Abstract
Enlarged perivascular spaces (PVS) are structural brain changes visible in MRI, are common in aging, and are considered a reflection of cerebral small vessel disease. As such, assessing the burden of PVS has promise as a brain imaging marker. Visual and manual scoring of PVS is a tedious and observer-dependent task. Automated methods would advance research into the etiology of PVS, could aid to assess what a “normal” burden is in aging, and could evaluate the potential of PVS as a biomarker of cerebral small vessel disease. In this work, we propose and evaluate an automated method to quantify PVS in the midbrain, hippocampi, basal ganglia and centrum semiovale. We also compare associations between (earlier established) determinants of PVS and visual PVS scores versus the automated PVS scores, to verify whether automated PVS scores could replace visual scoring of PVS in epidemiological and clinical studies. Our approach is a deep learning algorithm based on convolutional neural network regression, and is contingent on successful brain structure segmentation. In our work we used FreeSurfer segmentations. We trained and validated our method on T2-contrast MR images acquired from 2115 subjects participating in a population-based study. These scans were visually scored by an expert rater, who counted the number of PVS in each brain region. Agreement between visual and automated scores was found to be excellent for all four regions, with intraclass correlation coefficients (ICCs) between 0.75 and 0.88. These values were higher than the inter-observer agreement of visual scoring (ICCs between 0.62 and 0.80). Scan-rescan reproducibility was high (ICCs between 0.82 and 0.93). The association between 20 determinants of PVS, including aging, and the automated scores were similar to those between the same 20 determinants of PVS and visual scores. We conclude that this method may replace visual scoring and facilitate large epidemiological and clinical studies of PVS.
Highlights
This paper proposes and evaluates an algorithm for the automated quantification of enlarged perivascular spaces (PVS) in four brain regions
We show that the associations between 20 determinants of PVS and the automated scores are similar to associations between the same determinants and visual scores
We found that white matter hyperintensity volume is associated with both visual and automated PVS scores in the basal ganglia and in the hippocampi
Summary
This paper proposes and evaluates an algorithm for the automated quantification of enlarged perivascular spaces (PVS) in four brain regions. Perivascular spaces are fluid-filled areas surrounding cerebral arteries or veins. These spaces tend to enlarge locally in aging subjects (Wardlaw et al, 2013). The progressive enlargement of PVS, their widespread occurrence in the brain, and presence of mimics with similar appearance on MRI make the manual annotation of individual PVS challenging and time consuming (see Fig. 2).
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