# Output t.test results to a data frame in R

I have a data frame of values from individuals linked to groups. I want to identify those groups who have mean values greater than the mean value plus one standard deviation for the whole data set. To do this, I'm calculating the mean value and standard deviation for the entire data frame and then running pairwise t-tests to compare to each group mean. I'm running into trouble outputting the results.

``````> head(df)

individual  group  value
1 11559638    75     0.371
2 11559641    75     0.367
3 11559648    75     0.410
4 11559650    75     0.417
5 11559652    75     0.440
6 11559654    75     0.395

> allvalues <- data.frame(mean=rep(mean(df\$value), length(df\$individual)), sd=rep(sd(df\$value),  length(df\$individual)))

> valueplus <- with(df, by(df, df\$individual, function(x) t.test(allvalues\$mean + allvalues\$sd, df\$value, data=x)))

> tmpplus

--------------------------------------------------------------------------
df\$individuals: 10
NULL
--------------------------------------------------------------------------
df\$individuals: 20
NULL
--------------------------------------------------------------------------
df\$individuals: 21

Welch Two Sample t-test

data:  allvalues\$mean + allvalues\$sd and df\$value
t = 84.5217, df = 4999, p-value < 2.2e-16
alternative hypothesis: true difference in means is not equal to 0
95 percent confidence interval:
0.04676957 0.04899068
sample estimates:
mean of x mean of y
0.4719964 0.4241162
``````

How do I get the results into a data frame? I'd expect the output to look something like this:

``````      groups  t        df     p-value  mean.x    mean.y
1 10      NULL     NULL   NULL     NULL      NULL
2 20      NULL     NULL   NULL     NULL      NULL
3 21      84.5217  4999   2.2e-16  0.4719964 0.4241162
``````
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This looks very suspect from a statistical point of view. Wouldn't it be wiser to run an ANOVA and then report the results of p-values that have been adjusted for multiple comparisons? –  BondedDust Apr 16 '13 at 20:55
@DWin Beat me to it. You are going to run into serious issues here because you are performing multiple comparisons. If you do not adjust the significance level (by using something like a Bonferroni adjustment), you are increasing the chances of ending up with Type I error. –  TARehman Apr 16 '13 at 20:58
You might try going over to CrossValidated to get your methodological issues sorted before asking us about programming...? –  TARehman Apr 16 '13 at 21:01