A Cumulus-based implementation of the qualifier metrics.
The following qualifier metrics are implemented (per January 2025 qualifer definitions).
- c_attachment_count
- c_content_type_use
- c_pt_count
- c_pt_deceased_count
- c_resource_count
- c_resources_per_pt
- c_system_use
- c_us_core_v4_count *
- q_date_recent
- q_ref_target_pop
- q_ref_target_valid
- q_system_use
- q_valid_us_core_v4 *
* These are US Core profile-based metrics, and the following profiles are not yet implemented:
- Implantable Device (due to the difficulty in identify implantable records)
- The various Vital Signs sub-profiles like Blood Pressure (just haven't gotten around to them yet)
pip install cumulus-library-data-metrics
These metrics are designed as a
Cumulus Library
study and are run using the cumulus-library
command.
First, you'll want to organize your ndjson into the following file tree format:
root/
condition/
my-conditions.ndjson
medicationrequest/
1.ndjson
2.ndjson
patient/
Patient.ndjson
(This is the same format that Cumulus ETL writes out when using --output-format=ndjson
.)
Here's a sample command to run against that pile of ndjson data:
cumulus-library build \
--db-type duckdb \
--database output-tables.db \
--load-ndjson-dir path/to/ndjson/root \
--target data_metrics
And then you can load output-tables.db
in a DuckDB session and see the results.
Or read below to export the counts tables.
Here's a sample command to run against your Cumulus data in Athena:
cumulus-library build \
--database your-glue-database \
--workgroup your-athena-workgroup \
--profile your-aws-credentials-profile \
--target data_metrics
And then you can see the resulting tables in Athena. Or read below to export the counts tables.
For the metrics that have exportable counts (the characterization metrics mostly),
you can easily export those using Cumulus Library,
by replacing build
in the above commands with export ./output-folder
.
Like so:
cumulus-library export \
./output-folder \
--db-type duckdb \
--database output-tables.db \
--target data_metrics
This study generates CUBE
output by default.
If it's easier to work with simple aggregate counts of every value combination
(that is, without the partial value combinations that CUBE()
generates),
run the build step with --option output-mode:aggregate
.
That is, run it like:
cumulus-library build --option output-mode:aggregate ...
To help preserve privacy, this study ignores any count results of less than ten.
For example, if there are only two male patients that died at age 55,
that combination of male & 55 will be dropped from the c_pt_deceased_count
table.
This makes it easier to share the count results with other institutions.
But if that's not a concern and you want the fine-grained details,
you can run the build step with --option min-bucket-size:0
to turn this feature off.
Or use another value to change the bucket threshold (the default value is 10).