Holmes Nicholas P
Department of Psychology & Interdisciplinary Center for Neural Computation, Hebrew University of Jerusalem, Jerusalem, 91905, Israel.
Brain Topogr. 2009 May;21(3-4):168-76. doi: 10.1007/s10548-009-0097-2. Epub 2009 Apr 29.
The principle of inverse effectiveness (PoIE) in multisensory integration states that, as the responsiveness to individual sensory stimuli decreases, the strength of multisensory integration increases. I discuss three potential problems in the analysis of multisensory data with regard to the PoIE. First, due to 'regression towards the mean,' the PoIE may often be observed in datasets that are analysed post-hoc (i.e., when sorting the data by the unisensory responses). The solution is to design discrete levels of stimulus intensity a priori. Second, due to neurophysiological or methodological constraints on responsiveness, the PoIE may be, in part, a consequence of 'floor' and 'ceiling' effects. The solution is to avoid analysing or interpreting data that are too close to the limits of responsiveness, enabling both enhancement and suppression to be reliably observed. Third, the choice of units of measurement may affect whether the PoIE is observed in a given dataset. Both relative (%) and absolute (raw) measurements have advantages, but the interpretation of both is affected by systematic changes in response variability with changes in response mean, an issue that may be addressed by using measures of discriminability or effect-size such as Cohen's d. Most importantly, randomising or permuting a dataset to construct a null distribution of a test parameter may best indicate whether any observed inverse effectiveness specifically characterises multisensory integration. When these considerations are taken into account, the PoIE may disappear or even reverse in a given dataset. I conclude that caution should be exercised when interpreting data that appear to follow the PoIE.
多感官整合中的逆有效性原则(PoIE)指出,随着对单个感官刺激的反应性降低,多感官整合的强度会增加。我讨论了在多感官数据的分析中,与PoIE相关的三个潜在问题。首先,由于“向均值回归”,PoIE可能经常在事后分析的数据集(即按单感官反应对数据进行排序时)中被观察到。解决方法是先验地设计离散的刺激强度水平。其次,由于对反应性存在神经生理学或方法学上的限制,PoIE可能部分是“下限”和“上限”效应的结果。解决方法是避免分析或解释过于接近反应性极限的数据,以便能够可靠地观察到增强和抑制现象。第三,测量单位的选择可能会影响在给定数据集中是否能观察到PoIE。相对(%)测量和绝对(原始)测量都有优点,但两者的解释都会受到反应均值变化时反应变异性的系统变化的影响,这个问题可以通过使用可辨别性或效应大小的测量方法(如科恩d值)来解决。最重要的是,对数据集进行随机化或置换以构建测试参数的零分布,可能最能表明任何观察到的逆有效性是否具体表征了多感官整合。当考虑到这些因素时,PoIE在给定数据集中可能会消失甚至反转。我的结论是,在解释看似遵循PoIE的数据时应谨慎行事。