How do I select the first row of an R data frame that meets certain criteria?

Here is the context:

I have a data frame with five columns:

```
"pixel", "year","propvar", "component", "cumsum."
```

There are 1,225 combinations of `pixel`

and `year`

, because the data was computed from the annual time series of 49 geographic pixels for each of 25 study years. Within each pixel-year, I have computed `propvar`

, the proportion of total variance explained by a given component of the fast Fourier transform for the time series of a given pixel-year. I then computed `cumsum`

, which is the cumulative sum of `propvar`

for each frequency component within a pixel-year. The `component`

column just gives you an index for the Fourier series component (plus 1) from which `propvar`

was calculated.

I want to determine the number of components required to explain greater than 99% of the variance. I figure one way to do this is to find the first row within each pixel-year where `cumsum`

> 0.99, and create a data frame from it with three columns, `pixel`

, `year`

, and `numbercomps`

, where `numbercomps`

is the number of components required within a given pixel-year to explain greater than 99% of the variance. I do not know how to do this in R. Does anyone have a solution?