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Data extraction tips for meta-analysis

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Logarithms (frequently referred to as ‘logs’) are often used in statistics. Medical statisticians log-transform skewed data to make the distribution of the data more symmetrical and this helps data ‘behave better’ by meeting the assumptions of statistical models. When plotting graphs, log-transforming makes curved data fall on lines which are more straight, and ‘flattens’ data, drawing in extreme values which enables patterns in the data to be seen more clearly.

In my blog, when I refer to logs I will mean ‘natural’ logs for which the base is e, known as Euler’s number, and it is equal to 2.718 to 3 decimal places. I will write the natural log of x as In(x). Medical statisticians typically use natural logs. In some sciences, logs to base 10, also known as the ‘common logarithm’ is more common. A bit of maths (see below if you’re interested) shows us


In computer programs and software packages, natural logs of x is written as log(x) in R and SAS, LN(x) in SPSS and EXCEL, and either ln(x) or log(x) in STATA. On calculators, the button to calculate the natural log of a number is ln. To antilog (cancel out) natural logs, we use the exponential function. This is written as exp(x) in R, SAS and STATA, and EXP(x) in SPSS and EXCEL. In calculators, it is given as ex, and this may have its own button, as on a mobile phone app, or it may be accessed on a hand-held calculator by pressing the SHIFT and ln keys in sequence.

Where did the equations come from?

To calculate ln(x):

Start with


(equation 1)

Which means that


Taking natural logs of both sides


Using the 3rd law of logs 𝑙𝑛(𝑥𝑛)=𝑛×𝑙𝑛(𝑥)


Substitute for y using equation 1


(equation 2)

To calculate log10(x):

By a similar process, starting with


(equation 3)

Which means that


Taking logs of base 10 of both sides and using 3rd law of logs


Substitute for y using equation 3


To calculate e:

Substitute for log10(x) in equation 2 and cancel out ln(x)


Rearranging the equation


Which means that



Download a pdf version of this tip


Dr Kathy Taylor teaches data extraction in Meta-analysis. This is a short course that is also available as part of our MSc in Evidence-Based Health CareMSc in EBHC Medical Statistics, and MSc in EBHC Systematic Reviews.

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