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dc.contributor.authorGorriz Sáez, Juan Manuel 
dc.contributor.authorGarcía Puntonet, Carlos 
dc.contributor.authorRamírez Pérez De Inestrosa, Javier 
dc.contributor.authorSIPBA group
dc.date.accessioned2022-10-28T12:10:05Z
dc.date.available2022-10-28T12:10:05Z
dc.date.issued2022-09-09
dc.identifier.citationJ.M. Gorriz... [et al.]. A hypothesis-driven method based on machine learning for neuroimaging data analysis, Neurocomputing, Volume 510, 2022, Pages 159-171, ISSN 0925-2312, [https://doi.org/10.1016/j.neucom.2022.09.001]es_ES
dc.identifier.urihttps://hdl.handle.net/10481/77619
dc.description.abstractThere remains an open question about the usefulness and the interpretation of machine learning (ML) approaches for discrimination of spatial patterns of brain images between samples or activation states. In the last few decades, these approaches have limited their operation to feature extraction and linear classification tasks for between-group inference. In this context, statistical inference is assessed by randomly permuting image labels or by the use of random effect models that consider between-subject variability. These multivariate ML-based statistical pipelines, whilst potentially more effective for detecting activations than hypotheses-driven methods, have lost their mathematical elegance, ease of interpretation, and spatial localization of the ubiquitous General linear Model (GLM). Recently, the estimation of the conventional GLM parameters has been demonstrated to be connected to an univariate classification task when the design matrix in the GLM is expressed as a binary indicator matrix. In this paper we explore the complete connection between the univariate GLM and ML-based regressions. To this purpose we derive a refined statistical test with the GLM based on the parameters obtained by a linear Support Vector Regression (SVR) in the inverse problem (SVR-iGLM). Subsequently, random field theory (RFT) is employed for assessing statistical significance following a conventional GLM benchmark. Experimental results demonstrate how parameter estimations derived from each model (mainly GLM and SVR) result in different experimental design estimates that are significantly related to the predefined functional task. Moreover, using real data from a multisite initiative the proposed ML-based inference demonstrates statistical power and the control of false positives, outperforming the regular GLM.es_ES
dc.description.sponsorshipMCIN/AEIes_ES
dc.description.sponsorshipFEDER ``Una manera de hacer Europa" RTI2018-098913-B100es_ES
dc.description.sponsorshipJunta de Andaluciaes_ES
dc.description.sponsorshipEuropean Commission CV20-45250 A-TIC-080-UGR18 B-TIC586-UGR20 P20-00525es_ES
dc.description.sponsorshipresearch project ACACIA US-1264994es_ES
dc.description.sponsorshipEuropean Commissiones_ES
dc.description.sponsorshipJunta de Andalucia (Consejeria de Economia, Conocimiento, Empresas y Universidad)es_ES
dc.language.isoenges_ES
dc.publisherElsevieres_ES
dc.rightsAttribution-NonCommercial-NoDerivatives 4.0 Internacional*
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/*
dc.subjectGeneral Linear Modeles_ES
dc.subjectLinear Regression Modeles_ES
dc.subjectSupport Vector Regression permutation testses_ES
dc.subjectMagnetic resonance imaging es_ES
dc.subjectRandom Field Theoryes_ES
dc.titleA hypothesis-driven method based on machine learning for neuroimaging data analysises_ES
dc.typejournal articlees_ES
dc.rights.accessRightsopen accesses_ES
dc.identifier.doi10.1016/j.neucom.2022.09.001
dc.type.hasVersionVoRes_ES


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Attribution-NonCommercial-NoDerivatives 4.0 Internacional
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