471 lines
27 KiB
Plaintext
471 lines
27 KiB
Plaintext
# Progress Log - Direct SNOMED Indication Mapping
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## Project Context
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This project extends the existing HCD Pathway Analysis application with direct SNOMED code matching from GP records. The previous project (Phases 1-5) established the pre-computed pathway architecture and modern UI. This phase adds:
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1. **Diagnosis-based directorate assignment** - Primary method using GP SNOMED codes
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2. **Indication-based icicle chart** - New chart type showing Trust → Search_Term → Drug → Pathway
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## Key Files Reference
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**Existing (reuse these):**
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- `data_processing/schema.py` - SQLite schema (add new table)
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- `data_processing/diagnosis_lookup.py` - Existing cluster-based lookup (extend with direct SNOMED)
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- `data_processing/pathway_pipeline.py` - Pathway processing (add indication type)
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- `cli/refresh_pathways.py` - CLI refresh command (add chart type support)
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- `pathways_app/pathways_app.py` - Reflex app (add chart type toggle)
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- `tools/data.py` - Data transformations including department_identification()
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**New data:**
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- `data/drug_snomed_mapping_enriched.csv` - 163K rows, 187 Search_Terms, 364 drugs
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## Known Patterns
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### SNOMED Mapping Structure
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The enriched mapping CSV has columns:
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- Drug, Indication, TA_ID (from NICE TAs)
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- Search_Term (simplified grouping, 187 unique values)
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- SNOMEDCode, SNOMEDDescription
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- CleanedDrugName, PrimaryDirectorate, AllDirectorates
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### Direct SNOMED Lookup Logic
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For a patient on drug X:
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1. Get all SNOMED codes for that drug from ref_drug_snomed_mapping
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2. Query PrimaryCareClinicalCoding for those codes (patient's GP record)
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3. If match found → use Search_Term and PrimaryDirectorate from matched row
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4. If no match → fall back to department_identification()
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5. Use most recent SNOMED code by EventDateTime if multiple matches
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### Chart Type Architecture
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- `chart_type` column in pathway_nodes: "directory" or "indication"
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- 12 total pathway datasets: 6 date filters × 2 chart types
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- Indication chart: mixed labels (Search_Term for matched, Directorate for unmatched)
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### Date Filter Combinations
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| ID | Initiated | Last Seen | Default |
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|----|-----------|-----------|---------|
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| `all_6mo` | All years | Last 6 months | Yes |
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| `all_12mo` | All years | Last 12 months | No |
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| `1yr_6mo` | Last 1 year | Last 6 months | No |
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| `1yr_12mo` | Last 1 year | Last 12 months | No |
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| `2yr_6mo` | Last 2 years | Last 6 months | No |
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| `2yr_12mo` | Last 2 years | Last 12 months | No |
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### Expected Volumes
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- SNOMED mapping: 163K rows
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- Search_Terms: 187 unique
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- Pathway nodes per date filter: ~300 (directory), ~400-600 (indication)
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---
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## Iteration Log
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## Iteration 1 — 2026-02-05
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### Task: 1.1 Create SQLite Table for SNOMED Mapping
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### Why this task:
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- First task in Phase 1 (Data Infrastructure) — all other phases depend on having the data layer in place
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- No external dependencies — pure schema definition work
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- Follows "data infrastructure first" principle
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### Status: COMPLETE
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### What was done:
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- Added `REF_DRUG_SNOMED_MAPPING_SCHEMA` to `data_processing/schema.py` with 11 columns:
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- id, drug_name, indication, ta_id, search_term, snomed_code, snomed_description
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- cleaned_drug_name, primary_directorate, all_directorates, created_at
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- Added 5 custom indexes for lookup performance:
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- idx_ref_drug_snomed_mapping_drug (drug_name)
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- idx_ref_drug_snomed_mapping_cleaned (cleaned_drug_name)
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- idx_ref_drug_snomed_mapping_snomed (snomed_code)
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- idx_ref_drug_snomed_mapping_search_term (search_term)
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- idx_ref_drug_snomed_mapping_drug_snomed (composite: cleaned_drug_name, snomed_code)
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- Added `create_drug_snomed_mapping_table()` helper function
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- Added schema to `REFERENCE_TABLES_SCHEMA` (included in `ALL_TABLES_SCHEMA`)
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- Updated helper functions to include new table:
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- `drop_reference_tables()` — drops new table
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- `get_reference_table_counts()` — counts new table (with try/except for safety)
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- `verify_reference_tables_exist()` — checks for new table
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### Validation results:
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- Tier 1 (Code): `python -m py_compile data_processing/schema.py` — PASSED
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- Tier 1 (Code): Import check — PASSED
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- Tier 2 (Data): Migration created table with 0 rows — PASSED
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- Tier 2 (Data): All 11 columns and 6 indexes present — PASSED
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### Files changed:
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- `data_processing/schema.py` — added schema, updated helpers
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### Committed: cf35937 "feat: add ref_drug_snomed_mapping schema (Task 1.1)"
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### Patterns discovered:
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- Existing schema pattern: CREATE TABLE + CREATE INDEX in single SQL string
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- Helper functions follow consistent pattern: create, drop, get_counts, verify_exists
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- `get_reference_table_counts` needed try/except for tables that might not exist yet
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### Next iteration should:
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- Start Task 1.2: Create `data_processing/load_snomed_mapping.py` script to load the CSV
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- The CSV has columns: Drug, Indication, TA_ID, Search_Term, SNOMEDCode, SNOMEDDescription, CleanedDrugName, PrimaryDirectorate, AllDirectorates
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- Note: SNOMEDCode in CSV has `.0` suffix (e.g., "156370009.0") — may need cleanup
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### Blocked items:
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- None
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## Iteration 2 — 2026-02-05
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### Task: 1.2 Load Enriched Mapping Data
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### Why this task:
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- Task 1.1 (schema creation) is complete — table `ref_drug_snomed_mapping` exists
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- Task 1.2 is the next logical step in Phase 1 (Data Infrastructure)
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- Task 1.3 (Extend Diagnosis Lookup) depends on having data in the table to query
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- Following the "data infrastructure first" principle
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### Status: COMPLETE
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### What was done:
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- Created `data_processing/load_snomed_mapping.py` with:
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- `migrate_drug_snomed_mapping()` - reads CSV, cleans SNOMED codes, inserts to SQLite
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- `get_drug_snomed_mapping_counts()` - statistics function
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- `verify_drug_snomed_mapping_migration()` - validation function
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- `clean_snomed_code()` - removes trailing .0 from SNOMED codes (e.g., "156370009.0" → "156370009")
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- CLI interface with `--verify-only` and `-v` options
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- Added CLI entry point: `python -m data_processing.load_snomed_mapping`
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- Fixed Unicode encoding issue on Windows console (emojis → ASCII text)
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### Validation results:
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- Tier 1 (Code): `python -m py_compile data_processing/load_snomed_mapping.py` — PASSED
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- Tier 1 (Code): Import check — PASSED
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- Tier 2 (Data): Migration loaded 144,056 rows from 163,937 CSV rows (19,881 duplicates skipped)
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- Tier 2 (Data): Verified: 707 unique drugs, 187 unique search terms, 21,265 SNOMED codes
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- Tier 2 (Data): SNOMED codes cleaned — 0 rows with .0 suffix remaining
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### Files changed:
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- `data_processing/load_snomed_mapping.py` — new file
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### Committed: 6d68b5e "feat: add SNOMED mapping loader script (Task 1.2)"
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### Patterns discovered:
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- CSV has 163,937 rows but only 144,056 unique (drug_name, indication, snomed_code) combinations
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- SNOMED codes in CSV have `.0` suffix from float formatting — need `clean_snomed_code()` function
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- Windows console can't print Unicode emojis — use ASCII text like `[OK]` instead of ✅
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### Next iteration should:
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- Start Task 1.3: Extend Diagnosis Lookup Module
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- Add `get_drug_snomed_codes(drug_name)` to `data_processing/diagnosis_lookup.py`
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- Add `patient_has_indication_direct(patient_pseudonym, snomed_codes, connector)` function
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- Look at existing `diagnosis_lookup.py` for patterns to follow
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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: 1.3 Extend Diagnosis Lookup Module
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### Why this task:
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- Tasks 1.1 and 1.2 are complete — the data infrastructure (schema + loaded data) is in place
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- Task 1.3 is the next logical step — functions to query the data before using it in the pipeline
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- Phase 2 (Pathway Processing) depends on having these lookup functions
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- Following the "data infrastructure first" principle
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### Status: COMPLETE
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### What was done:
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- Added two new dataclasses to `data_processing/diagnosis_lookup.py`:
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- `DrugSnomedMapping`: Holds SNOMED code mapping with snomed_code, snomed_description, search_term, primary_directorate, indication, ta_id
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- `DirectSnomedMatchResult`: Result of direct SNOMED lookup with matched flag, snomed_code, search_term, primary_directorate, event_date, source
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- Added `get_drug_snomed_codes(drug_name)` function:
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- Queries `ref_drug_snomed_mapping` table for all SNOMED codes for a drug
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- Case-insensitive matching on both `cleaned_drug_name` and `drug_name` columns
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- Returns list of DrugSnomedMapping dataclass instances
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- Added `patient_has_indication_direct(patient_pseudonym, drug_snomed_mappings, connector)` function:
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- Queries `PrimaryCareClinicalCoding` directly for exact SNOMED code matches
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- Returns most recent match by EventDateTime (ORDER BY DESC LIMIT 1)
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- Handles Snowflake unavailability gracefully
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- Updated `__all__` exports to include new dataclasses and functions
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### Validation results:
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- Tier 1 (Code): `python -m py_compile data_processing/diagnosis_lookup.py` — PASSED
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- Tier 1 (Code): Import check — PASSED
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- Tier 2 (Data): ADALIMUMAB returns 1320 SNOMED mappings across 10 Search_Terms
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- Tier 2 (Data): RANIBIZUMAB returns 104 SNOMED mappings
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- Tier 2 (Data): Case insensitivity verified (upper/lower/mixed all return same results)
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- Tier 2 (Data): Empty mappings returns unmatched result correctly
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### Files changed:
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- `data_processing/diagnosis_lookup.py` — added 2 dataclasses, 2 functions, updated __all__
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- `IMPLEMENTATION_PLAN.md` — marked Task 1.3 complete
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### Committed: b44d22d "feat: add direct SNOMED lookup functions (Task 1.3)"
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### Patterns discovered:
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- ADALIMUMAB has 10 unique Search_Terms with varying SNOMED code counts:
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- rheumatoid arthritis: 867 codes (largest)
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- ankylosing spondylitis: 96 codes
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- uveitis: 124 codes
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- ulcerative colitis: 78 codes
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- juvenile idiopathic arthritis: 57 codes
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- crohn's disease: 50 codes
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- psoriatic arthritis: 17 codes
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- plaque psoriasis: 16 codes
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- hidradenitis suppurativa: 8 codes
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- axial spondyloarthritis: 7 codes (smallest)
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- The query uses DISTINCT to avoid duplicate rows
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- Function handles edge cases: empty mappings, Snowflake unavailable
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### Next iteration should:
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- Phase 1 is now complete! Start Phase 2: Pathway Processing Updates
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- Begin with Task 2.1: Update Directorate Assignment Logic
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- Create `get_directorate_from_diagnosis(upid, drug_name, connector)` function
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- Logic: Try diagnosis-based first (using get_drug_snomed_codes + patient_has_indication_direct)
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- Fallback to department_identification() if no match
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- Return: (directorate, source) where source is "DIAGNOSIS" or "FALLBACK"
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- Key consideration: This will need to integrate with the existing data flow in `fetch_and_transform_data()`
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### Blocked items:
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- None
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## Iteration 4 — 2026-02-05
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### Task: 2.1 Update Directorate Assignment Logic
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### Why this task:
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- Phase 1 (Data Infrastructure) is complete — all 3 tasks marked [x]
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- Task 2.1 is the first task in Phase 2 (Pathway Processing Updates)
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- Previous iteration explicitly recommended starting with Task 2.1
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- Tasks 2.2 (schema) and 2.3 (indication processing) logically depend on having the directorate assignment logic
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- Following "data infrastructure first, then pipeline" principle
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### Status: COMPLETE
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### What was done:
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- Added `DirectorateAssignment` dataclass to `data_processing/diagnosis_lookup.py`:
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- Fields: upid, drug_name, directorate, search_term, source, snomed_code, event_date
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- source is "DIAGNOSIS" (SNOMED match found) or "FALLBACK" (no match)
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- Added `get_directorate_from_diagnosis(upid, drug_name, connector, db_manager, before_date)` function:
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- Gets all SNOMED codes for drug from ref_drug_snomed_mapping
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- Queries patient's GP records (via patient_has_indication_direct)
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- Returns diagnosis-based directorate and search_term if match found
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- Returns FALLBACK result if no match (caller handles fallback logic)
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- Extracts PatientPseudonym from UPID by removing first 3 characters (ProviderCode)
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- Updated `__all__` exports to include new dataclass and function
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### Validation results:
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- Tier 1 (Code): `python -m py_compile data_processing/diagnosis_lookup.py` — PASSED
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- Tier 1 (Code): Import check for DirectorateAssignment, get_directorate_from_diagnosis — PASSED
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- Tier 2 (Data): Test with ADALIMUMAB returns 1320 SNOMED mappings across 10 search_terms — PASSED
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- Tier 2 (Data): Test with unknown drug returns FALLBACK source — PASSED
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- Tier 2 (Data): Test without Snowflake returns FALLBACK source correctly — PASSED
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### Files changed:
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- `data_processing/diagnosis_lookup.py` — added DirectorateAssignment dataclass, get_directorate_from_diagnosis function, updated __all__
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- `IMPLEMENTATION_PLAN.md` — marked Task 2.1 complete
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### Committed: 5067694 "feat: add get_directorate_from_diagnosis() function (Task 2.1)"
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### Patterns discovered:
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- UPID format: Provider Code (3 chars) + PersonKey, where PersonKey = PatientPseudonym
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- The function is designed to be called at the DataFrame level during pipeline processing
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- For batch processing, the caller will need to iterate over rows and collect DIAGNOSIS vs FALLBACK statistics
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- The function handles edge cases: no SNOMED mappings, Snowflake unavailable, no GP record match
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### Next iteration should:
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- Start Task 2.2: Add Chart Type Support to Schema
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- Add `chart_type` column to `pathway_nodes` table (values: "directory", "indication")
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- Update schema in `data_processing/schema.py`
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- Consider: may need ALTER TABLE migration for existing data
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- Alternative: add to pathway_date_filters or create pathway_chart_types reference table
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- Key consideration: The indication chart will group by Search_Term (from SNOMED match) or Directorate (fallback)
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- The chart_type column allows filtering pathway_nodes by chart type when user toggles in UI
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### Blocked items:
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- None
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## Iteration 5 — 2026-02-05
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### Task: 2.2 Add Chart Type Support to Schema
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### Why this task:
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- Task 2.1 (directorate assignment logic) is complete
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- Task 2.2 is the next task in Phase 2 — schema changes before pipeline changes
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- Task 2.3 (Indication Pathway Processing) requires the chart_type column to store indication pathways
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- Following "data infrastructure first" principle — schema changes before pipeline logic
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### Status: COMPLETE
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### What was done:
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- Modified `PATHWAY_NODES_SCHEMA` in `data_processing/schema.py`:
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- Added `chart_type TEXT NOT NULL DEFAULT 'directory'` column
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- Updated UNIQUE constraint from `(date_filter_id, ids)` to `(date_filter_id, chart_type, ids)`
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- Added `idx_pathway_nodes_chart_type` index on `(date_filter_id, chart_type)`
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- Updated `idx_pathway_nodes_filter_composite` index to include `chart_type`
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- Added `migrate_pathway_nodes_chart_type(conn)` function:
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- Checks if chart_type column exists (idempotent)
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- Adds column with ALTER TABLE if missing
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- Creates/updates indexes
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- Returns (success: bool, message: str)
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- Updated `data_processing/migrate.py`:
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- Added import for `migrate_pathway_nodes_chart_type`
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- Called migration in `initialize_database()` after creating tables
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- Ran migration on existing database: 293 rows updated with chart_type='directory'
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### Validation results:
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- Tier 1 (Code): `python -m py_compile data_processing/schema.py` — PASSED
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- Tier 1 (Code): `python -m py_compile data_processing/migrate.py` — PASSED
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- Tier 1 (Code): Import check for migrate_pathway_nodes_chart_type — PASSED
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- Tier 2 (Data): Migration ran successfully on existing database — PASSED
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- Tier 2 (Data): All 293 existing rows have chart_type='directory' — PASSED
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- Tier 2 (Data): Both indexes created (idx_pathway_nodes_chart_type, idx_pathway_nodes_filter_composite) — PASSED
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- Tier 2 (Data): Database status check shows all tables intact — PASSED
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### Files changed:
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- `data_processing/schema.py` — added chart_type column, updated UNIQUE constraint, added indexes, added migration function
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- `data_processing/migrate.py` — import and call migration function
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- `IMPLEMENTATION_PLAN.md` — marked Task 2.2 complete with full checklist
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### Committed: 19607d7 "feat: add chart_type column to pathway_nodes schema (Task 2.2)"
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### Patterns discovered:
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- SQLite ALTER TABLE ADD COLUMN works with DEFAULT values — existing rows get the default
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- SQLite doesn't allow modifying UNIQUE constraints after table creation, but since all existing rows have the same chart_type value, the new constraint is satisfied
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- Migration function is idempotent — safe to run multiple times
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- Composite indexes including chart_type allow efficient filtering by (date_filter_id, chart_type)
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### Next iteration should:
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- Start Task 2.3: Create Indication Pathway Processing
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- Add `process_indication_pathways()` to `pathway_pipeline.py`
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- Group by: Trust → Search_Term → Drug → Pathway
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- For unmatched patients: use directorate name as Search_Term fallback
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- Add `extract_indication_fields()` for denormalized columns
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- Key consideration: Need to modify `generate_icicle_chart()` or create parallel function for indication hierarchy
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- The indication chart uses Search_Term (from SNOMED match) or Directorate (from fallback) as the level-2 grouping
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- Output structure should match directory chart but with different grouping labels
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### Blocked items:
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- None
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## Iteration 6 — 2026-02-05
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### Task: 2.3 Create Indication Pathway Processing
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### Why this task:
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- Tasks 2.1 and 2.2 are complete — directorate assignment logic and schema are in place
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- Task 2.3 is the next logical step in Phase 2 — processing logic before Phase 3 (CLI updates)
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- Previous iteration explicitly recommended starting Task 2.3
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- Phase 3 depends on having the indication pathway processing functions
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- Following "pipeline before UI" principle
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### Status: COMPLETE
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### What was done:
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- Added `generate_icicle_chart_indication()` to `analysis/pathway_analyzer.py`:
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- Variant of generate_icicle_chart() that uses indication_df instead of directory_df
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- Takes `indication_df` parameter mapping UPID → Indication_Group
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- The indication_df must have 'Directory' column (renamed from Indication_Group for compatibility)
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- Hierarchy: Trust → Indication_Group → Drug → Pathway
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- Added `process_indication_pathway_for_date_filter()` to `data_processing/pathway_pipeline.py`:
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- Wrapper function that calls generate_icicle_chart_indication()
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- Takes indication_df parameter (UPID → Indication_Group mapping)
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- Computes date ranges and passes to the chart generator
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- Added `extract_indication_fields()` to `data_processing/pathway_pipeline.py`:
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- Similar to extract_denormalized_fields() but for indication charts
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- Extracts: trust_name, directory (stores search_term), drug_sequence
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- Uses 'directory' column for schema compatibility
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- Updated `convert_to_records()` with `chart_type` parameter:
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- Added chart_type to the record dictionary
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- Supports "directory" and "indication" values
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- Logs chart_type in output message
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- Added `ChartType` type alias: `Literal["directory", "indication"]`
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- Updated `__all__` exports to include new functions and type
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### Validation results:
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- Tier 1 (Code): `python -m py_compile data_processing/pathway_pipeline.py` — PASSED
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- Tier 1 (Code): `python -m py_compile analysis/pathway_analyzer.py` — PASSED
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- Tier 1 (Code): Import check for all new functions — PASSED
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- ChartType, process_indication_pathway_for_date_filter, extract_indication_fields all exported
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- generate_icicle_chart_indication importable from pathway_analyzer
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### Files changed:
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- `analysis/pathway_analyzer.py` — added generate_icicle_chart_indication() function
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- `data_processing/pathway_pipeline.py` — added ChartType, process_indication_pathway_for_date_filter(), extract_indication_fields(), updated convert_to_records()
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- `IMPLEMENTATION_PLAN.md` — marked Task 2.3 complete with full checklist
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### Committed: 7cbc648 "feat: add indication pathway processing functions (Task 2.3)"
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### Patterns discovered:
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- The build_hierarchy() function uses directory_df to map UPID → Directory for level-2 grouping
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- For indication charts, we pass indication_df with 'Directory' column (renamed from Indication_Group) to build_hierarchy()
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- The indication_df must be indexed by UPID (same as directory_df)
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- Schema compatibility is maintained by storing search_term in the 'directory' column
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- The chart_type column allows filtering pathway_nodes by chart type in Reflex UI
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### Next iteration should:
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- Phase 2 is now complete! Start Phase 3: CLI & Data Refresh Updates
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- Begin with Task 3.1: Update Refresh Command for Dual Chart Types
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- Modify `cli/refresh_pathways.py` to process both "directory" and "indication" chart types
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- Add `--chart-type` argument: "all" (default), "directory", "indication"
|
||
- For each of 6 date filters: generate 2 chart datasets
|
||
- Total: 12 pathway datasets (6 dates × 2 chart types)
|
||
- Key consideration: Need to create indication_df by looking up GP diagnoses for all patients
|
||
- This involves batching Snowflake queries for performance
|
||
- Use get_directorate_from_diagnosis() function from diagnosis_lookup.py
|
||
- For unmatched patients: indication_group = "Directory (no GP dx)"
|
||
### Blocked items:
|
||
- None
|
||
|
||
## Iteration 7 — 2026-02-05
|
||
### Task: 3.1 Update Refresh Command for Dual Chart Types
|
||
### Why this task:
|
||
- Phase 2 complete — all data infrastructure and processing functions ready
|
||
- Task 3.1 is first in Phase 3 — CLI command is the entry point for the pipeline
|
||
- Previous iteration recommended starting Task 3.1
|
||
- Processing functions exist but weren't integrated into refresh workflow yet
|
||
### Status: COMPLETE
|
||
### What was done:
|
||
- Modified `cli/refresh_pathways.py`:
|
||
- Added `--chart-type` argument with choices: "directory", "indication", "all"
|
||
- Default is "directory" to maintain backward compatibility
|
||
- Updated `insert_pathway_records` to include `chart_type` column (required for new schema)
|
||
- Added `chart_type` parameter to `refresh_pathways()` function
|
||
- Updated Step 2 to loop through chart_types_to_process list
|
||
- For "directory": uses existing `process_all_date_filters()`
|
||
- For "indication": placeholder with warning (requires Task 3.2 for GP diagnosis)
|
||
- Updated logging to show per-chart-type counts
|
||
- Updated help text with new examples
|
||
- Added imports for new pathway_pipeline functions:
|
||
- `ChartType`, `DATE_FILTER_CONFIGS`, `process_indication_pathway_for_date_filter`
|
||
- `extract_indication_fields`, `convert_to_records`
|
||
### Validation results:
|
||
- Tier 1 (Code): `python -m py_compile cli/refresh_pathways.py` — PASSED
|
||
- Tier 1 (Code): Import check for `refresh_pathways`, `main` — PASSED
|
||
- Tier 1 (Code): `python -m cli.refresh_pathways --help` — Shows new argument — PASSED
|
||
- Tier 2 (Data): Not fully testable until Task 3.2 (GP diagnosis integration)
|
||
### Files changed:
|
||
- `cli/refresh_pathways.py` — added chart_type support
|
||
- `IMPLEMENTATION_PLAN.md` — marked Task 3.1 items complete
|
||
### Committed: 593d14c "feat: add chart_type argument to refresh command (Task 3.1)"
|
||
### Patterns discovered:
|
||
- The `convert_to_records()` function already has `chart_type` parameter with default "directory"
|
||
- Results dictionary now keyed by "date_filter_id:chart_type" (e.g., "all_6mo:directory")
|
||
- Stats now include `chart_type_counts` for summary by chart type
|
||
### Next iteration should:
|
||
- Start Task 3.2: Integrate Diagnosis-Based Directorate in Pipeline
|
||
- This is the key task that enables indication chart processing
|
||
- Need to add batch GP diagnosis lookup during `fetch_and_transform_data()`
|
||
- Create `indication_df` mapping UPID → Indication_Group (Search_Term or fallback)
|
||
- Call `process_indication_pathway_for_date_filter()` with the indication_df
|
||
- Key consideration: Batch Snowflake queries for performance (don't query per patient)
|
||
- Expected: ~35K patients, need to query in batches of ~1000
|
||
- Coverage logging: "X% diagnosis-matched, Y% fallback"
|
||
### Blocked items:
|
||
- None
|
||
|
||
## Iteration 8 — 2026-02-05
|
||
### Task: 3.2 Integrate Diagnosis-Based Directorate in Pipeline
|
||
### Why this task:
|
||
- Task 3.1 complete — CLI argument added but indication processing was placeholder
|
||
- Task 3.2 is the key task that enables actual indication chart processing
|
||
- Previous iteration explicitly recommended starting Task 3.2
|
||
- Task 3.3 (full pipeline test) and Phase 4 (UI) depend on this being complete
|
||
- Following "pipeline before UI" principle
|
||
### Status: COMPLETE
|
||
### What was done:
|
||
- Added `batch_lookup_indication_groups()` to `data_processing/diagnosis_lookup.py`:
|
||
- Efficient batch function to look up GP diagnoses for all patients
|
||
- Queries Snowflake in batches of 500 patients (configurable batch_size)
|
||
- Gets all SNOMED codes for drugs from local SQLite (fast)
|
||
- Builds single query per batch checking all patient-SNOMED combinations
|
||
- Returns DataFrame with: UPID, Indication_Group, Source
|
||
- Indication_Group is Search_Term (if matched) or "Directory (no GP dx)" (if fallback)
|
||
- Source is "DIAGNOSIS" or "FALLBACK"
|
||
- Logs coverage statistics: X% diagnosis-matched, Y% fallback
|
||
- Updated `cli/refresh_pathways.py` indication chart processing:
|
||
- Import batch_lookup_indication_groups
|
||
- When processing indication chart type:
|
||
1. Call batch_lookup_indication_groups(df) to create indication_df
|
||
2. Log coverage statistics to stats dict
|
||
3. Rename Indication_Group → Directory for compatibility with generate_icicle_chart_indication
|
||
4. Set index to UPID for lookup during chart generation
|
||
5. Process all 6 date filters with process_indication_pathway_for_date_filter()
|
||
6. Extract indication fields and convert to records with chart_type="indication"
|
||
- Added error handling with fallback to empty results if GP lookup fails
|
||
- Added TYPE_CHECKING import for pandas type hints
|
||
### Validation results:
|
||
- Tier 1 (Code): `python -m py_compile data_processing/diagnosis_lookup.py` — PASSED
|
||
- Tier 1 (Code): `python -m py_compile cli/refresh_pathways.py` — PASSED
|
||
- Tier 1 (Code): Import check for batch_lookup_indication_groups — PASSED
|
||
- Tier 1 (Code): `python -m cli.refresh_pathways --help` — Shows all arguments — PASSED
|
||
- Tier 2 (Data): Not fully testable without Snowflake connection (requires --dry-run with SSO)
|
||
### Files changed:
|
||
- `data_processing/diagnosis_lookup.py` — added batch_lookup_indication_groups(), TYPE_CHECKING import
|
||
- `cli/refresh_pathways.py` — integrated batch lookup, added full indication processing flow
|
||
- `IMPLEMENTATION_PLAN.md` — marked Task 3.2 items complete
|
||
### Committed: 8952156 "feat: integrate batch GP diagnosis lookup for indication charts (Task 3.2)"
|
||
### Patterns discovered:
|
||
- Batch Snowflake queries: Build one query with IN clauses for both patients AND SNOMED codes
|
||
- ORDER BY EventDateTime DESC in query lets us pick first result = most recent in Python
|
||
- PersonKey column = PatientPseudonym (used directly for Snowflake lookup)
|
||
- indication_df must be indexed by UPID and have 'Directory' column (renamed from Indication_Group)
|
||
- Fallback label format: "Directory (no GP dx)" distinguishes matched vs unmatched in chart
|
||
### Next iteration should:
|
||
- Start Task 3.3: Test Full Refresh Pipeline
|
||
- Run `python -m cli.refresh_pathways --chart-type all` with real data (requires Snowflake SSO)
|
||
- Verify pathway_nodes table has both chart_type="directory" and chart_type="indication"
|
||
- Verify indication chart hierarchy: Trust → Search_Term → Drug → Pathway
|
||
- Verify unmatched patients show with "Directory (no GP dx)" labels
|
||
- Document: Processing time, record counts, coverage percentages
|
||
- If no Snowflake access, skip to Phase 4 (UI) and note as blocked
|
||
### Blocked items:
|
||
- Task 3.3 verification requires Snowflake connection (NHS SSO)
|
||
|