We present a practical "how-to" guide to help determine whether single-subject fMRI independent components (ICs) characterise structured noise or not. Manual identification of signal and noise after ICA decomposition is required for efficient data denoising: to train supervised algorithms, to check the results of unsupervised ones or to manually clean the data. In this paper we describe the main spatial and temporal features of ICs and provide general guidelines on how to evaluate these. Examples of signal and noise components are provided from a wide range of datasets (3T data, including examples from the UK Biobank and the Human Connectome Project, and 7T data), together with practical guidelines for their identification. Finally, we discuss how the data quality, data type and preprocessing can influence the characteristics of the ICs and present examples of particularly challenging datasets.

Hand classification of fMRI ICA noise components / Griffanti, Ludovica; Douaud, Gwenaëlle; Bijsterbosh, Janine; Evangelisti, Stefania; Alfaro-Almagro, Fidel; Glasser, Matthew F.; Duff, Eugene P.; Fitzgibbon, Sean; Westphal, Robert; Carone, Davide; Beckmann, Christian F.; Smith, Stephen M.. - In: NEUROIMAGE. - ISSN 1053-8119. - STAMPA. - 154:(2017), pp. 188-205. [10.1016/j.neuroimage.2016.12.036]

Hand classification of fMRI ICA noise components

EVANGELISTI, STEFANIA;
2017

Abstract

We present a practical "how-to" guide to help determine whether single-subject fMRI independent components (ICs) characterise structured noise or not. Manual identification of signal and noise after ICA decomposition is required for efficient data denoising: to train supervised algorithms, to check the results of unsupervised ones or to manually clean the data. In this paper we describe the main spatial and temporal features of ICs and provide general guidelines on how to evaluate these. Examples of signal and noise components are provided from a wide range of datasets (3T data, including examples from the UK Biobank and the Human Connectome Project, and 7T data), together with practical guidelines for their identification. Finally, we discuss how the data quality, data type and preprocessing can influence the characteristics of the ICs and present examples of particularly challenging datasets.
2017
Hand classification of fMRI ICA noise components / Griffanti, Ludovica; Douaud, Gwenaëlle; Bijsterbosh, Janine; Evangelisti, Stefania; Alfaro-Almagro, Fidel; Glasser, Matthew F.; Duff, Eugene P.; Fitzgibbon, Sean; Westphal, Robert; Carone, Davide; Beckmann, Christian F.; Smith, Stephen M.. - In: NEUROIMAGE. - ISSN 1053-8119. - STAMPA. - 154:(2017), pp. 188-205. [10.1016/j.neuroimage.2016.12.036]
Griffanti, Ludovica; Douaud, Gwenaëlle; Bijsterbosh, Janine; Evangelisti, Stefania; Alfaro-Almagro, Fidel; Glasser, Matthew F.; Duff, Eugene P.; Fitzgibbon, Sean; Westphal, Robert; Carone, Davide; Beckmann, Christian F.; Smith, Stephen M.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/599302
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