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MedCalc
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# Free statistical calculators

## Description

This procedure calculates the difference between the observed means in two independent samples. A significance value (P-value) and 95% Confidence Interval (CI) of the difference is reported. The P-value is the probability of obtaining the observed difference between the samples if the null hypothesis were true. The null hypothesis is the hypothesis that the difference is 0.

## Required input

For both samples, you enter:

• Mean: the observed arithmetic mean.
• Standard deviation: the observed standard deviation.
• Sample size: the number of observations in the sample.

## Computational notes

The program first calculates the pooled standard deviation s: where s1 and s2 are the standard deviations of the two samples with sample sizes n1 and n2.

The standard error se of the difference between the two means is calculated as: The significance level, or P-value, is calculated using the t-test, with the value t calculated as: The P-value is the area of the t distribution with n1 + n2 − 2 degrees of freedom, that falls outside ± t (see Values of the t distribution table).

When the P-value is less than 0.05 (P<0.05), the conclusion is that the two means are significantly different. Note that in MedCalc P-values are always two-sided (or two-tailed).

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