Abstract Informativeness of diagnostic marker values and the impact of data grouping
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Informativeness of diagnostic marker values and the impact of data grouping

机译:诊断标记值的信息性和数据分组的影响

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AbstractAssessing performance of diagnostic markers is a necessary step for their use in decision making regarding various conditions of interest in diagnostic medicine and other fields. Globally useful markers could, however, have ranges of values that are “diagnostically non-informative”. This paper demonstrates that the presence of marker values from diagnostically non-informative ranges could lead to a loss in statistical efficiency during nonparametric evaluation and shows that grouping non-informative values provides a natural resolution to this problem. These points are theoretically proven and an extensive simulation study is conducted to illustrate the possible benefits of using grouped marker values in a number of practically reasonable scenarios. The results contradict the common conjecture regarding the detrimental effect of grouped marker values during performance assessments. Specifically, contrary to the common assumption that grouped marker values lead to bias, grouping non-informative values does not introduce bias and could substantially reduce sampling variability. The proven concept that grouped marker values could be statistically beneficial without detrimental consequences implies that in practice, tied values do not always require resolution whereas the use of continuous diagnostic results without addressing diagnostically non-informative ranges could be statistically detrimental. Based on these findings, more efficient methods for evaluating diagnostic markers could be developed.]]>
机译:<![cdata [ Abstract 评估诊断标记的性能是它们在诊断医学和其他领域的各种兴趣条件下使用的必要步骤。但是,全球有用的标记可以具有“诊断上非信息”的范围。本文展示了从诊断上非信息范围的标记值的存在可能导致非参数评估期间统计效率的损失,并表明分组非信息价值为此问题提供了自然分辨率。这些点在理论上证明并且进行了广泛的模拟研究以说明在许多实际合理的情况下使用分组的标记值的可能益处。结果与绩效评估期间分组标记值有害效果的常见猜测相矛盾。具体地,与分组标记值导致偏置的共同假设相反,分组非信息值不会引入偏差,并且可以显着降低采样可变性。经过验证的概念,其中分组的标记值可能是统计上有益的,没有不利的后果意味着在实践中,绑定值并不总是要求分辨率,而使用连续诊断结果而不解决诊断上的非信息范围可能是统计的。基于这些发现,可以开发用于评估诊断标记的更有效的方法。 ]]>

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