2016
DOI: 10.1109/jbhi.2016.2559938
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Importance of Multimodal MRI in Characterizing Brain Tissue and Its Potential Application for Individual Age Prediction

Abstract: This study presents a voxel-based multiple regression analysis of different magnetic resonance image modalities, including anatomical T1-weighted, T2(*) relaxometry, and diffusion tensor imaging. Quantitative parameters sensitive to complementary brain tissue alterations, including morphometric atrophy, mineralization, microstructural damage, and anisotropy loss, were compared in a linear physiological aging model in 140 healthy subjects (range 20-74 years). The performance of different predictors and the iden… Show more

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Cited by 63 publications
(36 citation statements)
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“…The absolute prediction errors (difference between predicted and chronological age) we obtained in our analyses are quite similar to those reported in previous studies [Brown et al, ; Cherubini et al, ; Franke et al, ]. However, it is worth mentioning that our study cannot be compared entirely with these studies, either because they only studied relatively young subjects [Brown et al, ] or they employed a much smaller sample than we used in our study [Cherubini et al, ]. However, the results are astonishingly similar in showing that the prediction error increases with increasing age [Brown et al, ; Franke et al, ].…”
Section: Discussionsupporting
confidence: 90%
“…The absolute prediction errors (difference between predicted and chronological age) we obtained in our analyses are quite similar to those reported in previous studies [Brown et al, ; Cherubini et al, ; Franke et al, ]. However, it is worth mentioning that our study cannot be compared entirely with these studies, either because they only studied relatively young subjects [Brown et al, ] or they employed a much smaller sample than we used in our study [Cherubini et al, ]. However, the results are astonishingly similar in showing that the prediction error increases with increasing age [Brown et al, ; Franke et al, ].…”
Section: Discussionsupporting
confidence: 90%
“…In line with recent findings from UK Biobank [14,15], positive associations were found between brain-age deltas and diastolic blood pressure, alcohol intake, and stroke risk, concurring with previous WHII studies [32,50], and demonstrating that the brain age-delta measure reflects individual variation in neural aging processes [30]. The associations with biomedical variables were consistent across models (see Figure 5), indicating that while modality-specific brain age models may be informative in patient groups where tissue types are differently affected by disease [26,27,54,67,68], such models may be more closely related in healthy cohorts [14]. It is possible that regional modelling of modality-specific brain aging patterns may be more suitable to detect specific associations with biomedical and clinical measures [19], which could get lost in machine learning models that summarise aging across the whole brain to produce a single global prediction [27].…”
Section: Discussionsupporting
confidence: 81%
“…The majority of extant brain-age studies use T1-weighted MRI alone (Cole, et al, 2019b), though previous multi-modality studies have used two or three modalities (Cherubini, et al, 2016, Groves, et al, 2012, Liem, et al, 2017, Richard, et al, 2018. Thanks to UK Biobank, I was able to combine and compared six different modalities As anticipated, T1-weighted MRI proved important for brain-age prediction here, with normalised grey matter volume being the most informative neuroimaging phenotype.…”
Section: Discussionmentioning
confidence: 80%
“…Several previous brain-age studies have used two or three modalities (Cherubini, et al, 2016, Groves, et al, 2012, Liem, et al, 2017, Richard, et al, 2018. Liem and colleagues (2017) studied n=2354 people, finding improved accuracy when combining T1-weighted structural MRI with resting-state fMRI (MAE = 4.29 years).…”
Section: Introductionmentioning
confidence: 99%