基于先验解剖数据的数据驱动体素白质纤维聚类模型

Zhewen Cao, Er Jin, Siqi Zhou, Ye Wu, Yongqiang Li, Yuanjing Feng
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引用次数: 0

摘要

全脑纤维成像允许对人脑结构连接进行无损检测。该方法的临床应用通常被归类为具有一定意义的一系列纤维束结构(功能、结构、形状等)。由于缺乏纤维束的边缘结构信息和个体样本中复杂白质结构的高度可变性,基于解剖信息的纤维聚类仍然是一个悬而未决的问题。本文提出了一种新的纤维聚类技术,将全脑纤维的空间特征与先验解剖信息相结合,进行纤维相似性匹配和特征提取。在这项工作中,我们关注的是白质结构中高度一致的纤维束的覆盖范围,以匹配解剖特征。该方法基于对模拟数据和现场数据的多次测试。实验结果表明,该方法不仅提高了纤维束的高度一致覆盖率和先验解剖知识,而且简化了纤维数据空间,提高了纤维聚类相似度测量总体的一致性。最后讨论了该方法在临床研究中的应用。
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A Data-driven Voxel-wise White Matter Fiber Clustering Model Based on Priori Anatomical Data
Whole-brain fiber imaging allows nondestructive detection of human brain structural connections. The clinical application of this method is often classified as a series of fiber bundle structures of certain significance (function, structure, shape, etc.). Due to the lack of edge structure information of fiber bundles and the high variability of complex white matter structures in individual samples, fiber clustering based on anatomical information is still an open problem. In this paper, a new fiber clustering technique is proposed, which combines spatial features of whole-brain fibers and prior anatomical information as fiber similarity matching and feature extraction. In this work, we focus on the coverage of highly consistent fiber bundles in white matter structures to match anatomic features. The method is based on multiple tests of simulated data and in vivol data. The experimental results show that this method not only improves the highly consistent coverage of fiber bundles and prior anatomical knowledge, but also simplifies the fiber data space to improve the fiber clustering similarity measured population consistency. Finally, we also discuss the application of this method in clinical research.
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