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White matter network of oral word reading identified by network-based lesion-symptom mapping

Mingyang Li, Luping Song, Yumei Zhang, Zaizhu Han

2021iScience14 citationsDOIOpen Access PDF

Abstract

Oral word reading is supported by a neural subnetwork that includes gray matter regions and white matter tracts connected by the regions. Traditional methods typically determine the reading-relevant focal gray matter regions or white matter tracts rather than the reading-relevant global subnetwork. The present study developed a network-based lesion-symptom mapping (NLSM) method to identify the reading-relevant global white matter subnetwork in 84 brain-damaged patients. The global subnetwork was selected among all possible subnetworks because its global efficiency exhibited the best explanatory power for patients' reading scores. This reading subnetwork was left lateralized and included 7 gray matter regions and 15 white matter tracts. Moreover, the reading subnetwork had additional explanatory power for the patients' reading performance after eliminating the effects of reading-related local regions and tracts. These findings refine the reading neuroanatomical architecture and indicate that the NLSM can be a better method for revealing behavior-specific subnetworks.

Topics & Concepts

SubnetworkWhite matterReading (process)NeuroscienceComputer scienceArtificial intelligenceLesionExplanatory powerPsychologyCognitive psychologyMedicineLinguisticsPhilosophyMagnetic resonance imagingPsychiatryEpistemologyComputer securityRadiologyFunctional Brain Connectivity StudiesAdvanced Neuroimaging Techniques and ApplicationsEEG and Brain-Computer Interfaces