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Gyral parcellation of cortical surfaces via coupled flow field tracking

机译:通过耦合流场跟踪的皮质表面的陀螺分裂

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This paper presents a novel method for parcellation of the cortical surface of human brain into gyral based regions via coupled flow field tracking. The proposed method consists of two major steps. First, the cortical surface is automatically parcellated into sulcal based regions using several procedures: estimating principal curvatures and principal directions; applying the hidden Markov random field and the Expectation-Maximization (HMRF-EM) framework for sulcal region segmentation based on the maximum principal curvature; diffusing the maximum principal direction field in order to propagate reliable and informative principal directions at gyral crests and sulcal bottoms to other flat cortical regions with noisy principal directions by minimization of an energy function; tracking the flow field towards sulcal bottoms to parcellate the cortical surfaces into sulcal basins. The sulcal parcellation provides a very good initialization for the following steps of gyral parcellation on cortical surfaces. Second, based on the sulcal parcellation results, the cortical surface is further parcellated into gyral based regions using the following procedures: extracting gyral crest segments; dilating gyral crest segments; inverting the principal direction flow field and tracking the flow field towards gyral crests in order to partition the cortical surface into a collection of gyral patches; merging gyral patches to obtain gyral parcellation of the cortical surface. The proposed algorithm pipeline is applied to nine randomly selected cortical surfaces of normal brains and promising results are obtained. The accuracy of the semi-automatic gyral parcellation is comparable to that labeled manually by experts.
机译:本文提出了一种新的方法,通过耦合流场跟踪将人的大脑皮层表面分成基于回旋的区域。所提出的方法包括两个主要步骤。首先,使用几种程序将皮质表面自动分割为基于沟的区域:估计主曲率和主方向;将隐藏的马尔可夫随机场和期望最大框架(HMRF-EM)应用于基于最大主曲率的沟区域分割;扩散最大主方向场,以便通过最小化能量函数,将回旋波峰和沟底的可靠,信息量大的主方向传播到主方向嘈杂的其他平坦皮质区域;跟踪流向沟底的流场,以将皮质表面分解成沟底。龈沟切开术为皮质表面上的回旋切开术的以下步骤提供了很好的初始化。其次,基于沟旁切开结果,使用以下步骤将皮质表面进一步切开成基于陀螺的区域:扩张陀螺c节段;反转主方向流场并向回旋波顶跟踪流场,以将皮层表面分隔成回旋斑块的集合;合并回旋斑块以获得皮质表面的回旋分裂。所提出的算法流水线被应用于正常大脑的九个随机选择的皮质表面,并获得了有希望的结果。半自动回旋椎间盘切除术的准确性可与专家手动标记的准确性相媲美。

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