zju-eye-pretrain / DATASET_OVERVIEW.md
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Initial upload: public_fundus (198k images, 42 shards) + manifest + captions + code
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Eye Pretrain 数据集总览

生成时间:2026-05-23

三批数据,统一 41 列 manifest schema,5 caption/image (4 L1 + 1 L3),cohort 命名空间隔离


0. 一表见全貌

来源 总图像 OCT B-scan fundus_color slo_gray 状态
私有 Shanghai DRI OCT Triton 419,042 352,343 30,714 35,985 ✅ 已落地 h800
公开 fundus(6 cohort) 198,629 51,200 (GAMMA) 147,429 0 已落地 (h800)
公开 OCT(19 cohort) 488,705 488,705 0 0 本地完成 / 打包就绪
合计 1,106,376 ~913,905 ~177,429 ~30,000

110 万图像、其中 OCT B-scan 91 万张


1. 私有数据集 — Shanghai DRI OCT Triton

1.1 来源

  • 医院:上海中山医院
  • 设备:Topcon DRI OCT Triton(SS-OCT,扫频源 OCT)
  • 原始格式:.fda(Topcon 专有,约 30,735 个文件)

1.2 规模

指标 数量
Studies (FDA 文件数) 30,734
Total images 419,042
Captions 2,095,210 (= 419,042 × 5)
OCT B-scan rows 352,343 (主 radial 30,734 study × ~11.3 张/study + ~5k 张 subscan B-scan;部分 study radial 解出失败少于 12 张)
Fundus color rows 30,714 (少 20 个 study 无 fundus)
SLO gray rows 35,985 (主 SLO 30,734 + subscan SLO ~5k)

patient_hash = study_hash(Topcon @PATIENT_INFO_03 加密,按 file-level 切分)。

1.3 每个 study 的组件

  • 12 张径向 OCT B-scanscan_protocol=radial_12, 9 mm/slice, 180°
  • 1 张 fundus_color — 45° 黄斑中心彩照
  • 1 张 slo_gray — 共焦扫描激光检眼镜
  • segmentation.npz — 10 层 boundaries (ILM/RNFL/GCL+IPL/INL/OPL/ONL/ELM/IS-OS/RPE/BM) + invalid mask
  • 可选:sub-scan(has_subscan=True 的 study,约 5k 个),多为 optic disc OCT B-scan + SLO

1.4 设备信息(写入 manifest 每行)

字段
device_vendor topcon
device_model dri_oct_triton
device_technology ss_oct
hospital_domain shanghai_zhongshan_v1
ethnicity Asian

1.5 路径

路径
本地 extracted /mnt/synology/08.数据/eye_pretrain/extracted/shanghai_drioct_triton/
本地 packed /mnt/synology/08.数据/eye_pretrain/packed/ (256 bucket + manifest, 153 GB, MD5 全)
h800 packed /mnt/tidal-alsh-share2/dataset/qinshengqian/research/c3/private_eye_pretrain_packed/
h800 unpack 目标 /mnt/tidal-alsh-share2/dataset/qinshengqian/research/c3/Data/Generation1/private_topcon/

1.6 代码

  • extract_fda.py — FDA → bscan PNG + fundus JPG + SLO PNG + segmentation NPZ + meta.json
  • extract_subscan.py — 追加 sub-scan 内容(@SUB_* chunks)
  • build_manifest.py — meta.json → images_v1.parquet / studies_v1.parquet / patients_v1.parquet / captions_v1.parquet
  • pack.sh / unpack.sh — 256 hash 桶切分 + MD5 校验

2. 公开 Fundus 数据集(6 cohort,198,629 images)

Cohort 名 images captions 主任务 设备 mask
public_drive_vessel 20 100 血管分割 Unknown vessel + FOV
public_messidor2_dr 1,744 8,720 DR 0-4 + DME + gradable Unknown
public_idrid 597 2,985 DR/DME 分级 + 5 类病灶 + OD/fovea 定位 Unknown 81 张 seg (5+OD),OD/fovea 坐标 sidecar
public_refuge2_disc_cup 1,200 6,000 OD/OC 分割 + glaucoma(train 部分有 g/n 标签) Unknown 3 类 mask (bg/disc/cup)
public_eyepacs_combo_dr_aug 143,668 718,340 DR 0-4 Unknown (mixed)
public_gamma_multimodal 51,400 257,000 青光眼分级 (non/early/mid_advanced) + OD/OC + fovea Unknown OCT scanner DC mask + fovea sidecar
合计 198,629 993,145

2.1 GAMMA 特殊结构

  • 200 个 sample(100 train + 100 test)
  • 每个 sample = 1 张 fundus + 256 张 OCT B-scan(共享 study_id)
  • 标签级别:volume(fundus 和 OCT 共享 glaucoma 分级标签)
  • Train 100 个 sample 有 fovea_x/y 坐标 → sidecar parquet

2.2 路径

路径(h800)
统一 manifest /mnt/tidal-alsh-share2/.../public_eye_pretrain/manifest/public_images_v1.parquet
统一 captions /mnt/tidal-alsh-share2/.../public_eye_pretrain/captions/public_captions_v1.parquet
Studies /mnt/tidal-alsh-share2/.../public_eye_pretrain/manifest/public_studies_v1.parquet (147,429 行)
Schema /mnt/tidal-alsh-share2/.../public_eye_pretrain/schema_v1.json
extracted_root /mnt/tidal-alsh-share2/.../public_eye_pretrain/extracted/
Sidecar (IDRiD) /mnt/tidal-alsh-share2/.../public_eye_pretrain/manifest/public_idrid_sidecar.parquet
Sidecar (GAMMA) /mnt/tidal-alsh-share2/.../public_eye_pretrain/manifest/public_gamma_multimodal_sidecar.parquet

2.3 代码(本地)

  • public_common.py — 41 列 schema + caption_l1_public + study_hash 命名空间
  • adapter_drive.py / adapter_messidor2.py / adapter_idrid.py / adapter_refuge2.py / adapter_eyepacs.py / adapter_gamma.py
  • build_public_manifest.py — concat 6 个 per-cohort parquet 到统一 manifest

3. 公开 OCT 数据集(19 cohort,488,705 images)

3.1 19 cohort 详情

Cohort 名 Source studies images Disease 设备 Region mask Sidecar
public_oct_kermany 1/Kermany 2018 (Cell) 109,309 109,309 CNV/DME/DRUSEN/NORMAL Heidelberg Spectralis USA
public_oct_octa500 OCTA500/Li 2024 299 (1 vol 损坏跳过) 119,600 NORMAL/DR/AMD/CNV(仅 200 vol 有标签) Optovue RTVue Asian 6 类 B-scan mask age+sex+eye
public_oct_olives 11/OLIVES (NeurIPS 2022) 1,295 visits 63,489 DR / DME longitudinal Spectralis HRA+OCT Mixed
public_oct_nyu_poag 10/NYU POAG (Zenodo) 56,576 56,576 POAG / NORMAL Unknown (volume) Unknown
public_oct_areds2 8/AREDS2 (NEI) 38,382 38,382 AMD / NORMAL Bioptigen SD-OCT Mixed
public_oct_uestc UESTC天池/Wu 2023 35,280 35,280 (无 disease 标签) BM-400K BMizar (Topi 国产) + Spectralis China
public_oct_c8 C8/Kaggle 24,000 24,000 8 class compiled Unknown Mixed
public_oct_neh_ut_2021 7/NEH_UT_2021 16,810 16,810 CNV/DRUSEN/NORMAL Heidelberg SD-OCT Iran patient_id+eye (在 CSV)
public_oct_retouch 17/RETOUCH (MICCAI 2017) 6,936 6,936 AMD/RVO 3 设备子集 (Cirrus/Spectralis/Topcon) Europe IRF/SRF/PED 3 类
public_oct_oimhs 16/OIMHS 3,859 3,859 MH stage 1-4 Spectralis SD-OCT China layer mask age+sex+eye+stage
public_oct_srinivasan_2014 13/Srinivasan 2014 (Duke) 3,231 3,231 AMD/DME/NORMAL Heidelberg Spectralis Mixed
public_oct_aroi 6/AROI 3,072 3,072 nAMD Cirrus 4000 Croatia layer mask
public_oct_amd_sd AMD-SD 3,049 3,049 wet_AMD Cirrus 5000 China 5 类 (SRF/IRF/PED/SHRM/ISOS)
public_oct_octdl 23/OCTDL 2,064 2,064 7 类(AMD/DME/ERM/NO/RAO/RVO/VID) Optovue RTVue Russia age+sex+patient
public_oct_thoct1800 20/THOCT1800 1,800 1,800 AMD/DME/NORMAL Cirrus China
public_oct_chiu_dme_2015 12/Chiu 2015 (Duke) 610 610 DME Heidelberg Spectralis Unknown 8 层 + fluid
public_oct_octid 3/OCTID 572 572 DR/MH/CSR/AMD/NORMAL Cirrus 5000 India
public_oct_glaucoma 9/Glaucoma OCT 49 49 Glaucoma Stratus TD-OCT (唯一 TD) Unknown ILM + RPE
public_oct_sparsity_sdoct_2012 14/Sparsity SDOCT 2012 17 17 AMD/NORMAL Bioptigen SD-OCT Unknown
合计 307,200 488,705 126,536 行 has_segmentation=True

3.2 路径

路径
本地输出根 /mnt/new/OCT Retinal B-scan数据集汇总/oct_public_pretrain/
统一 manifest .../oct_public_pretrain/manifest/oct_public_images_v1.parquet
统一 captions .../oct_public_pretrain/captions/oct_public_captions_v1.parquet
Studies .../oct_public_pretrain/manifest/oct_public_studies_v1.parquet (307,200)
Sidecar .../public_oct_oimhs_sidecar.parquet (3,859), .../public_oct_octdl_sidecar.parquet (448), .../public_oct_octa500_sidecar.parquet
Schema .../oct_public_pretrain/schema_v1.json
extracted_root .../oct_public_pretrain/extracted/
打包 (1725 tar) .../oct_public_pretrain/packed/ (119 GB, MD5 全)

3.3 代码(本地)

  • oct_public_common.py — OCT caption_l1_oct + 多 slice study 支持
  • build_oct_public.py — 19 dataset 处理函数 + dispatcher(基于 unified_metadata.csv + OCTA500/UESTC 自定义枚举)
  • build_oct_public_manifest.py — concat 19 个 per-cohort parquet
  • pack.sh / unpack.sh — 大 cohort 256 hash 桶切分 + MD5

3.4 关键约定

  • OLIVES: study_id = hash(patient_eye_visit)patient_hash = hash(patient) — 跨 visit 一致
  • OCTA500: 1 vol = 1 study,400 slice 共享 study_id,bscan_index 0–399
  • UESTC: scan_protocol 区分 3 子集 (volume_3d_macula_6x6mm / 20x24mm / spectralis)
  • OIMHS: study_basename = oimhs_p{pid}_e{eye_id}_{stem}(修复同 patient 多 eye 同名文件冲突)

4. Modality 分布(三批合计)

Modality 数量 来源
oct_bscan 892,248 私有 352,343 + GAMMA 51,200 + OCT public 488,705
fundus_color 178,143 私有 30,714 + 公开 fundus 147,429
slo_gray 35,985 私有(含 subscan SLO)
总图像 1,106,376

5. OCT 设备 / 厂商分布

Vendor Model Tech 数量 (OCT B-scan) Cohorts
Topcon DRI OCT Triton SS-OCT ~374,000 private (唯一 SS-OCT)
Topcon Topcon 3D OCT SD-OCT 2,688 RETOUCH (Topcon 子集)
Heidelberg Spectralis (含 HRA+OCT) SD-OCT ~380,000 Kermany, OLIVES, NEH_UT, Chiu, Srinivasan, OIMHS, RETOUCH, UESTC Spectralis 子集
Optovue RTVue series SD-OCT ~122,000 OCTA500 (120k), OCTDL (2k)
Bioptigen Bioptigen SD-OCT SD-OCT ~38,400 AREDS2, Sparsity
Zeiss Cirrus (HD-OCT/4000/5000) SD-OCT ~12,000 AROI, AMD-SD, OCTID, RETOUCH Cirrus, THOCT1800
Zeiss Stratus TD-OCT 49 Glaucoma_OCT (唯一 TD-OCT)
Topi 国产 BM-400K BMizar SD-OCT ~33,000 UESTC BMizar 6×6 + 20×24
未知 ~80,000 NYU_POAG (57k) + C8 (24k)
GAMMA scanner unspecified 51,200 GAMMA OCT volume slices

6. 疾病覆盖

按 OCT B-scan 数量粗算(含部分重叠数据集):

Disease 类别 总图像 主要来源
NORMAL ~150,000+ Kermany, NYU_POAG, AREDS2, C8, NEH_UT, Srinivasan, REFUGE2 train n
DR (0-4) ~150,000+ EyePACS (143k), Messidor2, IDRiD, OLIVES, AREDS2 部分
AMD / nAMD / wet_AMD ~80,000 AREDS2, NEH_UT, AROI, AMD-SD, Srinivasan, OCTID, OCTDL, RETOUCH
DME ~80,000 OLIVES, Kermany, Chiu, Srinivasan, THOCT1800, OCTDL
POAG / Glaucoma ~57,000 NYU_POAG (57k), GAMMA, REFUGE2 train g, Glaucoma_OCT, Messidor2
CNV ~44,000 Kermany, NEH_UT, OCTID, OCTA500
DRUSEN ~17,000 Kermany, NEH_UT
MH (含 stage 1-4) ~8,000+ OIMHS, OCTID, C8
CSR ~3,000+ OCTID, C8
ERM ~155 OCTDL
RVO / RAO ~150 OCTDL, RETOUCH
VID ~76 OCTDL
无标签 (unsupervised pretraining) ~35,000+ UESTC (35k) + OCTA500 未标记 100 vol + APTOS test

7. 分割 mask 覆盖

Mask 类型 张数 来源
OCT 多层 (10-layer in NPZ) ~370,000 私有 Topcon(每 B-scan 一份 layer)
OCT 8-layer + fluid 610 Chiu_DME_2015
OCT 层分割 (.tif) 7,000+ AROI (3k), OIMHS (3.9k), Glaucoma_OCT (49)
OCT 病灶多类 (IRF/SRF/PED) 6,936 RETOUCH
OCT 病灶 5 类 (SRF/IRF/PED/SHRM/ISOS) 3,049 AMD-SD
OCT-A B-scan 6 类 mask 119,600 OCTA500
Fundus 血管 20 DRIVE training
Fundus disc/cup 3 类 2,400 REFUGE2 (1200), GAMMA (200), IDRiD (516+81)
Fundus 5 类病灶 (MA/HE/EX/SE) + OD 81 IDRiD segmentation
合计带 mask ~510,000+ 张

8. 统一 41 列 manifest schema

三批数据严格对齐以下 41 列。训练侧 pd.concat 直接拼。

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

受控值

  • modality ∈ {oct_bscan, fundus_color, slo_gray}
  • anatomy ∈ {macula, optic_disc, secondary_unknown}
  • device_technology ∈ {ss_oct, sd_oct, td_oct, fundus_camera, slo, unknown}
  • severity ∈ {none, mild, moderate, severe, proliferative, unknown}
  • scan_protocol 开值:{radial_12, single_shot, subscan_line, subscan_single_shot, volume_3d_macula, volume_3d_macula_6x6mm, volume_3d_macula_20x24mm, volume_3d_macula_spectralis}

Captions parquet 列

caption_id, image_id, level, prompt_text, language, generator, grounded_in

每图固定 5 条 caption:

  • L1_v1_factual / L1_v2_style / L1_v3_prefix / L1_v4_short(全 manifest 字段衍生)
  • L3_derived(含几何/分割附加信息,私有数据集含 CRT/choroid thickness/quality score)

9. 训练侧路径映射

每个 manifest 自带 cohort 列;file_path 是相对路径,需要拼 extracted_root

Manifest parquet extracted_root
Data/Generation1/private_topcon/manifest/images_v1.parquet Data/Generation1/private_topcon/extracted/shanghai_drioct_triton/
public_eye_pretrain/manifest/public_images_v1.parquet public_eye_pretrain/extracted/
(待上传) oct_public_pretrain/manifest/oct_public_images_v1.parquet oct_public_pretrain/extracted/

注意:私有的 file_path 不带 cohort 前缀(如 00/abc.../bscan_radial/000.png);两个公开的 file_path 带 cohort 前缀(如 public_oct_kermany/00/abc.../bscan.png)。训练侧根据 manifest 来源选择对应 root。


10. Code / Scripts 索引

本地代码仓库:/home/richard/Documents/Code/ZJU/Dataset/

模块 用途
public_common.py 41 列 schema + caption_l1_public + study_hash 命名空间 + IO helpers
oct_public_common.py OCT caption_l1_oct + 多 slice/study 共享 worker
extract_fda.py 私有 Topcon FDA → bscan/fundus/slo/seg/meta.json
extract_subscan.py 私有 sub-scan @SUB_* chunks 提取
build_manifest.py 私有 meta.json → 41 列 parquet + captions
adapter_drive.py ... adapter_gamma.py 6 个公开 fundus adapter
build_public_manifest.py concat 公开 fundus 6 parquet → 统一
build_oct_public.py 19 个公开 OCT 数据集统一处理
build_oct_public_manifest.py concat 公开 OCT 19 parquet → 统一
run.sh 三批数据完整流水线命令(顺序执行)
fixup_errors.sh 私有数据集 sub-scan 错误重试脚本
pack.sh / unpack.sh (各两份) 私有 + OCT public 打包/解包
INTEGRATION_GUIDE.md 公开 fundus 数据集接入手册(如何写新 adapter)

11. 进度状态

任务 状态
私有 Topcon 处理 ✅ 完成
私有 Topcon 打包 (153 GB) ✅ 完成
私有 Topcon 上传 h800 ✅ 完成(含 bucket_2b 重传)
私有 Topcon 解包 (Data/Generation1/private_topcon/) ✅ 完成,Python 验证全通过
公开 fundus 处理 + manifest (h800) ✅ 完成
公开 OCT 19 cohort 处理 (本地) ✅ 完成
公开 OCT 统一 manifest ✅ 完成 (488,705 images)
公开 OCT 打包 (1,725 tar / 119 GB) ✅ 完成
公开 OCT 上传 h800 ⏸ 等你启动
训练侧三 parquet 拼接 ⏸ 后续

12. 训练侧使用指南(核心)

12.1 数据加载的三个 manifest + 三个 root

训练 dataloader 要同时读这三份 parquet,**41 列 schema 完全一致,直接 pd.concat**:

Source Manifest parquet extracted_root (拼 file_path 用)
私有 Topcon Data/Generation1/private_topcon/manifest/images_v1.parquet Data/Generation1/private_topcon/extracted/shanghai_drioct_triton/
公开 fundus public_eye_pretrain/manifest/public_images_v1.parquet public_eye_pretrain/extracted/
公开 OCT oct_public_pretrain/manifest/oct_public_images_v1.parquet oct_public_pretrain/extracted/

关键差异:私有的 file_path 不带 cohort 前缀(如 00/abc.../bscan_radial/000.png),两个公开的 file_path 带 cohort 前缀(如 public_oct_kermany/00/abc.../bscan.png)。因此 dataloader 必须根据每行的 cohort 字段选对应 root。

12.2 拼接示例代码

import pandas as pd
from pathlib import Path

ROOTS = {
    # cohort → extracted_root
    "shanghai_drioct_triton": "/mnt/tidal-alsh-share2/.../Data/Generation1/private_topcon/extracted/shanghai_drioct_triton",
    # 所有 public_* cohort 共享一个父根
    "_public_fundus_": "/mnt/tidal-alsh-share2/.../public_eye_pretrain/extracted",
    "_public_oct_":    "/mnt/tidal-alsh-share2/.../oct_public_pretrain/extracted",
}

def resolve(row):
    c = row["cohort"]
    if c == "shanghai_drioct_triton":
        return Path(ROOTS["shanghai_drioct_triton"]) / row["file_path"]
    elif c.startswith("public_oct_"):
        return Path(ROOTS["_public_oct_"]) / row["file_path"]   # file_path 已含 cohort 前缀
    else:  # public_drive_vessel / public_messidor2_dr / ...
        return Path(ROOTS["_public_fundus_"]) / row["file_path"]

df_priv = pd.read_parquet("Data/Generation1/private_topcon/manifest/images_v1.parquet")
df_fun  = pd.read_parquet("public_eye_pretrain/manifest/public_images_v1.parquet")
df_oct  = pd.read_parquet("oct_public_pretrain/manifest/oct_public_images_v1.parquet")
manifest = pd.concat([df_priv, df_fun, df_oct], ignore_index=True)
manifest["abs_path"] = manifest.apply(resolve, axis=1)
# ~ 1.1M rows, 42 columns

Captions 同理:

caps_priv = pd.read_parquet("Data/Generation1/private_topcon/captions/captions_v1.parquet")
caps_fun  = pd.read_parquet("public_eye_pretrain/captions/public_captions_v1.parquet")
caps_oct  = pd.read_parquet("oct_public_pretrain/captions/oct_public_captions_v1.parquet")
captions = pd.concat([caps_priv, caps_fun, caps_oct], ignore_index=True)
# ~ 5.5M rows; image_id 关联到 manifest.image_id

12.3 PyTorch Dataset 模板

import torch
from torch.utils.data import Dataset
from PIL import Image
import random

class EyePretrainDataset(Dataset):
    def __init__(self, manifest_df, captions_df, modality=None, transform=None,
                 caption_level="L1_v1_factual"):
        if modality:
            manifest_df = manifest_df[manifest_df.modality.isin(modality)]
        self.df = manifest_df.reset_index(drop=True)
        # caption_level: L1_v1_factual / L1_v2_style / L1_v3_prefix / L1_v4_short / L3_derived / random
        cap_sub = (captions_df if caption_level == "random"
                   else captions_df[captions_df.level == caption_level])
        self.caps = cap_sub.groupby("image_id")["prompt_text"].apply(list).to_dict()
        self.caption_level = caption_level
        self.transform = transform

    def __len__(self): return len(self.df)

    def __getitem__(self, i):
        r = self.df.iloc[i]
        img = Image.open(r["abs_path"]).convert("RGB" if r["modality"] == "fundus_color" else "L")
        if self.transform: img = self.transform(img)
        caps = self.caps.get(r["image_id"], [""])
        text = random.choice(caps) if self.caption_level == "random" else caps[0]
        return {
            "image": img, "text": text,
            "cohort": r["cohort"], "modality": r["modality"],
            "anatomy": r["anatomy"], "severity": r["severity"],
            "diagnosis_group": list(r["diagnosis_group"]),
            "bscan_index": r["bscan_index"],
            "has_segmentation": r["has_segmentation"],
            "image_id": r["image_id"], "study_id": r["study_id"],
            "patient_hash": r["patient_hash"],
        }

12.4 切分策略:患者级 split(防泄漏)

⚠️ 不要按行(image)随机切 train/val/test —— 同一患者的多张 B-scan 会跨 split 泄漏。

import numpy as np
rng = np.random.default_rng(42)
patients = manifest["patient_hash"].unique()
rng.shuffle(patients)
n = len(patients)
train_p = set(patients[:int(0.9*n)])
val_p   = set(patients[int(0.9*n):int(0.95*n)])
test_p  = set(patients[int(0.95*n):])

manifest["split"] = manifest.patient_hash.map(
    lambda p: "train" if p in train_p else ("val" if p in val_p else "test"))

说明

  • 私有 Topcon:patient_hash = study_hash,每个 FDA 一个匿名患者,等价 file-level
  • 公开 fundus:多数 cohort 也是 file-level(无 patient_id),少数(OLIVES、IDRiD grading、GAMMA)有真实 patient 共享
  • 公开 OCT:Kermany(CNV-NNN-XXX 中段 = patient_id)、NEH_UT、OCTDL 有 patient_id;OLIVES patient_hash 跨 visit 一致
  • 安全做法:永远按 patient_hash 切,cohort-level 也保留这套切分

12.5 三种典型训练任务的数据组合

(A) 纯无监督生成式预训练(VAE / diffusion / MAE)

# 用全部 ~1.1M 张图像,不需要 label
ds = EyePretrainDataset(manifest, captions, modality=None,
                        caption_level="random")
# 或单模态预训练:
ds_oct = EyePretrainDataset(manifest, captions,
                            modality=["oct_bscan"])   # ~892k 张
ds_fun = EyePretrainDataset(manifest, captions,
                            modality=["fundus_color"]) # ~178k 张

(B) Caption-conditioned 生成(Stable Diffusion 风格)

# 用 L1 4 个变体做 caption augmentation, L3 做精细条件
ds = EyePretrainDataset(manifest, captions,
                        modality=["oct_bscan", "fundus_color"],
                        caption_level="random")  # 每 epoch 随机挑一个变体

L3_derived 包含具体几何/分割附加信息(私有 OCT 含 CRT、choroidal thickness、quality;公开 OCT 含 mask 类别说明)。如果要训练 disease-aware 生成器,建议把 severity / diagnosis_group 作为额外离散条件 embed。

(C) 多模态 / cross-modality 生成(fundus → OCT B-scan、SLO → OCT)

# 按 study_id 分组,挑出同一 study 内多模态配对
groups = manifest.groupby("study_id")
multimodal_studies = []
for sid, g in groups:
    mods = set(g["modality"])
    if "oct_bscan" in mods and "fundus_color" in mods:
        multimodal_studies.append(sid)
# 主要来源:
#   私有 Topcon 30k study (含 fundus+SLO+12 radial OCT)
#   GAMMA 200 sample (含 fundus + 256 OCT)
# 配上 oct_footprint_bbox_fundus / oct_footprint_bbox_slo 做空间对齐

12.6 实操采样建议

Cohort 不均衡极严重(最大 Kermany 109k vs 最小 Sparsity 17,差 6400 倍)。直接均匀采样会被大 cohort 主导。常见做法:

# 按 cohort 加权采样(每 cohort 等概率)
from torch.utils.data import WeightedRandomSampler
cohort_counts = manifest.cohort.value_counts()
weights = (1.0 / cohort_counts[manifest.cohort]).values
sampler = WeightedRandomSampler(weights, num_samples=len(manifest), replacement=True)
loader = DataLoader(ds, sampler=sampler, batch_size=64, num_workers=8)

或更激进的 modality-balanced(每 batch 内 50% OCT / 50% fundus):

# 分两个 dataset, 用 ConcatDataset + RandomSampler 各 50%

12.7 OCT B-scan 几何条件(私有 + GAMMA + OCTA500 等 volume)

私有 Topcon 12 radial 协议固定:

angle_deg = bscan_index * 15.0   # 0°, 15°, ..., 165°

可作为 angle conditioning embedding 输入。对私有 OCT B-scan 行:

# manifest 已有 fovea_x_norm (B-scan 列方向归一化 fovea 位置 0.0-1.0)
# 可作 position embedding

对 GAMMA / OCTA500 的 volume slice:bscan_index 是 slice 序号(0..255 或 0..399),可做 axial position embedding。

12.8 三模态 spatial 配准(私有 Topcon)

每个私有 study 的 fundus / SLO 行 manifest 含:

  • oct_footprint_bbox_fundus (x0,y0,x1,y1)
  • oct_footprint_bbox_slo

12 radial B-scan 没有 per-bscan endpoints 字段,但可推算(见 §1.3 angle conditioning 说明)。

适合用于 ControlNet-style position embedding / 共享空间坐标的 cross-attention;不适合像素级 dense supervision(无 dense warp)。

12.9 常用过滤组合速查

目标 过滤
仅 OCT B-scan(生成式预训练 OCT) modality == "oct_bscan" → ~892k
仅 fundus_color modality == "fundus_color" → ~178k
仅黄斑中心 OCT modality == "oct_bscan" & anatomy == "macula"
仅视盘 OCT modality == "oct_bscan" & anatomy == "optic_disc"
仅 SS-OCT(私有 Topcon) device_technology == "ss_oct" → 374k
仅 SD-OCT(剔除 TD-OCT 49 张) device_technology == "sd_oct"
仅带 mask(监督分割 / mask-conditioned 生成) has_segmentation == True → ~510k
仅有疾病 grade(弱监督) severity in ['mild','moderate','severe','proliferative']
排除质量差 image_quality_band not in ['poor', 'ungradable'](仅私有有质量分)

12.10 推荐起步配置

训练目标 数据 Caption level Conditions
OCT VAE / MAE 预训练 OCT 全集 892k L1 random cohort, modality, device_technology
Fundus diffusion 预训练 Fundus 全集 178k L1 random cohort, severity, eye
Multi-modal (fundus → OCT) 私有 30k + GAMMA 200 study 配对 L3_derived bbox + bscan_index
Disease-conditional gen 全集 + diagnosis_group ≠ [] 子集 L3_derived severity + diagnosis_group multi-hot
Few-shot rare disease (Stargardt / RP / MacTel / RAO / VID) 公开 OCTDL + IDRiD + (未来)dataset 2 L3 diagnosis_group

12.11 注意事项 & 已知坑

  1. 私有数据是 SS-OCT,公开多是 SD-OCT —— 域差异(波长 1050 vs 840nm,脉络膜可见度不同)。生成模型若混训,建议把 device_technology 作为强条件 embed。
  2. OCTA500 mask 6 类 vs RETOUCH IRF/SRF/PED 3 类 vs AMD-SD 5 类 —— mask 像素值定义跨数据集不统一,需要单独建立 cohort-aware mask encoder 或先做 label 标准化。
  3. Caption 中 cohort 名称会暴露 cohort 标签 —— 如果要做 cohort-invariant 表示学习,需要 caption 改写去掉 cohort phrase(或加 cohort dropout)。
  4. OLIVES 同患者纵向数据 —— 若做 time-series 任务可按 (patient, eye) group + study_meta.visit(写在 meta.json study_meta.visit 但未进 41 列;可读 OLIVES sidecar 或解析 study_basename)。
  5. 私有 quality score 仅在私有 cohort 有(公开 image_quality_band 一律 unknown),按 quality 加权采样时只对私有生效。
  6. REFUGE2 val/test、APTOS test、OCTA500 100 vol —— severity=unknown,按 severity 筛要小心。
  7. GAMMA OCT 切片是模拟"私有 radial" 的角度替代:GAMMA OCT 是 volume_3d_macula 256 slices(线性平行扫描),不是 radial。bscan_index 语义不同。
  8. 路径含中文 + 空格(私有 /mnt/synology/08.数据/ + 公开 OCT /mnt/new/OCT Retinal B-scan数据集汇总/),bash 一定要加双引号,Python Path 直接吞。