Abstract

Stroke aphasia is a multidimensional disorder in which patient profiles reflect variation along multiple behavioural continua. We present a novel approach to separating the principal aspects of chronic aphasic performance and isolating their neural bases. Principal components analysis was used to extract core factors underlying performance of 31 participants with chronic stroke aphasia on a large, detailed battery of behavioural assessments. The rotated principle components analysis revealed three key factors, which we labelled as phonology, semantic and executive/cognition on the basis of the common elements in the tests that loaded most strongly on each component. The phonology factor explained the most variance, followed by the semantic factor and then the executive-cognition factor. The use of principle components analysis rendered participants' scores on these three factors orthogonal and therefore ideal for use as simultaneous continuous predictors in a voxel-based correlational methodology analysis of high resolution structural scans. Phonological processing ability was uniquely related to left posterior perisylvian regions including Heschl's gyrus, posterior middle and superior temporal gyri and superior temporal sulcus, as well as the white matter underlying the posterior superior temporal gyrus. The semantic factor was uniquely related to left anterior middle temporal gyrus and the underlying temporal stem. The executive-cognition factor was not correlated selectively with the structural integrity of any particular region, as might be expected in light of the widely-distributed and multi-functional nature of the regions that support executive functions. The identified phonological and semantic areas align well with those highlighted by other methodologies such as functional neuroimaging and neurostimulation. The use of principle components analysis allowed us to characterize the neural bases of participants' behavioural performance more robustly and selectively than the use of raw assessment scores or diagnostic classifications because principle components analysis extracts statistically unique, orthogonal behavioural components of interest. As such, in addition to improving our understanding of lesion-symptom mapping in stroke aphasia, the same approach could be used to clarify brain-behaviour relationships in other neurological disorders.

Highlights

  • Aphasia is a common consequence of middle cerebral artery stroke

  • Stroke aphasia is characterized by graded impairments of multiple underlying principal language-cognitive components, with considerable variation between individual behavioural profiles (Lambon Ralph et al, 2002; Schwartz et al, 2006; Robson et al, 2012)

  • Aphasia category and lesion size were all associated with damage to the middle cerebral artery territory as a whole

Read more

Summary

Introduction

Aphasia is a common consequence of middle cerebral artery stroke. Patterns of preserved and impaired language abilities are highly variable, meaning that post-stroke aphasic individuals form a heterogeneous clinical group. We applied statistical data reduction techniques to detailed neuropsychological assessments thereby revealing three principal, independent languagecognitive components that could be related directly to the underpinning neural regions. This technique allowed us to deconstruct the multidimensional nature of chronic stroke aphasia and identify its neural bases more accurately than analyses based upon categorical classifications or individual tests

Methods
Results
Conclusion

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.