Stats
Standard deviation versus standard error (May 16, 2005)
Category: Descriptive
statistics
Someone asked me about when you should report the standard deviation and
when you should report the standard error. This is often done on graphs using
a vile and disgusting approach known as error bars. People get these confused
easily, and since the standard error is always smaller, here is a good
strategy.
- When you are trying to emphasize small and unimportant differences in
your data, show your error bars as the standard errors for the groups and
hope that your readers think they are standard deviations.
- When you are trying to cover-up large differences, show the error bars
as the standard deviations for the groups, and hope that your readers think
they are a standard errors.
Actually, I always prefer the standard deviation, because that is a measure
that tells you something about the data itself. Here's an example from an
article published in an open source journal.
- Can pulsed ultrasound increase tissue damage during ischemia? A study
of the effects of ultrasound on infarcted and non-infarcted myocardium in
anesthetized pigs. Olivecrona GK, Hardig BM, Roijer A, Block M, Grins E,
Persson HW, Johansson L, Olsson B. BMC Cardiovasc Disord 2005: 5(1); 8.
[Medline]
[Abstract] [Full
text]
[PDF]
Here is the abstract of this article:
Background The same mechanisms by which ultrasound enhances
thrombolysis are described in connection with non-beneficial effects of
ultrasound. The present safety study was therefore designed to explore
effects of beneficial ultrasound characteristics on the infarcted and non-infarcted
myocardium. Methods In an open chest porcine model (n = 17),
myocardial infarction was induced by ligating a coronary diagonal branch.
Pulsed ultrasound of frequency 1 MHz and intensity 0.1 W/cm2 (ISATA) was
applied during one hour to both infarcted and non-infarcted myocardial
tissue. These ultrasound characteristics are similar to those used in
studies of ultrasound enhanced thrombolysis. Using blinded assessment
technique, myocardial damage was rated according to histopathological
criteria. Results Infarcted myocardium exhibited a significant
increase in damage score compared to non-infarcted myocardium: 6.2 ' 2.0
vs. 4.3 ' 1.5 (mean ' standard deviation), (p = 0.004). In the infarcted
myocardium, ultrasound exposure yielded a further significant increase of
damage scores: 8.1 ' 1.7 vs. 6.2 ' 2.0 (p = 0.027). Conclusion Our
results suggest an instantaneous additive effect on the ischemic damage in
myocardial tissue when exposed to ultrasound of stated characteristics. The
ultimate damage degree remains to be clarified.
I like seeing the standard deviation, because then I can apply the rough
rule of thumb that says that most of the data will be between plus/minus two
standard deviations. So the non-infected myocardium had most of the damage
scores somewhere between 1.3 and 7.3. The infarcted myocardium had most of
the damage scores between 2.2 and 10.2. The ultrasound exposure had most of
the damage scores between 4.7 and 11.5. This tells me that even though the
p-values are very small, there is still a fair amount of overlap in the
individual damage scores.
Another advantage of reporting the standard deviation is that you often see
interesting relationships between the means and standard deviations. In
particular, groups with large means often have larger standard deviations as
well. This sort of relationship might be missed if you reported standard
errors, especially if the sample sizes in each group are not all the same.
07/08/2008.