6533b856fe1ef96bd12b1dde
RESEARCH PRODUCT
Functional Brain Segmentation Using Inter-Subject Correlation in fMRI
Juha PajulaJari NiemiJukka-pekka KauppiJussi TohkaRiitta Harisubject
Time FactorsComputer science0302 clinical medicinetoiminnallinen magneettikuvausImage Processing Computer-AssistedCluster AnalysisSegmentationResearch Articlesinter-subject variabilityBrain Mappingshared nearest-neighborgraphmedicine.diagnostic_test05 social sciencesBrainHuman brainMiddle AgedMagnetic Resonance Imagingmedicine.anatomical_structurefunctional segmentationGaussian mixture modelGraph (abstract data type)/dk/atira/pure/sustainabledevelopmentgoals/good_health_and_well_beinginter-subject correlationAlgorithmsAdultshared nearest-neighbor graphModels NeurologicalSensory system050105 experimental psychology03 medical and health sciencesYoung AdultNeuroimagingSDG 3 - Good Health and Well-beingmedicineHumans0501 psychology and cognitive sciencesComputer SimulationCluster analysishuman brainCommunicationbusiness.industryMagnetic resonance imagingPattern recognitionfunctional magnetic resonance imagingOxygenAffinity propagationnaturalistic stimulationArtificial intelligencebusiness030217 neurology & neurosurgerydescription
The human brain continuously processes massive amounts of rich sensory information. To better understand such highly complex brain processes, modern neuroimaging studies are increasingly utilizing experimental setups that better mimic daily‐life situations. A new exploratory data‐analysis approach, functional segmentation inter‐subject correlation analysis (FuSeISC), was proposed to facilitate the analysis of functional magnetic resonance (fMRI) data sets collected in these experiments. The method provides a new type of functional segmentation of brain areas, not only characterizing areas that display similar processing across subjects but also areas in which processing across subjects is highly variable. FuSeISC was tested using fMRI data sets collected during traditional block‐design stimuli (37 subjects) as well as naturalistic auditory narratives (19 subjects). The method identified spatially local and/or bilaterally symmetric clusters in several cortical areas, many of which are known to be processing the types of stimuli used in the experiments. The method is not only useful for spatial exploration of large fMRI data sets obtained using naturalistic stimuli, but also has other potential applications, such as generation of a functional brain atlases including both lower‐ and higher‐order processing areas. Finally, as a part of FuSeISC, a criterion‐based sparsification of the shared nearest‐neighbor graph was proposed for detecting clusters in noisy data. In the tests with synthetic data, this technique was superior to well‐known clustering methods, such as Ward's method, affinity propagation, and K‐means [Formula: see text]. Hum Brain Mapp 38:2643–2665, 2017. © 2017 Wiley Periodicals, Inc.
year | journal | country | edition | language |
---|---|---|---|---|
2016-06-07 |