Preoperative function-specific connectome analysis predicts surgery-related aphasia after glioma resection.
Sebastian IlleHaosu ZhangLisa SogererMaximilian SchwendnerAxel SchöderBernhard MeyerBenedikt WiestlerSandro M KriegPublished in: Human brain mapping (2022)
Glioma resection within language-eloquent regions poses a high risk of surgery-related aphasia (SRA). Preoperative functional mapping by navigated transcranial magnetic stimulation (nTMS) combined with diffusion tensor imaging (DTI) is increasingly used to localize cortical and subcortical language-eloquent areas. This study enrolled 60 nonaphasic patients with left hemispheric perisylvian gliomas to investigate the prediction of SRA based on function-specific connectome network properties under different fractional anisotropy (FA) thresholds. Moreover, we applied a machine learning model for training and cross-validation to predict SRA based on preoperative connectome parameters. Preoperative connectome analysis helps predict SRA development with an accuracy of 73.3% and sensitivity of 78.3%. The current study provides a new perspective of combining nTMS and function-specific connectome analysis applied in a machine learning model to investigate language in neurooncological patients and promises to advance our understanding of the intricate networks.
Keyphrases
- machine learning
- transcranial magnetic stimulation
- patients undergoing
- minimally invasive
- resting state
- autism spectrum disorder
- end stage renal disease
- high frequency
- chronic kidney disease
- functional connectivity
- big data
- ejection fraction
- high grade
- coronary artery disease
- newly diagnosed
- multiple sclerosis
- prognostic factors
- deep learning
- percutaneous coronary intervention
- clinical evaluation