Electroencephalography (EEG) is a versatile tool that has significantly impacted the understanding and treatment of various neurological disorders. Due to its non-invasive nature and high temporal resolution, it allows the monitoring of brain activity in both real-time and across extended periods. Recent advancements in EEG technology, coupled with sophisticated computational algorithms, have provided unprecedented insights into the brain's functioning. However, the full potential of EEG analysis in detecting, diagnosing, and treating neurological disorders remains underexplored.
The primary goal of this Research Topic is to highlight and address recent developments in EEG analysis techniques for neurological disorders. While traditional methods have been pivotal in understanding neurological disorders, leading researchers are innovating advanced EEG analysis techniques leveraging artificial intelligence, machine learning, and deep learning. These technologies are revolutionizing our ability to understand and treat disorders including epilepsy, Alzheimer's disease, depression, encephalopathy, and others. This Research Topic aims to gather researchers working on advanced EEG analysis techniques to share their knowledge, methodologies, and applications in a comprehensive manner. The ultimate aim is to expedite the evolution of EEG-based diagnosis and treatment strategies augmenting the fight against neurological disorders effectively.
This Research Topic welcomes original research articles, reviews, method articles, and clinical trial papers that cover but are not limited to the following themes:
-Advanced signal processing techniques in EEG analysis
-Application of machine learning, deep learning, and other AI techniques in EEG analysis
-Novel methodologies for identifying neurological disorders using EEG
-Enhanced understanding of neurological disorders through EEG analysis
-Recent advancements in real-time EEG monitoring
-Innovative predictive models for neurological disorders based on EEG data
The emphasis is on showcasing EEG analysis methodologies that provide enhanced predictive accuracy, increased computational efficiency, and improved understanding of underlying neurological ailments. We welcome Original Research, Reviews, Methodology, Clinical Trials, Perspectives, and Short Communications articles. These contributions should ultimately pave the way for innovative therapeutic and diagnostic strategies for neurological disorders.
Electroencephalography (EEG) is a versatile tool that has significantly impacted the understanding and treatment of various neurological disorders. Due to its non-invasive nature and high temporal resolution, it allows the monitoring of brain activity in both real-time and across extended periods. Recent advancements in EEG technology, coupled with sophisticated computational algorithms, have provided unprecedented insights into the brain's functioning. However, the full potential of EEG analysis in detecting, diagnosing, and treating neurological disorders remains underexplored.
The primary goal of this Research Topic is to highlight and address recent developments in EEG analysis techniques for neurological disorders. While traditional methods have been pivotal in understanding neurological disorders, leading researchers are innovating advanced EEG analysis techniques leveraging artificial intelligence, machine learning, and deep learning. These technologies are revolutionizing our ability to understand and treat disorders including epilepsy, Alzheimer's disease, depression, encephalopathy, and others. This Research Topic aims to gather researchers working on advanced EEG analysis techniques to share their knowledge, methodologies, and applications in a comprehensive manner. The ultimate aim is to expedite the evolution of EEG-based diagnosis and treatment strategies augmenting the fight against neurological disorders effectively.
This Research Topic welcomes original research articles, reviews, method articles, and clinical trial papers that cover but are not limited to the following themes:
-Advanced signal processing techniques in EEG analysis
-Application of machine learning, deep learning, and other AI techniques in EEG analysis
-Novel methodologies for identifying neurological disorders using EEG
-Enhanced understanding of neurological disorders through EEG analysis
-Recent advancements in real-time EEG monitoring
-Innovative predictive models for neurological disorders based on EEG data
The emphasis is on showcasing EEG analysis methodologies that provide enhanced predictive accuracy, increased computational efficiency, and improved understanding of underlying neurological ailments. We welcome Original Research, Reviews, Methodology, Clinical Trials, Perspectives, and Short Communications articles. These contributions should ultimately pave the way for innovative therapeutic and diagnostic strategies for neurological disorders.