You're essentially looking to create a cross-tab query with the drugs. While there are plenty of OLAP tools out there that can do this sort of thing (among all sorts of other slicing and dicing of the data), doing something like this in traditional SQL is not easy (and, in general, impossible to do without some sort of procedural syntax in all but the simplest scenarios).
You essentially have two options when doing this with SQL (well, more accurately, you have one option, and another more complicated but flexible option that derives from it):
- Use a series of
CASE statements in your query to produce columns that are representative of each individual drug. This requires knowing the list of variable values (i.e. drugs) ahead of time
- Use a procedural SQL language, such as T-SQL, to dynamically construct a query that uses case statements as described above, but along with obtaining that list of values from the data itself.
The two options essentially do the same thing, you're just trading simplicity and ease of maintenance for flexibility in the second option.
For example, using option 1:
(case when d.DISEASE_ID is null then 0 else 1 end) as HAD_DISEASE,
(case when sum(case when dr.DRUG_ID = 1 then 1 else 0 end) > 0 then 1 else 0 end) as TOOK_DRUG_1,
(case when sum(case when dr.DRUG_ID = 2 then 1 else 0 end) > 0 then 1 else 0 end) as TOOK_DRUG_2,
(case when sum(case when dr.DRUG_ID = 3 then 1 else 0 end) > 0 then 1 else 0 end) as TOOK_DRUG_3
from PERSON_T p
left join DISEASE_T d on d.PERSON_ID = p.PERSON_ID and d.DISEASE_ID = @DiseaseId
left join DRUG_T dr on dr.PERSON_ID = p.PERSON_ID and dr.DRUG_START_DATE < d.DISEASE_START_DATE
group by p.PERSON_ID, p.NAME, p.GENDER, d.DISEASE_ID
As you can tell, this gets a little laborious as you get outside of just a few potential values.
The other option is to construct this query dynamically. I don't know PostgreSQL and what, if any, procedural capabilities it has, but the overall procedure would be this:
- Gather list of potential
DRUG_ID values along with names for the columns
- Prepare three string values: the SQL prefix (everything before the first drug-related
CASE statement, the SQL stuffix (everything after the last drug-related
CASE statement), and the dynamic portion
- Construct the dynamic portion by combining drug
CASE statements based upon the previously retrieved list
- Combine them into a single (hopefully valid) SQL statement and execute