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Cytoarchitecture Measurements in Brain Gray Matter Using Likelihood-Free Inference

机译:使用无似然推论脑灰质的细胞建筑测量

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Effective characterisation of the brain grey matter cytoarchitecture with quantitative sensitivity to soma density and volume remains an unsolved challenge in diffusion MRI (dMRI). Solving the problem of relating the dMRI signal with cytoarchitectural characteristics calls for the definition of a mathematical model that describes brain tissue via a handful of physiologically-relevant parameters and an algorithm for inverting the model. To address this issue, we propose a new forward model, specifically a new system of equations, requiring six relatively sparse b-shells. These requirements are a drastic reduction of those used in current proposals to estimate grey matter cytoarchitecture. We then apply current tools from Bayesian analysis known as likelihood-free inference (LFI) to invert our proposed model. As opposed to other approaches from the literature, our LFI-based algorithm yields not only an estimation of the parameter vector θ that best describes a given observed data point x_0, but also a full posterior distribution p(θ|x_0) over the parameter space. This enables a richer description of the model inversion results providing indicators such as confidence intervals for the estimations, and better understanding of the parameter regions where the model may present indeterminacies. We approximate the posterior distribution using deep neural density estimators, known as normalizing flows, and fit them using a set of repeated simulations from the forward model. We validate our approach on simulations using dmipy and then apply the whole pipeline to the HCP MGH dataset.
机译:对脑灰质细胞结构的有效表征具有定量敏感性对SOMA密度和体积的敏感性仍然是扩散MRI(DMRI)中的未解决的攻击。解决与细胞建筑特征的DMRI信号相关的问题呼吁通过少数生理相关参数和用于反相模型的算法来定义描述脑组织的数学模型。为了解决这个问题,我们提出了一个新的前向模型,特别是一个新的方程式系统,需要六个相对稀疏的B-shell。这些要求是当前建议用于估计灰质细胞建筑的人的急剧减少。然后,我们将当前工具应用于贝叶斯分析,称为无似然推论(LFI)来颠倒我们所提出的模型。与文献中的其他方法相反,基于LFI的算法不仅可以估计最能够描述给定的观察到的数据点X_0的参数向量θ,而且产生参数空间上的全后部分布P(θ10) 。这使得模型反转结果的更丰富的描述提供指示器,例如估计的置信区间,以及更好地理解模型可能呈现不确定性的参数区域。我们近似使用深神经密度估计器的后部分布,称为标准化流,并使用来自前向模型的一组重复模拟来拟合它们。我们使用DMIPY验证我们的模拟方法,然后将整个管道应用于HCP MGH数据集。

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