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首页> 外文期刊>Clinical chemistry and laboratory medicine: CCLM >Graphical interpretation of confidence curves in rankit plots.
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Graphical interpretation of confidence curves in rankit plots.

机译:等级图中置信度曲线的图形解释。

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A well-known transformation from the bell-shaped Gaussian (normal) curve to a straight line in the rankit plot is investigated, and a tool for evaluation of the distribution of reference groups is presented. It is based on the confidence intervals for percentiles of the calculated Gaussian distribution and the percentage of cumulative points exceeding these limits. The process is to rank the reference values and plot the cumulative frequency points in a rankit plot with a logarithmic (In=log(e)) transformed abscissa. If the distribution is close to In-Gaussian the cumulative frequency points will fit to the straight line describing the calculated In-Gaussian distribution. The quality of the fit is evaluated by adding confidence intervals (CI) to each point on the line and calculating the percentage of points outside the hyperbola-like CI-curves. The assumption was that the 95% confidence curves for percentiles would show 5% of points outside these limits. However, computer simulations disclosed that approximate 10% of the series would have 5% or more points outside the limits. This is a conservative validation, which is more demanding than the Kolmogorov-Smirnov test. The graphical presentation, however, makes it easy to disclose deviations from In-Gaussianity, and to make other interpretations of the distributions, e.g., comparison to non-Gaussian distributions in the same plot, where the cumulative frequency percentage can be read from the ordinate. A long list of examples of In-Gaussian distributions of subgroups of reference values from healthy individuals is presented. In addition, distributions of values from well-defined diseased individuals may show up as In-Gaussian. It is evident from the examples that the rankit transformation and simple graphical evaluation for non-Gaussianity is a useful tool for the description of sub-groups.
机译:研究了从钟形高斯(正态)曲线到兰吉特图中直线的众所周知的变换,并提供了一种评估参考组分布的工具。它基于计算出的高斯分布的百分位数的置信区间和超过这些限制的累积点的百分比。该过程是对参考值进行排名,并在对数图中绘制具有对数(In = log(e))转换后的横坐标的累积频率点。如果分布接近高斯分布,则累积频率点将适合描述计算的高斯分布的直线。通过向该线上的每个点添加置信区间(CI)并计算双曲线样CI曲线之外的点的百分比来评估拟合的质量。假设百分位数的95%置信曲线将显示这些限制之外的5%。但是,计算机模拟显示,该系列的大约10%的点将超出限制范围的5%或更多。这是一个保守的验证,比Kolmogorov-Smirnov检验的要求更高。但是,通过图形表示,可以很容易地揭示与高斯分布的偏差,并可以对分布进行其他解释,例如,与同一图中的非高斯分布进行比较,可以从纵坐标上读取累积频率百分比。列出了来自健康个体的参考值子组的高斯分布的例子。此外,来自明确定义的患病个体的价值分布可能显示为高斯分布。从示例中可以明显看出,针对非高斯性的等级转换和简单图形评估是描述子组的有用工具。

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