| Literature DB >> 33616173 |
Tien Vo1, Akshay Mishra1, Vamsi Ithapu1, Vikas Singh1, Michael A Newton1.
Abstract
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.Entities:
Keywords: Empirical Bayes; Graph-respecting partition; GraphMM; Image analysis; Local false-discovery rate; Mixture model
Mesh:
Year: 2022 PMID: 33616173 PMCID: PMC9295049 DOI: 10.1093/biostatistics/kxab001
Source DB: PubMed Journal: Biostatistics ISSN: 1465-4644 Impact factor: 5.279