Decomposition of brain diffusion imaging data uncovers latent schizophrenias with distinct patterns of white matter anisotropy
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Arnedo Fernández, Francisco Javier; Mamah, Daniel; Baranger, David; Harms, Michael; Barch, Deanna; Svrakic, Dragan; de Erausquin, Gabriel; Cloninger, Robert; Zwir Nawrocki, Jorge Sergio IgorMateria
Neuroimages Schizophrenia Fractional Anisotropy Diffusion tensor-images Non-negative Matrix Factorization Biclustering
Fecha
2015-10-15Referencia bibliográfica
Arnedo, J., Mamah, D., Baranger, D. A., Harms, M. P., Barch, D. M., Svrakic, D. M., de Erausquin, G. A., Cloninger, C. R., & Zwir, I. (2015). Decomposition of brain diffusion imaging data uncovers latent schizophrenias with distinct patterns of white matter anisotropy. NeuroImage, 120, 43-54. https://doi.org/10.1016/j.neuroimage.2015.06.083
Patrocinador
This work was supported in part by the Spanish Ministry of Science and Technology TIN2009-13950, TIN2012-38805 including FEDER funds, the R. L. Kirschstein National Research Award to I.Z.; the National Institutes of Health including grant 5K08MH077220 to G.AdeE; K08MH085948 to D.M., and National Institute of Mental Health MH066031 to D.M.B. G.A.deE is a Stephen and Constance Lieber Inverstigator, and Sidney R. Baier Jr. Investigator, as well as Roksamp Chair of Biological Psychiatry at USF.Resumen
Fractional anisotropy (FA) analysis of diffusion tensor-images (DTI) has yielded
inconsistent abnormalities in schizophrenia (SZ). Inconsistencies may arise from
averaging heterogeneous groups of patients. Here we investigate whether SZ is a
heterogeneous group of disorders distinguished by distinct patterns of FA reductions.
We developed a generalized factorization method (GFM) to identify biclusters (i.e.,
subsets of subjects associated with a subset of particular characteristics, such as low FA
in specific regions). GFM appropriately assembles a collection of unsupervised
techniques with Non-negative Matrix Factorization to generate biclusters, rather than
averaging across all subjects and all their characteristics. DTI tract-based spatial
statistics images, which output is the locally maximal FA projected onto the group
white matter skeleton, were analyzed in 47 SZ and 36 healthy subjects, identifying 8
biclusters. The mean FA of the voxels characteristic of each bicluster (i.e., subset of low
FA values shared by a particular subset of subjects) was significantly different from
those of either other SZ subjects or 36 healthy controls. The eight biclusters were
organized into four more general patterns of low FA in specific regions: 1) genu of
corpus callosum (GCC), 2) fornix (FX) + external capsule (EC), 3) splenium of CC (SCC)
+ retrolenticular limb (RLIC) + posterior limb (PLIC) of the internal capsule, and 4)
anterior limb of the internal capsule. These patterns were significantly associated with
particular clinical features: Pattern 1 (GCC) with bizarre behavior, pattern 2 (FX+EC)
with prominent delusions, and pattern 3 (SCC+RLIC+PLIC) with negative symptoms
including disorganized speech. The uncovered patterns suggest that SZ is a
heterogeneous group of disorders that can be distinguished by different patterns of FA
reductions associated with distinct clinical features.