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首页> 外文期刊>The European Journal of Neuroscience >When neuroscience met clinical pathology: partitioning experimental variation to aid data interpretation in neuroscience
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When neuroscience met clinical pathology: partitioning experimental variation to aid data interpretation in neuroscience

机译:当神经科学满足临床病理学时:分区实验变异以援助神经科学中的数据解释

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In animal experiments, neuroscientists typically assess the effectiveness of interventions by comparing the average response of groups of treated and untreated animals. While providing useful insights, focusing only on group effects risks overemphasis of small, statistically significant but physiologically unimportant, differences. Such differences can be created by analytical variability or physiological within-individual variation, especially if the number of animals in each group is small enough that one or two outlier values can have considerable impact on the summary measures for the group. Physicians face a similar dilemma when comparing two results from the same patient. To determine whether the change between two values reflects disease progression or known analytical and physiological variation, the magnitude of the difference between two results is compared to the reference change value. These values are generated by quantifying analytical and within-individual variation, and differences between two results from the same patient are considered clinically meaningful only if they exceed the combined effect of these two sources of 'noise'. In this article, we describe how the reference change interval can be applied within neuroscience. This form of analysis provides a measure of outcome at an individual level that complements traditional group-level comparisons, and therefore, introduction of this technique into neuroscience can enrich interpretation of experimental data. It can also safeguard against some of the possible misinterpretations that may occur during analysis of the small experimental groups that are common in neuroscience and, by illuminating analytical error, may aid in design of more efficient experimental methods.
机译:在动物实验中,神经科学分子通常通过比较治疗和未经处理的动物组的平均响应来评估干预措施的有效性。虽然提供有用的见解,但仅关注小组效应风险的异常,统计上显着但生理上不重要,差异。这种差异可以通过分析变异或生理单独的变化来创建,特别是如果每​​组的动物的数量足够小,那么一个或两个的异常值对于该组的总结措施可能具有相当大的影响。当与同一患者的两项结果进行比较时,医生面临类似的困境。为了确定两个值之间的变化是否反映了疾病进展或已知的分析和生理变化,将两个结果之间的差异的大小与参考变更值进行比较。这些值是通过量化分析和单独的变化而产生的,并且只有在超过这两个“噪声”源的综合效果中,两个来自同一患者的两种结果的差异才被认为是临床意义。在本文中,我们描述了如何在神经科学中应用参考变化间隔。这种形式的分析提供了一种单独的级别的结果,这些级别补充了传统的组级比较,因此,将该技术引入神经科学中可以丰富对实验数据的解释。它还可以防止在分析神经科学中常见的小型实验组期间可能发生的一些可能发生的误解,并且通过照明分析误差,可以帮助设计更有效的实验方法。

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