Datasets:
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dataset_interface.py — Runtime interface for the VerSeFusion HF dataset.
Two classes:
VerSeFusion dict-style dataset wrapping an HF export directory.
No torch dependency. Use this for
benchmarking / visualization / cohort analysis.
VerSeFusionDataset PyTorch Dataset adapter on top of VerSeFusion.
Expected layout (produced by stages 10a+10b+11 of the pipeline):
<root>/
scans/<series_id>/ct.nii.gz
scans/<series_id>/mask.nii.gz
manifest.json schema_version: 1
manifest.csv same data, flat tabular form
manifest_summary.json cross-tabs by split × lstv_class
splits_5fold.json schema_version: 1, patient-level
CV folds with test held out
corrections/veridah_manifest.json
orientation_audit.json
LICENSE
README.md
Quickstart (analysis / viz — no torch needed):
>>> from dataset_interface import VerSeFusion
>>> ds = VerSeFusion("data/hf_staging")
>>> print(ds.stats())
>>> t13_cases = ds.filter(lstv_class="t13_supernumerary")
Quickstart (HF Hub — lazy NIfTI fetch on first access):
>>> ds = VerSeFusion.from_hub("gregoryschwingmdphd/VerseFusion")
>>> ct_arr, affine = ds.cases[0].load_ct() # downloads on first call
Quickstart (training):
>>> from dataset_interface import VerSeFusionDataset
>>> ds_tr = VerSeFusionDataset("data/hf_staging", split=("fold", 0, "train"))
>>> ds_va = VerSeFusionDataset("data/hf_staging", split=("fold", 0, "val"))
>>> ds_te = VerSeFusionDataset("data/hf_staging", split="test")
PATIENT-LEVEL SPLITS
====================
Both the test holdout and the 5-fold CV are stratified at the patient
level. Paired patients (where a single patient has multiple scans) keep
all their scans in the same fold to prevent leakage.
LSTV CLASSES
============
The dataset is stratified on a 4-way `lstv_class` derived from the LSTV
audit flags during manifest construction:
t13_supernumerary has_T13 = True (~18 cases)
lumbarization has_L6 = True (~44 cases)
truncated lacks_T12_TLJ_in_FOV (~6 cases)
normal otherwise (~290 cases)
The per-patient class is the WORST-CASE across that patient's scans
(t13 > lumb > trunc > normal). See verse_pipeline/splits_builder.py.
"""
from __future__ import annotations
import json
import os
from dataclasses import dataclass, field
from pathlib import Path
from typing import Any, Dict, List, Optional, Sequence, Tuple
# VerSeFusion mask label scheme (28-class):
# 0 background
# 1-7 C1-C7
# 8-19 T1-T12
# 20-25 L1-L6
# 26 sacrum
# 27 coccyx
# 28 T13 (supernumerary, after VERIDAH t13_shift)
LABEL_NAMES = (
"background",
"C1", "C2", "C3", "C4", "C5", "C6", "C7",
"T1", "T2", "T3", "T4", "T5", "T6", "T7", "T8", "T9", "T10", "T11", "T12",
"L1", "L2", "L3", "L4", "L5", "L6",
"sacrum", "coccyx",
"T13",
)
NUM_CLASSES = len(LABEL_NAMES)
# ============================================================================
# Case record
# ============================================================================
@dataclass
class Case:
"""One scan (CT + mask) with metadata.
For HF-backed datasets, ct_path / mask_path may not exist on disk yet —
files are fetched lazily on first call to load_ct() / load_mask() via
the back-reference to the parent dataset. For local roots the
back-reference is None and load_* just opens the file directly.
"""
series_id: str
patient_id: Optional[str]
ct_path: Path
mask_path: Path
split: str = "unknown" # training/validation/test
source_dataset: Optional[str] = None
source_format: Optional[str] = None
# geometry
shape: Optional[Tuple[int, int, int]] = None
spacing_mm: Optional[Tuple[float, float, float]] = None
# demographics (often missing)
age: Optional[float] = None
sex: Optional[str] = None
patient_pos: Optional[str] = None
# corrections
veridah_applied: bool = False
veridah_action: Optional[str] = None
veridah_kind: Optional[str] = None
# LSTV
n_labels: int = 0
labels_present: List[int] = field(default_factory=list)
has_T13: bool = False
has_L6: bool = False
lacks_T12_TLJ_in_FOV: bool = False
lstv_class: str = "normal"
# Manifest-relative paths (used by lazy fetch)
ct_file_rel: str = ""
mask_file_rel: str = ""
# Back-ref to parent VerSeFusion instance for HF lazy fetch.
# Marked compare=False so equality / repr stay sane.
_parent: object = field(default=None, repr=False, compare=False)
def exists(self) -> bool:
"""True iff both files are present on disk RIGHT NOW. Returns
False for HF-backed cases that haven't been fetched yet."""
return self.ct_path.exists() and self.mask_path.exists()
def has_label(self, label: int) -> bool:
return int(label) in self.labels_present
def _ensure_local(self) -> None:
"""Download from HF if needed. No-op for local datasets."""
if self._parent is None:
return
fetcher = getattr(self._parent, "_hf_fetch", None)
if fetcher is None:
return
if not self.ct_path.exists():
new_ct = fetcher(self.ct_file_rel)
if new_ct is not None:
self.ct_path = Path(new_ct)
if not self.mask_path.exists():
new_msk = fetcher(self.mask_file_rel)
if new_msk is not None:
self.mask_path = Path(new_msk)
def load_ct(self):
"""Returns (ct_array float32 in PIR, affine 4x4)."""
import nibabel as nib
import numpy as np
self._ensure_local()
img = nib.load(str(self.ct_path))
return np.asarray(img.dataobj, dtype=np.float32), img.affine
def load_mask(self):
"""Returns (mask_array int16 in PIR, affine 4x4)."""
import nibabel as nib
import numpy as np
self._ensure_local()
img = nib.load(str(self.mask_path))
return np.asarray(img.dataobj, dtype=np.int16), img.affine
# Backwards-compat alias for code expecting CTSpinoPelvic1K's load_label
def load_label(self):
return self.load_mask()
# ============================================================================
# coercion / path resolution helpers (mirror CTSpinoPelvic1K conventions)
# ============================================================================
def _coerce_optional_str(v) -> Optional[str]:
if v is None:
return None
try:
import pandas as _pd
if _pd.isna(v):
return None
except Exception:
pass
s = str(v)
return s if s and s.lower() != "nan" else None
def _coerce_optional_float(v) -> Optional[float]:
if v is None or v == "":
return None
try:
import pandas as _pd
if _pd.isna(v):
return None
except Exception:
pass
try:
f = float(v)
except (TypeError, ValueError):
return None
return None if f != f else f
def _coerce_optional_int(v) -> Optional[int]:
f = _coerce_optional_float(v)
return int(f) if f is not None else None
def _coerce_bool(v) -> bool:
if isinstance(v, bool):
return v
if v is None:
return False
if isinstance(v, str):
return v.strip().lower() in ("true", "1", "yes")
try:
return bool(int(v))
except (TypeError, ValueError):
return bool(v)
def _coerce_labels_list(v) -> List[int]:
"""labels_present may be a JSON string (from CSV) or already a list."""
if v is None or v == "":
return []
if isinstance(v, list):
return [int(x) for x in v]
if isinstance(v, str):
try:
parsed = json.loads(v)
if isinstance(parsed, list):
return [int(x) for x in parsed]
except (TypeError, ValueError, json.JSONDecodeError):
pass
return []
def _resolve_file(root: Path, rel: str) -> Path:
"""Resolve a manifest-declared relative path against the root.
Always tries `root/rel` first. For HF-backed datasets where the file
hasn't been fetched yet, the result won't exist — that's fine, the
lazy-fetch path in Case._ensure_local() handles it.
"""
if not rel:
return root
return root / rel
# ============================================================================
# main dataset class (no torch dep)
# ============================================================================
class VerSeFusion:
"""Directory-backed dataset with rich per-scan metadata.
For HF-backed instances (via from_hub), only metadata files are
downloaded eagerly (manifest, splits, README — kilobytes). CT and
mask NIfTIs are fetched lazily on first call to Case.load_ct() /
load_mask() via _hf_fetch(), and cached for future calls under the
huggingface_hub cache.
"""
# Splits schema recorded after _resolve_splits so callers can introspect
splits_schema_version: Optional[int] = None
splits_scheme: Optional[str] = None
# HF lazy-fetch state. None for purely local datasets.
_hf_repo_id: Optional[str] = None
_hf_token: Optional[str] = None
_hf_cache_dir: Optional[str] = None
def __init__(self, root):
self.root = Path(os.path.expanduser(str(root)))
if not self.root.exists():
raise FileNotFoundError(f"Dataset root not found: {self.root}")
self._load()
# ── HF lazy-fetch ────────────────────────────────────────────────────
def _hf_fetch(self, rel_path: str) -> Optional[str]:
"""Ensure the file at rel_path exists locally. Returns local path
as a string, or None if this dataset isn't HF-backed.
Race-safe across processes (huggingface_hub uses file locks).
Network errors propagate.
"""
if not self._hf_repo_id or not rel_path:
return None
try:
from huggingface_hub import hf_hub_download
except ImportError as e:
raise RuntimeError(
"huggingface_hub not installed. pip install huggingface_hub"
) from e
return hf_hub_download(
repo_id = self._hf_repo_id,
repo_type = "dataset",
filename = rel_path,
token = self._hf_token,
cache_dir = self._hf_cache_dir,
)
# ── splits resolution ────────────────────────────────────────────────
def _resolve_splits(self) -> Tuple[Dict[str, str], Optional[Dict]]:
"""Read splits_5fold.json. Returns (series_id_to_split, cv_doc).
series_id_to_split maps to "test" or "trainval". cv_doc is the
full splits document for fold() lookups, or None if missing.
Falls back to the manifest's native `split` column for the
"split" attribute when splits_5fold.json is absent — but in
that case fold() will raise.
"""
series_to_split: Dict[str, str] = {}
cv_doc: Optional[Dict] = None
splits_path = self.root / "splits_5fold.json"
if splits_path.exists():
try:
doc = json.loads(splits_path.read_text())
self.splits_schema_version = int(doc.get("schema_version", 0) or 0)
self.splits_scheme = doc.get("strata_scheme")
for sid in doc.get("test_series_ids", []) or []:
series_to_split[str(sid)] = "test"
if "folds" in doc:
cv_doc = doc
return series_to_split, cv_doc
except (OSError, ValueError, TypeError) as e:
import warnings as _w
_w.warn(
f"Could not read {splits_path}: {e}. fold() will fail.",
stacklevel=3,
)
return series_to_split, cv_doc
def _load_manifest_records(self) -> List[Dict[str, Any]]:
"""Read manifest.json (preferred) or manifest.csv as records."""
json_path = self.root / "manifest.json"
if json_path.exists():
doc = json.loads(json_path.read_text())
if isinstance(doc, dict):
return list(doc.get("subjects", []))
if isinstance(doc, list):
return list(doc)
csv_path = self.root / "manifest.csv"
if csv_path.exists():
import pandas as pd
return pd.read_csv(csv_path).to_dict(orient="records")
raise FileNotFoundError(
f"No manifest found under {self.root}. Looked for "
f"manifest.json and manifest.csv. Did you run "
f"`make manifest-slurm`?"
)
def _load(self) -> None:
records = self._load_manifest_records()
series_to_split, self.cv = self._resolve_splits()
self.cases: List[Case] = []
for r in records:
sid = str(r.get("series_id", ""))
if not sid:
continue
ct_rel = r.get("ct_relative_path") or f"scans/{sid}/ct.nii.gz"
msk_rel = r.get("mask_relative_path") or f"scans/{sid}/mask.nii.gz"
# Determine split: splits_5fold.json wins; else manifest's native
# split column. Native splits are training/validation/test
# (per VerSe). splits_5fold.json collapses non-test to
# "trainval" so fold() can do the rest.
split = series_to_split.get(sid) or _coerce_optional_str(r.get("split")) or "unknown"
shape = (
_coerce_optional_int(r.get("shape_p")),
_coerce_optional_int(r.get("shape_i")),
_coerce_optional_int(r.get("shape_r")),
)
spacing = (
_coerce_optional_float(r.get("spacing_p_mm")),
_coerce_optional_float(r.get("spacing_i_mm")),
_coerce_optional_float(r.get("spacing_r_mm")),
)
self.cases.append(Case(
series_id = sid,
patient_id = _coerce_optional_str(r.get("patient_id")),
ct_path = _resolve_file(self.root, ct_rel),
mask_path = _resolve_file(self.root, msk_rel),
split = split,
source_dataset = _coerce_optional_str(r.get("source_dataset")),
source_format = _coerce_optional_str(r.get("source_format")),
shape = shape if all(v is not None for v in shape) else None,
spacing_mm = spacing if all(v is not None for v in spacing) else None,
age = _coerce_optional_float(r.get("age")),
sex = _coerce_optional_str(r.get("sex")),
patient_pos = _coerce_optional_str(r.get("patient_pos")),
veridah_applied = _coerce_bool(r.get("veridah_applied", False)),
veridah_action = _coerce_optional_str(r.get("veridah_action")),
veridah_kind = _coerce_optional_str(r.get("veridah_kind")),
n_labels = _coerce_optional_int(r.get("n_labels")) or 0,
labels_present = _coerce_labels_list(r.get("labels_present")),
has_T13 = _coerce_bool(r.get("has_T13", False)),
has_L6 = _coerce_bool(r.get("has_L6", False)),
lacks_T12_TLJ_in_FOV = _coerce_bool(r.get("lacks_T12_TLJ_in_FOV", False)),
lstv_class = _coerce_optional_str(r.get("lstv_class")) or "normal",
ct_file_rel = ct_rel,
mask_file_rel = msk_rel,
_parent = self,
))
self._by_series: Dict[str, Case] = {c.series_id: c for c in self.cases}
# ── construction from the Hub ────────────────────────────────────────
@classmethod
def from_hub(cls,
repo_id: str,
token: Optional[str] = None,
cache_dir: Optional[str] = None) -> "VerSeFusion":
"""Construct a dataset backed by a HuggingFace dataset repo.
Eagerly downloads only metadata files (manifest, splits, README,
small auxiliary JSONs). NIfTIs are fetched lazily on first
Case.load_ct() / load_mask() call.
"""
try:
from huggingface_hub import snapshot_download
except ImportError as e:
raise RuntimeError(
"huggingface_hub not installed. pip install huggingface_hub"
) from e
local_dir = snapshot_download(
repo_id = repo_id,
repo_type = "dataset",
token = token,
cache_dir = str(Path(os.path.expanduser(cache_dir))) if cache_dir else None,
allow_patterns = [
"manifest.json",
"manifest.csv",
"manifest_summary.json",
"splits_5fold.json",
"splits.csv",
"corrections/**",
"orientation_audit.json",
"sample_selection.json",
"README.md",
"LICENSE",
"LICENSE.txt",
"dataset_interface.py",
],
)
inst = cls(local_dir)
inst._hf_repo_id = repo_id
inst._hf_token = token
inst._hf_cache_dir = (
str(Path(os.path.expanduser(cache_dir))) if cache_dir else None
)
return inst
# ── filtering ────────────────────────────────────────────────────────
def filter(self,
split: Optional[str | Sequence[str]] = None,
lstv_class: Optional[str | Sequence[str]] = None,
source_dataset: Optional[str | Sequence[str]] = None,
veridah_applied: Optional[bool] = None,
has_label: Optional[int] = None,
present_only: bool = False) -> List[Case]:
"""Filter cases by metadata attributes.
Each filter accepts a single value or a list of values to match
against. `present_only=True` means present-on-disk RIGHT NOW —
for HF-backed datasets that haven't fetched the data yet this
will return an empty list.
"""
def _as_list(x):
if x is None: return None
return [x] if isinstance(x, str) else list(x)
sp = _as_list(split)
lc = _as_list(lstv_class)
sd = _as_list(source_dataset)
out = list(self.cases)
if sp: out = [c for c in out if c.split in sp]
if lc: out = [c for c in out if c.lstv_class in lc]
if sd: out = [c for c in out if c.source_dataset in sd]
if veridah_applied is not None:
out = [c for c in out if bool(c.veridah_applied) == bool(veridah_applied)]
if has_label is not None:
out = [c for c in out if c.has_label(int(has_label))]
if present_only:
out = [c for c in out if c.exists()]
return out
# ── split accessors ──────────────────────────────────────────────────
def test_set(self) -> List[Case]:
"""Fixed test holdout (patient-level), per splits_5fold.json or
the manifest's native `split` column."""
return [c for c in self.cases if c.split == "test"]
def trainval(self) -> List[Case]:
"""Train+val pool — everything not in the test holdout.
Native VerSe splits are training/validation; the splits_5fold.json
path collapses both into "trainval". We accept all three labels
here so the same code works whichever splits source is in play.
"""
keep = {"training", "validation", "trainval"}
return [c for c in self.cases if c.split in keep]
def fold(self, i: int) -> Tuple[List[Case], List[Case]]:
"""Return (train_cases, val_cases) for fold i.
Lookup is by series_id against splits_5fold.json fold[i].
Raises RuntimeError if no CV folds are available.
"""
if self.cv is None:
raise RuntimeError(
f"No 5-fold CV found at {self.root}/splits_5fold.json. "
f"Run `python -m verse_pipeline.splits_builder` "
f"or `make splits-slurm` to produce one."
)
folds = self.cv.get("folds", [])
if not 0 <= i < len(folds):
raise IndexError(f"fold {i} out of range [0, {len(folds)})")
train_set = set(folds[i].get("train_series_ids", []))
val_set = set(folds[i].get("val_series_ids", []))
train = [c for c in self.cases if c.series_id in train_set]
val = [c for c in self.cases if c.series_id in val_set]
return train, val
@property
def n_folds(self) -> int:
if not self.cv:
return 0
return len(self.cv.get("folds", []))
def splits(self) -> Tuple[List[Case], List[Case], List[Case]]:
"""Backward-compatible 3-tuple (train, val, test) — train is the
full train+val pool, val is empty. Use fold(i) for real splits."""
return self.trainval(), [], self.test_set()
# ── lookup ───────────────────────────────────────────────────────────
def get(self, series_id: str) -> Optional[Case]:
return self._by_series.get(str(series_id))
def __len__(self) -> int:
return len(self.cases)
def __iter__(self):
return iter(self.cases)
# ── stats ────────────────────────────────────────────────────────────
def stats(self) -> str:
from collections import Counter
sp = Counter(c.split for c in self.cases)
lst = Counter(c.lstv_class for c in self.cases)
sd = Counter(c.source_dataset or "?" for c in self.cases)
fmt = Counter(c.source_format or "?" for c in self.cases)
n_present = sum(1 for c in self.cases if c.exists())
n_t13 = sum(1 for c in self.cases if c.has_T13)
n_l6 = sum(1 for c in self.cases if c.has_L6)
n_trunc = sum(1 for c in self.cases if c.lacks_T12_TLJ_in_FOV)
n_ver = sum(1 for c in self.cases if c.veridah_applied)
n_pats = len({c.patient_id for c in self.cases if c.patient_id})
lines = [
"VerSeFusion",
f" root: {self.root}",
f" scans: {len(self.cases)} (present on disk: {n_present})",
f" unique patients: {n_pats}",
f" splits: {dict(sp)}",
f" lstv_class: {dict(lst)}",
f" source_dataset: {dict(sd)}",
f" source_format: {dict(fmt)}",
f" flags: has_T13={n_t13} has_L6={n_l6} truncated={n_trunc}",
f" veridah_applied: {n_ver}",
f" cv folds: {self.n_folds}",
]
if self.splits_schema_version:
lines.append(f" splits source: schema_v{self.splits_schema_version} "
f"scheme={self.splits_scheme or '-'}")
else:
lines.append(" splits source: (manifest native splits; no CV)")
if self._hf_repo_id:
lines.append(
f" hf-backed: {self._hf_repo_id} "
f"(NIfTIs fetched lazily; cache_dir={self._hf_cache_dir or 'default'})"
)
return "\n".join(lines)
def __repr__(self) -> str:
return f"VerSeFusion(root={self.root!s}, n_scans={len(self)}, n_folds={self.n_folds})"
# ============================================================================
# PyTorch Dataset adapter
# ============================================================================
try:
import torch
from torch.utils.data import Dataset
_HAS_TORCH = True
except ImportError:
_HAS_TORCH = False
Dataset = object # type: ignore
class VerSeFusionDataset(Dataset):
"""PyTorch Dataset yielding per-case tensors from NIfTI files.
Split selection:
split="trainval" — whole train+val pool
split="test" — fixed test holdout
split=("fold", 0, "train") — fold 0 train side of 5-fold CV
split=("fold", 0, "val") — fold 0 val side
split="all" — every scan
HF-backed roots fetch NIfTIs lazily on first __getitem__. With
num_workers>0, multiple workers may race to fetch the same case —
huggingface_hub uses file locks to make this safe.
"""
def __init__(self,
root,
split=("fold", 0, "train"),
lstv_class: Optional[str | Sequence[str]] = None,
transform=None,
cache_dir: Optional[str] = None):
if not _HAS_TORCH:
raise RuntimeError("torch is required for VerSeFusionDataset")
# Auto-detect HF vs local
root_path = Path(os.path.expanduser(str(root)))
if root_path.exists() and (root_path / "manifest.json").exists():
self._ds = VerSeFusion(root_path)
else:
self._ds = VerSeFusion.from_hub(repo_id=str(root), cache_dir=cache_dir)
self.split = split
self.transform = transform
if isinstance(split, tuple) and len(split) == 3 and split[0] == "fold":
_, fold_i, side = split
tr, va = self._ds.fold(int(fold_i))
cases = tr if side == "train" else va
elif split == "test":
cases = self._ds.test_set()
elif split == "trainval":
cases = self._ds.trainval()
elif split == "all":
cases = list(self._ds.cases)
else:
raise ValueError(f"Unknown split spec: {split!r}")
# Optional further filter
if lstv_class is not None:
lc = [lstv_class] if isinstance(lstv_class, str) else list(lstv_class)
cases = [c for c in cases if c.lstv_class in lc]
# For HF-backed: don't filter on present_only (files arrive lazily)
if self._ds._hf_repo_id:
self.cases: List[Case] = list(cases)
else:
self.cases = [c for c in cases if c.exists()]
def __len__(self) -> int:
return len(self.cases)
def __getitem__(self, idx: int) -> dict:
c = self.cases[idx]
ct_np, affine = c.load_ct()
msk_np, _ = c.load_mask()
return self._collate(c, ct_np, msk_np, affine)
def _collate(self, c: Case, ct_np, msk_np, affine) -> dict:
ct = torch.from_numpy(ct_np.astype("float32")).unsqueeze(0) # (1, P, I, R)
mask = torch.from_numpy(msk_np.astype("int64")) # (P, I, R)
item = {
"ct": ct,
"mask": mask,
"affine": torch.from_numpy(affine.astype("float32")),
"series_id": c.series_id,
"patient_id": c.patient_id or "",
"split": c.split,
"meta": {
"source_dataset": c.source_dataset,
"source_format": c.source_format,
"spacing_mm": c.spacing_mm,
"shape": c.shape,
"age": c.age,
"sex": c.sex,
"veridah_applied": c.veridah_applied,
"veridah_action": c.veridah_action,
"lstv_class": c.lstv_class,
"has_T13": c.has_T13,
"has_L6": c.has_L6,
"lacks_T12_TLJ_in_FOV": c.lacks_T12_TLJ_in_FOV,
"n_labels": c.n_labels,
"labels_present": list(c.labels_present),
},
}
if self.transform is not None:
item = self.transform(item)
return item
# ============================================================================
# CLI smoke test
# ============================================================================
if __name__ == "__main__":
import argparse
ap = argparse.ArgumentParser(description="Smoke test: load + print stats.")
ap.add_argument("--root", required=True,
help="Local dataset dir OR HF repo_id (e.g. user/repo)")
ap.add_argument("--cache_dir", default=None)
args = ap.parse_args()
root_path = Path(os.path.expanduser(args.root))
if root_path.exists():
ds = VerSeFusion(root_path)
else:
ds = VerSeFusion.from_hub(args.root, cache_dir=args.cache_dir)
print(ds.stats())
print(f"\ntest / trainval: {len(ds.test_set())} / {len(ds.trainval())}")
if ds.n_folds > 0:
tr, va = ds.fold(0)
print(f"fold 0 train/val: {len(tr)} / {len(va)}")
sample = ds.trainval() or list(ds.cases)
if sample:
c = sample[0]
print(f"\nfirst case:")
print(f" series_id: {c.series_id}")
print(f" patient_id: {c.patient_id}")
print(f" split: {c.split}")
print(f" lstv_class: {c.lstv_class}")
print(f" ct_path: {c.ct_path} (exists={c.ct_path.exists()})")
print(f" mask_path: {c.mask_path} (exists={c.mask_path.exists()})")
print(f" spacing_mm: {c.spacing_mm}")
print(f" shape: {c.shape}")
print(f" veridah: applied={c.veridah_applied} action={c.veridah_action}")
print(f" n_labels: {c.n_labels}")
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