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DeepHealthExpo/prepare_data.py

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"""ETL pipeline for UK Biobank data preparation.
This script converts raw UK Biobank CSV exports into the artefacts consumed by
DeepHealth:
* ``ukb_event_data.npy``: ``(N, 3)`` uint32 array of ``(eid, days, label)``
disease/death/checkup events sorted by patient then time.
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* ``ukb_basic_info.csv``: basic patient table indexed by ``eid`` with ``sex``
and ``date_of_birth``.
Processing steps
----------------
1. Stream the raw CSV in 10 000-row chunks to bound memory usage.
2. Convert date columns to integer day offsets from date of birth.
3. Extract ICD-10 date fields and cancer date/type fields into long-form
events and map codes to integer labels via ``labels.csv``.
4. De-duplicate events per ``(eid, label)`` keeping the earliest occurrence.
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5. Write event data plus basic patient information needed for exposure-date
alignment.
Usage
-----
::
python prepare_data.py
The script expects these files in the working directory:
* ``ukb_data.csv``: raw UK Biobank CSV export.
* ``field_ids_enriched.csv``: field-ID to column-name mapping.
* ``icd10_codes_mod.tsv``: ICD-10 field to date-column mapping.
* ``labels.csv``: disease-code to integer-label mapping.
"""
import numpy as np # Numerical operations
import pandas as pd # Pandas for data manipulation
import tqdm # Progress bar for chunk processing
def _unique_preserve_order(values):
"""Return unique values while preserving first-seen order."""
seen = set()
out = []
for value in values:
if value not in seen:
seen.add(value)
out.append(value)
return out
# CSV mapping field IDs to human-readable names
field_map_file = "field_ids_enriched.csv"
field_df = pd.read_csv(field_map_file, low_memory=False)
required_cols = {"field_instance", "var_name", "field_type"}
missing_cols = required_cols - set(field_df.columns)
if missing_cols:
raise ValueError(
f"{field_map_file} is missing required columns: {sorted(missing_cols)}"
)
field_df = field_df.dropna(subset=["field_instance", "var_name", "field_type"])
field_df["field_instance"] = field_df["field_instance"].astype(str)
field_df["var_name"] = field_df["var_name"].astype(str)
field_df["field_type"] = field_df["field_type"].astype(int)
# Map original field ID -> renamed output variable.
field_dict = dict(zip(field_df["field_instance"], field_df["var_name"]))
# Build source field groups from field_type.
basic_info_fields = _unique_preserve_order(
field_df.loc[field_df["field_type"] == 0, "var_name"].tolist()
)
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# Keep only patient-level fields that are still consumed downstream. Exposure
# windows are prepared separately by prepare_exposure_cache.py.
basic_info_fields = [f for f in ["sex"] if f in set(basic_info_fields)]
# TSV mapping field IDs to ICD10-related date columns
field_to_icd_map = "icd10_codes_mod.tsv"
# Date-like variables to be converted to offsets
date_vars = []
with open(field_to_icd_map, encoding="utf-8") as f: # Open ICD10 mapping
for line in f: # Iterate each mapping row
parts = line.strip().split() # Split on whitespace for TSV
if len(parts) >= 6: # Guard against malformed lines
# Map field ID to the date column name
field_dict[parts[0]] = parts[5]
date_vars.append(parts[5]) # Track date column names in order
for j in range(17): # Map up to 17 cancer entry slots (dates and types)
# Cancer diagnosis date slot j
field_dict[f"40005-{j}.0"] = f"cancer_date_{j}"
field_dict[f"40006-{j}.0"] = f"cancer_type_{j}" # Cancer type/code slot j
# Number of ICD-related date columns before adding extras
len_icd = len(date_vars)
date_vars.extend(
["Death", "date_of_assessment"] # Add outcome date and assessment date
+
# Add cancer date columns
[f"cancer_date_{j}" for j in range(17)]
)
labels_file = "labels.csv" # File listing label codes
label_dict = {} # Map code string -> integer label id
with open(labels_file, encoding="utf-8") as f: # Open labels file
for idx, line in enumerate(f): # Enumerate to assign incremental label IDs
parts = line.strip().split(" ") # Split by space
if parts and parts[0]: # Guard against empty lines
# Start labels from 1 to reserve 0 for padding, 1 for checkup
label_dict[parts[0]] = idx + 2
# Pre-build lookup: ICD/Death column name -> integer label for fast per-column extraction
icd_label_lookup = {}
for col_name in date_vars[:len_icd]:
if col_name in label_dict:
icd_label_lookup[col_name] = label_dict[col_name]
if "Death" in label_dict:
icd_label_lookup["Death"] = label_dict["Death"]
event_list = [] # Accumulator for event arrays across chunks
tabular_list = [] # Accumulator for tabular feature DataFrames across chunks
ukb_iterator = pd.read_csv( # Stream UK Biobank data in chunks
"ukb_data.csv",
sep=",",
chunksize=10000, # Stream file in manageable chunks to reduce memory footprint
# First column (participant ID) becomes DataFrame index
index_col=0,
low_memory=False, # Disable type inference optimization for consistent dtypes
)
# Iterate chunks with progress
for ukb_chunk in tqdm.tqdm(ukb_iterator, desc="Processing UK Biobank data"):
# Rename columns to friendly names
ukb_chunk = ukb_chunk.rename(columns=field_dict)
# Require sex to be present
ukb_chunk.dropna(subset=["sex"], inplace=True)
if ukb_chunk.empty:
continue
# Construct date of birth from year and month (day fixed to 1)
dob = pd.to_datetime(
pd.DataFrame(
{"year": ukb_chunk["year"], "month": ukb_chunk["month"], "day": 1}
),
errors="coerce",
)
# Use only date variables that actually exist in the current chunk
present_date_vars = [c for c in date_vars if c in ukb_chunk.columns]
# Convert date-like columns to day offsets from dob (per-column, avoids .apply overhead)
for col in present_date_vars:
ukb_chunk[col] = (
pd.to_datetime(
ukb_chunk[col], format="%Y-%m-%d", errors="coerce") - dob
).dt.days
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# Append compact basic info without mutating the wide raw chunk.
present_tabular_fields = [
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c for c in basic_info_fields if c in ukb_chunk.columns]
dob_frame = pd.DataFrame(
{"date_of_birth": dob.dt.strftime("%Y-%m-%d").to_numpy()},
index=ukb_chunk.index,
)
tabular_list.append(
pd.concat([ukb_chunk[present_tabular_fields].copy(), dob_frame], axis=1)
)
# Extract ICD10 + Death events directly per column (avoids costly melt)
icd10_cols = present_date_vars[: len_icd + 1]
for col in icd10_cols:
if col not in icd_label_lookup:
continue
label_id = icd_label_lookup[col]
series = ukb_chunk[col]
valid_mask = series.notna()
if not valid_mask.any():
continue
event_list.append(
np.column_stack(
(
ukb_chunk.index[valid_mask].values,
series[valid_mask].values.astype(np.int64),
np.full(valid_mask.sum(), label_id, dtype=np.int64),
)
)
)
# Optimized cancer processing without wide_to_long
cancer_frames = []
for j in range(17):
d_col = f"cancer_date_{j}"
t_col = f"cancer_type_{j}"
if d_col in ukb_chunk.columns and t_col in ukb_chunk.columns:
# Filter rows where both date and type are present
mask = ukb_chunk[d_col].notna() & ukb_chunk[t_col].notna()
if mask.any():
subset_idx = ukb_chunk.index[mask]
subset_days = ukb_chunk.loc[mask, d_col]
subset_type = ukb_chunk.loc[mask, t_col]
# Map cancer type to label
# Use first 3 chars
cancer_codes = subset_type.str.slice(0, 3)
labels = cancer_codes.map(label_dict)
# Filter valid labels
valid_label_mask = labels.notna()
if valid_label_mask.any():
# Create array: eid, days, label
# Ensure types are correct for numpy
c_eids = subset_idx[valid_label_mask].values
c_days = subset_days[valid_label_mask].values
c_labels = labels[valid_label_mask].values
# Stack
chunk_cancer_data = np.column_stack(
(c_eids, c_days, c_labels))
cancer_frames.append(chunk_cancer_data)
if cancer_frames:
event_list.append(np.vstack(cancer_frames))
# Add checkup events with label=1 using date_of_assessment (already in days from dob)
if "date_of_assessment" in ukb_chunk.columns:
doa_series = ukb_chunk["date_of_assessment"].dropna()
if not doa_series.empty:
checkup_data = np.column_stack(
(
doa_series.index.values,
doa_series.values.astype(int),
np.ones(len(doa_series), dtype=int),
)
)
event_list.append(checkup_data)
# Combine tabular chunks
final_tabular = pd.concat(tabular_list, axis=0, ignore_index=False)
final_tabular.index.name = "eid" # Ensure index named consistently
data = np.vstack(event_list) # Stack all event arrays into one
# Sort by participant then day
data = data[np.lexsort((data[:, 1], data[:, 0]))]
# Keep only events with non-negative day offsets
data = data[data[:, 1] >= 0]
# Remove duplicate (participant_id, label) pairs keeping first occurrence (numpy-based).
_, first_idx = np.unique(data[:, [0, 2]], axis=0, return_index=True)
first_idx.sort() # Preserve original sorted order
data = data[first_idx]
# Store compactly using unsigned 32-bit integers
data = data.astype(np.uint32)
# Select eid in both data and tabular
valid_eids = np.intersect1d(data[:, 0], final_tabular.index)
data = data[np.isin(data[:, 0], valid_eids)]
final_tabular = final_tabular.loc[valid_eids]
final_tabular = final_tabular.convert_dtypes()
# Save basic information needed by the model and exposure-date alignment.
basic_cols = ["sex"]
if "date_of_birth" in final_tabular.columns:
basic_cols.append("date_of_birth")
basic_info = final_tabular[basic_cols].copy()
basic_info.to_csv("ukb_basic_info.csv")
# Save event data
np.save("ukb_event_data.npy", data)