Answer:
Confidence interval for the intercept:

Confidence interval for the slope:

Step-by-step explanation:
We start defining our equation's terms, starting from the linear regression model 
In this model
is the intercept estimator and
is the slope estimator.
in the equation y = 37.67 + 33.18x]
and
Then we have the standard errors (se) for each estimator:
and 
The sample number is 49 species (here we assume that all the individuals of a the same species are summarised with a central tendency measure, i.e. mean, median or mode, if each species contained more than one individual).
The formula for the 96% confidence interval for the intercept
we have:

Where
represents the p-value in a t distribution when α=0.04 (so that we have a confidence interval of 96%, or 0.96), two-tailed, and n-2 degrees of freedom. In this example, n-2 = 47, and the t-value (47 degrees of freedom, 0.04 significance level, two tails) is ± 2.1123.
We input these values into our formula:

Similarly, the 96% confidence interval for the slope
is:

Where
And into the formula:

The confidence interval does not include 0, so there is enough evidence saying that there is enough correlation between the metatarsal-to-femur ratio and maximal sprint speed in kilometers per hour. This study shows that measuring the lengths of metatarsal 3 and femur in mammals is a reliable predictor of maximal speed for cursorial mammals.