Abstract
Tractography aims at describing the most likely neural fiber paths in white matter. A general issue of current tractography methods is their large false-positive rate. An approach to deal with this problem is tractogram filtering in which anatomically implausible streamlines are discarded as a post-processing step after tractography. In this chapter, we review the main approaches and methods from literature that are relevant for the application of tractogram filtering. Moreover, we give a perspective on the central challenges for the development of new methods, including modern machine learning techniques, in this field in the next few years.
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Jörgens, D., Descoteaux, M., & Moreno, R. (2021). Challenges for Tractogram Filtering. In Mathematics and Visualization (pp. 149–168). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-030-56215-1_7
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