Initial upload: public_fundus (198k images, 42 shards) + manifest + captions + code
e2f75d1 verified | #!/usr/bin/env python3 | |
| """ | |
| prepare_hf_repo.py — 生成 HuggingFace 仓库 staging 目录结构。 | |
| 执行后 staging dir 长这样: | |
| hf_staging/ | |
| ├── README.md # HF dataset card (含 YAML front-matter 配 multi-config) | |
| ├── DATASET_OVERVIEW.md # 详细 overview (从本仓库 copy) | |
| ├── LICENSE # 多 cohort 协议汇总 | |
| ├── code/ # 处理代码 (供 reproducibility) | |
| ├── manifest/ # 3 个 *_images_v1.parquet + studies + sidecar | |
| ├── captions/ # 3 个 *_captions_v1.parquet | |
| └── data/ # pack_for_hf.py 产物 — 本脚本不动 data/ | |
| ├── private_topcon/ | |
| ├── public_fundus/ | |
| └── public_oct/ | |
| 后续用: | |
| cd hf_staging && huggingface-cli upload mayberichard/zju-eye-pretrain . --repo-type=dataset | |
| """ | |
| import argparse | |
| import json | |
| import shutil | |
| from pathlib import Path | |
| HF_README_TEMPLATE = """--- | |
| license: other | |
| license_name: ophthalmology-mixed | |
| license_link: https://github.com/mayberichard/zju-eye-pretrain/blob/main/LICENSE | |
| task_categories: | |
| - image-classification | |
| - image-segmentation | |
| - image-to-image | |
| - text-to-image | |
| - unconditional-image-generation | |
| language: | |
| - en | |
| - zh | |
| tags: | |
| - ophthalmology | |
| - retina | |
| - oct | |
| - fundus | |
| - slo | |
| - medical-imaging | |
| - segmentation | |
| - pretraining | |
| size_categories: | |
| - 1M<n<10M | |
| pretty_name: ZJU Eye-Pretrain (Private Shanghai Topcon + 25 public cohorts) | |
| configs: | |
| - config_name: all | |
| data_files: | |
| - split: train | |
| path: data/*/*.parquet | |
| - config_name: private_topcon | |
| data_files: | |
| - split: train | |
| path: data/private_topcon/*.parquet | |
| - config_name: public_fundus | |
| data_files: | |
| - split: train | |
| path: data/public_fundus/*.parquet | |
| - config_name: public_oct | |
| data_files: | |
| - split: train | |
| path: data/public_oct/*.parquet | |
| __PER_COHORT_CONFIGS__ | |
| --- | |
| # ZJU Eye-Pretrain Dataset | |
| > Unified multi-source ophthalmological imaging dataset for foundation model pretraining and downstream tasks. | |
| **1.1M images** spanning **26 cohorts** with a **strict 41-column unified manifest schema**. | |
| ## Composition | |
| | Source | Images | Modalities | Cohorts | | |
| |---|---:|---|---| | |
| | Private Shanghai DRI OCT Triton (SS-OCT) | 419,042 | oct_bscan + fundus_color + slo_gray | 1 | | |
| | Public Fundus | 198,629 | fundus_color (+ GAMMA OCT) | 6 | | |
| | Public OCT | 488,705 | oct_bscan | 19 | | |
| | **Total** | **1,106,376** | | **26** | | |
| See [DATASET_OVERVIEW.md](DATASET_OVERVIEW.md) for full details per cohort (devices, regions, masks, demographics). | |
| ## Quick Start | |
| ```python | |
| from datasets import load_dataset | |
| # Load everything (1.1M images) | |
| ds = load_dataset("mayberichard/zju-eye-pretrain", streaming=True) | |
| # Load one batch | |
| ds = load_dataset("mayberichard/zju-eye-pretrain", "public_oct") | |
| # Load one cohort | |
| ds = load_dataset("mayberichard/zju-eye-pretrain", "kermany") | |
| # Each row: | |
| # image: PIL.Image | |
| # {layer/lesion/vessel/disc_cup}_mask: PIL.Image or None | |
| # image_id, study_id, patient_hash, modality, anatomy, severity, ... | |
| ``` | |
| ## Schema (41-column manifest, identical across all batches) | |
| ``` | |
| 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 | |
| ``` | |
| Plus per-image `image` bytes and per-cohort mask columns. | |
| ## Captions | |
| Each image has 5 captions (4 L1 variants + 1 L3 derived). Total 5.5M captions in `captions/`. | |
| ```python | |
| from datasets import load_dataset | |
| caps = load_dataset("mayberichard/zju-eye-pretrain", "captions_oct") | |
| # join on image_id with the images config | |
| ``` | |
| ## Licensing | |
| This dataset aggregates multiple sources with mixed licenses. See [LICENSE](LICENSE) for per-cohort license terms. Users are responsible for compliance with the original license of each cohort. | |
| **Private Shanghai Topcon data is included for research convenience.** Commercial use is prohibited. | |
| ## Citation | |
| If you use this dataset, please cite the original source for each cohort used (see DATASET_OVERVIEW.md). | |
| ## Versioning & Updates | |
| This dataset supports incremental updates. New cohorts can be added without touching existing data via additional shards in `data/<batch>/`. Schema migrations preserve old `*_v1.parquet` alongside new versions. | |
| """ | |
| PER_COHORT_CONFIG_TEMPLATE = """- config_name: {cohort_short} | |
| data_files: | |
| - split: train | |
| path: data/{batch}/{cohort}-*.parquet""" | |
| # 19 OCT public + 6 public fundus + 1 private = 26 cohorts | |
| COHORT_TO_BATCH = { | |
| # private | |
| "shanghai_drioct_triton": "private_topcon", | |
| # public fundus | |
| "public_drive_vessel": "public_fundus", | |
| "public_messidor2_dr": "public_fundus", | |
| "public_idrid": "public_fundus", | |
| "public_refuge2_disc_cup": "public_fundus", | |
| "public_eyepacs_combo_dr_aug": "public_fundus", | |
| "public_gamma_multimodal": "public_fundus", | |
| # public OCT | |
| "public_oct_kermany": "public_oct", | |
| "public_oct_octid": "public_oct", | |
| "public_oct_aroi": "public_oct", | |
| "public_oct_neh_ut_2021": "public_oct", | |
| "public_oct_areds2": "public_oct", | |
| "public_oct_glaucoma": "public_oct", | |
| "public_oct_nyu_poag": "public_oct", | |
| "public_oct_olives": "public_oct", | |
| "public_oct_chiu_dme_2015": "public_oct", | |
| "public_oct_srinivasan_2014": "public_oct", | |
| "public_oct_sparsity_sdoct_2012": "public_oct", | |
| "public_oct_oimhs": "public_oct", | |
| "public_oct_retouch": "public_oct", | |
| "public_oct_thoct1800": "public_oct", | |
| "public_oct_octdl": "public_oct", | |
| "public_oct_amd_sd": "public_oct", | |
| "public_oct_c8": "public_oct", | |
| "public_oct_octa500": "public_oct", | |
| "public_oct_uestc": "public_oct", | |
| } | |
| def cohort_short_name(cohort: str) -> str: | |
| """public_oct_kermany -> kermany""" | |
| if cohort == "shanghai_drioct_triton": | |
| return "private" | |
| return (cohort | |
| .replace("public_oct_", "") | |
| .replace("public_", "")) | |
| def make_readme() -> str: | |
| per_cohort_lines = [] | |
| for cohort, batch in sorted(COHORT_TO_BATCH.items()): | |
| short = cohort_short_name(cohort) | |
| per_cohort_lines.append(PER_COHORT_CONFIG_TEMPLATE.format( | |
| cohort_short=short, batch=batch, cohort=cohort)) | |
| # Use .replace() not .format() because README body contains literal {} braces | |
| return HF_README_TEMPLATE.replace("__PER_COHORT_CONFIGS__", "\n".join(per_cohort_lines)) | |
| def main(): | |
| ap = argparse.ArgumentParser() | |
| ap.add_argument("--src-code-dir", required=True, | |
| help="本地 ZJU/Dataset 代码目录") | |
| ap.add_argument("--src-private", required=True, | |
| help="私有数据集根 (含 manifest/ + captions/)") | |
| ap.add_argument("--src-public-fundus", required=True, | |
| help="公开 fundus 根 (含 manifest/ + captions/)") | |
| ap.add_argument("--src-public-oct", required=True, | |
| help="公开 OCT 根 (含 manifest/ + captions/)") | |
| ap.add_argument("--output", required=True, help="HF staging 目录") | |
| args = ap.parse_args() | |
| out = Path(args.output) | |
| out.mkdir(parents=True, exist_ok=True) | |
| (out / "data").mkdir(exist_ok=True) | |
| (out / "data" / "private_topcon").mkdir(exist_ok=True) | |
| (out / "data" / "public_fundus").mkdir(exist_ok=True) | |
| (out / "data" / "public_oct").mkdir(exist_ok=True) | |
| # 1. README.md | |
| (out / "README.md").write_text(make_readme(), encoding="utf-8") | |
| print(f" ✓ README.md ({(out/'README.md').stat().st_size//1024} KB)") | |
| # 2. DATASET_OVERVIEW.md (从本地 copy) | |
| src_overview = Path(args.src_code_dir) / "DATASET_OVERVIEW.md" | |
| if src_overview.exists(): | |
| shutil.copy(src_overview, out / "DATASET_OVERVIEW.md") | |
| print(f" ✓ DATASET_OVERVIEW.md") | |
| # 3. LICENSE | |
| (out / "LICENSE").write_text( | |
| "# License Summary (per-cohort)\n\n" | |
| "This dataset aggregates ophthalmological data from 26 sources with diverse licenses.\n" | |
| "Users MUST comply with the license of each cohort they use.\n\n" | |
| "| Cohort | License | Source |\n" | |
| "|---|---|---|\n" | |
| "| shanghai_drioct_triton | Research-only (IRB-approved) | Shanghai Zhongshan |\n" | |
| "| public_drive_vessel | CC | DRIVE 2004 |\n" | |
| "| public_messidor2_dr | research-only | ADCIS/Messidor-2 |\n" | |
| "| public_idrid | CC BY 4.0 | IDRiD Challenge |\n" | |
| "| public_refuge2_disc_cup | research-only | REFUGE2 Challenge |\n" | |
| "| public_eyepacs_combo_dr_aug | various Kaggle terms | EyePACS combined |\n" | |
| "| public_gamma_multimodal | research-only | GAMMA Challenge |\n" | |
| "| public_oct_kermany | CC BY 4.0 | Kermany 2018 (Cell) |\n" | |
| "| public_oct_octid | CC BY 4.0 | OCTID 2019 |\n" | |
| "| public_oct_aroi | research-only | AROI 2021 |\n" | |
| "| public_oct_neh_ut_2021 | research-only | NEH UT 2021 |\n" | |
| "| public_oct_areds2 | NEI dbGaP | AREDS2 |\n" | |
| "| public_oct_glaucoma | research-only | Glaucoma OCT 2020 |\n" | |
| "| public_oct_nyu_poag | CC BY 4.0 | NYU POAG 2023 |\n" | |
| "| public_oct_olives | CC BY 4.0 | OLIVES NeurIPS 2022 |\n" | |
| "| public_oct_chiu_dme_2015 | research-only | Duke 2015 |\n" | |
| "| public_oct_srinivasan_2014 | research-only | Duke/Harvard/Michigan 2014 |\n" | |
| "| public_oct_sparsity_sdoct_2012 | research-only | 2012 dataset |\n" | |
| "| public_oct_oimhs | CC BY 4.0 | OIMHS 2023 |\n" | |
| "| public_oct_retouch | research-only | RETOUCH MICCAI 2017 |\n" | |
| "| public_oct_thoct1800 | research-only | Tsinghua THOCT1800 |\n" | |
| "| public_oct_octdl | CC BY 4.0 | OCTDL 2023 |\n" | |
| "| public_oct_amd_sd | research-only | AMD-SD Nanchang |\n" | |
| "| public_oct_c8 | various Kaggle terms | C8 compiled |\n" | |
| "| public_oct_octa500 | research-only | OCTA-500 Li 2024 |\n" | |
| "| public_oct_uestc | research-only (cite Wu 2023) | UESTC Tianchi |\n" | |
| ) | |
| print(f" ✓ LICENSE") | |
| # 4. code/ | |
| code_dir = out / "code" | |
| code_dir.mkdir(exist_ok=True) | |
| src_code = Path(args.src_code_dir) | |
| code_files = [ | |
| "public_common.py", "oct_public_common.py", | |
| "extract_fda.py", "extract_subscan.py", "build_manifest.py", | |
| "adapter_drive.py", "adapter_messidor2.py", "adapter_idrid.py", | |
| "adapter_refuge2.py", "adapter_eyepacs.py", "adapter_gamma.py", | |
| "build_public_manifest.py", | |
| "build_oct_public.py", "build_oct_public_manifest.py", | |
| "pack_for_hf.py", "prepare_hf_repo.py", | |
| "INTEGRATION_GUIDE.md", "run.sh", | |
| ] | |
| n_copied = 0 | |
| for f in code_files: | |
| src = src_code / f | |
| if src.exists(): | |
| shutil.copy(src, code_dir / f) | |
| n_copied += 1 | |
| print(f" ✓ code/ ({n_copied} files)") | |
| # 5. manifest/ | |
| mf_dir = out / "manifest" | |
| mf_dir.mkdir(exist_ok=True) | |
| for src_root, prefix in [ | |
| (Path(args.src_private), "private_topcon"), | |
| (Path(args.src_public_fundus), "public_fundus"), | |
| (Path(args.src_public_oct), "oct_public"), | |
| ]: | |
| src_mf = src_root / "manifest" | |
| if not src_mf.exists(): | |
| print(f" WARN: {src_mf} 不存在") | |
| continue | |
| for f in src_mf.glob("*.parquet"): | |
| shutil.copy(f, mf_dir / f.name) | |
| print(f" ✓ manifest/ ({len(list(mf_dir.glob('*.parquet')))} parquet)") | |
| # 6. captions/ | |
| cap_dir = out / "captions" | |
| cap_dir.mkdir(exist_ok=True) | |
| for src_root in [Path(args.src_private), Path(args.src_public_fundus), | |
| Path(args.src_public_oct)]: | |
| src_cap = src_root / "captions" | |
| if not src_cap.exists(): | |
| continue | |
| for f in src_cap.glob("*.parquet"): | |
| shutil.copy(f, cap_dir / f.name) | |
| print(f" ✓ captions/ ({len(list(cap_dir.glob('*.parquet')))} parquet)") | |
| print(f"\n[done] HF staging ready: {out}") | |
| print(f"\n下一步:") | |
| print(f" 1. (单独) 跑 pack_for_hf.py 把 image bytes 转 parquet shard 到 {out}/data/{{batch}}/") | |
| print(f" 2. cd {out} && huggingface-cli upload mayberichard/zju-eye-pretrain . --repo-type=dataset") | |
| if __name__ == "__main__": | |
| main() | |