Extensions of Fisher's method
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Dependent statistics
A principle limitation of Fisher's method is its exclusive design to combine independent p-values, which renders it an unreliable technique to combine dependent p-values. To overcome this limitation, a number of methods were developed to extend its utility.
Known covariance
Brown's method: Gaussian approximation
Fisher's method showed that the log-sum of independent k p-values follow a χ²-distribution of 2k degrees of freedom:
Brown proposed the idea of approximating X using a scaled χ²-distribution, cχ2(k’), with k’ degrees of freedom.