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Dimension constraints improve hypothesis testing for large-scale, graph-associated, brain-image data
被引:1
|作者:
Vo, Tien
[1
]
Mishra, Akshay
[1
]
Ithapu, Vamsi
[1
]
Singh, Vikas
[1
]
Newton, Michael A.
[1
]
机构:
[1] Univ Wisconsin, Dept Biostat & Med Informat, 610 Walnut St, Madison, WI 53726 USA
关键词:
Empirical Bayes;
Graph-respecting partition;
GraphMM;
Image analysis;
Local false-discovery rate;
Mixture model;
FALSE DISCOVERY RATE;
DIRICHLET;
UNIVARIATE;
INFERENCE;
POWER;
D O I:
10.1093/biostatistics/kxab001
中图分类号:
Q [生物科学];
学科分类号:
07 ;
0710 ;
09 ;
摘要:
For large-scale testing with graph-associated data, we present an empirical Bayes mixture technique to score local false-discovery rates (FDRs). Compared to procedures that ignore the graph, the proposed Graph-based Mixture Model (GraphMM) method gains power in settings where non-null cases form connected subgraphs, and it does so by regularizing parameter contrasts between testing units. Simulations show that GraphMM controls the FDR in a variety of settings, though it may lose control with excessive regularization. On magnetic resonance imaging data from a study of brain changes associated with the onset of Alzheimer's disease, GraphMM produces greater yield than conventional large-scale testing procedures.
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页码:860 / 874
页数:15
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