Evaluation of non-negative matrix factorization of grey matter in age prediction

被引:70
|
作者
Varikuti, Deepthi P. [1 ,2 ,3 ]
Genon, Sarah [1 ,2 ,3 ]
Sotiras, Aristeidis [4 ]
Schwender, Holger [5 ]
Hoffstaedter, Felix [1 ,2 ,3 ]
Patil, Kaustubh R. [1 ,2 ]
Jockwitz, Christiane [1 ,6 ,7 ]
Caspers, Svenja [1 ,6 ,7 ]
Moebus, Susanne [8 ]
Amunts, Katrin [1 ,6 ]
Davatzikos, Christos [4 ]
Eickhoff, Simon B. [1 ,2 ,3 ]
机构
[1] Inst Neurosci & Med INM 1 INM 7, Res Ctr Juelich, Julich, Germany
[2] Heinrich Heine Univ Dusseldorf, Med Fac, Inst Syst Neurosci, Dusseldorf, Germany
[3] Heinrich Heine Univ Dusseldorf, Inst Clin Neurosci & Med Psychol, Dusseldorf, Germany
[4] Univ Penn, Ctr Biomed Image Comp & Analyt, Sect Biomed Image Anal, Philadelphia, PA 19104 USA
[5] Heinrich Heine Univ Dusseldorf, Math Inst, Dusseldorf, Germany
[6] Heinrich Heine Univ, Med Fac, C&O Vogt Inst Brain Res, Dusseldorf, Germany
[7] Juelich Aachen Res Alliance, JARA BRAIN, Julich, Germany
[8] Univ Duisburg Essen, Inst Med Informat Biometry & Epidemiol, Essen, Germany
基金
美国国家卫生研究院;
关键词
Non-negative matrix factorization; Structural MRI; Voxel-based morphometry; Age prediction; Dimensionality reduction; LASSO regression; MILD COGNITIVE IMPAIRMENT; ALZHEIMERS-DISEASE; BRAIN-AGE; STRUCTURAL COVARIANCE; INDIVIDUAL BRAINAGE; IMAGING PATTERNS; OLDER-ADULTS; SELECTION; CLASSIFICATION; MRI;
D O I
10.1016/j.neuroimage.2018.03.007
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
The relationship between grey matter volume (GMV) patterns and age can be captured by multivariate pattern analysis, allowing prediction of individuals' age based on structural imaging. Raw data, voxel-wise GMV and non-sparse factorization (with Principal Component Analysis, PCA) show good performance but do not promote relatively localized brain components for post-hoc examinations. Here we evaluated a non-negative matrix factorization (NNMF) approach to provide a reduced, but also interpretable representation of GMV data in age prediction frameworks in healthy and clinical populations. This examination was performed using three datasets: a multi-site cohort of life-span healthy adults, a single site cohort of older adults and clinical samples from the ADNI dataset with healthy subjects, participants with Mild Cognitive Impairment and patients with Alzheimer's disease (AD) subsamples. T1-weighted images were preprocessed with VBM8 standard settings to compute GMV values after normalization, segmentation and modulation for non-linear transformations only. Non-negative matrix factorization was computed on the GM voxel-wise values for a range of granularities (50-690 components) and LASSO (Least Absolute Shrinkage and Selection Operator) regression were used for age prediction. First, we compared the performance of our data compression procedure (i.e., NNMF) to various other approaches (i.e., uncompressed VBM data, PCA-based factorization and parcellation-based compression). We then investigated the impact of the granularity on the accuracy of age prediction, as well as the transferability of the factorization and model generalization across datasets. We finally validated our framework by examining age prediction in ADNI samples. Our results showed that our framework favorably compares with other approaches. They also demonstrated that the NNMF based factorization derived from one dataset could be efficiently applied to compress VBM data of another dataset and that granularities between 300 and 500 components give an optimal representation for age prediction. In addition to the good performance in healthy subjects our framework provided relatively localized brain regions as the features contributing to the prediction, thereby offering further insights into structural changes due to brain aging. Finally, our validation in clinical populations showed that our framework is sensitive to deviance from normal structural variations in pathological aging.
引用
收藏
页码:394 / 410
页数:17
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