Multimodal tract-based MRI metrics outperform whole brain markers in determining cognitive impact of small vessel disease-related brain injury

Publication date

2022-09

Authors

De Luca, AlbertoORCID 0000-0002-2553-7299
Kuijf, Hugo J.ORCID 0000-0001-6997-9059ISNI 0000000393308567
Exalto, Lieza G.
Thiebaut de Schotten, Michel
Biessels, Geert JanISNI 0000000117928938
Utrecht VCI Study Group

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Document Type

Article

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cc_by

Abstract

In cerebral small vessel disease (cSVD), whole brain MRI markers of cSVD-related brain injury explain limited variance to support individualized prediction. Here, we investigate whether considering abnormalities in brain tracts by integrating multimodal metrics from diffusion MRI (dMRI) and structural MRI (sMRI), can better capture cognitive performance in cSVD patients than established approaches based on whole brain markers. We selected 102 patients (73.7 ± 10.2 years old, 59 males) with MRI-visible SVD lesions and both sMRI and dMRI. Conventional linear models using demographics and established whole brain markers were used as benchmark of predicting individual cognitive scores. Multi-modal metrics of 73 major brain tracts were derived from dMRI and sMRI, and used together with established markers as input of a feed-forward artificial neural network (ANN) to predict individual cognitive scores. A feature selection strategy was implemented to reduce the risk of overfitting. Prediction was performed with leave-one-out cross-validation and evaluated with the R 2 of the correlation between measured and predicted cognitive scores. Linear models predicted memory and processing speed with R 2  = 0.26 and R 2  = 0.38, respectively. With ANN, feature selection resulted in 13 tract-specific metrics and 5 whole brain markers for predicting processing speed, and 28 tract-specific metrics and 4 whole brain markers for predicting memory. Leave-one-out ANN prediction with the selected features achieved R 2  = 0.49 and R 2  = 0.40 for processing speed and memory, respectively. Our results show proof-of-concept that combining tract-specific multimodal MRI metrics can improve the prediction of cognitive performance in cSVD by leveraging tract-specific multi-modal metrics.

Keywords

Cerebral small vessel disease, Cognition, Diffusion MRI, Fiber tractography, Neural network, Anatomy, General Neuroscience, Histology

Citation

De Luca, A, Kuijf, H, Exalto, L, Thiebaut de Schotten, M, Biessels, G-J & Utrecht VCI Study Group 2022, 'Multimodal tract-based MRI metrics outperform whole brain markers in determining cognitive impact of small vessel disease-related brain injury', Brain structure & function, vol. 227, no. 7, pp. 2553-2567. https://doi.org/10.1007/s00429-022-02546-2