Published September 11, 2021 | Version v1
Journal article Open

The role of spatial embedding in mouse brain networks constructed from diffusion tractography and tracer injections

Description

Diffusion MRI tractography is the only noninvasive method to measure the structural connectome in humans. However, recent validation studies have revealed limitations of modern tractography approaches, which lead to significant mistracking caused in part by local uncertainties in fiber orientations that accumulate to produce larger errors for longer streamlines. Characterizing the role of this length bias in tractography is complicated by the true underlying contribution of spatial embedding to brain topology. In this work, we compare graphs constructed with ex vivo tractography data in mice and neural tracer data from the Allen Mouse Brain Connectivity Atlas to random geometric surrogate graphs which preserve the low-order distance effects from each modality in order to quantify the role of geometry in various network properties. We find that geometry plays a substantially larger role in determining the topology of graphs produced by tractography than graphs produced by tracers. Tractography underestimates weights at long distances compared to neural tracers, which leads tractography to place network hubs close to the geometric center of the brain, as do corresponding tractography-derived random geometric surrogates, while tracer graphs place hubs further into peripheral areas of the cortex. We also explore the role of spatial embedding in modular structure, network efficiency and other topological measures in both modalities. Throughout, we compare the use of two different tractography streamline node assignment strategies and find that the overall differences between tractography approaches are small relative to the differences between tractography- and tracer-derived graphs. These analyses help quantify geometric biases inherent to tractography and promote the use of geometric benchmarking in future tractography validation efforts.

Data availability

Raw diffusion data, connectivity matrices, distance matrices, and Python code for the construction of geometric and random surrogate graphs are available for download at https://knowledge.uchicago.edu/record/3310.

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Role-of-spatial-embedding-in-mouse-brain-networks-constructed-from-diffusion-tractography-and-tracer-injections.pdf

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Additional details

Identifiers

DOI
10.1016/j.neuroimage.2021.118576
Other
oai:uchicago.tind.io:9662

Funding

National Institutes of Health
F31NS113571
National Institutes of Health
R01EB026300
National Institutes of Health
U01MH109100
National Institutes of Health
S10OD025081
National Institutes of Health
S10RR021039
National Institutes of Health
P30CA14599

UChicago Information

Division(s)
Biological Sciences Division
Department(s)
Neurobiology, Radiology