0000000000056765

AUTHOR

Klaus Mathiak

showing 7 related works from this author

Exploring Frequency-Dependent Brain Networks from Ongoing EEG Using Spatial ICA During Music Listening

2020

Recently, exploring brain activity based on functional networks during naturalistic stimuli especially music and video represents an attractive challenge because of the low signal-to-noise ratio in collected brain data. Although most efforts focusing on exploring the listening brain have been made through functional magnetic resonance imaging (fMRI), sensor-level electro- or magnetoencephalography (EEG/MEG) technique, little is known about how neural rhythms are involved in the brain network activity under naturalistic stimuli. This study exploited cortical oscillations through analysis of ongoing EEG and musical feature during freely listening to music. We used a data-driven method that co…

DYNAMICS6162 Cognitive scienceBrain activity and meditationComputer scienceSpeech recognitionIndependent components analysisElectroencephalographyACTIVATIONSuperior temporal gyrus0302 clinical medicineMusic information retrievalaivotutkimusEEGindependent components analysisBrain MappingRadiological and Ultrasound Technologymedicine.diagnostic_test05 social sciencesBrainElectroencephalographyhumanitiesEMOTIONSNeurologyFeature (computer vision)Auditory PerceptionALPHA-BANDFrequency-specific networks; Music information retrieval; EEG; Independent components analysisfrequency-specific networksAnatomyaivotTOOLBOX515 PsychologyMusic information retrievalmusic information retrievalmusiikkibehavioral disciplines and activitieskuunteleminen050105 experimental psychologyTIMBRE03 medical and health sciencesOSCILLATIONSmedicineHumans0501 psychology and cognitive sciencesRadiology Nuclear Medicine and imagingPERCEPTIONOriginal PaperATTENTIONtaajuusMagnetoencephalographyaivokuoriFrequency-specific networksNeurology (clinical)Functional magnetic resonance imaginghuman activitiesTimbreMusic030217 neurology & neurosurgeryRESPONSESBrain Topography
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Classification of Heart Sounds Using Convolutional Neural Network

2020

Heart sounds play an important role in the diagnosis of cardiac conditions. Due to the low signal-to-noise ratio (SNR), it is problematic and time-consuming for experts to discriminate different kinds of heart sounds. Thus, objective classification of heart sounds is essential. In this study, we combined a conventional feature engineering method with deep learning algorithms to automatically classify normal and abnormal heart sounds. First, 497 features were extracted from eight domains. Then, we fed these features into the designed convolutional neural network (CNN), in which the fully connected layers that are usually used before the classification layer were replaced with a global averag…

Feature engineeringComputer science0206 medical engineeringconvolutional neural networkneuroverkot02 engineering and technologyOverfittingConvolutional neural networklcsh:Technologylcsh:Chemistry0202 electrical engineering electronic engineering information engineeringFeature (machine learning)General Materials ScienceSensitivity (control systems)sydäntauditInstrumentationlcsh:QH301-705.5Fluid Flow and Transfer Processesbusiness.industrylcsh:TProcess Chemistry and TechnologyDeep learning020208 electrical & electronic engineeringGeneral EngineeringPattern recognitiondiagnostiikkaMatthews correlation coefficientautomatic heart sound classification020601 biomedical engineeringlcsh:QC1-999Computer Science Applicationsfeature engineeringkoneoppiminenlcsh:Biology (General)lcsh:QD1-999lcsh:TA1-2040Heart soundsArtificial intelligencetiedonlouhintabusinesslcsh:Engineering (General). Civil engineering (General)lcsh:PhysicsApplied Sciences
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Exploring Frequency-dependent Brain Networks from ongoing EEG using Spatial ICA during music listening

2019

AbstractRecently, exploring brain activity based on functional networks during naturalistic stimuli especially music and video represents an attractive challenge because of the low signal-to-noise ratio in collected brain data. Although most efforts focusing on exploring the listening brain have been made through functional magnetic resonance imaging (fMRI), sensor-level electro- or magnetoencephalography (EEG/MEG) technique, little is known about how neural rhythms are involved in the brain network activity under naturalistic stimuli. This study exploited cortical oscillations through analysis of ongoing EEG and musical feature during free-listening to music. We used a data-driven method t…

medicine.diagnostic_testComputer sciencebusiness.industryBrain activity and meditation05 social sciencesShort-time Fourier transformPattern recognitionMusicalMagnetoencephalographyElectroencephalographyStimulus (physiology)Independent component analysis050105 experimental psychology03 medical and health sciences0302 clinical medicineFeature (computer vision)medicineMusic information retrieval0501 psychology and cognitive sciencesActive listeningArtificial intelligenceFunctional magnetic resonance imagingbusiness030217 neurology & neurosurgery
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Altered EEG Oscillatory Brain Networks During Music-Listening in Major Depression

2021

To examine the electrophysiological underpinnings of the functional networks involved in music listening, previous approaches based on spatial independent component analysis (ICA) have recently been used to ongoing electroencephalography (EEG) and magnetoencephalography (MEG). However, those studies focused on healthy subjects, and failed to examine the group-level comparisons during music listening. Here, we combined group-level spatial Fourier ICA with acoustic feature extraction, to enable group comparisons in frequency-specific brain networks of musical feature processing. It was then applied to healthy subjects and subjects with major depressive disorder (MDD). The music-induced oscil…

masennusmedicine.medical_specialtyComputer Networks and Communicationsneural oscillationsFeature extractionmusiikkiAlpha (ethology)musiikkipsykologiaMajor depressive disordernaturalistic music listeningAudiologyElectroencephalographyDIAGNOSISbehavioral disciplines and activities050105 experimental psychology03 medical and health sciences0302 clinical medicineSIGNALSmedicine0501 psychology and cognitive sciencesEEGRESTING-STATE NETWORKSmajor depressive disorderINDEPENDENT COMPONENT ANALYSISONGOING EEGmedicine.diagnostic_testsignaalinkäsittely05 social sciences3112 Neuroscienceshermoverkot (biologia)signaalianalyysiFUNCTIONAL CONNECTIVITYADULTSGeneral MedicineMagnetoencephalographymedicine.diseasebrain networksIndependent component analysisongoing EEGhumanitiesElectrophysiologyindependent component analysisFMRI DATAFeature (computer vision)SYNCHRONIZATIONMajor depressive disorderPsychology030217 neurology & neurosurgeryRESPONSESInternational Journal of Neural Systems
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Response to Discussion on Y. Zhu, X. Wang, K. Mathiak, P. Toiviainen, T. Ristaniemi, J. Xu, Y. Chang and F. Cong, Altered EEG Oscillatory Brain Netwo…

2021

Biopsychosocial modelmedicine.medical_specialtyDepressive Disorder MajorMusic therapymedicine.diagnostic_testComputer Networks and CommunicationsDepressionBrainElectroencephalographyGeneral MedicineAudiologyMusic listeningElectroencephalographymedicineHumansPsychologyDepression (differential diagnoses)MusicInternational journal of neural systems
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Deriving electrophysiological brain network connectivity via tensor component analysis during freely listening to music

2020

Recent studies show that the dynamics of electrophysiological functional connectivity is attracting more and more interest since it is considered as a better representation of functional brain networks than static network analysis. It is believed that the dynamic electrophysiological brain networks with specific frequency modes, transiently form and dissolve to support ongoing cognitive function during continuous task performance. Here, we propose a novel method based on tensor component analysis (TCA), to characterize the spatial, temporal, and spectral signatures of dynamic electrophysiological brain networks in electroencephalography (EEG) data recorded during free music-listening. A thr…

tensor decompositionQuantitative Biology::Neurons and CognitionComputer Science::Soundsignaalinkäsittelyfrequency-specific brain connectivitymusiikkifreely listening to musicoscillatory coherenceelectroencephalography (EEG)EEGkuunteleminen
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Discovering dynamic task-modulated functional networks with specific spectral modes using MEG.

2019

Efficient neuronal communication between brain regions through oscillatory synchronization at certain frequencies is necessary for cognition. Such synchronized networks are transient and dynamic, established on the timescale of milliseconds in order to support ongoing cognitive operations. However, few studies characterizing dynamic electrophysiological brain networks have simultaneously accounted for temporal non-stationarity, spectral structure, and spatial properties. Here, we propose an analysis framework for characterizing the large-scale phase-coupling network dynamics during task performance using magnetoencephalography (MEG). We exploit the high spatiotemporal resolution of MEG to m…

AdultMaleMovementcanonical polyadic decompositionlcsh:RC321-571Functional connectivitytensor decompositionNeural PathwaysConnectomeHumansaivotutkimuslcsh:Neurosciences. Biological psychiatry. NeuropsychiatryCanonical polyadic decompositionMEGdynamic brain networksQuantitative Biology::Neurons and Cognitionsignaalinkäsittelyfunctional connectivityhermoverkot (biologia)BrainMagnetoencephalographySignal Processing Computer-AssistedMemory Short-TermTensor decompositionFrequency-specific oscillationsFemaleDynamic brain networksNerve NetFacial Recognitionfrequency-specific oscillationsNeuroImage
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