Initial upload: public_fundus (198k images, 42 shards) + manifest + captions + code
e2f75d1 verified | #!/usr/bin/env python3 | |
| """ | |
| Shared helpers for public ophthalmology dataset adapters. | |
| Aligns each public cohort with the private (shanghai_drioct_triton) manifest schema | |
| in build_manifest.py so a single training pipeline can pd.concat the two parquets. | |
| Adapter output layout (under {output_root}): | |
| extracted/{cohort}/{hash[:2]}/{hash}/ | |
| {image_slot}.{ext} e.g. fundus_color.jpg, oct_bscan/000.png | |
| *_mask.png auxiliary segmentation masks (not in manifest rows) | |
| meta.json raw per-study metadata | |
| manifest/{cohort}_images.parquet | |
| captions/{cohort}_captions.parquet | |
| manifest/{cohort}_sidecar.parquet (optional, IDRiD localization etc.) | |
| build_public_manifest.py concatenates all per-cohort parquets into: | |
| manifest/public_images_v1.parquet | |
| manifest/public_studies_v1.parquet | |
| captions/public_captions_v1.parquet | |
| schema_v1.json | |
| file_path in public manifest is relative to {output_root}/extracted/ and always starts | |
| with the cohort name. Private file_path is relative to {private_root}/extracted/{cohort}/ | |
| (no leading cohort) — training code reads each manifest with its own root prefix. | |
| """ | |
| import hashlib | |
| import json | |
| from pathlib import Path | |
| # Column order must match build_manifest.py emission for clean pd.concat. | |
| IMAGE_SCHEMA_COLUMNS = [ | |
| "cohort", "study_id", "patient_hash", "visit_date", "eye", | |
| "device_vendor", "device_model", "device_serial_hash", "device_software_version", | |
| "hospital_domain", "ethnicity", | |
| "image_quality_score", "image_quality_band", | |
| "diagnosis_group", "lesion_tags", "lesion_location", "layer_involvement", "severity", | |
| "diagnosis_source", "label_confidence", "schema_version", | |
| "image_id", "file_path", "file_format", | |
| "modality", "anatomy", "device_technology", "scan_protocol", | |
| "scan_x_mm", "bscan_index", | |
| "image_height_px", "image_width_px", "axial_resolution_um", | |
| "has_segmentation", "n_layers_visible", | |
| "fovea_x_norm", "crt_um", "choroid_thickness_um", | |
| "oct_footprint_bbox_fundus", "oct_footprint_bbox_slo", | |
| "is_valid", | |
| ] | |
| CAPTION_SCHEMA_COLUMNS = [ | |
| "caption_id", "image_id", "level", "prompt_text", | |
| "language", "generator", "grounded_in", | |
| ] | |
| def study_hash_for(cohort: str, basename: str) -> str: | |
| """Per-cohort namespaced hash. Salt = "{cohort}_v1" — distinct from private | |
| salt "shdoct_v1" so even identical basenames cannot collide across cohorts.""" | |
| salt = f"{cohort}_v1" | |
| return hashlib.sha256(f"{salt}:{basename}".encode()).hexdigest()[:16] | |
| def default_base_fields(cohort: str, study_id: str, *, patient_hash: str = None, | |
| eye: str = "unknown", ethnicity: str = "unknown", | |
| hospital_domain: str = None) -> dict: | |
| """Returns the 21 cohort/patient/label fields that are constant across all | |
| images of a study. Adapter merges this with the 20 per-image fields.""" | |
| return { | |
| "cohort": cohort, | |
| "study_id": study_id, | |
| "patient_hash": patient_hash or study_id, | |
| "visit_date": None, | |
| "eye": eye, | |
| "device_vendor": "unknown", | |
| "device_model": "unknown", | |
| "device_serial_hash": None, | |
| "device_software_version": None, | |
| "hospital_domain": hospital_domain or f"{cohort}_v1", | |
| "ethnicity": ethnicity, | |
| "image_quality_score": None, | |
| "image_quality_band": "unknown", | |
| "diagnosis_group": [], | |
| "lesion_tags": [], | |
| "lesion_location": [], | |
| "layer_involvement": [], | |
| "severity": "unknown", | |
| "diagnosis_source": "none", | |
| "label_confidence": None, | |
| "schema_version": "v1", | |
| } | |
| # ============================================================ | |
| # Caption templates (public, device-agnostic — never mentions Topcon) | |
| # ============================================================ | |
| _MOD_PHRASE = { | |
| "fundus_color": ("color fundus photograph", "color fundus photo"), | |
| "slo_gray": ("grayscale scanning laser ophthalmoscopy image", "grayscale SLO"), | |
| "oct_bscan": ("OCT B-scan", "OCT B-scan"), | |
| } | |
| def _eye_long(eye): | |
| return {"OD": "right", "OS": "left"}.get(eye, "unspecified") | |
| def _eye_short(eye): | |
| return eye if eye in ("OD", "OS") else "unspecified eye" | |
| def caption_l1_public(image_id: str, cohort_phrase: str, modality: str, | |
| eye: str = "unknown") -> list: | |
| """4 L1 variants (v1_factual/v2_style/v3_prefix/v4_short), grounded only in | |
| manifest fields. Mirrors private caption_l1_variants in build_manifest.py.""" | |
| mod_long, mod_short = _MOD_PHRASE.get(modality, (modality, modality)) | |
| eye_l = _eye_long(eye) | |
| article = "An" if mod_long[0].lower() in "aeiou" else "A" | |
| common = {"image_id": image_id, "language": "en", | |
| "generator": "template_v1", "grounded_in": "manifest_fields_only"} | |
| return [ | |
| {**common, "caption_id": f"{image_id}_L1_v1_factual", "level": "L1_v1_factual", | |
| "prompt_text": f"{article} {mod_long} of the {eye_l} eye, from the {cohort_phrase}."}, | |
| {**common, "caption_id": f"{image_id}_L1_v2_style", "level": "L1_v2_style", | |
| "prompt_text": f"{article} {mod_long} of the {eye_l} eye, public dataset style."}, | |
| {**common, "caption_id": f"{image_id}_L1_v3_prefix", "level": "L1_v3_prefix", | |
| "prompt_text": f"{cohort_phrase}, {mod_long}, {eye_l} eye."}, | |
| {**common, "caption_id": f"{image_id}_L1_v4_short", "level": "L1_v4_short", | |
| "prompt_text": f"A {mod_short}, {_eye_short(eye)}, public dataset."}, | |
| ] | |
| def caption_l3_public(image_id: str, prompt_text: str, | |
| grounded_in: str = "manifest_fields_only") -> dict: | |
| return { | |
| "caption_id": f"{image_id}_L3_derived", | |
| "image_id": image_id, "level": "L3_derived", | |
| "prompt_text": prompt_text, | |
| "language": "en", "generator": "template_v1", | |
| "grounded_in": grounded_in, | |
| } | |
| # ============================================================ | |
| # IO helpers | |
| # ============================================================ | |
| def study_dir_for(out_root: Path, cohort: str, study_hash: str) -> Path: | |
| """{out_root}/extracted/{cohort}/{hash[:2]}/{hash}/""" | |
| return out_root / "extracted" / cohort / study_hash[:2] / study_hash | |
| def rel_file_path(cohort: str, study_hash: str, filename: str) -> str: | |
| """Manifest file_path: '{cohort}/{hash[:2]}/{hash}/{filename}', relative to | |
| {out_root}/extracted/. Same root works for all public cohorts.""" | |
| return f"{cohort}/{study_hash[:2]}/{study_hash}/{filename}" | |
| def write_meta(study_dir: Path, meta: dict): | |
| """Atomic write of meta.json — readers see either a complete prior meta or | |
| the new one, never a half-written file (extractor crash recovery).""" | |
| tmp = study_dir / "meta.json.tmp" | |
| tmp.write_text(json.dumps(meta, indent=2, ensure_ascii=False)) | |
| tmp.rename(study_dir / "meta.json") | |
| def coerce_image_row(row: dict) -> dict: | |
| """Ensure all 41 columns present (fill missing with None) and column order | |
| matches IMAGE_SCHEMA_COLUMNS. Called by adapters before DataFrame creation.""" | |
| out = {} | |
| for col in IMAGE_SCHEMA_COLUMNS: | |
| out[col] = row.get(col, None) | |
| return out | |