Detecting microstructural deviations in individuals with deep diffusion MRI tractometry

Publication date

2021-09

Authors

Chamberland, Maxime
Genc, Sila
Tax, Chantal M.W.
Shastin, Dmitri
Koller, Kristin
Raven, Erika P.
Cunningham, Adam
Doherty, Joanne
van den Bree, Marianne B.M.
Parker, Greg D.

Editors

Advisors

Supervisors

Document Type

Article

Collections

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License

cc_by

Abstract

Most diffusion magnetic resonance imaging studies of disease rely on statistical comparisons between large groups of patients and healthy participants to infer altered tissue states in the brain; however, clinical heterogeneity can greatly challenge their discriminative power. There is currently an unmet need to move away from the current approach of group-wise comparisons to methods with the sensitivity to detect altered tissue states at the individual level. This would ultimately enable the early detection and interpretation of microstructural abnormalities in individual patients, an important step towards personalized medicine in translational imaging. To this end, Detect was developed to advance diffusion magnetic resonance imaging tractometry towards single-patient analysis. By operating on the manifold of white-matter pathways and learning normative microstructural features, our framework captures idiosyncrasies in patterns along white-matter pathways. Our approach paves the way from traditional group-based comparisons to true personalized radiology, taking microstructural imaging from the bench to the bedside.

Keywords

Computer Science (miscellaneous), Computer Science Applications, Computer Networks and Communications

Citation

Chamberland, M, Genc, S, Tax, C M W, Shastin, D, Koller, K, Raven, E P, Cunningham, A, Doherty, J, van den Bree, M B M, Parker, G D, Hamandi, K, Gray, W P & Jones, D K 2021, 'Detecting microstructural deviations in individuals with deep diffusion MRI tractometry', Nature Computational Science, vol. 1, no. 9, pp. 598-606. https://doi.org/10.1038/s43588-021-00126-8