Files
Andrew Charlwood 7e63e6ea45 feat: add desktop packaging (pywebview + PyInstaller)
- resource_path.py: frozen/dev path resolution for bundled data files
- app_desktop.py: pywebview entry point (Dash in daemon thread)
- app.spec: PyInstaller onedir config with data files and hidden imports
- Updated queries.py, card_browser.py, app.py to use get_resource_path()
- Added pywebview + pyinstaller to project dependencies
- Fixed unresolved merge conflict in .gitignore
- Removed stale 01_nhs_classic.html and AdditionalAnalytics.md
2026-02-09 14:53:22 +00:00

95 lines
3.0 KiB
Python

"""
Directorate card tree builder for the drug browser drawer.
Loads DimSearchTerm.csv and builds a nested structure:
{PrimaryDirectorate: {Search_Term: [drug_fragment, ...]}}
Also provides get_all_drugs() for the flat "All Drugs" card.
"""
import csv
from collections import defaultdict
from core.resource_path import get_resource_path
from data_processing.diagnosis_lookup import SEARCH_TERM_MERGE_MAP
DIM_SEARCH_TERM_PATH = get_resource_path("data/DimSearchTerm.csv")
def build_directorate_tree() -> dict[str, dict[str, list[str]]]:
"""
Build a nested dict from DimSearchTerm.csv grouped by directorate.
Returns:
{
"CARDIOLOGY": {
"acute coronary syndrome": ["ABCIXIMAB", "CLOPIDOGREL", ...],
"atrial fibrillation": ["APIXABAN", "DABIGATRAN", ...],
...
},
"CLINICAL HAEMATOLOGY": { ... },
...
}
Search_Term values are normalized via SEARCH_TERM_MERGE_MAP
(e.g. "allergic asthma""asthma"). Drug fragments within
merged terms are combined and deduplicated.
"""
# directorate → search_term → set of drug fragments
tree: dict[str, dict[str, set[str]]] = defaultdict(lambda: defaultdict(set))
with open(DIM_SEARCH_TERM_PATH, newline="", encoding="utf-8") as f:
reader = csv.DictReader(f)
for row in reader:
search_term = (row.get("Search_Term") or "").strip().lower()
drug_names_raw = row.get("CleanedDrugName") or ""
directorate = (row.get("PrimaryDirectorate") or "").strip().upper()
if not search_term or not directorate:
continue
# Apply merge map (e.g. "allergic asthma" → "asthma")
search_term = SEARCH_TERM_MERGE_MAP.get(search_term, search_term)
fragments = [
frag.strip().upper()
for frag in drug_names_raw.split("|")
if frag.strip()
]
tree[directorate][search_term].update(fragments)
# Convert sets → sorted lists and sort at every level
result: dict[str, dict[str, list[str]]] = {}
for directorate in sorted(tree):
result[directorate] = {
term: sorted(tree[directorate][term])
for term in sorted(tree[directorate])
}
return result
def get_all_drugs() -> list[str]:
"""
Return a sorted flat list of all unique drug labels from pathway_nodes level 3.
Delegates to load_initial_data() which already queries the database.
"""
from dash_app.data.queries import load_initial_data
data = load_initial_data()
return data.get("available_drugs", [])
def get_all_trusts() -> list[str]:
"""
Return a sorted flat list of all unique trust names from pathway_nodes level 1.
Delegates to load_initial_data() which already queries the database.
"""
from dash_app.data.queries import load_initial_data
data = load_initial_data()
return data.get("available_trusts", [])