Combining multimodal connectivity information improves modelling of pathology spread in Alzheimer’s disease

Author:

Thompson Elinor1,Schroder Anna1,He Tiantian1,Shand Cameron1,Soskic Sonja2,Oxtoby Neil P.1,Barkhof Frederik134,Alexander Daniel C.1,

Affiliation:

1. UCL Centre for Medical Image Computing, Department of Computer Science, University College London, London, United Kingdom

2. UCL Centre for Medical Image Computing, Department of Medical Physics and Biomedical Engineering, University College London, London, United Kingdom

3. Department of Radiology & Nuclear Medicine, Amsterdam UMC, Vrije Universiteit, the Netherlands

4. UCL Queen Square Institute of Neurology, University College London, London, United Kingdom

Abstract

Abstract Cortical atrophy and aggregates of misfolded tau proteins are key hallmarks of Alzheimer’s disease. Computational models that simulate the propagation of pathogens between connected brain regions have been used to elucidate mechanistic information about the spread of these disease biomarkers, such as disease epicentres and spreading rates. However, the connectomes that are used as substrates for these models are known to contain modality-specific false positive and false negative connections, influenced by the biases inherent to the different methods for estimating connections in the brain. In this work, we compare five types of connectomes for modelling both tau and atrophy patterns with the network diffusion model, which are validated against tau PET and structural MRI data from individuals with either mild cognitive impairment or dementia. We then test the hypothesis that a joint connectome, with combined information from different modalities, provides an improved substrate for the model. We find that a combination of multimodal information helps the model to capture observed patterns of tau deposition and atrophy better than any single modality. This is validated with data from independent datasets. Overall, our findings suggest that combining connectivity measures into a single connectome can mitigate some of the biases inherent to each modality and facilitate more accurate models of pathology spread, thus aiding our ability to understand disease mechanisms, and providing insight into the complementary information contained in different measures of brain connectivity

Publisher

MIT Press

Reference76 articles.

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