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Statistica Sinica 31 (2021), 333-360

STRUCTURED CORRELATION DETECTION WITH APPLICATION
TO COLOCALIZATION ANALYSIS
IN DUAL-CHANNEL FLUORESCENCE MICROSCOPIC IMAGING

Shulei Wang1, Jianqing Fan2, Ginger Pocock3, Ellen T. Arena3, Kevin W. Eliceiri3 and Ming Yuan4

1University of Pennsylvania, 2Princeton University, 3University of Alberta and 4Columbia University

Abstract: Current workflows for colocalization analysis in fluorescence microscopic imaging introduce significant bias in terms of the user's choice of region of interest (ROI). In this work, we introduce an automatic, unbiased structured detection method for correlated region detection between two random processes observed on a common domain. We argue that although intuitive, using the maximum log-likelihood statistic directly suffers from potential bias and substantially reduced power. Therefore, we introduce a simple size-based normalization to overcome this problem. We show that scanning using the proposed statistic leads to optimal correlated region detection over a large collection of structured correlation detection problems.

Key words and phrases: Colocalization analysis, optimal rate, scan statistics, signal detection, structured signal.

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