Supervised Tractogram Filtering using Geometric Deep Learning
Pietro Astolfi, Ruben Verhagen, Laurent Petit, Emanuele Olivetti,, Silvio Sarubbo, Jonathan Masci, Davide Boscaini, Paolo Avesani

TL;DR
This paper introduces Verifyber, a geometric deep learning model that accurately filters out anatomically implausible fibers in brain white matter tractograms, improving the quality of brain connectivity data for medical and research applications.
Contribution
It presents a novel supervised learning approach using geometric deep learning to classify brain fibers as plausible or non-plausible based on anatomical knowledge.
Findings
High accuracy in filtering non-plausible fibers
Robust performance across diverse datasets
Fast processing time for large tractograms
Abstract
A tractogram is a virtual representation of the brain white matter. It is composed of millions of virtual fibers, encoded as 3D polylines, which approximate the white matter axonal pathways. To date, tractograms are the most accurate white matter representation and thus are used for tasks like presurgical planning and investigations of neuroplasticity, brain disorders, or brain networks. However, it is a well-known issue that a large portion of tractogram fibers is not anatomically plausible and can be considered artifacts of the tracking procedure. With Verifyber, we tackle the problem of filtering out such non-plausible fibers using a novel fully-supervised learning approach. Differently from other approaches based on signal reconstruction and/or brain topology regularization, we guide our method with the existing anatomical knowledge of the white matter. Using tractograms annotated…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Medical Imaging and Analysis · Brain Tumor Detection and Classification
MethodsConvolution
