grant

Adaptive Frequency Band Estimation and Analysis

Organization TEXAS A&M UNIVERSITYLocation COLLEGE STATION, UNITED STATESPosted 1 Sept 2020Deadline 31 Aug 2026
NIHUS FederalResearch GrantFY202321+ years oldAddressAdultAdult HumanAlgorithmsBehaviorBiologicalBiological FunctionBiological ProcessBrainBrain Nervous SystemCardiovascularCardiovascular Body SystemCardiovascular Organ SystemCardiovascular systemCell Communication and SignalingCell SignalingCharacteristicsClinicalCognitionComputer softwareD-GlucoseDataData SetDedicationsDevelopmentDextroseDimensionsEncephalonEvaluationFrequenciesGlucoseGraphical interfaceHeart VascularIndividualInstructionIntracellular Communication and SignalingInvestigationInvestigatorsLocationMR ImagingMR TomographyMRIMRIsMagnetic Resonance ImagingMajor Depressive DisorderMeasuresMedical Imaging, Magnetic Resonance / Nuclear Magnetic ResonanceMethodologyMethodsMonte Carlo MethodMonte Carlo algorithmMonte Carlo calculationMonte Carlo procedureMonte Carlo simulationMorbidityMorbidity - disease rateMydriasisNMR ImagingNMR TomographyNuclear Magnetic Resonance ImagingOn-Line SystemsOnline SystemsOutcomeParticipantPatternPerformancePopulationProceduresProcessProgramming LanguagesPropertyPublicationsPupil DilationPythonsResearch PersonnelResearchersRestSamplingScanningScientific PublicationSeriesSignal TransductionSignal Transduction SystemsSignalingSoftwareStructureTechniquesTheoretic ModelsTheoretical modelTimeTime Series AnalysisTraumaZeugmatographyadulthoodanalytical toolbiologicbiological signal transductioncirculatory systemclinical depressiondata visualizationdepositorydesigndesigningdevelopmentalemotion regulationemotional regulationgraphic user interfacegraphical user interfaceheart rate variabilityindexinginterestmajor depressionmajor depression disordermortalityneuralonline apponline computerpopulation basedpost-trauma stresspost-traumatic stressposttrauma stressposttraumatic stresspreservationprogramsrepositorysimulationsoftware user interfacestatisticstheoriestooluser-friendlyweb appweb applicationweb basedweb based appweb based application
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Full Description

The frequency-domain properties of many biomedical time series contain valuable information. These
properties are characterized through its power s pectrum, which describes the contribution to the variability

of a time series from waveforms oscillating at different frequencies. Practitioners seeking low dimensional

summarymeasures of the power spectrum from a population often partition frequencies into bands and

create collapsed measures of power within these bands. However, standard frequency bands have

largely been developed through subjective inspection of time series data and may not provide adequate

summary measures of the power spectrum for a given population of interest. This proposal seeks to

establish a new framework for adaptive frequency band estimation and analysis for replicated time series,

thus bridging an important gap between the analysis of spectral information from a single time series and

the analysis of spectral information within a population. The four specific aims associated with the effort

are: (1) to develop a frequency band estimation method for replicated, stationary signals that best

preserves variability across replicates within a population, (2) to develop a local frequency band

estimation method for replicated, nonstationary signals that best preserves time and replicate-varying

behavior within a population, (3) to develop a frequency band estimation method for replicated,

multivariate signals that best preserves the characteristics and interrelationships between individual

components and (4) to develop a suite of user-friendly analytical tools across multiple software platforms.

Monte Carlo simulation studies will be conducted to explore the empirical prope rties of the proposed

methods and to compare their performances to the use of traditional frequency bands. The investigators

will use these new methods to analyze a range ofbiological signals, including heart rate variability, pupil

dilation, and MRI, from three existing studies to address a variety of biological and clinical questions. The

impact in practical investigations is expected to be substantial, equipping practitioners with justified

optimal tools for analyzing data collected from a broad spectrum of scientific and biomedical studies.

RELEVANCE (See instructions):

This proposal will design practical statistical procedures for identifying frequency band summary

measures of biomedical time series data that optimally characterize oscillatory patterns for a population of

interest. The investigators will use these new methods to analyze biological signals from three existing

studies and provide practitioners with optimal tools for analyzing data from a broad spectrum of

biomedical studies.

Grant Number: 5R01GM140476-05
NIH Institute/Center: NIH

Principal Investigator: Scott Bruce

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