Thalamocortical dysrhythmia detected by machine learning.
Sven VannesteJae-Jin SongDirk De RidderPublished in: Nature communications (2018)
Thalamocortical dysrhythmia (TCD) is a model proposed to explain divergent neurological disorders. It is characterized by a common oscillatory pattern in which resting-state alpha activity is replaced by cross-frequency coupling of low- and high-frequency oscillations. We undertook a data-driven approach using support vector machine learning for analyzing resting-state electroencephalography oscillatory patterns in patients with Parkinson's disease, neuropathic pain, tinnitus, and depression. We show a spectrally equivalent but spatially distinct form of TCD that depends on the specific disorder. However, we also identify brain areas that are common to the pathology of Parkinson's disease, pain, tinnitus, and depression. This study therefore supports the validity of TCD as an oscillatory mechanism underlying diverse neurological disorders.
Keyphrases
- resting state
- high frequency
- neuropathic pain
- functional connectivity
- machine learning
- transcranial magnetic stimulation
- spinal cord
- spinal cord injury
- depressive symptoms
- artificial intelligence
- sleep quality
- chronic pain
- hearing loss
- big data
- deep learning
- pain management
- blood brain barrier
- subarachnoid hemorrhage