There is no catch-all answer to that, but there is a main point to consider: A very good rule of thumb is, that the higher your degree of concurrency is, the more you'll profit from MySQL and vice versa.
This means that in a scenario where database requests never ever are concurrent, you might see a speedup by using SQlite, though I doubt it would be in the 100ms order of magnitude.
The reason behind this is (very roughly):
In a database server environment, such as MySQL, PostgreSQL, MS SQL, Oracle and friends, a dedicated process (or a group of processes) exclusively touch the database files - the important part being dedicated. This means, that concurrency issues can be resolved in-process.
In a file-based database, such as SQlite, MS Access (Jet Engine) and friends, multiple processes will touch the DB files without knowing of each other - this implies that concurrency issues have to be resolved by writing them to the DB or helper file(s). This is typically much slower and less robust. In exchange for that, the overhead of communication between the database client (the web app) and the database server (which is in-process) is nonexistent.
After comment I want to make it more clear, that I am talking of concurrent writes, not concurrent reads. Concurrent reads of an unchanging dataset is not a hard problem - it doesn't need any locking at all.