistic challenges, subject to ethical restrictions in children, and limited in older individuals due to the high prevalence of chronic morbidities and medication. We implemented an indirect method for reference interval estimation, which uses mixed physiological and abnormal test results from clinical information systems, to overcome these restrictions. The algorithm minimizes the difference between an estimated parametrical distribution and a truncated part of the observed distribution, specifically, the Kolmogorov-Smirnov-distance between a hypothetical Gaussian distribution and the observed distribution of test results after Box-Cox-transformation. Simulations of common laboratory tests with increasing proportions of abnormal test results show reliable reference interval estimations even in challenging simulation scenarios, when 20% test results are abnormal. Additionally, reference intervals generated using samples from a university hospital's laboratory information system, with a gradually increasing proportion of abnormal test results remained stable, even if samples from units with a substantial prevalence of pathologies were included. A high-performance open-source C++ implementation is available at https://gitlab.miracum.org/kosmic.
机译:在使用实验室测试结果指导医学决策时,适当的参考间隔是必不可少的。建立参考间隔的常规方法依赖于来自健康和均质参考群体的大型样品。然而,这种方法与大量的金融和后勤挑战有关,受儿童的道德限制,并且由于慢性病态和药物的患病率高,年龄老年人受到限制。我们实施了参考间隔估计的间接方法,它使用临床信息系统的混合生理和异常测试结果来克服这些限制。该算法最小化了估计的参数分布与观察到的分布的截短部分之间的差异,具体而言,假设高斯分布与Box-Cox转换后观察到的测试结果分布之间的Kolmogorov-Smirnov距离。随着异常测试结果的增加,常见实验室测试的模拟表明即使在挑战模拟场景中,也显示了可靠的参考间隔估计,当<20%的测试结果异常时。此外,使用来自大学医院的实验室信息系统的样本产生的参考间隔,逐渐增加的异常试验结果比例仍然是稳定的,即使包括具有显着患病率的单位的样品。 HTTPS://gitlab.miracum.org/kosmic提供高性能开源C ++实现。

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