| Literature DB >> 35414055 |
Oliver Schmitt1,2, Peter Eipert3, Frauke Ruß3, Julia Beier3, Kanar Kadir3, Anja Horn4.
Abstract
Connectivity data of the nervous system and subdivisions, such as the brainstem, cerebral cortex and subcortical nuclei, are necessary to understand connectional structures, predict effects of connectional disorders and simulate network dynamics. For that purpose, a database was built and analyzed which comprises all known directed and weighted connections within the rat brainstem. A longterm metastudy of original research publications describing tract tracing results form the foundation of the brainstem connectome (BC) database which can be analyzed directly in the framework neuroVIISAS. The BC database can be accessed directly by connectivity tables, a web-based tool and the framework. Analysis of global and local network properties, a motif analysis, and a community analysis of the brainstem connectome provides insight into its network organization. For example, we found that BC is a scale-free network with a small-world connectivity. The Louvain modularity and weighted stochastic block matching resulted in partially matching of functions and connectivity. BC modeling was performed to demonstrate signal propagation through the somatosensory pathway which is affected in Multiple sclerosis.Entities:
Mesh:
Year: 2022 PMID: 35414055 PMCID: PMC9005652 DOI: 10.1038/s41597-022-01219-3
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444
Some tract-tracer substances and factors which are axonally transported or propagated by diffusion.
| Tracer family | Examples | Dir | Vel | Pub |
|---|---|---|---|---|
| Proteins | Horseradish peroxidase (HRP) | R/A | F | [ |
| Albumin | [ | |||
| Immunoglobulin M (IgM) | R | [ | ||
| Anorganic fluorochromes | Fast Blue (FB) | R | M | [ |
| Diamidino yellow (DY) | R | [ | ||
| Fluoro-gold (FG) | R | [ | ||
| Dextranes | Fluoro-Ruby (FR) | A/R | M | [ |
| Biotinylated dextran amine (BDA) | A/R | [ | ||
| Lectines | Wheat germ agglutinin (WGA; WGA-HRP) | R/A | F | [ |
| Bandeiraea simplicifolia isolectin B4 (IB4) | A | [ | ||
| Phaseolus vulgaris-leucoagglutinin (PHA-L) | A | [ | ||
| Beads | Latex microspheres | R | F | [ |
| Cholera toxin B-gold | R | [ | ||
| Wheat germ agglutinin-apoHRP gold | R | [ | ||
| Bacterial toxins | Tetanus toxin fragment C (BIIb) | R/A | F | [ |
| Botulinum toxin A (BoTu) | R/A | [ | ||
| Cholera toxin B fragment (CTB) | R/A | [ | ||
| Growth factors | Nerve growth factor (NGF) | R | F | [ |
| Glial cell-derived neurotrophic factor (GDNF) | A | [ | ||
| Ciliary neurotrophic factor (CNTF) | R | [ | ||
| Amino acids | 3H-Leucin | A | F/S | [ |
| 3H-Prolin | A | F/S | [ | |
| Vit. biotin and L-lysine | Biocytin | A | F | [ |
| Carbocyanine dyes | DiI | A/R | S | [ |
| DiO | A/R | S | [ |
S: slow, M: medium, F: fast, A: anterograde, R: retrograde, A/R: bilateral transport, Dir: axonal transport direction, Vel: transport velocity, Vit: vitamin, Pub: Publication, DiI: 1,1′-diocta decyl-3,3,3′,3′-tetramethylindodicarbocyanine perchlorate, DiO: 3,3′-dioctadecyloxacarbocyanine perchlorate.
Fig. 1Schematic outline of the brainstem connectome generation and simulations in the neuroVIISAS framework. Data generation starts with hypothesis of possible connections using stereotaxic atlases and concepts of knowledge (ontologies). Then TT experiments are performed and connections are published. Original research publications were evaluated and connections described herein were collated and imported into the rat connectome database to build the connectivity of adjacency matrices. These are starting points for global and local as well as motif network analysis. neuroVIISAS provides tools to investigate pathways and community detection algorithms like weighted stochastic block matching (WSBM), Louvain modularity and spectral graph analysis among oth-ers. The weights of a pathway can be reduced to model demyelination disorders (lesion) which can be compared with control coactivation matrices derived from excitatory FitzHugh Nagumo network propagation models.
Reliability weights used for estimating the reliability parameter .
| Variable | Case | Value |
|---|---|---|
| t | a/r | 0.25 |
| t | r | 0.5 |
| t | a | 0.5 |
| t | r+a/r | 0.7 |
| t | a+a/r | 0.7 |
| t | a+r | 1.0 |
| t | a+r+a/r | 1.0 |
| w | −3.0 unknown | 0.7 |
| w | −2.0 fibers of passage | 0.0 |
| w | −1.0 not clear | 0.8 |
| w | −0.5 exists | 0.9 |
| w | 0.0 not present | −1.0 |
| w | 0.5 very light | 1.0 |
| w | 1.0 light / sparse | 1.0 |
| w | 1.5 light / moderate | 1.0 |
| w | 2.0 moderate / dense | 1.0 |
| w | 2.5 moderate / strong | 1.0 |
| w | 3.0 strong | 1.0 |
| w | 4.0 very strong | 1.0 |
Value: reliability weight of connection strength, t: variable of reliability weight for transport directions of tracers, w- variable of reliability weight for strengths of connections, a: anterograde tracer transport, r: retrograde tracer transport, a/r: bidirectional tracer transport. a+r+a/r means that a connection has been proved by an anterograde, a retrograde and a bidirectional transported tracer.
Fig. 2Overview of ipsilateral BS matrices. The magnification of all regions with longnames, shortnames and color codes is shown in table 2.1 of the tutorial. (a) Observation score matrix. (b) Discrepancy matrix. (c) Exist non-exist matrix. (d) Variation of weights matrix. (e) Number of publications matrix.
Fig. 3Workflow and visualization of the bilateral BC. (a) Workflow of database generation, stepwise data accumulation and data analysis, respectively. (b) Overview of bilateral weighted and directed BC. (c) Filtered connections with weights 3. (d) Bilateral visualization for regions with connection weights 3.
Fig. 4Motif, modularity and dynamic analyses. (a) Motif analysis of 13 directed 3 node motifs. The motifs on the x-axis were sorted by the z-values. Blue dots indicate the frequency of motifs in the empirical BS. Black dots indicate frequencies of 1000 edge and node preserving randomization. Y-axes (frequencies) is logarithmically scaled. (b) Consensus clustering (10000 iterations) of Louvain modularity with of the unilateral BC. 4 modules along the main diagonal were highlighted. (c) Weighted stochastic block matching of the unilateral BC (10000 iterations). 3 modules around the main diagonal are clearly visible. The 4th module contains sporadic connections, only. (d) FHN simulation with initial condition >0 for left dorsal root ganglia (DRG_l) (red). Magenta curve: Right ventroposterolateral thalamic nucleus (VPL_r), Brown: Right primary somatosensory cortex (S1_r), Turquoise: Left cuneate nucleus (Cu_l). (e) Modulation function for connection weights. (f) Decrease in membrane potentials of primary somatosensory cortex activation.
| Measurement(s) | brainstem |
| Technology Type(s) | tract tracing metastudy |
| Factor Type(s) | brain region |
| Sample Characteristic - Organism | Rattus rattus |
| Sample Characteristic - Environment | Experimental setup |
| Sample Characteristic - Location | Germany |