Detection and spatial characterization of minicolumnarity in the human cerebral cortex

Autor: Rafati, A H, Safavimanesh, Farzaneh, Dorph-Petersen, K-A, Rasmussen, Jakob Gulddahl, Møller, Jesper, Nyengaard, J R
Jazyk: angličtina
Rok vydání: 2016
Zdroj: Rafati, A H, Safavimanesh, F, Dorph-Petersen, K-A, Rasmussen, J G, Møller, J & Nyengaard, J R 2016, ' Detection and spatial characterization of minicolumnarity in the human cerebral cortex ', Journal of Microscopy, vol. 261, no. 1, pp. 115-26 . https://doi.org/10.1111/jmi.12321
DOI: 10.1111/jmi.12321
Popis: BACKGROUND: Spatial characterization of vertical organization of neurons in human cerebral cortex, cortical columnarity or minicolumns, and its possible association with various psychiatric and neurological diseases has been investigated for many years.NEW METHOD: In this study, we obtained 3D coordinates of disector sampled cells from layer III of Brodmann area 4 of the human cerebral cortex using light microscopy and 140-μm-thick glycolmethacrylate sections. A new analytical tool called cylindrical K-function was applied for spatial point pattern analysis of 3D datasets to see whether there is a spatially organized columnar structure. In order to demonstrate the behaviour of the cylindrical K-function, the result from brain tissues was compared with two models: A homogeneous Poisson process exhibiting complete spatial randomness, and a Poisson line cluster point process. The latter is a point process model in 3D space, which exhibits spatial structure of points similar to minicolumns.RESULTS: The data show in three out of four samples nonrandom patterns in the 3D neuronal positions with the direction of minicolumns perpendicular to the pial surface of the brain - without a priori assuming the existence of minicolumns.COMPARISON WITH EXISTING METHODS: Studies on columnarity are difficult and have mainly been based on two-dimensional images analysis of thin sections of the cerebral cortex with the a priori assumption that minicolumns existed.CONCLUSIONS: A clear difference from complete spatial randomness in the data could be detected with the new tool, the cylindrical K-function, although classical functional summary statistics are less useful in this connection.
Databáze: OpenAIRE