Optimization and Validation of Diffusion MRI-based Fiber Tracking with Neural Tracer Data as a Reference
Carlos Enrique Gutierrez, Henrik Skibbe, Ken Nakae, Hiromichi Tsukada,, Jean Lienard, Akiya Watakabe, Junichi Hata, Marco Reisert, Alexander, Woodward, Hideyuki Okano, Tetsuo Yamamori, Yoko Yamaguchi, Shin Ishii and, Kenji Doya

TL;DR
This study presents a data-driven framework using neural tracer data to optimize and validate diffusion MRI fiber tracking, significantly improving accuracy and reducing false positives in brain connectivity mapping.
Contribution
The paper introduces a novel multi-objective optimization approach for tuning fiber-tracking parameters using neural tracer data as a reference, enhancing reliability of dMRI-based connectivity analysis.
Findings
Optimized parameters improved fiber tracking accuracy.
False positives and cross-hemisphere connections were minimized.
Parameters generalized well across different brain samples.
Abstract
Diffusion-weighted magnetic resonance imaging (dMRI) allows non-invasive investigation of whole-brain connectivity, which can potentially help to reveal the brain's global network architecture and abnormalities involved in neurological and mental disorders. However, the reliability of connection inferences from dMRI-based fiber tracking is still debated, due to low sensitivity, dominance of false positives, and inaccurate and incomplete reconstruction of long-range connections. Furthermore, parameters of tracking algorithms are typically tuned in a heuristic way, which leaves room for manipulation of an intended result. Here we propose a data-driven framework to optimize and validate parameters of dMRI-based fiber-tracking algorithms using neural tracer data as a reference. Japan's Brain/MINDS Project provides invaluable datasets containing both dMRI and neural tracer data from the same…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Advanced MRI Techniques and Applications · MRI in cancer diagnosis
