Department of Computer Science, University of Copenhagen, Denmark.
Department of Computer Science, University of Copenhagen, Denmark; DTU Compute, Technical University of Denmark, Denmark.
Neuroimage. 2016 Apr 15;130:63-76. doi: 10.1016/j.neuroimage.2016.01.031. Epub 2016 Jan 22.
Tractography is the standard tool for automatic delineation of white matter tracts from diffusion weighted images. However, the output of tractography often requires post-processing to remove false positives and ensure a robust delineation of the studied tract, and this demands expert prior knowledge. Here we demonstrate how such prior knowledge, or indeed any prior spatial information, can be automatically incorporated into a shortest-path tractography approach to produce more robust results. We describe how such a prior can be automatically generated (learned) from a population, and we demonstrate that our framework also retains support for conventional interactive constraints such as waypoint regions. We apply our approach to the open access, high quality Human Connectome Project data, as well as a dataset acquired on a typical clinical scanner. Our results show that the use of a learned prior substantially increases the overlap of tractography output with a reference atlas on both populations, and this is confirmed by visual inspection. Furthermore, we demonstrate how a prior learned on the high quality dataset significantly increases the overlap with the reference for the more typical yet lower quality data acquired on a clinical scanner. We hope that such automatic incorporation of prior knowledge and the obviation of expert interactive tract delineation on every subject, will improve the feasibility of large clinical tractography studies.
束追踪是从弥散加权图像中自动描绘白质束的标准工具。然而,束追踪的输出通常需要进行后处理,以去除假阳性并确保研究束的稳健描绘,这需要专家的先验知识。在这里,我们展示了如何将这种先验知识(或任何先验空间信息)自动纳入最短路径束追踪方法中,以产生更稳健的结果。我们描述了如何从人群中自动生成(学习)这样的先验知识,并演示了我们的框架也保留了对传统交互约束(如关键点区域)的支持。我们将我们的方法应用于开放获取的高质量人类连接组计划数据以及在典型临床扫描仪上采集的数据集。我们的结果表明,使用学习到的先验知识可以显著提高束追踪输出与两个群体参考图谱之间的重叠程度,这通过视觉检查得到了证实。此外,我们展示了如何在高质量数据集上学习到的先验知识显著提高了与临床扫描仪上采集的质量更低但更典型的数据的参考图谱的重叠程度。我们希望这种自动纳入先验知识和避免在每个对象上进行专家交互束描绘,将提高大型临床束追踪研究的可行性。