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Improved functional cortical parcellation using a neighborhood-information-embedded affinity matrix

机译:使用嵌入邻域信息的亲和矩阵改进的功能性皮层剥离

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Cortical parcellation of the human brain typically serves as a basis for higher-level analyses such as connectivity analysis and investigation of brain network properties. Inferences drawn from such analyses can be significantly confounded if the brain parcels are inaccurate. In this paper, we propose a novel affinity matrix structure based on multiple kernel density estimation for cortical parcellation. Neighborhood functional connectivity is embedded into the affinity matrix, which serves the dual purpose of allowing self-adaptive adjustment of voxel affinity values and providing robustness against noise. The proposed affinity matrix can be used with any parcellation method that takes an affinity matrix as its input. In our validation tests, we apply normalized cuts on our proposed affinity matrix to evaluate performance. On synthetic and real data, we demonstrate that the use of our proposed affinity matrix in lieu of the classical definition better delineates spatially contiguous parcels with higher test-retest reliability and improved inter-subject consistency.
机译:人脑的皮质细胞分裂通常作为更高层次分析(例如连接性分析和脑网络特性研究)的基础。如果大脑包裹不正确,则从此类分析得出的推论可能会明显混淆。在本文中,我们提出了一种基于多核密度估计的新型亲和矩阵结构,用于皮层剥离。邻域功能连接性被嵌入到亲和度矩阵中,这具有双重目的:允许对体素亲和度值进行自适应调整,并提供抗噪声的鲁棒性。提出的亲和力矩阵可以与将亲和力矩阵作为输入的任何拆分方法一起使用。在我们的验证测试中,我们对拟议的亲和矩阵应用归一化的割,以评估性能。在合成和真实数据上,我们证明了使用拟议的亲和力矩阵代替经典定义可以更好地描绘空间连续的宗地,并具有更高的重测信度和改进的对象间一致性。

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