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Stochastic DT-MRI Connectivity Mapping on the GPU

机译:GPU上的随机DT-MRI连接映射

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We present a method for stochastic fiber tract mapping from diffusion tensor MRI (DT-MRI) implemented on graphics hardware. From the simulated fibers we compute a connectivity map that gives an indication of the probability that two points in the dataset are connected by a neuronal fiber path. A Bayesian formulation of the fiber model is given and it is shown that the inversion method can be used to construct plausible connectivity. An implementation of this fiber model on the graphics processing unit (GPU) is presented. Since the fiber paths can be stochastically generated independently of one another, the algorithm is highly parallelizable. This allows us to exploit the data-parallel nature of the GPU fragment processors. We also present a framework for the connectivity computation on the GPU. Our implementation allows the user to interactively select regions of interest and observe the evolving connectivity results during computation. Results are presented from the stochastic generation of over 250,000 fiber steps per iteration at interactive frame rates on consumer-grade graphics hardware.
机译:我们提出了一种从图形硬件上实现的扩散张量MRI(DT-MRI)进行随机纤维束映射的方法。从模拟的光纤中,我们计算出连接图,该连接图指示了数据集中的两个点通过神经元光纤路径连接的可能性。给出了光纤模型的贝叶斯公式,并证明了反演方法可用于构造合理的连通性。提出了此光纤模型在图形处理单元(GPU)上的实现。由于可以相互独立地随机生成光纤路径,因此该算法具有高度可并行性。这使我们能够利用GPU片段处理器的数据并行特性。我们还提出了用于GPU上的连通性计算的框架。我们的实现允许用户交互式地选择感兴趣的区域,并在计算过程中观察不断发展的连通性结果。结果是在消费级图形硬件上以交互帧速率随机生成每次迭代超过250,000光纤步的结果。

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