I'll take a shot because I've been involved in some data matching and validation, although not specifically in the medical industry. You haven't specified a particular country, just mentioned Asia, so I'll use an example from my home country of Australia just because I'm familiar with the rules and I believe the same would apply to many Asian countries:
We have a unique Medicare number used for health care, but it's not mandatory and while the free / discounted care means I expect 99%+ of people would have one you can't rely on it.
There is also a tax file number, likewise not mandatory even if you
work and people who have never had a job wouldn't normally have one.
You might be dealing with foreign people that aren't residents.
Drivers licenses are of course not mandatory to get healthcare.
It's perfectly legal to have "no fixed address". Plus some people will lie to get treatments and repeats of drugs etc. Not to mention many people move often.
Changing name is common in case of marriage / divorce and unless done
for illegal purposes someone can change their name just because they
don't like their original. Not to mention people use common substitutions for various things like Jim versus James.
Typing mistakes will be very common over a large dataset.
In short I think the 'perfect' scheme you are asking for is impossible. The best you can do is apply a weighting rule to find likely duplicates. Same name / date of birth / place of birth for example is an unlikely but possible event so show a warning to the data entry operator it's a likely duplicate and let them see the details of the likely duplicate. Even things like a drivers license number that should be unique may indicate that the original entry just had a data entry error, not a new duplicate.
From my experience the best thing is a report that lists likely duplicates that must be reviewed by someone higher up the chain, and give them an easy option to merge the duplicates. Then you can start to use more vague regex expressions that throw a few false positives that can be dismissed when a human reviews them. You can also refine the model over time to get the best match results.