zju-eye-pretrain / code /adapter_messidor2.py
MaybeRichard's picture
Initial upload: public_fundus (198k images, 42 shards) + manifest + captions + code
e2f75d1 verified
Raw
History Blame
6.23 kB
#!/usr/bin/env python3
"""
Messidor-2 adapter — DR grading + DME + gradability multi-task fundus dataset.
Inputs:
{input_root}/messidor-2/messidor-2/preprocess/{id_code} (1744 PNG files)
{input_root}/messidor_data.csv (id_code, diagnosis, adjudicated_dme, adjudicated_gradable)
Outputs (under {output_root}):
extracted/public_messidor2_dr/{hash[:2]}/{hash}/
fundus_color.jpg
meta.json
manifest/public_messidor2_dr_images.parquet
captions/public_messidor2_dr_captions.parquet
Label mapping:
diagnosis 0..4 -> severity {none, mild, moderate, severe, proliferative}, diagnosis_group += [DR] if >0
adjudicated_dme 0/1 -> diagnosis_group += [DME], lesion_tags += [macular_edema]
adjudicated_gradable 0 -> image_quality_band = "ungradable", is_valid = False
"""
import argparse
import json
from pathlib import Path
import pandas as pd
from PIL import Image
from public_common import (
IMAGE_SCHEMA_COLUMNS, CAPTION_SCHEMA_COLUMNS,
study_hash_for, default_base_fields,
caption_l1_public, caption_l3_public,
study_dir_for, rel_file_path, write_meta, coerce_image_row,
)
COHORT = "public_messidor2_dr"
COHORT_PHRASE = "Messidor-2 diabetic retinopathy screening dataset"
DR_SEVERITY = {0: "none", 1: "mild", 2: "moderate", 3: "severe", 4: "proliferative"}
def _row_and_caps(meta: dict):
sh = meta["study_hash"]
image_id = f"{COHORT}_{sh}_fundus_color"
row = default_base_fields(COHORT, sh, eye=meta["eye"])
dr = meta.get("dr_grade")
dme = bool(meta.get("dme"))
gradable = bool(meta.get("gradable"))
dx, lesions = [], []
if dr is not None and dr > 0:
dx.append("DR")
if dme:
dx.append("DME")
lesions.append("macular_edema")
row["diagnosis_group"] = dx
row["lesion_tags"] = lesions
row["severity"] = DR_SEVERITY.get(dr, "unknown")
row["diagnosis_source"] = "adjudicated_label" if dr is not None else "none"
row["label_confidence"] = "adjudicated" if dr is not None else None
row["image_quality_band"] = "unknown" if gradable else "ungradable"
row.update({
"image_id": image_id,
"file_path": rel_file_path(COHORT, sh, "fundus_color.jpg"),
"file_format": "jpg",
"modality": "fundus_color",
"anatomy": "macula",
"device_technology": "fundus_camera",
"scan_protocol": "single_shot",
"image_height_px": int(meta["image_height_px"]),
"image_width_px": int(meta["image_width_px"]),
"has_segmentation": False,
"n_layers_visible": 0,
"is_valid": gradable,
})
caps = caption_l1_public(image_id, COHORT_PHRASE, "fundus_color", meta["eye"])
parts = ["A color fundus photograph from the Messidor-2 dataset"]
if dr is not None:
parts.append(f"diabetic retinopathy grade {dr} ({DR_SEVERITY[dr]})")
if dme:
parts.append("diabetic macular edema present")
if not gradable:
parts.append("flagged as ungradable")
l3 = ", ".join(parts) + "."
caps.append(caption_l3_public(image_id, l3, "manifest_fields+csv_labels"))
return row, caps
def process_one(image_path: Path, labels: dict, out_root: Path, force: bool):
basename = image_path.stem
sh = study_hash_for(COHORT, basename)
sdir = study_dir_for(out_root, COHORT, sh)
sdir.mkdir(parents=True, exist_ok=True)
meta_path = sdir / "meta.json"
if meta_path.exists() and not force:
try:
meta = json.loads(meta_path.read_text())
if meta.get("status") == "ok":
return _row_and_caps(meta)
except Exception:
pass
img = Image.open(image_path).convert("RGB")
w, h = img.size
img.save(sdir / "fundus_color.jpg", "JPEG", quality=95)
meta = {
"status": "ok",
"cohort": COHORT,
"study_hash": sh,
"source_basename": basename,
"image_height_px": int(h),
"image_width_px": int(w),
"eye": "unknown",
"dr_grade": labels.get("diagnosis"),
"dme": int(labels.get("adjudicated_dme", 0)),
"gradable": int(labels.get("adjudicated_gradable", 1)),
}
write_meta(sdir, meta)
return _row_and_caps(meta)
def main():
ap = argparse.ArgumentParser()
ap.add_argument("--input-root", required=True,
help="Path to .../Generation/Messidor2 (contains messidor_data.csv and messidor-2/messidor-2/preprocess/)")
ap.add_argument("--output-root", required=True)
ap.add_argument("--force", action="store_true")
ap.add_argument("--limit", type=int, default=None)
args = ap.parse_args()
in_root = Path(args.input_root)
out_root = Path(args.output_root)
csv_path = in_root / "messidor_data.csv"
img_dir = in_root / "messidor-2" / "messidor-2" / "preprocess"
df = pd.read_csv(csv_path)
print(f"[{COHORT}] CSV rows: {len(df)}, image dir: {img_dir}")
if args.limit:
df = df.head(args.limit)
rows, caps = [], []
missing = 0
for _, lab in df.iterrows():
fname = lab["id_code"]
ip = img_dir / fname
if not ip.exists():
missing += 1
continue
row, cap = process_one(ip, lab.to_dict(), out_root, args.force)
rows.append(row)
caps.extend(cap)
if missing:
print(f"[{COHORT}] WARN: {missing} CSV rows have no matching image file")
if not rows:
print(f"[{COHORT}] no rows produced, aborting")
return
manifest_dir = out_root / "manifest"
captions_dir = out_root / "captions"
manifest_dir.mkdir(parents=True, exist_ok=True)
captions_dir.mkdir(parents=True, exist_ok=True)
imgs_df = pd.DataFrame([coerce_image_row(r) for r in rows])[IMAGE_SCHEMA_COLUMNS]
imgs_df.to_parquet(manifest_dir / f"{COHORT}_images.parquet", index=False)
caps_df = pd.DataFrame(caps)[CAPTION_SCHEMA_COLUMNS]
caps_df.to_parquet(captions_dir / f"{COHORT}_captions.parquet", index=False)
print(f"[{COHORT}] wrote {len(imgs_df)} images, {len(caps_df)} captions")
print(imgs_df.groupby(["severity"]).size().to_string())
if __name__ == "__main__":
main()