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首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >Assessment of bias in experimentally measured diffusion tensor imaging parameters using SIMEX
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Assessment of bias in experimentally measured diffusion tensor imaging parameters using SIMEX

机译:使用SIMEX评估实验测量的扩散张量成像参数中的偏差

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Diffusion tensor imaging enables in vivo investigation of tissue cytoarchitecture through parameter contrasts sensitive to water diffusion barriers at the micrometer level. Parameters are derived through an estimation process that is susceptible to noise and artifacts. Estimated parameters (e.g., fractional anisotropy) exhibit both variability and bias relative to the true parameter value estimated from a hypothetical noise-free acquisition. Herein, we present the use of the simulation and extrapolation (SIMEX) approach for post hoc assessment of bias in a massively univariate imaging setting and evaluate the potential of a SIMEX-based bias correction. Using simulated data with known truth models, spatially varying fractional anisotropy bias error maps are evaluated on two independent and highly differentiated case studies. The stability of SIMEX and its distributional properties are further evaluated on 42 empirical diffusion tensor imaging datasets. Using gradient subsampling, an empirical experiment with a known true outcome is designed and SIMEX performance is compared to the original estimator. With this approach, we find SIMEX bias estimates to be highly accurate offering significant reductions in parameter bias for individual datasets and greater accuracy in averaged population-based estimates.
机译:扩散张量成像可通过对微米级水扩散障碍敏感的参数对比,对组织细胞结构进行体内研究。通过易受噪声和伪影影响的估计过程得出参数。相对于从假设的无噪声采集估计的真实参数值,估计的参数(例如,分数各向异性)表现出可变性和偏差。在这里,我们介绍了使用模拟和外推(SIMEX)方法对大规模单变量成像设置中的偏差进行事后评估,并评估了基于SIMEX的偏差校正的潜力。使用具有已知真值模型的模拟数据,在两个独立且高度区分的案例研究中评估空间变化的分数各向异性偏差误差图。 SIMEX的稳定性及其分布特性在42个经验扩散张量成像数据集中得到了进一步评估。使用梯度二次抽样,设计了具有已知真实结果的经验实验,并将SIMEX性能与原始估算器进行了比较。通过这种方法,我们发现SIMEX偏差估计是高度准确的,可显着减少单个数据集的参数偏差,并在基于平均总体的估计中提供更高的准确性。

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