How well do you trust these heuristics? In particular, what's their false positive rate?
The reason moderators tend to caution against automated actions without any user oversight is that even in the best cases they tend to have way too many false positives. The heuristics that SE itself applied to find low quality posts to send into review ended up tagging many good posts as being bad, to the point where it was cluttering up review. Even the spam-detecting Smoke Detector frequently identifies non-spam posts due to some unfortunate combination of keywords or the like. Most people aren't that careful with their automation, running simple queries for common phrases.
Don't just use automation to shift the burden to moderators. We'd like for you to meet us halfway and not blindly flag things based on queries, etc. Inundating us (or the review queues) with flags on items we don't need to act on or that are full of false positives can slow down the whole process and can distract from more urgent matters.
Because of the high rate of false positives, and the potential consequences for misidentified posts, I prefer to have human oversight on at least the last step before action is taken.
I have little problem with "augmented" moderation combining some form of automation with human decision-making. Automating the identification of potentially problematic posts can be extremely useful, as can userscripts to speed up common human-initiated tasks. However, be aware that any close vote or flag that you cast via your automated system is still attached to your account, and you're responsible for it.
I think there's a lot of potential in some of the machine learning that people have been experimenting with, but the performance isn't there yet to trust them for many tasks. It's definitely an area worth exploring, and something I have my eye on.