Power Prediction in Large Scale Multiple Testing: A Fourier Approach

A problem that is frequently found in large-scale multiple testing is that, in the present stage of experiment (e.g. gene microarray, functional MRI), the signals are so faint that it is impossible to attain a desired level of testing power, and one has to enroll more samples in the follow-up experi...

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Main Author: Sarkar, Avranil
Format: Others
Published: Research Showcase @ CMU 2010
Online Access:http://repository.cmu.edu/dissertations/2
http://repository.cmu.edu/cgi/viewcontent.cgi?article=1001&context=dissertations
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spelling ndltd-cmu.edu-oai-repository.cmu.edu-dissertations-10012014-07-24T15:35:31Z Power Prediction in Large Scale Multiple Testing: A Fourier Approach Sarkar, Avranil A problem that is frequently found in large-scale multiple testing is that, in the present stage of experiment (e.g. gene microarray, functional MRI), the signals are so faint that it is impossible to attain a desired level of testing power, and one has to enroll more samples in the follow-up experiment. Suppose we are going to enlarge the sample size by a times in the follow-up experiment, where a > 1 is not necessary an integer. A problem of great interest is, given data based on the current stage of experiment, how to predict the testing power after the sample size is enlarged by a times. We consider test z-scores and model the test statistics in the current experiment as Xj ~ N(μj , 1), 1 ≤ j ≤ n. We propose a Fourier approach to predicting the testing power after n replicates. The approach produces a very accurate prediction for moderately large values of a ( a ≤ 7). Finally, we discuss potential applications of this method on real data with emphasis on gene microarray data. 2010-08-26T07:00:00Z text application/pdf http://repository.cmu.edu/dissertations/2 http://repository.cmu.edu/cgi/viewcontent.cgi?article=1001&context=dissertations Dissertations Research Showcase @ CMU
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description A problem that is frequently found in large-scale multiple testing is that, in the present stage of experiment (e.g. gene microarray, functional MRI), the signals are so faint that it is impossible to attain a desired level of testing power, and one has to enroll more samples in the follow-up experiment. Suppose we are going to enlarge the sample size by a times in the follow-up experiment, where a > 1 is not necessary an integer. A problem of great interest is, given data based on the current stage of experiment, how to predict the testing power after the sample size is enlarged by a times. We consider test z-scores and model the test statistics in the current experiment as Xj ~ N(μj , 1), 1 ≤ j ≤ n. We propose a Fourier approach to predicting the testing power after n replicates. The approach produces a very accurate prediction for moderately large values of a ( a ≤ 7). Finally, we discuss potential applications of this method on real data with emphasis on gene microarray data.
author Sarkar, Avranil
spellingShingle Sarkar, Avranil
Power Prediction in Large Scale Multiple Testing: A Fourier Approach
author_facet Sarkar, Avranil
author_sort Sarkar, Avranil
title Power Prediction in Large Scale Multiple Testing: A Fourier Approach
title_short Power Prediction in Large Scale Multiple Testing: A Fourier Approach
title_full Power Prediction in Large Scale Multiple Testing: A Fourier Approach
title_fullStr Power Prediction in Large Scale Multiple Testing: A Fourier Approach
title_full_unstemmed Power Prediction in Large Scale Multiple Testing: A Fourier Approach
title_sort power prediction in large scale multiple testing: a fourier approach
publisher Research Showcase @ CMU
publishDate 2010
url http://repository.cmu.edu/dissertations/2
http://repository.cmu.edu/cgi/viewcontent.cgi?article=1001&context=dissertations
work_keys_str_mv AT sarkaravranil powerpredictioninlargescalemultipletestingafourierapproach
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