TY - JOUR
T1 - Extending inferential group analysis in type 2 diabetic patients with multivariate GLM implemented in SPM8
AU - Ferreira, Fábio S.
AU - Pereira, João M. S.
AU - Duarte, João V.
AU - Castelo-Branco, Miguel
N1 - Funding Information:
This project was funded by DoIT ? Diamarker, a consortium for the discovery of novel biomarkers in diabetes type 2, QREN-COMPETE ᰀGenetic susceptibility of multisystemic complications of diabetes type 2: novel biomarkers for diagnosis and monitoring of therapy ᴀ, FCT - UID/NEU/04539/2013 COMPETE POCI-01-0145-FEDER-007440), and Fundo para a Investigação em Saúde (FIS), INFARMED, FIS-2015-01_DIA_20150630-173.
Funding Information:
This project was funded by DoIT – Diamarker, a consortium for the discovery of novel biomarkers in diabetes type 2, QREN-COMPETE “Genetic susceptibility of multisystemic complications of diabetes type 2: novel biomarkers for diagnosis and monitoring of therapy”, FCT- UID/NEU/04539/2013 COMPETE POCI-01-0145-FEDER- 007440), and Fundo para a Investigação em Saúde (FIS), INFARMED, FIS-2015-01_DIA_20150630-173.
Publisher Copyright:
© 2017 Ferreira et al.
PY - 2017
Y1 - 2017
N2 - Background: Although voxel based morphometry studies are still the standard for analyzing brain structure, their dependence on massive univariate inferential methods is a limiting factor. A better understanding of brain pathologies can be achieved by applying inferential multivariate methods, which allow the study of multiple dependent variables, e.g. different imaging modalities of the same subject. Objective: Given the widespread use of SPM software in the brain imaging community, the main aim of this work is the implementation of massive multivariate inferential analysis as a toolbox in this software package. applied to the use of T1 and T2 structural data from diabetic patients and controls. This implementation was compared with the traditional ANCOVA in SPM and a similar multivariate GLM toolbox (MRM). Method: We implemented the new toolbox and tested it by investigating brain alterations on a cohort of twenty-eight type 2 diabetes patients and twenty-six matched healthy controls, using information from both T1 and T2 weighted structural MRI scans, both separately – using standard univariate VBM- and simultaneously, with multivariate analyses. Results: Univariate VBM replicated predominantly bilateral changes in basal ganglia and insular regions in type 2 diabetes patients. On the other hand, multivariate analyses replicated key findings of univariate results, while also revealing the thalami as additional foci of pathology. Conclusion: While the presented algorithm must be further optimized, the proposed toolbox is the first implementation of multivariate statistics in SPM8 as a user-friendly toolbox, which shows great potential and is ready to be validated in other clinical cohorts and modalities.
AB - Background: Although voxel based morphometry studies are still the standard for analyzing brain structure, their dependence on massive univariate inferential methods is a limiting factor. A better understanding of brain pathologies can be achieved by applying inferential multivariate methods, which allow the study of multiple dependent variables, e.g. different imaging modalities of the same subject. Objective: Given the widespread use of SPM software in the brain imaging community, the main aim of this work is the implementation of massive multivariate inferential analysis as a toolbox in this software package. applied to the use of T1 and T2 structural data from diabetic patients and controls. This implementation was compared with the traditional ANCOVA in SPM and a similar multivariate GLM toolbox (MRM). Method: We implemented the new toolbox and tested it by investigating brain alterations on a cohort of twenty-eight type 2 diabetes patients and twenty-six matched healthy controls, using information from both T1 and T2 weighted structural MRI scans, both separately – using standard univariate VBM- and simultaneously, with multivariate analyses. Results: Univariate VBM replicated predominantly bilateral changes in basal ganglia and insular regions in type 2 diabetes patients. On the other hand, multivariate analyses replicated key findings of univariate results, while also revealing the thalami as additional foci of pathology. Conclusion: While the presented algorithm must be further optimized, the proposed toolbox is the first implementation of multivariate statistics in SPM8 as a user-friendly toolbox, which shows great potential and is ready to be validated in other clinical cohorts and modalities.
KW - Multivariate GLM
KW - SPM
KW - T1
KW - T2
KW - Type 2 diabetes mellitus
KW - VBM
UR - http://www.scopus.com/inward/record.url?scp=85044048408&partnerID=8YFLogxK
U2 - 10.2174/1874440001711010032
DO - 10.2174/1874440001711010032
M3 - Article
AN - SCOPUS:85044048408
SN - 1874-4400
VL - 11
SP - 32
EP - 45
JO - Open Neuroimaging Journal
JF - Open Neuroimaging Journal
ER -