| Literature DB >> 31527989 |
Dan Cheng1, Armin Schwartzman1.
Abstract
A topological multiple testing scheme is presented for detecting peaks in images under stationary ergodic Gaussian noise, where tests are performed at local maxima of the smoothed observed signals. The procedure generalizes the one-dimensional scheme of [31] to Euclidean domains of arbitrary dimension. Two methods are developed according to two different ways of computing p-values: (i) using the exact distribution of the height of local maxima, available explicitly when the noise field is isotropic [9, 10]; (ii) using an approximation to the overshoot distribution of local maxima above a pre-threshold, applicable when the exact distribution is unknown, such as when the stationary noise field is non-isotropic [9]. The algorithms, combined with the Benjamini-Hochberg procedure for thresholding p-values, provide asymptotic strong control of the False Discovery Rate (FDR) and power consistency, with specific rates, as the search space and signal strength get large. The optimal smoothing bandwidth and optimal pre-threshold are obtained to achieve maximum power. Simulations show that FDR levels are maintained in non-asymptotic conditions. The methods are illustrated in the analysis of functional magnetic resonance images of the brain.Entities:
Keywords: Gaussian random field; Primary 62H35; false discovery rate; image analysis; kernel smoothing; overshoot distribution; secondary 62H15; selective inference; topological inference
Year: 2019 PMID: 31527989 PMCID: PMC6746560 DOI: 10.1214/16-AOS1458
Source DB: PubMed Journal: Ann Stat ISSN: 0090-5364 Impact factor: 4.028