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What affects detectability of lesion–deficit relationships in lesion studies?

机译:哪些因素会影响病变研究中病变与缺陷关系的可检测性?

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Elucidating the brain basis for psychological processes and behavior is a fundamental aim of cognitive neuroscience. The lesion method, using voxel-based statistical analysis, is an important approach to this goal, identifying neural structures that are necessary for the support of specific mental operations, and complementing the strengths of functional imaging techniques. Lesion coverage in a population is by nature spatially heterogeneous and biased, systematically affecting the ability of lesion–deficit correlation methods to detect and localize functional associations. We have developed a simulator that allows investigators to model parameters in a lesion–deficit study and characterize the statistical bias in lesion deficit detection coverage that will result from specific assumptions. We used the simulator to assess the signal detection properties and localization accuracy of standard lesion–deficit correlation methods, under a simple truth model — that a critical region of interest (CR), when damaged, gives rise to a deficit. We considered voxel-based lesion-symptom mapping (VLSM) and proportional MAP-3 (PM3). Using regression analysis, we examined if the pattern of outcome statistics can be explained by simulation parameters, factors that are inherent to anatomic parcels, and lesion coverage of the population, which consisted of a representative sample of 351 subjects drawn from the Iowa Patient Registry. We examined the effect of using nonparametric versus parametric statistics to obtain thresholded maps and the effect of correcting for multiple comparisons using false discovery rate or cluster-based correction. Our results, which are derived from samples of realistic lesions, indicate that even a simple truth model yields localization errors that are systematic and pervasive, averaging 2?cm in the standard anatomic space, and tending to be directed towards areas of greater anatomic coverage. This displacement positions the center of mass of the detected region in a different anatomical region 87% of the time. This basic result is not affected by the choice of PM3 vs VLSM as the fundamental approach, nor is localization error ameliorated by incorporation of lesion size as a covariate in the VLSM approach, or by data distribution-driven approaches to controlling multiple spatial comparisons (false discovery rate or cluster-based correction approaches). Our simulations offer a quantitative basis for interpreting lesion studies in cognitive neuroscience. We suggest ways in which lesion simulation and analysis frameworks could be productively extended. Highlights ? We assessed the signal detection properties and localization accuracy of lesion–deficit correlation methods ? Localization errors are pervasive regardless of statistical method or whether controlling for multiple comparisons ? The power of lesion deficit analysis is limited by the number of subjects with a lesion and a deficit ? The detected center of mass tends to be skewed towards regions of higher coverage, and is a function of the spatial distribution of lesion coverage ? The simulator approach offers a way to evaluate modifications to the lesion method to address weaknesses of the method.
机译:阐明心理过程和行为的大脑基础是认知神经科学的基本目标。使用基于体素的统计分析的病变方法是实现此目标的重要方法,它可以识别支持特定心理操作所必需的神经结构,并补充功能成像技术的优势。人群中病变的覆盖范围在本质上在空间上是异质且有偏差的,从而系统地影响病变-缺陷相关方法检测和定位功能关联的能力。我们开发了一个模拟器,使研究人员可以在病变缺损研究中对参数进行建模,并描述由特定假设导致的病变缺损检测覆盖率的统计偏差。在一个简单的真值模型下,我们使用模拟器评估了标准病变-缺陷相关方法的信号检测特性和定位精度,即关键的目标区域(CR)受损时会导致缺陷。我们考虑了基于体素的病变症状映射(VLSM)和比例MAP-3(PM3)。使用回归分析,我们检查了结果统计数据的模式是否可以通过模拟参数,解剖包裹所固有的因素以及人群的病变范围来解释,这些参数包括从爱荷华州患者登记处抽取的351名受试者的代表性样本。我们研究了使用非参数统计与参数统计获取阈值图的效果以及使用错误发现率或基于聚类的校正对多个比较进行校正的效果。我们的结果来自真实的病变样本,表明即使是简单的真相模型也会产生系统且普遍存在的定位误差,在标准解剖空间中的平均误差为2?cm,并且倾向于针对更大的解剖覆盖范围。该位移在87%的时间内将检测到的区域的质心定位在不同的解剖区域中。基本结果不受选择PM3和VLSM作为基本方法的影响,也不受通过在VLSM方法中合并病变大小作为协变量或通过数据分布驱动的方法来控制多个空间比较而改善了定位误差(错误发现率或基于聚类的校正方法)。我们的模拟为解释认知神经科学中的病变研究提供了定量基础。我们提出了可以有效扩展病变模拟和分析框架的方法。强调 ?我们评估了缺损相关方法的信号检测特性和定位精度。不论统计方法还是控制多重比较,本地化错误无处不在?病变缺陷分析的能力受到病变和缺陷的受试者数量的限制?检测到的质心倾向于偏向较高覆盖率的区域,并且是病变覆盖率的空间分布的函数吗?仿真器方法提供了一种评估病变方法的修改以解决该方法缺点的方法。

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