A multi-modal, asymmetric, weighted, and signed description of anatomical connectivity.
Jacob TannerJoshua FaskowitzAndreia Sofia TeixeiraCaio SeguinLudovico ColettaAlessandro GozziBratislav MišićRichard F BetzelPublished in: Nature communications (2024)
The macroscale connectome is the network of physical, white-matter tracts between brain areas. The connections are generally weighted and their values interpreted as measures of communication efficacy. In most applications, weights are either assigned based on imaging features-e.g. diffusion parameters-or inferred using statistical models. In reality, the ground-truth weights are unknown, motivating the exploration of alternative edge weighting schemes. Here, we explore a multi-modal, regression-based model that endows reconstructed fiber tracts with directed and signed weights. We find that the model fits observed data well, outperforming a suite of null models. The estimated weights are subject-specific and highly reliable, even when fit using relatively few training samples, and the networks maintain a number of desirable features. In summary, we offer a simple framework for weighting connectome data, demonstrating both its ease of implementation while benchmarking its utility for typical connectome analyses, including graph theoretic modeling and brain-behavior associations.
Keyphrases
- resting state
- white matter
- functional connectivity
- multiple sclerosis
- electronic health record
- magnetic resonance
- network analysis
- healthcare
- big data
- primary care
- high resolution
- mental health
- contrast enhanced
- physical activity
- virtual reality
- data analysis
- machine learning
- mass spectrometry
- subarachnoid hemorrhage
- deep learning
- cerebral ischemia
- quality improvement
- blood brain barrier
- neural network
- computed tomography