In
statistics
Statistics (from German language, German: ', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a s ...
, the false discovery rate (FDR) is a method of conceptualizing the rate of
type I errors in
null hypothesis testing when conducting
multiple comparisons. FDR-controlling procedures are designed to control the FDR, which is the
expected proportion of "discoveries" (rejected
null hypotheses) that are false (incorrect rejections of the null).
Equivalently, the FDR is the expected ratio of the number of false positive classifications (false discoveries) to the total number of positive classifications (rejections of the null). The total number of rejections of the null include both the number of false positives (FP) and true positives (TP). Simply put, FDR = FP / (FP + TP). FDR-controlling procedures provide less stringent control of Type I errors compared to
family-wise error rate (FWER) controlling procedures (such as the
Bonferroni correction), which control the probability of ''at least one'' Type I error. Thus, FDR-controlling procedures have greater
power, at the cost of increased numbers of Type I errors.
History
Technological motivations
The modern widespread use of the FDR is believed to stem from, and be motivated by, the development in technologies that allowed the collection and analysis of a large number of distinct variables in several individuals (e.g., the expression level of each of 10,000 different genes in 100 different persons).
By the late 1980s and 1990s, the development of "high-throughput" sciences, such as
genomics, allowed for rapid data acquisition. This, coupled with the growth in computing power, made it possible to seamlessly perform a very high number of
statistical tests on a given data set. The technology of
microarray
A microarray is a multiplex (assay), multiplex lab-on-a-chip. Its purpose is to simultaneously detect the expression of thousands of biological interactions. It is a two-dimensional array on a Substrate (materials science), solid substrate—usu ...
s was a prototypical example, as it enabled thousands of genes to be tested simultaneously for differential expression between two biological conditions.
As high-throughput technologies became common, technological and/or financial constraints led researchers to collect datasets with relatively small sample sizes (e.g. few individuals being tested) and large numbers of variables being measured per sample (e.g. thousands of gene expression levels). In these datasets, too few of the measured variables showed statistical significance after classic correction for multiple tests with standard
multiple comparison procedures. This created a need within many scientific communities to abandon
FWER and unadjusted multiple hypothesis testing for other ways to highlight and rank in publications those variables showing marked effects across individuals or treatments that would otherwise be dismissed as non-significant after standard correction for multiple tests. In response to this, a variety of error rates have been proposed—and become commonly used in publications—that are less conservative than
FWER in flagging possibly noteworthy observations. The FDR is useful when researchers are looking for "discoveries" that will give them followup work (E.g.: detecting promising genes for followup studies), and are interested in controlling the proportion of "false leads" they are willing to accept.
Literature
The FDR concept was formally described by
Yoav Benjamini and
Yosef Hochberg in 1995
(
BH procedure) as a less conservative and arguably more appropriate approach for identifying the important few from the trivial many effects tested. The FDR has been particularly influential, as it was the first alternative to the FWER to gain broad acceptance in many scientific fields (especially in the life sciences, from genetics to biochemistry, oncology and plant sciences).
In 2005, the Benjamini and Hochberg paper from 1995 was identified as one of the 25 most-cited statistical papers.
Prior to the 1995 introduction of the FDR concept, various precursor ideas had been considered in the statistics literature. In 1979, Holm proposed the
Holm procedure, a stepwise algorithm for controlling the FWER that is at least as powerful as the well-known
Bonferroni adjustment. This stepwise algorithm sorts the
''p''-values and sequentially rejects the hypotheses starting from the smallest ''p''-values.
Benjamini (2010) said that the false discovery rate,
and the paper Benjamini and Hochberg (1995), had its origins in two papers concerned with multiple testing:
* The first paper is by
Schweder and
Spjotvoll (1982) who suggested plotting the ranked ''p''-values and assessing the number of true null hypotheses (
) via an eye-fitted line starting from the largest ''p''-values.
The ''p''-values that deviate from this straight line then should correspond to the false null hypotheses. This idea was later developed into an algorithm and incorporated the estimation of
into procedures such as Bonferroni, Holm or Hochberg.
This idea is closely related to the graphical interpretation of the BH procedure.
* The second paper is by Branko Soric (1989) which introduced the terminology of "discovery" in the multiple hypothesis testing context.
Soric used the expected number of false discoveries divided by the number of discoveries
as a warning that "a large part of statistical discoveries may be wrong". This led Benjamini and Hochberg to the idea that a similar error rate, rather than being merely a warning, can serve as a worthy goal to control.
The BH procedure was proven to control the FDR for independent tests in 1995 by Benjamini and Hochberg.
In 1986, R. J. Simes offered the same procedure as the "
Simes procedure", in order to control the FWER in the weak sense (under the intersection null hypothesis) when the statistics are independent.
Definitions
Based on definitions below we can define as the proportion of false discoveries among the discoveries (rejections of the null hypothesis):
where
is the number of false discoveries and
is the number of true discoveries.
The false discovery rate (FDR) is then simply the following:
where