Before getting to your specific query, it's important to understand how an index works.
With appropriate statistics, this query:
select * from foo where bar = 'bar'
... will use an index on
foo(bar) if it's selective. That means, if
bar = 'bar' amounts to selecting most of the table's rows, it'll go faster to just read the table and eliminate rows that don't apply. In contrast, if
bar = 'bar' means only selecting a handful of rows, reading the index makes sense.
Suppose we now toss in an order clause and that you've indexes on each of
select * from foo where bar = 'bar' order by baz
bar = 'bar' is very selective, it's cheap to grab all rows that comply, and to sort them in memory. If it's not at all selective, the index on
foo(baz) makes little sense because you'll fetch the entire table anyway: using it would mean going back and forth on disk pages to read the rows in order, which is very expensive.
Toss in a limit clause, however, and
foo(baz) might suddenly make sense:
select * from foo where bar = 'bar' order by baz limit 10
bar = 'bar' is very selective, it's still a good option. If it's not at all selective, you'll quickly find 10 matching rows by scanning the index on
foo(baz) -- you might read 10 rows, or 50, but you'll find 10 good ones soon enough.
Suppose the latter query with indexes on
foo(bar, baz) and
foo(baz, bar) instead. Indexes are read from left to right. One makes very good sense for this potential query, the other might make none at all. Think of them like this:
bar baz baz bar
bad aaa aaa bad
bad bbb aaa bar
bar aaa bbb bad
bar bbb bbb bar
As you can see, the index on
foo(bar, baz) allows to start reading at
('bar', 'aaa') and fetching the rows in order from that point forward.
The index on
foo(baz, bar), on the contrary, yields rows sorted by
baz irrespective of what
bar might hold. If
bar = 'bar' is not at all selective as a criteria, you'll quickly run into matching rows for your query, in which case it makes sense to use it. If it's very selective, you may end up iterating gazillions of rows before finding enough that match
bar = 'bar' -- it might still be a good option, but it's as optimal.
With that being addressed, let's get back to your original query...
You need to join articles with categories, to filter articles that are in a particular category, with more than one comment, that aren't deleted, and then sort them by date, and then grabbing a handful of them.
I take it that most articles are not deleted, so an index on that criteria won't be of much use -- it'll only slow down writes and query planning.
I presume most articles have a comment or more, so that won't be selective either. I.e. there's little need to index it either.
Without your category filter, index options are reasonably obvious:
articles(last_updated); possibly with the comment count column to the right, and the deleted flag to the left.
With your category filter, it all depends...
If your category filter is very selective, it actually makes very good sense to select all rows that are within that category, sort them in memory, and pick the top matching rows.
If your category filter is not at all selective and yields almost article, the index on
articles(last_update) makes sense: valid rows are all over the place, so read rows in order until you find enough that match and voilà.
In the more general case, it's just vaguely selective. To the best of my knowledge, the stats collected don't look into correlations much. Thus, the planner has no good way to estimate whether it'll find articles with the right category fast enough to be worth reading the latter index. Joining and sorting in memory will usually cheaper, so the planner goes with that.
Anyway, you've two options to force the use of an index.
One is to acknowledge that the query planner is not perfect and to use a hint:
Be wary though, because sometimes the planner is actually correct in not wanting to use the index you'd like it to or vice version. Also, it may become correct in a future version of MySQL, so keep that in mind as you maintain your code over the years.
STRAIGHT_JOIN, as point out by DRap works too, with similar caveats.
The other is to maintain an extra column to tag frequently selected articles (e.g. a tinyint field, which is set to 1 when they belong to your specific category), and then add an index on e.g.
articles(cat_78, last_updated). Maintain it using a trigger and you'll do fine.