feat: return ALL GP matches with code_frequency in get_patient_indication_groups (Task 1.1)
- Replace QUALIFY ROW_NUMBER()=1 with GROUP BY + COUNT(*) to return all matching Search_Terms per patient instead of just the most recent - Add earliest_hcd_date parameter to restrict GP codes to HCD data window - Return code_frequency column (count of matching SNOMED codes per Search_Term) for use as tiebreaker in drug-aware indication matching - Update empty DataFrame returns to match new column format
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@@ -57,7 +57,7 @@ Only assign a drug to an indication if BOTH conditions are met. If a patient's d
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## Phase 1: Update Snowflake Query & Drug Mapping
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### 1.1 Update `get_patient_indication_groups()` to return ALL matches with frequency
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- [ ] Modify the Snowflake query in `get_patient_indication_groups()` (diagnosis_lookup.py):
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- [x] Modify the Snowflake query in `get_patient_indication_groups()` (diagnosis_lookup.py):
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- Remove `QUALIFY ROW_NUMBER() OVER (PARTITION BY ... ORDER BY EventDateTime DESC) = 1`
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- Return ALL matching Search_Terms per patient with code frequency:
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```sql
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@@ -73,10 +73,10 @@ Only assign a drug to an indication if BOTH conditions are met. If a patient's d
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- `code_frequency` = number of matching SNOMED codes per Search_Term per patient
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- Higher frequency = more clinical activity = stronger signal for tiebreaker
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- `earliest_hcd_date` = `MIN(Intervention Date)` from the HCD DataFrame — restricts GP codes to the HCD data window, reducing noise from old/irrelevant diagnoses
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- [ ] Accept `earliest_hcd_date` parameter in `get_patient_indication_groups()` and pass to query
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- [ ] Keep batch processing (500 patients per query)
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- [ ] Update return type: DataFrame now has multiple rows per patient (PatientPseudonym, Search_Term, code_frequency)
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- [ ] Verify: Query returns more rows than before (patients with multiple matching diagnoses)
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- [x] Accept `earliest_hcd_date` parameter in `get_patient_indication_groups()` and pass to query
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- [x] Keep batch processing (500 patients per query)
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- [x] Update return type: DataFrame now has multiple rows per patient (PatientPseudonym, Search_Term, code_frequency)
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- [ ] Verify: Query returns more rows than before (patients with multiple matching diagnoses) *(requires live Snowflake — will be verified in Phase 3/4)*
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### 1.2 Merge related asthma Search_Terms in CLUSTER_MAPPING_SQL
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- [x] In `CLUSTER_MAPPING_SQL` (diagnosis_lookup.py), merge these 3 Search_Terms into one `"asthma"` entry:
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@@ -1400,49 +1400,57 @@ def get_patient_indication_groups(
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patient_pseudonyms: list[str],
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connector: Optional[SnowflakeConnector] = None,
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batch_size: int = 500,
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earliest_hcd_date: Optional[str] = None,
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) -> "pd.DataFrame":
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"""
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Batch lookup GP diagnosis-based indication groups using Snowflake cluster query.
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This function queries Snowflake directly using the embedded cluster CTE
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(from snomed_indication_mapping_query.sql) to find patients with matching
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GP diagnoses. This is the NEW approach replacing the old SQLite-based lookup.
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Returns ALL matching Search_Terms per patient with code_frequency (count of
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matching SNOMED codes). This enables drug-aware indication matching where
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each drug is cross-referenced against the patient's GP diagnoses.
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The query:
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1. Uses the cluster mapping CTE to get all Search_Term -> SNOMED code mappings
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2. Joins with PrimaryCareClinicalCoding to find patients with matching codes
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3. Returns the most recent match per patient (by EventDateTime)
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3. Groups by patient + Search_Term and counts matching codes (code_frequency)
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4. Optionally restricts to GP codes from earliest_hcd_date onwards
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Args:
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patient_pseudonyms: List of PseudoNHSNoLinked values (matches PatientPseudonym in GP records)
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connector: Optional SnowflakeConnector (defaults to singleton)
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batch_size: Number of patients per Snowflake query batch (default 500)
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earliest_hcd_date: Optional ISO date string (YYYY-MM-DD). If provided, only
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counts GP codes from this date onwards. Should be MIN(Intervention Date)
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from the HCD DataFrame to restrict to the HCD data window.
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Returns:
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DataFrame with columns:
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- PatientPseudonym: The patient identifier (PseudoNHSNoLinked value)
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- Search_Term: The matched indication (e.g., "rheumatoid arthritis")
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- EventDateTime: Date of the GP diagnosis record
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- code_frequency: Count of matching SNOMED codes for this Search_Term
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Multiple rows per patient (one per matched Search_Term).
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Patients not found in results have no matching GP diagnosis.
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"""
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import pandas as pd
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logger.info(f"Starting Snowflake-direct indication lookup for {len(patient_pseudonyms)} patients...")
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if earliest_hcd_date:
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logger.info(f" Restricting GP codes to >= {earliest_hcd_date}")
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# Handle edge case: empty patient list
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if not patient_pseudonyms:
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logger.warning("Empty patient list provided")
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return pd.DataFrame(columns=['PatientPseudonym', 'Search_Term', 'EventDateTime'])
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return pd.DataFrame(columns=['PatientPseudonym', 'Search_Term', 'code_frequency'])
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# Check Snowflake availability
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if not SNOWFLAKE_AVAILABLE:
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logger.error("Snowflake connector not available - cannot lookup GP records")
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return pd.DataFrame(columns=['PatientPseudonym', 'Search_Term', 'EventDateTime'])
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return pd.DataFrame(columns=['PatientPseudonym', 'Search_Term', 'code_frequency'])
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if not is_snowflake_configured():
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logger.error("Snowflake not configured - cannot lookup GP records")
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return pd.DataFrame(columns=['PatientPseudonym', 'Search_Term', 'EventDateTime'])
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return pd.DataFrame(columns=['PatientPseudonym', 'Search_Term', 'code_frequency'])
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if connector is None:
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connector = get_connector()
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@@ -1463,36 +1471,43 @@ def get_patient_indication_groups(
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# Build patient IN clause placeholders
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patient_placeholders = ", ".join(["%s"] * len(batch_pseudonyms))
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# Build WHERE clause with optional date filter
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date_filter = ""
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if earliest_hcd_date:
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date_filter = f"\n AND pc.\"EventDateTime\" >= %s"
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# Build the full query with cluster CTE
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# This finds the most recent matching diagnosis for each patient
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# Note: Column names must be aliased to ensure consistent casing in results
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# Returns ALL matching Search_Terms per patient with code_frequency
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# code_frequency = COUNT of matching SNOMED codes per Search_Term per patient
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query = f"""
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{CLUSTER_MAPPING_SQL}
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SELECT
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pc."PatientPseudonym" AS "PatientPseudonym",
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aic.Search_Term AS "Search_Term",
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pc."EventDateTime" AS "EventDateTime"
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COUNT(*) AS "code_frequency"
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FROM DATA_HUB.PHM."PrimaryCareClinicalCoding" pc
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INNER JOIN AllIndicationCodes aic
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ON pc."SNOMEDCode" = aic.SNOMEDCode
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WHERE pc."PatientPseudonym" IN ({patient_placeholders})
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QUALIFY ROW_NUMBER() OVER (
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PARTITION BY pc."PatientPseudonym"
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ORDER BY pc."EventDateTime" DESC
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) = 1
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WHERE pc."PatientPseudonym" IN ({patient_placeholders}){date_filter}
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GROUP BY pc."PatientPseudonym", aic.Search_Term
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"""
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# Build params: patient pseudonyms + optional date
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params = list(batch_pseudonyms)
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if earliest_hcd_date:
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params.append(earliest_hcd_date)
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try:
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results = connector.execute_dict(query, tuple(batch_pseudonyms))
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results = connector.execute_dict(query, tuple(params))
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for row in results:
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all_results.append({
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'PatientPseudonym': row.get('PatientPseudonym'),
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'Search_Term': row.get('Search_Term'),
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'EventDateTime': row.get('EventDateTime'),
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'code_frequency': row.get('code_frequency', 0),
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})
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logger.debug(f"Batch {batch_num}: found {len(results)} matches")
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logger.debug(f"Batch {batch_num}: found {len(results)} patient-indication matches")
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except Exception as e:
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logger.error(f"Error querying GP records for batch {batch_num}: {e}")
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@@ -1503,12 +1518,15 @@ QUALIFY ROW_NUMBER() OVER (
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# Log summary statistics
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if len(result_df) > 0:
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matched_count = len(result_df)
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match_rate = 100 * matched_count / total_patients
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unique_patients = result_df['PatientPseudonym'].nunique()
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total_rows = len(result_df)
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match_rate = 100 * unique_patients / total_patients
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unique_terms = result_df['Search_Term'].nunique()
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avg_indications = total_rows / unique_patients if unique_patients > 0 else 0
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logger.info(f"Indication lookup complete:")
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logger.info(f" Total patients queried: {total_patients}")
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logger.info(f" Patients with GP match: {matched_count} ({match_rate:.1f}%)")
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logger.info(f" Patients with GP match: {unique_patients} ({match_rate:.1f}%)")
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logger.info(f" Total patient-indication rows: {total_rows} (avg {avg_indications:.1f} per patient)")
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logger.info(f" Unique Search_Terms found: {unique_terms}")
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# Log top Search_Terms
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@@ -149,3 +149,47 @@ This project extends the indication-based pathway charts (Phase 1-5 complete) wi
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- This is independent of Task 1.1 if you mock the gp_matches_df input
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### Blocked items:
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- None
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## Iteration 3 — 2026-02-05
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### Task: 1.1 — Update get_patient_indication_groups() to return ALL matches with code_frequency
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### Why this task:
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- Previous iteration recommended this as the next task
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- This is the last remaining Phase 1 dependency — Tasks 2.1/2.2 need the GP matches data in the right format (multiple rows per patient with code_frequency)
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- Task 1.1 changes the query fundamentals; better to do this before building assign_drug_indications() which consumes the output
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### Status: COMPLETE
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### What was done:
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- Modified `get_patient_indication_groups()` in `diagnosis_lookup.py`:
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1. **Removed** `QUALIFY ROW_NUMBER() OVER (PARTITION BY pc."PatientPseudonym" ORDER BY pc."EventDateTime" DESC) = 1`
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2. **Replaced** with `GROUP BY pc."PatientPseudonym", aic.Search_Term` + `COUNT(*) AS "code_frequency"`
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3. **Added** `earliest_hcd_date: Optional[str] = None` parameter
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4. **Added** optional `AND pc."EventDateTime" >= %s` when earliest_hcd_date is provided
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5. **Updated** return columns from `(PatientPseudonym, Search_Term, EventDateTime)` to `(PatientPseudonym, Search_Term, code_frequency)`
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6. **Updated** all empty DataFrame returns to use new column names
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7. **Updated** logging to show multiple-rows-per-patient stats (avg indications per patient)
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8. **Updated** docstring to describe new behavior and parameters
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- Backward compatible: `earliest_hcd_date` defaults to `None`, existing callers still work
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- Note: caller in `refresh_pathways.py` (line 424-428) does `dict(zip(...))` which will only keep last match per patient with new multi-row format — this will be updated in Task 3.1
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### Validation results:
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- Tier 1 (Code): py_compile PASSED, import check PASSED, function signature verified
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- Tier 2 (Data): Empty DataFrame returns correct columns ['PatientPseudonym', 'Search_Term', 'code_frequency']; live Snowflake test deferred to Phase 3/4
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- Tier 3 (Functional): N/A (no UI changes)
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### Files changed:
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- data_processing/diagnosis_lookup.py (modified get_patient_indication_groups function)
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- IMPLEMENTATION_PLAN.md (marked 1.1 subtasks [x])
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### Committed: [pending]
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### Patterns discovered:
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- The `earliest_hcd_date` parameter is passed as a string in ISO format (YYYY-MM-DD) via Snowflake %s placeholder — Snowflake handles string-to-timestamp comparison implicitly
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- The GROUP BY approach naturally deduplicates SNOMED codes within the same Search_Term — a patient with the same SNOMED code recorded 5 times gets code_frequency=5 (reflecting clinical activity intensity)
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- params list is built dynamically: `batch_pseudonyms + [earliest_hcd_date]` only when date filter is active
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### Next iteration should:
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- Work on Task 2.1: Create `assign_drug_indications()` function
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- This is now unblocked since 1.1 is complete (return format is known)
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- Input: HCD df, gp_matches_df (PatientPseudonym, Search_Term, code_frequency), drug_mapping from load_drug_indication_mapping()
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- Output: (modified_df with UPID|search_term, indication_df mapping modified_UPID → Search_Term)
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- Can be built and tested with mock data (no Snowflake needed)
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- Key logic: for each UPID+Drug pair, intersect drug's Search_Terms with patient's GP matches, pick highest code_frequency as tiebreaker
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- The function needs PseudoNHSNoLinked to look up GP matches, so the df must have that column
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- Task 2.2 (tiebreaker logic) can be done within 2.1 or as a follow-up
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- The final Phase 1 subtask (1.1 verify with live Snowflake) will be tested during Phase 3/4 integration
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### Blocked items:
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- Task 1.1 final subtask "Verify: Query returns more rows" requires live Snowflake — deferred to Phase 3/4
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