The Mind Research Network/Lovelace Biomedical and Environmental Research Institute, Pete & Nancy Domenici Hall, 1101 Yale Blvd. NE, Albuquerque, NM, 87106, USA.
Neurology and Psychiatry Departments, University of New Mexico School of Medicine, Albuquerque, NM, 87131, USA.
Brain Imaging Behav. 2018 Apr;12(2):437-448. doi: 10.1007/s11682-017-9702-2.
The need for algorithms that capture subject-specific abnormalities (SSA) in neuroimaging data is increasingly recognized across many neuropsychiatric disorders. However, the effects of initial distributional properties (e.g., normal versus non-normally distributed data), sample size, and typical preprocessing steps (spatial normalization, blurring kernel and minimal cluster requirements) on SSA remain poorly understood. The current study evaluated the performance of several commonly used z-transform algorithms [leave-one-out (LOO); independent sample (IDS); Enhanced Z-score Microstructural Assessment of Pathology (EZ-MAP); distribution-corrected z-scores (DisCo-Z); and robust z-scores (ROB-Z)] for identifying SSA using simulated and diffusion tensor imaging data from healthy controls (N = 50). Results indicated that all methods (LOO, IDS, EZ-MAP and DisCo-Z) with the exception of the ROB-Z eliminated spurious differences that are present across artificially created groups following a standard z-transform. However, LOO and IDS consistently overestimated the true number of extrema (i.e., SSA) across all sample sizes and distributions. The EZ-MAP and DisCo-Z algorithms more accurately estimated extrema across most distributions and sample sizes, with the exception of skewed distributions. DTI results indicated that registration algorithm (linear versus non-linear) and blurring kernel size differentially affected the number of extrema in positive versus negative tails. Increasing the blurring kernel size increased the number of extrema, although this effect was much more prominent when a minimum cluster volume was applied to the data. In summary, current results highlight the need to statistically compare the frequency of SSA in control samples or to develop appropriate confidence intervals for patient data.
在许多神经精神疾病中,越来越需要能够捕捉神经影像学数据中特定于受试者的异常(SSA)的算法。然而,初始分布特性(例如,正态分布与非正态分布数据)、样本量以及典型预处理步骤(空间归一化、模糊核和最小聚类要求)对 SSA 的影响仍知之甚少。本研究评估了几种常用的 z 变换算法(LOO、IDS、EZ-MAP、DisCo-Z 和 ROB-Z)在使用来自健康对照者的模拟和弥散张量成像数据识别 SSA 时的性能(N=50)。结果表明,所有方法(除了 ROB-Z)在使用标准 z 变换后,都消除了在人为创建的组之间存在的虚假差异。然而,LOO 和 IDS 始终高估了所有样本量和分布下的真实极值数量(即 SSA)。EZ-MAP 和 DisCo-Z 算法在大多数分布和样本量下更准确地估计了极值,除了偏态分布。DTI 结果表明,配准算法(线性与非线性)和模糊核大小会对正尾和负尾中的极值数量产生不同的影响。增加模糊核大小会增加极值的数量,但当对数据应用最小聚类体积时,这种效果更为明显。总之,目前的结果强调需要在控制样本中统计比较 SSA 的频率,或为患者数据开发适当的置信区间。