141 related articles for article (PubMed ID: 32628970)
1. Dynamic functional connectivity analysis based on time-varying partial correlation with a copula-DCC-GARCH model.
Lee N; Kim JM
Neurosci Res; 2021 Aug; 169():27-39. PubMed ID: 32628970
[TBL] [Abstract][Full Text] [Related]
2. Dynamic functional connectivity analysis of functional MRI based on copula time-varying correlation.
Lee N; Kim JM
J Neurosci Methods; 2019 Jul; 323():32-47. PubMed ID: 31100293
[TBL] [Abstract][Full Text] [Related]
3. Modified models and simulations for estimating dynamic functional connectivity in resting state functional magnetic resonance imaging.
Behboudi M; Farnoosh R
Stat Med; 2020 May; 39(12):1781-1800. PubMed ID: 32106335
[TBL] [Abstract][Full Text] [Related]
4. Efficacy of different dynamic functional connectivity methods to capture cognitively relevant information.
Xie H; Zheng CY; Handwerker DA; Bandettini PA; Calhoun VD; Mitra S; Gonzalez-Castillo J
Neuroimage; 2019 Mar; 188():502-514. PubMed ID: 30576850
[TBL] [Abstract][Full Text] [Related]
5. Dynamical brain connectivity estimation using GARCH models: An application to personality neuroscience.
Riccelli R; Passamonti L; Duggento A; Guerrisi M; Indovina I; Terracciano A; Toschi N
Annu Int Conf IEEE Eng Med Biol Soc; 2017 Jul; 2017():3305-3308. PubMed ID: 29060604
[TBL] [Abstract][Full Text] [Related]
6. Temporal and spectral characteristics of dynamic functional connectivity between resting-state networks reveal information beyond static connectivity.
Chiang S; Vankov ER; Yeh HJ; Guindani M; Vannucci M; Haneef Z; Stern JM
PLoS One; 2018; 13(1):e0190220. PubMed ID: 29320526
[TBL] [Abstract][Full Text] [Related]
7. Copula directional dependence for inference and statistical analysis of whole-brain connectivity from fMRI data.
Lee N; Kim JM
Brain Behav; 2019 Jan; 9(1):e01191. PubMed ID: 30592175
[TBL] [Abstract][Full Text] [Related]
8. Test-retest reliability of dynamic functional connectivity in naturalistic paradigm functional magnetic resonance imaging.
Zhang X; Liu J; Yang Y; Zhao S; Guo L; Han J; Hu X
Hum Brain Mapp; 2022 Mar; 43(4):1463-1476. PubMed ID: 34870361
[TBL] [Abstract][Full Text] [Related]
9. Tools of the trade: estimating time-varying connectivity patterns from fMRI data.
Iraji A; Faghiri A; Lewis N; Fu Z; Rachakonda S; Calhoun VD
Soc Cogn Affect Neurosci; 2021 Aug; 16(8):849-874. PubMed ID: 32785604
[TBL] [Abstract][Full Text] [Related]
10. Brain parcellation driven by dynamic functional connectivity better capture intrinsic network dynamics.
Fan L; Zhong Q; Qin J; Li N; Su J; Zeng LL; Hu D; Shen H
Hum Brain Mapp; 2021 Apr; 42(5):1416-1433. PubMed ID: 33283954
[TBL] [Abstract][Full Text] [Related]
11. Characterizing dynamic amplitude of low-frequency fluctuation and its relationship with dynamic functional connectivity: An application to schizophrenia.
Fu Z; Tu Y; Di X; Du Y; Pearlson GD; Turner JA; Biswal BB; Zhang Z; Calhoun VD
Neuroimage; 2018 Oct; 180(Pt B):619-631. PubMed ID: 28939432
[TBL] [Abstract][Full Text] [Related]
12. Using autoregressive-dynamic conditional correlation model with residual analysis to extract dynamic functional connectivity.
Hakimdavoodi H; Amirmazlaghani M
J Neural Eng; 2020 Jun; 17(3):035008. PubMed ID: 32454472
[TBL] [Abstract][Full Text] [Related]
13. Unraveling Alzheimer's Disease: Investigating Dynamic Functional Connectivity in the Default Mode Network through DCC-GARCH Modeling.
Yue K; Webster J; Grabowski T; Jahanian H; Shojaie A
bioRxiv; 2024 Jun; ():. PubMed ID: 38895209
[TBL] [Abstract][Full Text] [Related]
14. Interpreting temporal fluctuations in resting-state functional connectivity MRI.
Liégeois R; Laumann TO; Snyder AZ; Zhou J; Yeo BTT
Neuroimage; 2017 Dec; 163():437-455. PubMed ID: 28916180
[TBL] [Abstract][Full Text] [Related]
15. Evaluating dynamic bivariate correlations in resting-state fMRI: a comparison study and a new approach.
Lindquist MA; Xu Y; Nebel MB; Caffo BS
Neuroimage; 2014 Nov; 101():531-46. PubMed ID: 24993894
[TBL] [Abstract][Full Text] [Related]
16. Modulation of epileptic networks by transient interictal epileptic activity: A dynamic approach to simultaneous EEG-fMRI.
Iannotti GR; Preti MG; Grouiller F; Carboni M; De Stefano P; Pittau F; Momjian S; Carmichael D; Centeno M; Seeck M; Korff CM; Schaller K; De Ville DV; Vulliemoz S
Neuroimage Clin; 2020; 28():102467. PubMed ID: 33395963
[TBL] [Abstract][Full Text] [Related]
17. Dyconnmap: Dynamic connectome mapping-A neuroimaging python module.
Marimpis AD; Dimitriadis SI; Goebel R
Hum Brain Mapp; 2021 Oct; 42(15):4909-4939. PubMed ID: 34250674
[TBL] [Abstract][Full Text] [Related]
18. A wavelet-based estimator of the degrees of freedom in denoised fMRI time series for probabilistic testing of functional connectivity and brain graphs.
Patel AX; Bullmore ET
Neuroimage; 2016 Nov; 142():14-26. PubMed ID: 25944610
[TBL] [Abstract][Full Text] [Related]
19. Dynamic functional connectivity as a neural correlate of fatigue in multiple sclerosis.
Tijhuis FB; Broeders TAA; Santos FAN; Schoonheim MM; Killestein J; Leurs CE; van Geest Q; Steenwijk MD; Geurts JJG; Hulst HE; Douw L
Neuroimage Clin; 2021; 29():102556. PubMed ID: 33472144
[TBL] [Abstract][Full Text] [Related]
20. Dynamic visual cortical connectivity analysis based on functional magnetic resonance imaging.
Zhao L; Zeng W; Shi Y; Nie W; Yang J
Brain Behav; 2020 Jul; 10(7):e01698. PubMed ID: 32506636
[TBL] [Abstract][Full Text] [Related]
[Next] [New Search]