You're experiencing a problem common to gprof and other profilers based on the same concepts - 1) sample the program counter to get some kind of histogram, 2) instrument the functions to measure times, counts, and get a call graph.
For actually locating performance problems, they are missing the point.
It's not about measuring routines, it's about finding guilty code.
Suppose you have a sampler that stroboscopically X-rays the program at random wall-clock times. In each sample, the program may be in the middle of I/O, it may be in code that you compiled, it may be in some library routine like malloc.
But no matter where it is, the responsibility for it spending that slice of time is jointly shared by every line of code on the call stack, because if any one of those calls had not been made, it would not be in the process of carrying out the work requested by that call.
So look at every line of code that shows up on multiple samples of the call stack (the more samples it is on, the better). That's where the money is. Don't just look where the program counter is. There are "deep pockets" higher up the stack.