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#!/usr/bin/env python3
"""
GAMMA adapter — multimodal glaucoma grading (fundus + 3D OCT volume + DC mask + fovea).

Inputs:
    {input_root}/grading/Glaucoma_grading/{training,testing}/multi-modality_images/NNNN/
        NNNN.jpg                  fundus image
        NNNN/{0..255}_image.jpg   256 OCT B-scan slices (3D macular volume)
        NNNN_Sequence.mhd/.raw    raw 3D metadata (not used here)
    {input_root}/grading/Glaucoma_grading/training/glaucoma_grading_training_GT.xlsx
        columns: data, non, early, mid_advanced (one-hot)
    {input_root}/fovea_localization_training_GT.xlsx
        columns: data, Fovea_X, Fovea_Y
    {input_root}/mask_DC/train/NNNN.png    disc/cup mask, train only (pixel 0/128/255)

Outputs (under {output_root}):
    extracted/public_gamma_multimodal/{hash[:2]}/{hash}/
        fundus_color.jpg
        disc_cup_mask.png                  (train only; 0/128/255)
        oct_bscan_volume/000.png...255.png (re-encoded grayscale PNG)
        meta.json
    manifest/public_gamma_multimodal_images.parquet
    manifest/public_gamma_multimodal_sidecar.parquet    (fovea coords, train only)
    captions/public_gamma_multimodal_captions.parquet

Manifest rows per sample: 1 fundus row + 256 OCT B-scan rows, all sharing the same study_id.
patient_hash = study_id (file-level, no patient ID in dataset).

Glaucoma label mapping (one-hot):
    non=1            -> diagnosis_group=[], severity=none
    early=1          -> diagnosis_group=["glaucoma"], severity=mild
    mid_advanced=1   -> diagnosis_group=["glaucoma"], severity=severe
"""
import argparse
import json
import re
from concurrent.futures import ProcessPoolExecutor, as_completed
from pathlib import Path

import numpy as np
import pandas as pd
from PIL import Image, ImageFile

ImageFile.LOAD_TRUNCATED_IMAGES = True

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_gamma_multimodal"
COHORT_PHRASE = "GAMMA multimodal glaucoma grading dataset"


def _glaucoma_label(row):
    """Returns (diagnosis_group, severity) from one-hot label row."""
    if row.get("non") == 1: return ([], "none")
    if row.get("early") == 1: return (["glaucoma"], "mild")
    if row.get("mid_advanced") == 1: return (["glaucoma"], "severe")
    return ([], "unknown")


def _save_three_class_mask(src: Path, dst: Path):
    arr = np.array(Image.open(src).convert("L"))
    out = np.zeros_like(arr)
    out[(arr > 64) & (arr < 192)] = 128
    out[arr >= 192] = 255
    Image.fromarray(out, mode="L").save(dst, "PNG", optimize=True)


def process_sample(args):
    (sample_id, split, sample_dir_str, label_row, fovea_row, mask_path_str,
     out_root_str, force) = args
    sample_dir = Path(sample_dir_str)
    out_root = Path(out_root_str)

    basename = f"{split}_{sample_id}"
    sh = study_hash_for(COHORT, basename)
    sdir = study_dir_for(out_root, COHORT, sh)
    sdir.mkdir(parents=True, exist_ok=True)
    oct_dir = sdir / "oct_bscan_volume"
    oct_dir.mkdir(exist_ok=True)

    meta_p = sdir / "meta.json"
    if meta_p.exists() and not force:
        try:
            meta = json.loads(meta_p.read_text())
            if meta.get("status") == "ok":
                return _build_all(meta)
        except Exception:
            pass

    fundus_src = sample_dir / f"{sample_id}.jpg"
    fundus_dst = sdir / "fundus_color.jpg"
    img = Image.open(fundus_src).convert("RGB")
    fw, fh = img.size
    img.save(fundus_dst, "JPEG", quality=95)

    oct_slice_dir = sample_dir / sample_id
    slice_files = sorted(oct_slice_dir.glob("*_image.jpg"),
                         key=lambda p: int(p.name.split("_")[0]))
    n_slices = len(slice_files)
    oct_h = oct_w = None
    for i, sf in enumerate(slice_files):
        with Image.open(sf) as si:
            arr = np.array(si.convert("L"))
        if oct_h is None:
            oct_h, oct_w = arr.shape
        Image.fromarray(arr, mode="L").save(
            oct_dir / f"{i:03d}.png", "PNG", optimize=True)

    has_dc_mask = False
    if mask_path_str:
        mp = Path(mask_path_str)
        if mp.exists():
            _save_three_class_mask(mp, sdir / "disc_cup_mask.png")
            has_dc_mask = True

    meta = {
        "status": "ok", "cohort": COHORT, "study_hash": sh,
        "source_basename": basename, "split": split, "sample_id": sample_id,
        "fundus_height_px": int(fh), "fundus_width_px": int(fw),
        "n_oct_bscan": int(n_slices),
        "oct_bscan_height_px": int(oct_h) if oct_h else None,
        "oct_bscan_width_px": int(oct_w) if oct_w else None,
        "eye": "unknown",
        "has_dc_mask": has_dc_mask,
        "label_non": int(label_row.get("non", 0)) if label_row else None,
        "label_early": int(label_row.get("early", 0)) if label_row else None,
        "label_mid_advanced": int(label_row.get("mid_advanced", 0)) if label_row else None,
        "fovea_x_px": float(fovea_row["Fovea_X"]) if fovea_row else None,
        "fovea_y_px": float(fovea_row["Fovea_Y"]) if fovea_row else None,
    }
    write_meta(sdir, meta)
    return _build_all(meta)


def _build_all(meta: dict):
    sh = meta["study_hash"]
    if meta.get("label_non") is not None:
        dx, sev = _glaucoma_label({"non": meta["label_non"],
                                    "early": meta["label_early"],
                                    "mid_advanced": meta["label_mid_advanced"]})
        dx_source = "expert_grade"
    else:
        dx, sev = [], "unknown"
        dx_source = "none"

    base = default_base_fields(COHORT, sh, eye=meta["eye"])
    base["diagnosis_group"] = dx
    base["severity"] = sev
    base["diagnosis_source"] = dx_source
    if dx_source == "expert_grade":
        base["label_confidence"] = "consensus"

    rows, caps = [], []

    # --- Fundus row ---
    fundus_id = f"{COHORT}_{sh}_fundus_color"
    fundus_row = dict(base)
    fundus_row.update({
        "image_id": fundus_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": meta["fundus_height_px"],
        "image_width_px": meta["fundus_width_px"],
        "has_segmentation": bool(meta.get("has_dc_mask")),
        "n_layers_visible": 0,
        "is_valid": True,
    })
    rows.append(fundus_row)
    caps.extend(caption_l1_public(fundus_id, COHORT_PHRASE, "fundus_color", meta["eye"]))
    parts = [f"A color fundus photograph from the GAMMA dataset ({meta['split']} split)"]
    if sev != "unknown":
        parts.append(f"glaucoma severity {sev}")
    if meta.get("has_dc_mask"):
        parts.append("with optic disc and cup segmentation mask")
    if meta.get("fovea_x_px") is not None:
        parts.append("with fovea center annotation")
    caps.append(caption_l3_public(fundus_id, ", ".join(parts) + ".",
                                  "manifest_fields+mask_presence"))

    # --- OCT B-scan rows ---
    n = int(meta["n_oct_bscan"])
    oct_h = meta.get("oct_bscan_height_px") or 992
    oct_w = meta.get("oct_bscan_width_px") or 512
    for i in range(n):
        bid = f"{COHORT}_{sh}_oct_bscan_volume_{i:03d}"
        row = dict(base)
        row.update({
            "image_id": bid,
            "file_path": rel_file_path(COHORT, sh, f"oct_bscan_volume/{i:03d}.png"),
            "file_format": "png",
            "modality": "oct_bscan", "anatomy": "macula",
            "device_technology": "ss_oct", "scan_protocol": "volume_3d_macula",
            "bscan_index": i,
            "image_height_px": int(oct_h),
            "image_width_px": int(oct_w),
            "has_segmentation": False, "n_layers_visible": 0,
            "is_valid": True,
        })
        rows.append(row)
        caps.extend(caption_l1_public(bid, COHORT_PHRASE, "oct_bscan", meta["eye"]))
        oct_parts = [f"A macular OCT B-scan from the GAMMA dataset ({meta['split']} split)",
                     f"slice {i+1} of {n} in a 3D macular volume scan"]
        if sev != "unknown":
            oct_parts.append(f"glaucoma severity {sev}")
        caps.append(caption_l3_public(bid, ", ".join(oct_parts) + ".",
                                       "manifest_fields+volume_index"))

    return rows, caps, _sidecar_row(meta) if meta.get("fovea_x_px") is not None else None


def _sidecar_row(meta: dict) -> dict:
    sh = meta["study_hash"]
    return {
        "study_id": sh,
        "fundus_image_id": f"{COHORT}_{sh}_fundus_color",
        "split": meta["split"],
        "fovea_x_px": meta.get("fovea_x_px"),
        "fovea_y_px": meta.get("fovea_y_px"),
        "fundus_width_px": meta["fundus_width_px"],
        "fundus_height_px": meta["fundus_height_px"],
    }


def main():
    ap = argparse.ArgumentParser()
    ap.add_argument("--input-root", required=True,
                    help="Path to .../Generation/GAMMA")
    ap.add_argument("--output-root", required=True)
    ap.add_argument("--num-workers", type=int, default=4)
    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)

    train_labels = pd.read_excel(
        in_root / "grading/Glaucoma_grading/training/glaucoma_grading_training_GT.xlsx")
    train_labels["data"] = train_labels["data"].apply(lambda x: f"{int(x):04d}")
    label_idx = train_labels.set_index("data").to_dict(orient="index")

    fovea_df = pd.read_excel(in_root / "fovea_localization_training_GT.xlsx")
    fovea_df["data"] = fovea_df["data"].apply(lambda x: f"{int(x):04d}")
    fovea_idx = fovea_df.set_index("data").to_dict(orient="index")

    jobs = []
    name_re = re.compile(r"^\d{4}$")
    for split_dir, split_name in [
        (in_root / "grading/Glaucoma_grading/training/multi-modality_images", "train"),
        (in_root / "grading/Glaucoma_grading/testing/multi-modality_images", "test"),
    ]:
        for sample in sorted(p.name for p in split_dir.iterdir() if p.is_dir() and name_re.match(p.name)):
            sd = split_dir / sample
            lbl = label_idx.get(sample) if split_name == "train" else None
            fov = fovea_idx.get(sample) if split_name == "train" else None
            mask_p = (in_root / "mask_DC" / "train" / f"{sample}.png") if split_name == "train" else None
            jobs.append((sample, split_name, str(sd), lbl, fov,
                         str(mask_p) if mask_p else None, str(out_root), args.force))

    if args.limit:
        jobs = jobs[:args.limit]
    print(f"[{COHORT}] {len(jobs)} samples to process")

    all_rows, all_caps, all_side = [], [], []
    failures = []
    with ProcessPoolExecutor(max_workers=args.num_workers) as ex:
        fut_to_sid = {ex.submit(process_sample, j): j[0] for j in jobs}
        for i, fut in enumerate(as_completed(fut_to_sid), 1):
            sid = fut_to_sid[fut]
            try:
                rows, caps, side = fut.result()
            except Exception as e:
                failures.append((sid, type(e).__name__, str(e)[:120]))
                continue
            all_rows.extend(rows)
            all_caps.extend(caps)
            if side:
                all_side.append(side)
            if i % 20 == 0:
                print(f"  ... {i}/{len(fut_to_sid)} samples done ({len(failures)} failed)")

    if failures:
        print(f"[{COHORT}] {len(failures)} samples FAILED:")
        for sid, et, msg in failures[:20]:
            print(f"  {sid}: {et}: {msg}")

    mdir = out_root / "manifest"; cdir = out_root / "captions"
    mdir.mkdir(parents=True, exist_ok=True); cdir.mkdir(parents=True, exist_ok=True)

    imgs_df = pd.DataFrame([coerce_image_row(r) for r in all_rows])[IMAGE_SCHEMA_COLUMNS]
    imgs_df.to_parquet(mdir / f"{COHORT}_images.parquet", index=False)
    caps_df = pd.DataFrame(all_caps)[CAPTION_SCHEMA_COLUMNS]
    caps_df.to_parquet(cdir / f"{COHORT}_captions.parquet", index=False)
    if all_side:
        pd.DataFrame(all_side).to_parquet(mdir / f"{COHORT}_sidecar.parquet", index=False)

    print(f"[{COHORT}] wrote {len(imgs_df)} image rows ({(imgs_df.modality=='fundus_color').sum()} fundus + "
          f"{(imgs_df.modality=='oct_bscan').sum()} oct), {len(caps_df)} captions, {len(all_side)} sidecar rows")
    print(imgs_df.groupby(["modality", "severity"]).size().to_string())


if __name__ == "__main__":
    main()