If you have proper indexes on your tables, you might be better off with the JOINs but they are often the cause of bottlenecks. Instead of multiple selects, you might look at ways to de-normalize your data. It is far less "expensive" when a user performs an operation to update a count or timestamp in multiple tables which prevents you from having to join those tables.
The best tool I find for performance tuning of queries is using EXPLAIN. You type EXPLAIN before the query and you can see how many rows are scanned. Your goal is the lower the number the better, which means your indexes are working. The other thing is when creating indexes, use compound indexes on multiple fields and order them left to right in the order they appear in the WHERE clause.
For example you have 10,000 rows in sometable:
SELECT id, name, description, status FROM sometable WHERE name LIKE '%someName%' AND status = 'Active';
You could type EXPLAIN before the query and it might return 10,000 as number of rows scanned to match. You then create a compound index:
ALTER TABLE sometable ADD INDEX idx_st_search (name, status);
You then perform the EXPLAIN on table again and it might return 1 as number of rows scanned and performance significantly improved.