PLoS ONE (Jan 2023)

Structural connectivity-based predictors of cognitive impairment in stroke patients attributable to aging.

  • Barbora Rehák Bučková,
  • David Kala,
  • Jakub Kořenek,
  • Veronika Matušková,
  • Vojtěch Kumpošt,
  • Lenka Svobodová,
  • Jakub Otáhal,
  • Antonín Škoch,
  • Vlastimil Šulc,
  • Anna Olšerová,
  • Martin Vyhnálek,
  • Petr Janský,
  • Aleš Tomek,
  • Petr Marusič,
  • Přemysl Jiruška,
  • Jaroslav Hlinka

DOI
https://doi.org/10.1371/journal.pone.0280892
Journal volume & issue
Vol. 18, no. 4
p. e0280892

Abstract

Read online

Despite the rising global burden of stroke and its socio-economic implications, the neuroimaging predictors of subsequent cognitive impairment are still poorly understood. We address this issue by studying the relationship of white matter integrity assessed within ten days after stroke and patients' cognitive status one year after the attack. Using diffusion-weighted imaging, we apply the Tract-Based Spatial Statistics analysis and construct individual structural connectivity matrices by employing deterministic tractography. We further quantify the graph-theoretical properties of individual networks. The Tract-Based Spatial Statistic did identify lower fractional anisotropy as a predictor of cognitive status, although this effect was mostly attributable to the age-related white matter integrity decline. We further observed the effect of age propagating into other levels of analysis. Specifically, in the structural connectivity approach we identified pairs of regions significantly correlated with clinical scales, namely memory, attention, and visuospatial functions. However, none of them persisted after the age correction. Finally, the graph-theoretical measures appeared to be more robust towards the effect of age, but still were not sensitive enough to capture a relationship with clinical scales. In conclusion, the effect of age is a dominant confounder especially in older cohorts, and unless appropriately addressed, may falsely drive the results of the predictive modelling.